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AI in medical industry


 I analyzed 20 popular AI use cases in healthcare from early-stage “on the horizon” innovations to “safe bets” that are already backed by strong evidence. 


I visualized them on two scales: little evidence to evidence-based and low risk to high risk.


This yielded four groups:


1) Speculative and risky (little evidence, high risk)

2) On the horizon (little evidence, low risk)

3) Handle with care (evidence-based, high risk)

4) Safe bet (evidence-based, low risk)


I hope this infographic helps clarify the path ahead: which solutions demand more research and caution (autonomous AI prescribing, mental health chatbots), and which are ready for prime time (AI-powered clinical documentation, radiology analysis, ECG interpretation).


I'm curious to hear what you see significantly differently!



#medical future AI 

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