Besides; this article was about diagnosis not prescribing. It's pretty obvious, I think, that diagnosis is one area where AI will perform extremely well in the long run.
I think there are two metrics; the first is outright misdiagnosis, which studies put between 5 and 8% in US/Europe. That's a meaningful number to tackle.
Secondly; overdiagnosis. Where a Dr says on balance it could be X on a difficult to diagnose but dangerous problem (usually cancer). The impact of overdiagnosis is significant in terms of resources, mental health, cost etc.
Large populations also in the technically rich countries simply do not have access to a doctor.
in Poland which has a free public Healthcare it takes literal years to get a single appointment sometimes.
We just minted the term "cognitive debt" for software engineers that cannot keep up with what the AI spits out. How would that apply to ER doctors, or any other kind of doctor?
At one place, we had a QA lead who was burned so many times she would insist that she will find the time to do at least a full smoke test even if we promised it was a small contained change in the frontend. I have no idea how she found the time because she wore multiple hats.
It is capable of sifting through enormous reams of data without ever zoning out etc. Once patients routinely use various wearables etc., they, too, will produce heaps of data to be analyzed, and AI will be the thing to go to when it comes to anomaly detection.