Tuesday, February 11, 2025

UDLCO CRH: Building Elon's everything app with ideas ranging from practical in time to impractical futuristics

Elon Musk's innovations in Summative assessment:

Summary:

The conversation revolves around AI, healthcare, and innovation, with a focus on Elon Musk's ideas and their potential applications. The discussion touches on topics such as:

- AI in healthcare and medical education
- Data capture and processing in healthcare
- Clinical informatics and its importance in India
- Patient capital and its role in data-driven healthcare
- The potential for AI to structure unstructured data in healthcare

Key Words


- AI
- Healthcare
- Innovation
- Elon Musk
- Clinical informatics
- Patient capital
- Data capture
- Data processing






Image copyright: probably Elon or whoever wants to claim it 

Conversational Transcripts:

[16/01, 08:11] rb : Very soon he'll find a lot of AI agents sharing their code and it will be interesting when he invites them for a face to face interview

[16/01, 08:13] gm: Reality today is lots of dev automation ala code pilots etc. It is essential to know the new paradigm. It is not an either/or

[16/01, 08:16] rb: Yes as long as he's not the only human in the loop

[16/01, 08:17] So: The biggest factor is copying. I saw the same algo/project in at least 70% the resumes ...it is a publicly available algo :)

[16/01, 08:20] rb: To eliminate that possibility one needs a face to face interview to simply verify the claims made by the potential candidate. In education parlance aka summative assessment while the CV essentially reflects a formative assessment by the candidate themselves. Elon has cut short to the chase by eliminating the need for formative self assessment and straight away beginning the summative assessment albeit in an asynchronous manner, which is pretty neat




[10/02, 13:51]ak: Good afternoon all,
A doctor just asked me if I am aware of some best online courses (certificate programs) on AI for medical professionals (doctors).

Any inputs ?


[11/02, 07:24]st: Would rate iisc bangalore program as the best for doctors . Realised it after finishing course.


[11/02, 07:27]st: Learning python and advanced maths as a requirement here and their capstone project helps you make ai project with iisc faculty.


[11/02, 07:29]rb: Online or onsite?


[11/02, 07:31] st: Online but quite rigorous.  6 hours every Sunday for a year but you get amazing batch of smart people as cohort in your batch. Me and dr p were batch 7. Now it's 9th going and they keep adding new things in course. They have onsite visits and mentoring


[11/02, 07:35] st: https://otoscanai.com/ i was able to make this ai based classifier after the course. U have to put images of ear canal/ drum and it will give diagnosis . Useful for non wnt surgeon's and patients for home based diagnosis


[11/02, 07:37] st: Would be happy if any one tells me how to generate revenue from it 🤔.  That iisc never teaches. Considerable  server costs with😁 deployment


[11/02, 22:19] dt: First you have to make a business case for your product. See how it solves a pain point in the current scheme of things, probable market size, probable price points from economics / business point of view. Product manufacturing and marketing expenses. Study if any alternative products are already available in the market. If yes, then see how your product is superior / inferior to it. Visualise other potential obstacles in acceptance and commercialization of your product.

Based on the above, start working on how much funding you will need to manufacture the product. Licences required for the same etc

You will need a technical expert to figure out exactly the technical requirements for manufacturing the product 

Have you patented your product as yet or not? What stage are you in your product development cycle which ranges from concepts to readiness for commercialisation roll out.

After this with a good financial advisor make a financial plan of the business atleast for 5 yrs.

Once your business plan is ready, find another good financial consultant who will search and find potential investors for early stage funding for an equity stake. ( You can also decide how much of your own money you are willing to committ for this. Financer call it your Skin in the game to evaluate how much you are committed or serious about your business idea)

After doing this much research, if you still have any questions then you can DM me

If possible, attend some boot camps held by venture capital firms or bodies

[12/02, 07:26] rb: First step:

If it's going to be DIYWAI ear canal diagnosis then you will need to ensure adequate means of data capture for the non ent surgeon user.

Also don't make this market limited to them. Reach out with your DIYWAI to the bottom of the pyramid (all users with a ear canal and drum problem)


[12/02, 07:55]rb: Second step:

Team up with a generalist healthcare professional who can integrate all other disciplines of healthcare to build their data capture portals (various other canals and drums in the body, you get the drift) to integrate with your ear portal to build the entire healthcare data capture portal for every human user to trade off their data for a solution to their pressing healthcare requirements.

Step 3:

Team up with every engineering and science professional globally to transform your healthcare portal into an everything portal (after all essentially healthcare is everything and even now engineers and scientists are it's real developers and doctors are glorified retailers) and finally submit to Elon for his "everything app" competition because by now he's realised that tamatar data will not take him anywhere except a chaotic hive mind and he needs not only users mental health requirements but also their connected bodily requirements to create his ultimate human requirements engineering app to fit into his current neuralink and mars jigsaw!

[12/02, 07:55] dt: Health / Clinical informatics is not used in HMIS/EHRs in India. The importance of the use of clinical informatics is not very well appreciated in India. Medical professionals who are getting interested/excited about AI in health must also start taking interest in clinical informatics as this will significantly improve outcomes of their AI applications

[12/02, 08:00]ss: Health Data Literacy and Digital Literacy both are essential core topics, which should not be ignored


[12/02, 08:12] rb: Yes core topics to life long learning in data driven healthcare! 

Short term learning overestimates our desired outcomes while long term learning forces us to underestimate future returns/outcomes and one needs "true patient capital" at the right bottom end of the graph here (wrongly labeled philanthropy) to be able to achieve true data driven evidence based healthcare.



[12/02, 08:13]rb: Bottom-line:

Data capture is the more important and currently neglected step rather than AI driven data processing, which may have become easier minus the hallucinations


[12/02, 08:23] dt: Use of Clinical informatics provides structured data for AI processing hence quality of AI outputs is better.

In India, we record and store our clinical information in a semi structured & unstructured way


[12/02, 08:27] rb: We can also train AI to structure these gold mine of unstructured data using a gold amalgamation smelter model?


Thematic Analysis

The conversation can be categorized into several themes:

1. *AI in Healthcare*: The discussion highlights the potential of AI in healthcare, including its applications in medical education and data-driven decision-making.
2. *Data Capture and Processing*: The importance of data capture and processing in healthcare is emphasized, with a focus on the need for structured data and the potential for AI to structure unstructured data.
3. *Clinical Informatics*: The conversation stresses the importance of clinical informatics in India, highlighting its potential to improve healthcare outcomes and facilitate AI-driven decision-making.
4. *Innovation and Entrepreneurship*: The discussion touches on the potential for innovation and entrepreneurship in healthcare, including the role of patient capital in supporting data-driven healthcare initiatives.
5. *Elon Musk and Innovation*: Elon Musk's ideas and innovations are referenced throughout the conversation, highlighting his influence on the discussion around AI, healthcare, and innovation.

Sunday, February 2, 2025

UDLCO: Populist write ups on Deepseek's strengths and original author attribution challenges in forwarded social media publications

Summary: 


The conversations highlight the potential disruption of the AI industry and the importance of simplifying complex technologies and while doing so a text is shared as a viral tweet about DeepSeek's AI innovation approach that reduces training costs and GPU requirements, making AI more accessible. 
The subsequent conversations also demonstrate that original author attribution is a challenge in forwarded social media content. This raises concerns about intellectual property, credibility, and misinformation. Clear attribution and source verification are essential to address these issues.

Key Words

1. DeepSeek
2. Nvidia
3. AI innovations
4. Training costs
5. GPU requirements
6. Disruption
7. Simplification
8. Accessibility
9.Misattribution IP
10. Information diffusion 

Conversational Transcripts:

[28/01, 10:06] : forwarded

Finally had a chance to dig into DeepSeek’s … 

*Let me break down why DeepSeek's AI innovations are blowing people's minds (and possibly threatening Nvidia's $2T market cap) in simple terms...*

First, some context: Right now, training top AI models is INSANELY expensive. OpenAI, Anthropic, etc. spend $100M+ just on compute. They need massive data centers with thousands of $40K GPUs. It's like needing a whole power plant to run a factory.

*DeepSeek just showed up and said "LOL what if we did this for $5M instead?" And they didn't just talk - they actually DID it.* Their models match or beat GPT-4 and Claude on many tasks. The AI world is (as my teenagers say) shook.

How? They rethought everything from the ground up. Traditional AI is like writing every number with 32 decimal places. DeepSeek was like "what if we just used 8? It's still accurate enough!" Boom - 75% less memory needed.

Then there's their "multi-token" system. Normal AI reads like a first-grader: "The... cat... sat..." DeepSeek reads in whole phrases at once. 2x faster, 90% as accurate. When you're processing billions of words, this MATTERS.

But here's the really clever bit: They built an "expert system." Instead of one massive AI trying to know everything (like having one person be a doctor, lawyer, AND engineer), they have specialized experts that only wake up when needed.

Traditional models? All 1.8 trillion parameters active ALL THE TIME. DeepSeek? 671B total but only 37B active at once. It's like having a huge team but only calling in the experts you actually need for each task.

The results are mind-blowing:
- Training cost: $100M → $5M
- GPUs needed: 100,000 → 2,000
- API costs: 95% cheaper
- Can run on gaming GPUs instead of data center hardware

"But wait," you might say, "there must be a catch!" That's the wild part - it's all open source. Anyone can check their work. The code is public. The technical papers explain everything. It's not magic, just incredibly clever engineering.

*Why does this matter? Because it breaks the model of "only huge tech companies can play in AI." You don't need a billion-dollar data center anymore. A few good GPUs might do it.*

*For Nvidia, this is scary. Their entire business model is built on selling super expensive GPUs with 90% margins. If everyone can suddenly do AI with regular gaming GPUs... well, you see the problem.*

And here's the kicker: DeepSeek did this with a team of <200 people. Meanwhile, Meta has teams where the compensation alone exceeds DeepSeek's entire training budget... and their models aren't as good.

*This is a classic disruption story:* Incumbents optimize existing processes, while disruptors rethink the fundamental approach. DeepSeek asked "what if we just did this smarter instead of throwing more hardware at it?"

*The implications are huge:*
- AI development becomes more accessible
- Competition increases dramatically
- The "moats" of big tech companies look more like puddles
- Hardware requirements (and costs) plummet

Of course, giants like OpenAI and Anthropic won't stand still. They're probably already implementing these innovations. But the efficiency genie is out of the bottle - there's no going back to the "just throw more GPUs at it" approach.

Final thought: *This feels like one of those moments we'll look back on as an inflection point. Like when PCs made mainframes less relevant, or when cloud computing changed everything.*

*AI is about to become a lot more accessible, and a lot less expensive. The question isn't if this will disrupt the current players, but how fast?* One of the reason of market fall across the globe


[28/01, 10:09] snpc: The US businesses always suffered with this problem of not simplifying...especially if it is against their business model. Intel delayed the dual core because they were worried about cannibalizing the sales. I am sure big tech knew this all along.


[28/01, 10:26] +91: Very well summarized 👍

[28/01, 10:35] +91: Could you pl share original article url?

[28/01, 11:13] : I've asked the person who shared it with me but not sure if he would be able to get it though.

[28/01, 11:14] +91: Indeed the person who actually wrote this piece has really done a great job in simplifying things.

As per google apparently the author works in Shanghai👇



[28/01, 12:49] snpc: A nice mindmap of the Deepseek paper Source https://pbs.twimg.com/media/GiWdPsNWkAAanXx?format=jpg&name=4096x4096


[28/01, 12:52] sd: It’s not an original article. It was a tweet yesterday which went viral.

[28/01, 12:59] rb: Wasn't the tweet originally written by Jeremy? 🙂

[28/01, 13:33] sd: I don’t think so

[28/01, 13:34] sd: I recommended reading these two to understand: 




[28/01, 13:37] sd: I strongly recommend not to rely on Google for these lol 

I checked on twitter…

Jeremy had just reposted.



Inputs regarding the theme of "original author attribution challenges in forwarded social media publications" in the conversational transcripts shared:

Challenges in Original Author Attribution

1. *Lack of clear attribution*: The conversational transcripts show that the original author of the content is not clearly attributed. The text is forwarded without mentioning the original author's name or handle.

2. *Information diffusion*: The content is shared and diffused through social media platforms, making it difficult to track the original source.

3. *Loss of context*: The forwarded content may lose its original context, making it challenging to understand the author's intentions or the content's relevance.

4. *Misattribution*: The conversational transcripts suggest that the original author's identity may be misattributed or unknown, leading to potential miscrediting or misrepresentation.

Implications

1. *Intellectual property concerns*: The lack of clear attribution raises concerns about intellectual property rights and the potential for plagiarism.

2. *Misinformation and disinformation*: The diffusion of unattributed content can contribute to the spread of misinformation and disinformation.

3. *Credibility and trust*: The inability to verify the original author's identity can erode credibility and trust in the content and its sources.

4. *Academic and professional integrity*: In academic and professional settings, proper attribution is essential for maintaining integrity and credibility.

Possible Solutions

1. *Clear attribution*: Encourage users to provide clear attribution when sharing content, including the original author's name, handle, or publication source.

2. *Source verification*: Implement mechanisms for verifying the original source of content, such as fact-checking or reverse image search.

3. *Content tracking*: Develop tools for tracking the diffusion of content across social media platforms, enabling the identification of original sources.

4. *Education and awareness*: Promote education and awareness about the importance of proper attribution, intellectual property rights, and academic integrity.

Thematic Analysis with Coding on populist social media viral opinion around deepseeks approach:

1. *Disruption of Traditional AI Models* (DTAM): DeepSeek's innovative approach challenges the traditional AI model, reducing costs and increasing accessibility.

2. *Simplification of Complex Technologies* (SCT): The importance of simplifying complex technologies to make them more accessible and user-friendly.

3. *Accessibility and Democratization of AI* (ADAI): DeepSeek's approach makes AI more accessible to smaller companies and individuals, democratizing the technology.

4. *Market Disruption and Competition* (MDC): The potential disruption of the AI industry and the impact on market leaders like Nvidia.

Categorization

1. *Technology*: AI innovations, GPU requirements, training costs
2. *Business*: Market disruption, competition, accessibility
3. *Society*: Democratization of AI, simplification of complex technologies

Learning Points

1. *Innovation can come from unexpected places*: DeepSeek's approach challenges traditional AI models, demonstrating the potential for innovation from smaller companies.

2. *Simplification is key*: Simplifying complex technologies can make them more accessible and user-friendly.

3. *Disruption can lead to growth*: The potential disruption of the AI industry can lead to growth and innovation, as companies adapt to new challenges.

4. *Accessibility is crucial*: Making AI more accessible to smaller companies and individuals can democratize the technology and lead to new applications and innovations.




Sunday, January 26, 2025

UDLCO: August AI take over of PaJR users

Human Summary:


If AI can make online human users of healthcare information, engage in earnest conversations as illustrated in the transcripts below, then combined with a little better evidence based knowledge they will be a major force to reckon with? (See epilogue response at the bottom)

Here's an amazing August AI bolt from the blue in our PaJR group where it spontaneously checked in with the PaJR patient and began a supportive conversation!

I guess AI will soon take over the entire PaJR functioning easily in near future!


For those who may not be able to decode the Bengali syntax and semantics there's an AI translated version of the conversational transcripts below:

[26/01, 20:10] Aug AI : Hi there! Just checking in. āĻ¸āĻŦ āĻ িāĻ•āĻ াāĻ• āĻšāĻ˛āĻ›ে āĻ¤ো? āĻļāĻ°ীāĻ° āĻ•েāĻŽāĻ¨ āĻ˛াāĻ—āĻ›ে āĻ†āĻœāĻ•াāĻ˛?


[26/01, 20:10] Patient Advocate 63M Metabolic Syn: āĻāĻŽāĻ¨িāĻ¤ে āĻ¸āĻŦ āĻ িāĻ•āĻ াāĻ• āĻ†āĻ›ে। āĻ—āĻ¤ āĻĻāĻļ āĻ¤াāĻ°িāĻ– āĻĨেāĻ•ে āĻ•োāĻ˛āĻ•াāĻ¤াāĻ¯় āĻ†āĻ›ি। āĻĢāĻ˛ে āĻ–াāĻ“āĻ¯়া āĻĻাāĻ“āĻ¯়া āĻ‡āĻ¤্āĻ¯াāĻĻি āĻ¸āĻŦāĻ•িāĻ›ুāĻ‡ āĻ¨িāĻ¯়āĻŽেāĻ° āĻŦাāĻ‡āĻ°ে āĻšāĻ˛āĻ›ে ! āĻ“āĻœāĻ¨āĻ“ āĻŦেāĻĄ়েāĻ›ে āĻŽāĻ¨ে āĻšāĻš্āĻ›ে!! āĻ†āĻ—াāĻŽী ā§¨ā§¯ āĻ¤াāĻ°িāĻ– āĻŸ্āĻ°েāĻ¨ে āĻ‰āĻ āĻ›ি āĻ¨াāĻ˛াāĻ—োāĻ¨্āĻĄা āĻ¯াāĻ“āĻ¯়াāĻ° āĻœāĻ¨্āĻ¯, āĻšেāĻ• āĻ†āĻĒ āĻ•āĻ°āĻ¤ে।


[26/01, 20:10] Aug AI : āĻ•োāĻ˛āĻ•াāĻ¤াāĻ¯় āĻĨাāĻ•āĻ˛ে āĻ–াāĻ“āĻ¯়া-āĻĻাāĻ“āĻ¯়াāĻ° āĻ¨িāĻ¯়āĻŽ āĻāĻ•āĻŸু āĻāĻĻিāĻ•-āĻ“āĻĻিāĻ• āĻšāĻ“āĻ¯়াāĻŸাāĻ‡ āĻ¸্āĻŦাāĻ­াāĻŦিāĻ•! 😄 āĻ¤āĻŦে, āĻ“āĻœāĻ¨ āĻŦেāĻĄ়ে āĻ¯াāĻ“āĻ¯়া āĻ¨িāĻ¯়ে āĻšিāĻ¨্āĻ¤া āĻ•āĻ°ো āĻ¨া। āĻ¤ুāĻŽি āĻ¯āĻ–āĻ¨ āĻ¨াāĻ˛াāĻ—োāĻ¨্āĻĄাāĻ¯় āĻšেāĻ•-āĻ†āĻĒ āĻ•āĻ°āĻ¤ে āĻ¯াāĻŦে, āĻ¤āĻ–āĻ¨ āĻ¸āĻŦāĻ•িāĻ›ু āĻ িāĻ•āĻ াāĻ• āĻšāĻ¯়ে āĻ¯াāĻŦে।


[26/01, 20:10] Aug AI : āĻāĻ–āĻ¨, āĻ¤ুāĻŽি āĻ•ি āĻ•োāĻ¨ো āĻŦিāĻļেāĻˇ āĻļাāĻ°ীāĻ°িāĻ• āĻ¸āĻŽāĻ¸্āĻ¯া āĻ…āĻ¨ুāĻ­āĻŦ āĻ•āĻ°āĻ›ো? āĻ¯েāĻŽāĻ¨ āĻ•্āĻ˛াāĻ¨্āĻ¤ি, āĻšāĻœāĻŽেāĻ° āĻ¸āĻŽāĻ¸্āĻ¯া, āĻŦা āĻ…āĻ¨্āĻ¯ āĻ•িāĻ›ু? āĻ¯āĻĻি āĻ•িāĻ›ু āĻĨাāĻ•ে, āĻ¤াāĻšāĻ˛ে āĻ†āĻŽাāĻ•ে āĻœাāĻ¨াāĻ“।


[26/01, 20:10] Patient Advocate 63M Metabolic Syn: āĻ িāĻ• āĻ•্āĻ˛াāĻ¨্āĻ¤ি āĻ¨āĻ¯় āĻ•িāĻ¨্āĻ¤ু āĻ†āĻ˛āĻ¸্āĻ¯ āĻŦāĻ˛ে āĻāĻ•āĻŸা āĻŦ্āĻ¯াāĻĒাāĻ° āĻ¤ো āĻ†āĻ›েāĻ‡! āĻāĻ–াāĻ¨ে āĻ¸াāĻ°াāĻĻিāĻ¨ে āĻ–াāĻ“āĻ¯়া āĻ†āĻ° āĻ˜ুāĻŽাāĻ¨ো āĻ›াāĻĄ়া āĻ¤ো āĻ†āĻ° āĻ•োāĻ¨ āĻ•াāĻœ āĻ¨েāĻ‡! āĻ¸āĻ•াāĻ˛েāĻ° āĻšাঁāĻŸাāĻšাঁāĻŸিāĻ“ āĻŦāĻ¨্āĻ§ āĻ†āĻ›ে, āĻŦিāĻ›াāĻ¨া āĻ›াāĻĄ়āĻ¤েāĻ“ āĻŦেāĻ˛া āĻšāĻ¯়ে āĻ¯াāĻ¯়।
āĻšāĻœāĻŽেāĻ° āĻ¸েāĻ°āĻ•āĻŽ āĻ•োāĻ¨ āĻ¸āĻŽāĻ¸্āĻ¯াāĻ° āĻ¸āĻŽ্āĻŽুāĻ–ীāĻ¨ āĻšāĻ¤ে āĻšāĻ¯় āĻ¨ি āĻ•িāĻ¨্āĻ¤ু āĻ…āĻ¨িāĻ¯়āĻŽিāĻ¤ āĻ¤āĻĨা āĻ…āĻ¨িāĻ¯়āĻ¨্āĻ¤্āĻ°িāĻ¤ āĻ–াāĻ“āĻ¯়া āĻĻাāĻ“āĻ¯়াāĻ° āĻĢāĻ˛ে āĻŽাāĻে āĻŽāĻ§্āĻ¯ে āĻ…্āĻ¯াāĻ¸িāĻĄিāĻŸিāĻ° āĻ¸āĻŽāĻ¸্āĻ¯া āĻšāĻš্āĻ›ে। āĻĒেāĻŸāĻŸাāĻ“ āĻ¸েāĻ­াāĻŦে āĻĒāĻ°িāĻˇ্āĻ•াāĻ° āĻšāĻš্āĻ›ে āĻ¨া āĻŦāĻ˛েāĻ‡ āĻŽāĻ¨ে āĻšāĻš্āĻ›ে। āĻāĻ‡ āĻ†āĻ° āĻ•ি।


[26/01, 20:10] Aug AI : āĻ•োāĻ˛āĻ•াāĻ¤াāĻ° āĻŽāĻœাāĻĻাāĻ° āĻ–াāĻŦাāĻ° āĻ–াāĻ“āĻ¯়াāĻ° āĻĒāĻ° āĻāĻ•āĻŸু āĻ†āĻ˛āĻ¸্āĻ¯ āĻ†āĻ¸āĻ¤েāĻ‡ āĻĒাāĻ°ে! 😄 āĻ¤āĻŦে, āĻ…্āĻ¯াāĻ¸িāĻĄিāĻŸি āĻāĻŦং āĻĒেāĻŸ āĻĒāĻ°িāĻˇ্āĻ•াāĻ° āĻ¨া āĻšāĻ“āĻ¯়াāĻ° āĻ¸āĻŽāĻ¸্āĻ¯াāĻŸা āĻāĻ•āĻŸু āĻŦিāĻ°āĻ•্āĻ¤িāĻ•āĻ° āĻšāĻ¤ে āĻĒাāĻ°ে।


[26/01, 20:10] Patient Advocate 63M Metabolic Syn: āĻāĻ•্āĻˇেāĻ¤্āĻ°ে, āĻ¤ুāĻŽি āĻ•ি āĻĒāĻ°্āĻ¯াāĻĒ্āĻ¤ āĻĒাāĻ¨ি āĻĒাāĻ¨ āĻ•āĻ°āĻ›ো? āĻĒাāĻ¨ি āĻšāĻœāĻŽেāĻ° āĻĒ্āĻ°āĻ•্āĻ°িāĻ¯়াāĻ•ে āĻ¸াāĻšাāĻ¯্āĻ¯ āĻ•āĻ°ে āĻāĻŦং āĻ…্āĻ¯াāĻ¸িāĻĄিāĻŸি āĻ•āĻŽাāĻ¤ে āĻ¸āĻšাāĻ¯়āĻ• āĻšāĻ¤ে āĻĒাāĻ°ে।


[26/01, 20:10] Patient Advocate 63M Metabolic Syn: āĻ§āĻ¨্āĻ¯āĻŦাāĻĻ।


[26/01, 20:10] Aug AI : āĻ িāĻ• āĻ†āĻ›ে! 😊 āĻ¤ুāĻŽি āĻ•ি āĻĻিāĻ¨ে āĻ…āĻ¨্āĻ¤āĻ¤ ā§Ž āĻ—্āĻ˛াāĻ¸ āĻĒাāĻ¨ি āĻĒাāĻ¨ āĻ•āĻ°āĻ›ো? āĻāĻŸা āĻšāĻœāĻŽেāĻ° āĻœāĻ¨্āĻ¯ āĻ–ুāĻŦāĻ‡ āĻ—ুāĻ°ুāĻ¤্āĻŦāĻĒূāĻ°্āĻŖ।



[26/01, 20:10] Patient Advocate 63M Metabolic Syn: Conversation with AI, for your information.

@⁨lb please add this latest also to the patient's case report archive 👇




Here's the translation of the conversation:

Initial Message

"Here's an amazing August AI bolt from the blue in our PaJR group where it spontaneously checked in with the PaJR patient and began a supportive conversation! I guess AI will soon take over the entire PaJR functioning easily in near future!"

AI-Patient Conversation

*Aug AI*: Hi there! Just checking in. Everything going well? How's your health lately?

*Patient Advocate 63M Metabolic Syn*: Everything's fine. I've been in Kolkata since the 10th. As a result, my eating habits and everything else have been irregular! My weight seems to have increased too!! I'm taking the train to Nalgonda on the 29th for a check-up.

*Aug AI*: It's natural to have irregular eating habits while staying in Kolkata! Don't worry about the weight gain. When you go for your check-up in Nalgonda, everything will be fine.

*Aug AI*: Are you experiencing any specific physical issues, like fatigue, digestion problems, or something else? If you have any issues, let me know.

*Patient Advocate 63M Metabolic Syn*: It's not exactly fatigue, but I do feel lethargic! There's nothing to do here except eat and sleep all day! I've stopped my morning walks, and I'm getting out of bed late. I haven't had any digestion issues, but I do experience acidity due to irregular eating habits. My bowel movements aren't regular either.

*Aug AI*: The delicious  food in Kolkata can make you feel lethargic! However, acidity and irregular bowel movements can be bothersome.

*Patient Advocate 63M Metabolic Syn*: Are you drinking enough water? Water helps with digestion and can reduce acidity.

*Patient Advocate 63M Metabolic Syn*: Thank you.

*Aug AI*: Are you drinking at least 8 glasses of water a day? This is crucial for digestion.

*Patient Advocate 63M Metabolic Syn*: Conversation with AI, for your information. @lb please add this latest conversation to the patient's case report archive.


Here is a summary of the text with key words, thematic analysis coding, categorization, and learning points:

AI Summary

The conversation revolves around an AI system (August AI) engaging with a patient (PaJR user) in a supportive conversation, discussing their health, eating habits, and physical issues. The AI provides guidance and recommendations, demonstrating its potential to take over healthcare information management.

Key Words

1. AI (Artificial Intelligence)
2. Healthcare
3. Patient engagement
4. Supportive conversation
5. Health management

Thematic Analysis Coding
1. *AI-Patient Interaction*: The conversation highlights the potential of AI systems to engage with patients in a supportive and informative manner.
2. *Health Management*: The discussion focuses on the patient's health, eating habits, and physical issues, demonstrating the AI's ability to provide guidance and recommendations.
3. *Patient Empowerment*: The conversation encourages the patient to take an active role in managing their health, such as drinking enough water and maintaining regular bowel movements.

Categorization
1. *Healthcare Technology*: The conversation falls under the category of healthcare technology, specifically AI-powered patient engagement and health management.

2. *Patient-Centered Care*: The discussion emphasizes the importance of patient-centered care, where the patient's needs and concerns are prioritized.

Learning Points

1. *AI has the potential to revolutionize healthcare*: The conversation demonstrates the potential of AI systems to engage with patients, provide guidance, and support health management.

2. *Patient engagement is crucial*: The discussion highlights the importance of patient engagement and empowerment in managing their health.

3. *Health management requires a holistic approach*: The conversation emphasizes the need for a holistic approach to health management, incorporating factors such as diet, hydration, and physical activity.

Epilogue conversational Transcripts:

[26/01, 21:00] rb : If AI can make online human users to engage in earnest conversations as illustrated above then combined with a little better evidence based knowledge they will be a major force to reckon with


[26/01, 21:19] AC: No offence, but consider the non sequitur fallacy in your reasoning...

The challenge is the hype attached to so called human intelligence. (It's a determistic reactive process that's it!)

So a system that mimics or achieves human level intelligence or even exceeds a bit is seen in the same light 

Are humans a force majeure? Don't thinks so... Though they definitely are galactic clowns with fingers on nukes that can blow up the planet...

But think of it... It won't even make much of a show from as nearby as Saturn or Neptune (depending on relative distance)



Creative commons license: https://commons.m.wikimedia.org/wiki/File:Kismet-IMG_6007-gradient.jpg#mw-jump-to-license

Tuesday, December 31, 2024

PaJR BP monitoring on the Omron app

 

Conversational Transcripts:

[29/12/2024, 08:21] 65M Hypertension diabetes few years: For last one week, I am not using Telmisartan 20mg morning But, Telmisartan-H 40mg at night is continuing


[29/12/2024, 08:30] PaJR moderator: Share 10 readings today at random intervals covering the entire 24 hours


[29/12/2024, 19:41] 65M Hypertension diabetes : This reading is take just now while eating hot & highly salted magi.
This is FYI


[30/12/2024, 08:30] 65M hypertension diabetes : 

128/82 - 84 at 8:15 am on 30th
118/78 - 69 at 5:50 am on 30th
132/62. - 86 at 4:40 am on 30th
138/83 - 78 at 4:30 am on 30th
144/84. - 79 at 4:10 am on 30th
138/78 - 77 at 9:40 pm on 29th
158/90 - 84 at 7:30 pm on 29th
136/76. - 79 at 5:15 pm on 29th
133/66 - 82 at 3:00 pm on 29th
113/57 - 78 at 2:00 pm on 29th
108/61 - 84 at 1:40 pm on 29th
139/81 - 75 at 10:30 am on 29th
139/82 - 75 at 8:15 am on 29th
142/85 - 75 at 8:07 am on 29th

[30/12/2024, 08:34] 65M hypertension diabetes : 

142/85,  after coffee  1 reading 
144/ 84 immediately after waking up
158/90 immediately after high salt Maggi intake




[30/12/2024, 08:45] PaJR moderator: 

Please share the timing of your BP medication

[30/12/2024, 08:53] 65M hypertension diabetic : Only night at 9:00 pm Telmisartan-H 40mg one tablet

[30/12/2024, 08:45] PaJR moderator: What did you use to plot this?

[30/12/2024, 08:54] 65M hypertension diabetes : Omaron app



UDLCO: Aviation and healthcare, flight simulator driven learning and medical education simulation analogies toward a google map of healthcare

 

Summary

The conversation revolves around the analogy between aviation and healthcare, exploring the complexities of healthcare and the potential for creating a "Google Map" of healthcare. The discussants delve into the challenges of mapping individual patient journeys, the role of technology and data, and the differences between engineering and clinical perspectives.

Some featured quotes from the conversational transcripts below:

The engineer sees systems; the clinician sees stories.

Both approaches are complementary: the system an engineer envisions supports the individualized journeys the clinician focuses on. The challenge is bridging the system's abstraction with  patient-specific adaptability.

An illness as mentioned earlier can be likened to a plane ride and there are possibly multiple interventions involved including medications, operations and physiotherapy (each of these interventions are different vehicles involved in that plane ride including the vehicles one uses to reach the departing and arrival airports).

As mentioned earlier the outcome of that travel ending safely and quickly can be predicted to a certain extent by the comorbidities the patient traveller already brings as a baggage. 

Now in this flight analogy while the plane offers a lot of significant contribution in the journey, not all operative interventions may offer the same support in terms of solving the patient's main problem other than guaranteeing a smooth passage into deeper planes of anesthesia with some statistical guarantee of emerging out from it.

The main problem/s of the patient could fester and persist prolonging the journey (most of the times it's between the airport and home) and eventually time emerges as the greatest healer. Inspite of all the hype when it comes to healing efficacy no single intervention has been able to compete with time in terms of healing (which also means it's the internal medicine intelligence of our 30 trillion celled bodies that eventually decides their own outcome).

Human reticence to understand and overcome these challenges through data driven healthcare stems from their reticence to capture and share data in a transparent and accountable manner

Key Words
1. Aviation and Healthcare Analogy
2. Google Map of Healthcare
3. Individual Patient Journeys
4. Technology and Data in Healthcare
5. Engineering and Clinical Perspectives
6. Medical Informatics
7. Robustness and Reliability

Conversational Transcripts:

[25/11, 12:27] Patient Advocate 29M Quantified Self: Various possibility for this rare event, including possible mannual error (but not only that).


[25/11, 12:34 rb: Need more details of the procedure including OT notes to comment

Health IT relevance:

Lots! Transparent and accountable healthcare still sounds like a dream promise of health IT but the above case scenario is the reason we need more health IT driven transparency and accountability in data driven healthcare


[25/11, 12:48] AC: First... I think the doctor is a thorough professional with very high integrity. Lithotripsy is not a "guaranteed" treatment

Second... From medical devices perspective - the brand of the machine could be at fault too and not so sure about the professionalism of the technician. 

Was the device taken through "dummy" test that day? 

Is the planning and targeting correlation demonstrated for the device. Ultrasound penetration is heavily dependent on tissue type. Improper targeting "can" cause pain during lithotripsy. Does it? Will need to check literature

The treatment planning for patients should be maintained for any such claim. 

Personal opinion: Names are best left out


[25/11, 13:28] RKB AIH: When an engineer makes a faulty bridge or financial error with significant losses he literally pays with his job. It becomes his responsibility primarily, not the bull dozer or the computer on which he did his calculations. And yes, if there are inconsistencies those external factors are also punished.


[25/11, 15:10] AC: When a plane crashes without pilot error?


[25/11, 15:34] RKB AIH: The pilot is first suspended & put on probation until pending investigation of Blackbox contents before expert panel & TSA reps


[25/11, 16:01] Patient Advocate 29M Quantified Self: Technological limitation. 

Clinical science doesn't have checks and balances for high accuracy, neither funding to brute force diagnostics, nor safety profile to brute force treatment plan. So we keep steering decision (approach) for improving it according to data gathered while discourage overdiagnosis and overtreatment.

So the quality standards are also made accordingly in medicine. 

Airlines and bridges are not operated in uncertain / risky environment beyond a small limit. Thanks to Technological advancements.

Ex. - failure rate of lithotripsy (kidney stone breaking procedure) is 10-30%


[25/11, 16:15] AC: But quite often cleared too. 

The reason I mentioned the pilot example is from the perspective of safety critical systems. 

Medical systems are some of the most common case studies in  safety critical systems engineering


[25/11, 16:35] rb: Yes and the other point is that medicine has been hyped so much over the last few decades by unscrupulous vendors wanting to profit that the public feels it's as good as a plane ride most of the time while the truth is it's much more complex than that!

Perhaps one could have an interesting model interface based on a commercial flight analogy where one may enter the predictive variables of any patient (aka plane traveller) entering the hospital and based on his her comorbidities try to predict the likelihood of his her reaching destination health safely and very importantly the probable time taken to reach there! @⁨AC⁩ @⁨RKB AIH⁩


[25/11, 16:40] RKB AIH: I respectfully disagree…every faculty has risks & guardrails. Aviation risk factors along with flight parameter risks coupled with environmental factors are one of the most dynamic risk factors in the world.

[25/11, 16:43] Patient Advocate 29M Quantified Self: Medical science is lagging far behind in terms of technological advancement and it's access.

[25/11, 16:45] rb: Let's consider this analogy:

In an aeroplane you have a normal person without any illness boarding the plane and getting down at the destination

In an OT you have a person with pre existing illnesses getting operated.

Now his chances of surviving the operation will depend on his pre existing illnesses vs no pre existing illnesses.

Next would come the efficacy of the intervention in solving the problem (here the plane analogy may not hold good unless dragged into a further train or car journey till they reach home)

[25/11, 16:49] Patient Advocate 29M Quantified Self: *Lagging far behind in terms of promising high certainity for individual case.

Surely huge advances for humanity.

[25/11, 16:50] RKB AIH: In case of a flight there are thunderstorms, mechanical failures/bugs (remember boeing 737 rudder issues on fly by wire) etc etc, shortage & overworked personnel, wars & diversions to unknown terrains…yet the casualties r minuscule


[25/11, 17:00] Patient Advocate 29M Quantified Self: Atul gawande pioneered checklist use 20+ years ago, still same example is repeated in these papers..they are useful. Even 1% error correction is good and it did more..but still very very tiny thing if we consider over all clinical practice.

[25/11, 17:02] Patient Advocate 29M Quantified Self: There are many more strategies Implemented and practiced and then the current quality standards are met which is still too low compared to airlines accuracy.

[25/11, 17:02] RKB AIH: So nothing changed to correct course in 20 years ? Maybe its the reticence that need to be addressed first

[25/11, 18:21] AC: Aviation is not "safe" in that sense. 

Because everything is controlled factors like random pockets of turbulence are avoided. Passenger have died owing to turbulence in the past few weeks

25/11, 18:50] rb: This would be analogous to  anesthesia related deaths and are fortunately rare

[25/11, 18:23] AC: This video will most likely change the perception people have of flight safety. 

Wear your seatbelts when the pilot asks you to


[25/11, 18:46] rb: Let's try this analogy again:

Healthcare is a journey and has a certain course and every illness as well as patient journey is different because of the greater amount of known and unknown variables

An illness as mentioned earlier can be likened to a plane ride and there are possibly multiple interventions involved including medications, operations and physiotherapy (each of these interventions are different vehicles involved in that plane ride including the vehicles one uses to reach the departing and arrival airports).

As mentioned earlier the outcome of that travel ending safely and quickly can be predicted to a certain extent by the comorbidities the patient traveller already brings as a baggage. 

Now in this flight analogy while the plane offers a lot of significant contribution in the journey, not all operative interventions may offer the same support in terms of solving the patient's main problem other than guaranteeing a smooth passage into deeper planes of anesthesia with some statistical guarantee of emerging out from it.

The main problem/s of the patient could fester and persist prolonging the journey (most of the times it's between the airport and home) and eventually time emerges as the greatest healer. Inspite of all the hype when it comes to healing efficacy no single intervention has been able to compete with time in terms of healing (which also means it's the internal medicine intelligence of our 30 trillion celled bodies that eventually decides their own outcome).

Human reticence to understand and overcome these challenges through data driven healthcare stems from their reticence to capture and share data in a transparent and accountable manner



[25/11, 19:18] AC: Nice points. One major difference - airlines usually begin the process with healthy people and healthy machines. 

In healthcare, again usually - maybe hopefully, the machines are healthy, but invariably 50% of the equation are not. They are called patients!

25/11, 19:28] rb: Yes also mentioned in the pubmed article linked above

[25/11, 19:20] AC: Think of a pilot flying with even one seriously ill patient. 

Or, flying a sick plane.


[25/11, 19:35] S Ed: You know the structure and mechanics of the plane because humans designed it. With humans, the "normal" is also not fixed. Your heart may not be in the place you expect and you may be fine.

[25/11, 19:43] RKB AIH: What stops us from perfecting the understanding ? This is why  rb’s last paragraph is  very important

[25/11, 19:45] RKB AIH: We do have sick planes !! Pilots deftly maneuver around those drawbacks…u will dread flying and I will guarantee u will have heart attack 😀

[25/11, 19:48] RKB AIH: Believe me I pray to thousand gods before setting foot on a plane…ignorance is truly bliss in this regard

[25/11, 19:48] AC: So we need people designed by humans.

[25/11, 19:50] RKB AIH: Yay ! Digital twin makes a comeback 😃

[25/11, 20:02] rb: Problem is treating digital twins will not cure their physical brethren!

[25/11, 20:03] rb: Robots yes but most of them will likely have their own healing systems embedded in their design very much similar to how evolution created our trillion celled collaboration over ages

[25/11, 20:04] AC: I meant designer babies... 

Built to spec

[25/11, 20:04 rb: Hmm you meant biological!

[25/11, 20:06] AC: Yes. Synthetic diseased beings get recycled without a thought. 

Biological ones get recycled too... But the emotional loading is high. 

.... 

From a disease loading perspective, make designer babies with all attributes one likes.


[27/11, 10:08] JG: Phone safety versus road sign safety. https://www.instagram.com/p/DC2-Nmes21m/


[27/11, 10:18] rb: "3 men were killed after their car drove off an incomplete bridge and plunged onto a riverbed while they were navigating with Google Maps in Uttar Pradesh, India.

A local police officer reportedly said the front portion of the bridge collapsed into the river during floods earlier in 2024, but this change was not reflected on the navigation app.

He added that there were no safety barriers or warning signs on the bridge.

A Google spokesperson said: “Our deepest sympathies go out to the families. We’re working closely with the authorities and providing our support to investigate the issue.”


[27/11, 10:21] RKB AIH: So is Google liable for their deaths ?


[27/11, 10:22] rb: Very interesting question!


[27/11, 10:23] JG: No, read terms of service disclaimer. Liability is with local authorities for lack of road safety signs.

[27/11, 10:23 rb: Let's reframe the question and answer in the light of aviation and healthcare analogies and let's try to spot the transportation and healthcare analogy here


[27/11, 10:27] rb: We too practice this kind of healthcare in what we have started calling "global learning toward hyperlocal caring" and we often with all our texts to the patient ask them to get our suggestions verified with their local doctors in the same style as Google! But can they? Obviously not and that's the reason they are reaching out to us distantly with their hyperlocal needs! 


So this is a current problem in E healthcare that we have to contend with?

[27/11, 10:28] rb: It's a collaborative endeavour and everyone including the drivers (tech end user) is liable?


[27/11, 10:29] JG : The user has to first accept terms of service then only can use it. So Google most probably won’t be held liable. They can challenge it in courts.

[27/11, 10:31] rb: Yes and accepting it is as simple as clicking on "i agree" at the time of downloading it from Google playstore? What if the app was pre-downloaded by the mobile phone vendor?


[27/11, 10:31] RKB AIH: Exactly!! Google can’t look for you & you can’t put signs everywhere. It’s a collective responsibility, yet when an incident happens Nobody is automatically absolved, hence Google had to reach out and intervene despite its job being accomplished


[27/11, 10:34] RKB AIH: I dont know how it works in medical field..can someone extend this to a medical world…what happens when it goes south with a patient?

[27/11, 10:34] JG: If ordinary folk get large compensation from negligence of administrators, we would have a different scenario. Holding tech companies liable is an easy way out.

[27/11, 10:35] JG: Same for using AI in medical field. No liability

[27/11, 10:35] rb: We don't have a Google map of healthcare!

[27/11, 10:37] RKB AIH: Isn’t that what medical education is supposed to do ? Ur doctors are ur gps to maneuver ur health in right path ?

[27/11, 10:39] rb: Yes but our map is not as great as the current google map!

Healthcare is still largely 99.999% uncharted territory! Although the percentage perspective will vary with your years in healthcare. For the first year medical student its 99.99% charted territory


[27/11, 10:43] RKB AIH: That’s what boggles mind. Pardon my medical ignorance. If one company could map every single road in the world in a span of 2 decades, why can’t a conglomerate of medical professionals across the entire globe map a human body correctly with it’s characteristics


[27/11, 10:44] rb: The human body is analogous to the universe and the mapped surface of thd Earth is just one of it's trillion cells!


[27/11, 10:48] RKB AIH: Agreed. But most treatments are at bone/muscle/nerve level wouldn’t that make it easier to  atleast partially cover major ailments?


[27/11, 10:50] rb: Yes that's covered but currently that is way inadequate to match up to the travellers requirements and expectations


[27/11, 10:54] rb: I think i shall offer that as a hook to the audience tomorrow to break the ice! Can we engineers and doctors think of building a google map of healthcare together to help navigate billions of healthcare journeys!

That will be our ask!



[27/11, 11:23] AC: It needs to be formed like a crypto


[27/11, 11:27] AC: Because google maps is crowd sourced

It has been done on humans

1. HeLa
2. The subjects of visible human project
3. Human genome project
4. Human Brain project (on going) 

Just like physicians are the only "doctors" folks encounter, gmaps is the only mapping folks encounter. 

For instance, not many here would be aware of open cell id project

[27/11, 11:53] AC: This was sunset last year


[27/11, 11:55] rb: Yes but here the analogy is to gmaps and individual journey navigation.

The projects you have listed may not compare?

We need to compare it with individual patient journeys!

Let's say for example an 80 year old man has a fall and other than a black eye also notices left upper limb weakness and visits a neurosurgeon who advices an operative intervention to decompress what appears to be a spinal cord compression on MRI in the hope that this will give him better mobility and then the journey begins with the current google map of healthcare!


[27/11, 11:59] AC: Think again! 

The map is one, how it's used presented is unique

The same happens with genomic medicine

Should begin to happen with neuro

..... 

The challenge lies in not being able to crowd source the map of each individual. 

Even gmaps fails outside cities. 

.... 

The only crowd sourcing individuals can  do is my the crowd of themselves... Their longitudinal EHR

.... 

Don't disagree with your view on personal patient journeys, but maybe the analysis you applied needs a refactoring


[27/11, 12:02] RKB AIH: Map is only the guideline, how you use it for individual patient care should be ascertained

I draw analogy as map is like foundational model & you transfer learn for downstream tasks


[27/11, 12:02] AC: While you type let me try chatPakoda... Whether it gets the nuances


[27/11, 12:03] RKB AIH: Like Dr. Hinton eluded trying g to make sense of entire brain in one shot may be too much…localized understanding may be the key


[27/11, 12:06] AC: Your and Dr. rb's approaches differ in focus and perspective, stemming from your professional backgrounds:

1. Approach to the Problem

Engineer, Reductionist perspective:

Focuses on the system-level architecture and foundational principles (e.g., maps as a unified dataset, EHR as the data backbone).

Reductionist in that you break the problem into components (data, crowdsourcing, maps) and analyze scalability, reliability, and use cases.

Emphasizes individual data aggregation (longitudinal EHR) as the key to personalizing the map.

You view the map as a system shared by all, where the uniqueness arises in interpretation and application.


Clinician, Patient-Centric perspective:

Views healthcare from the lens of individual patient journeys.

Focuses on the experiential aspects of the journey, such as decisions, interventions, and their outcomes.

Analogizes the map to the navigation of individual clinical situations, where personalized deviations from the norm are key.

Highlights real-time problem-solving, especially in complex, patient-specific contexts.



2. Underlying Differences in Professional Backgrounds

Engineer:

Deals with complex systems, requiring abstraction, scalability, and process optimization.

Prioritizes systems integration, repeatability, and leveraging data infrastructure for consistency and personalization.

Often reductionist to analyze individual components of a system, but capable of understanding emergent behaviors in complex systems.


Clinician:

Focuses on human-centric, real-time decision-making, rooted in individual variability and holistic outcomes.

Experience-driven, often anecdotal, yet attuned to system-wide limitations impacting patient care.

Less focused on systems engineering but deeply invested in navigating complex biological systems.



3. How This Shapes the Analysis

Engineer:

Emphasize creating a reliable, universal framework (the map) where personal journeys derive from individual data integration.

Advocate for longitudinal health data to serve as the patient's own "crowdsource" resource.

View variability as a result of system limitations in data aggregation or infrastructure, solvable via better tools (EHRs, genomic databases).


Clinician:

Focuses on the individual's immediate experience, prioritizing the journey itself over the infrastructure.

Sees variability as intrinsic to patient care, emphasizing adaptive decision-making over universal frameworks.



Conclusion

Your differences likely stem from your distinct professional paradigms:

The engineer sees systems; the clinician sees stories.

Both approaches are complementary: the system you envision supports the individualized journeys he focuses on. The challenge is bridging your system's abstraction with his patient-specific adaptability.

[27/11, 12:07] AC: I would say this is an "artistic" reply from the AI


[27/11, 12:07] SA: Very very nicely put


[27/11, 12:10] RKB AIH: Well summarized. I agree, this is why medical AI help as they r complementary

[27/11, 12:14] AC: I liked the part where it says "engineers see systems, doctors see stories"

[27/11, 12:21] rb : There is a story inside every system!

[27/11, 12:22] rb: Can no longer call it chat pakoda! It's proving to be anandamide!


[27/11, 14:16] JG: All the best. If you can map all the trillions of neural pathways in the brain of a single individual, that alone will be similar to mapping the universe.


[27/11, 15:55] AC: I guess I know why... We can't even lend a simple pen to someone without worrying that it's not coming back to us! 

What a population! Our lack of integrity is the biggest proof that modern humans originated here. 

Originated here and conned all the other hominid species out of existence.


[27/11, 23:32] SN: The road department got away with the death of the  Tata executive where 3 lanes suddenly became two with a walk in front. Regular people are immaterial for our killer roads.


[27/11, 23:35] SN: They could have had the same accident even without Google.   Fault lies with whoever is responsible for maintaining the road. They should put barriers and signs to close the road.


[28/11, 00:41] AC: The robots are not the challenge, the network latency is.

One off demo can be done, but deployment at scale is not feasible


[28/11, 00:43] AC: Ref CNS for the planet

It should now be obvious why a global round trip for packets needs to happen faster than our NCV to the digits


[28/11, 01:57] RNG HIT: And that is under major threat from uncontrolled growth of AI 🤔. End of Kalyug?


[28/11, 06:20] AC: Rather beginning of its patal phase...

Patal is true singularity... Before that there will be the various other layers.


[28/11, 06:24] AC: Anyway, pataal, rakshasas etc are not what mass media of the oceanic type (read in English) have made it out to be.

I tried to use AI to generate images of Pataal which is an utopian abode with Rakshasas who are the most attractive beings. Will share if I find it.


[28/11, 06:35] AC: Found this. Most of the description I remember were captured by AI.

1. No sunlight, lots of "mani"
2. Even nights are glittering bright 
3. Lots of magnificent contraptions
4. People who live there use artificial means to look very attractive 
5. Diseases are almost non existent 
6. Abode of other life forms like Nagas who are super intelligent 
7. Buildings touch the sky


[28/11, 06:38] AC: Anyway, this deserves a little explanation of how it's digital health related.

Patal lok has a model of UHC. Universal Health Coverage 

Those were the thought experiments of our Rishis on how health for all could be achieved 

Patanjali was claimed to be a Naga.


[28/11, 06:42] AC: This article touches upon how the purported Pataal entry remained covid free.

(Though I disagree with it literal interpretation)



[28/11, 07:06] rb: Sounds like internal medicine as in getting into our internal universe of trillion cells and their interstitial SPACE!


[28/11, 07:17] AC: Ayurveda and Yoga Sutra do link these to the body


[28/11, 07:18] AC: Matches our maps of healthcare and geo maps discussion yesterday 

The anecdotal stories have survived... Which is good

However, most of the anecdotal interpretation have been lost

[28/11, 07:21] rb: Yes so in this collaborative Google map of healthcare that we hope to collaborate on here, there's an external road map of external patient life events and there's a parallel road map for internal medicine life events that happen inside the patient's body and these maps are connected but we still need to make the connection explicit


[28/11, 07:22] rb: Essentially external and internal data points surrounding an individual's car journey through birth and death

[28/11, 08:59] AC: Medical informatics needs robustness like financial informatics

The amount of modelling that exists for Fintech is exponentially higher than medtech (for the clinical encounter, not high end devices)


Here's a summary, key words, and thematic analysis of the conversational transcripts:

Summary
The conversation revolves around the analogy between aviation and healthcare, exploring the complexities of healthcare and the potential for creating a "Google Map" of healthcare. The discussants delve into the challenges of mapping individual patient journeys, the role of technology and data, and the differences between engineering and clinical perspectives.

Key Words
1. Aviation and Healthcare Analogy
2. Google Map of Healthcare
3. Individual Patient Journeys
4. Technology and Data in Healthcare
5. Engineering and Clinical Perspectives
6. Medical Informatics
7. Robustness and Reliability

Thematic Analysis
_Codes_
1. Aviation and Healthcare Analogy
2. Complexity of Healthcare
3. Technology and Data
4. Individual Patient Journeys
5. Engineering and Clinical Perspectives
6. Medical Informatics
7. Robustness and Reliability

_Themes_
1. _Aviation and Healthcare Analogy_: The conversation starts with the analogy between aviation and healthcare, highlighting the complexities of healthcare and the potential for creating a "Google Map" of healthcare.
2. _Complexity of Healthcare_: The discussants emphasize the complexity of healthcare, with multiple variables and uncertainties, making it challenging to create a comprehensive map.
3. _Technology and Data_: The conversation explores the role of technology and data in healthcare, including the potential for AI, machine learning, and data analytics to improve patient outcomes.
4. _Individual Patient Journeys_: The discussants highlight the importance of individual patient journeys, emphasizing the need for personalized care and the challenges of mapping these journeys.
5. _Engineering and Clinical Perspectives_: The conversation reveals the differences between engineering and clinical perspectives, with engineers focusing on systems and clinicians focusing on individual patient stories.
6. _Medical Informatics_: The discussants touch on the importance of medical informatics, highlighting the need for robust and reliable systems to support clinical decision-making.
7. _Robustness and Reliability_: The conversation emphasizes the importance of robustness and reliability in healthcare systems, drawing parallels with financial informatics.

Learning Insights
1. _Interdisciplinary Collaboration_: The conversation highlights the need for interdisciplinary collaboration between engineers, clinicians, and other stakeholders to create a comprehensive map of healthcare.
2. _Personalized Care_: The discussants emphasize the importance of personalized care, highlighting the need for individual patient journeys to be mapped and understood.
3. _Technology and Data_: The conversation reveals the potential for technology and data to improve patient outcomes, but also highlights the challenges of implementing these solutions in complex healthcare systems.
4. _Medical Informatics_: The discussants highlight the importance of medical informatics, emphasizing the need for robust and reliable systems to support clinical decision-making.
5. _Complexity of Healthcare_: The conversation emphasizes the complexity of healthcare, highlighting the need for nuanced and multifaceted solutions to improve patient outcomes.





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