Better diagnoses. Personalised support for patients. Faster drug discovery. Greater efficiency. Artificial intelligence (AI) is generating excitement and hyperbole everywhere, but in the field of healthcare, it has the potential to be transformational.
In Europe, analysts predict that deploying AI could save hundreds of thousands of lives each year; in America, they say, it could also save money, shaving $200bn-360bn from overall annual medical spending, now $4.5trn a year (or 17% of GDP).
From smart stethoscopes and robot surgeons to the analysis of large data sets or the ability to chat with a medical AI with a human face, opportunities abound.
There is already evidence that AI systems can enhance diagnostic accuracy and disease tracking, improve the prediction of patients’ outcomes and suggest better treatments. It can also boost efficiency in hospitals and surgeries by taking on tasks such as medical transcription and monitoring patients, as well as streamlining administration.
It may already be speeding up the time it takes for new drugs to reach clinical trials. New tools, including generative AI, could supercharge these abilities.
Yet, as our Technology Quarterly this week shows, although AI has been used in health care for many years, integration has been slow, and the results have often been mediocre.
Uncovering lessons
There are good and bad reasons for this. The good reason is that health care demands high evidentiary barriers when introducing new tools to protect patients’ safety. The bad reasons involve data, regulation, and incentives. Overcoming them could hold lessons for AI in other fields.
AI systems learn by processing huge volumes of data, something healthcare providers have in abundance. However, health data is highly fragmented, and strict rules control its use. Governments recognise that patients want their medical privacy protected.
However, patients also want better and more personalised care. Each year, roughly 800,000 Americans suffer from poor medical decision-making.
Improving accuracy and reducing bias in AI tools requires them to be trained on large data sets that reflect patients’ full diversity. Finding secure ways to allow health data to move more freely would help.
But it could benefit patients, too: they should be given the right to access their own records in a portable, digital format. Consumer-health firms are already making use of data from wearables, with varying success. Portable patients’ records would let people make fuller use of their data and take more responsibility for their health.
Challenges
Another problem is managing and regulating these innovations. In many countries, the governance of AI in health, as in other areas, is struggling to keep up with the rapid pace of innovation.
Regulatory authorities may be slow to approve new AI tools or may lack capacity and expertise. Governments need to equip regulators to assess new AI tools.
They also need to fill regulatory gaps in the surveillance of adverse events and in the continuous monitoring of algorithms to ensure they remain accurate, safe, effective and transparent.