In 2018, Elaine Herzberg became the first recorded case of a pedestrian killed by a self-driving autonomous car while pushing her bicycle across a road in Tempe USA. But who was responsible for the accident? Herzberg herself? The ‘safety driver’? The car? Uber? The safety managers at Uber? Engineers at Uber? Arizona government officials who allowed Uber to test their cars in Tempe? All of them? None of them?1 In 2023 the safety driver who was allocated to the car pleaded guilty to a reduced charge of endangerment and was sentenced three years of supervised probation.
AI applications are becoming increasingly widespread in healthcare. As an administrative tool, AI scribe technology is supporting clinicians to keep accurate patient records in real time, and AI-driven x-ray and screening tools are supporting early diagnoses. The technology has the potential to be transformative to patient outcomes and almost every day in the news around the world we are hearing how AI is detecting diseases like cancer earlier from scans, predicting patient deterioration in hospitals, accelerating the discovery of new drugs, and enabling more personalised treatment plans for patients. However, as with any technology, it is not infallible.
Who is liable in AI-related healthcare malpractice claims is still murky territory. Is it the AI software developer for defective design, or false representation of accuracy or inadequate warnings could face a product liability claim? The clinician or hospital could be found liable for incorrect implementation, training or oversight of AI systems? Third-party vendors which have products integrated with the original AI system? Furthermore, courts are also not clear on how to view AI - as a medical device, a service or simply as a clinical tool?
It is interesting to look at how some AI-related legal cases and studies in the healthcare arena have played out in other jurisdictions, for example:
When assessing the potential legal risks of AI and how they may impact a clinician using AI, there are many important factors to consider. A key consideration, ‘The black box’ problem, results where deep learning models are unexplainable as they are either hidden or incomprehensible to humans (making them unverifiable and open to significant bias).
Additionally, the developmental data set used to programme the AI tool may not include all relevant patient populations or characteristics, creating an inherent and perpetuating bias specifically towards minority, under-resourced or disadvantaged groups. Both themes leave the clinician exposed to significant risk. Furthermore, HCPs should be aware of aforementioned issues like errors and hallucinations, and the uncertainty around liability. Alongside this, they must be wary of their under or over-reliance on the technology and how use of AI may erode their skills over time.
AI represents an incredible opportunity to advance medical care and make significant leaps in improving patient care. At Medical Protection, we want to help ensure practitioners and their patients reap the potential benefits of AI and we provide advice and support which helps practitioners mitigate any emergent medicolegal risks.
We have developed the AI Safer Practice Framework to help practitioners to safely and responsibly integrate AI into their practice. The Framework is divided into two parts - INFORMED and RECORDS - and is structured around these acronyms to ensure it is practical and memorable.
Medical Protection members can also access the ‘Managing the risks of AI in medicine’ course on The Learning Hub, as a benefit of membership. The course introduces the AI Safer Practice Framework to help healthcare practitioners integrate AI into practice safely, ethically, and effectively. The interactive course can be accessed any time: https://prism.medicalprotection.org/course/view.php?id=1834