Radiology group unveils draft of AI guidelines for healthcare

While the use of AI in healthcare has many physicians and healthcare organizations excited about its potential, others have expressed doubt and called for the adoption of ethical standards before the technology is widely implemented.

The Royal Australia and New Zealand College of Radiologists (RANZCR) is answering that call after it recently unveiled a draft of ethical guidelines for the emerging use of machine learning and AI in medicine. In the drafted guidelines, the organization outlined eight ethical principles of safety for the research and deployment of AI tools and machine learning systems in medicine, with an emphasis on clinical radiology and radiation oncology.

The eight ethical principles are:

  1. Safety—Patient safety should first be considered in the development, deployment and utilization of machine learning systems or AI tools.
  2. Avoidance of bias—To avoid bias, systems should be trained on large amounts and a variety of data that’s representative of target patient populations.
  3. Transparency and explainability—Developers of AI systems should consider designs that allow physicians to understand and explain how a decision was made.
  4. Privacy and protection of data—Data used in AI research must be de-identified so a patient’s identity can’t be reconstructed.
  5. Decision making on diagnosis and treatment—Systems should be used to enhance the decision-making process for diagnosis and treatments, and should still allow the doctor to have the final recommendation.
  6. Liability for the decisions made—Healthcare organizations should provide information about the potential for shared liability when researching or implementing AI tools.
  7. Application for human values—Physicians should apply humanitarian values to any circumstances AI tools are used.
  8. Governance—Hospitals and healthcare organizations using AI technology should have accountable governance committees to oversee its use and compliance with ethical standards.

"There are millions of scans—such as ultrasound and MRI—performed in Australia each year, underlining the critical role imaging plays in healthcare. How radiology adapts to AI will have flow-on effects for patients and other healthcare professionals, which is why it was important for RANZCR to develop these principles,” RANZCR President Lance Lawler, MBChB, said in a prepared statement.

“The agreed principles will, when established, complement existing medicinal ethical frameworks, but will also provide doctors and healthcare organisations with guidelines regarding the research and deployment of ML systems and AI tools in medicine.”

The organization is accepting commentary and feedback on the drafted guidelines through April 26, 2019.

""

Danielle covers Clinical Innovation & Technology as a senior news writer for TriMed Media. Previously, she worked as a news reporter in northeast Missouri and earned a journalism degree from the University of Illinois at Urbana-Champaign. She's also a huge fan of the Chicago Cubs, Bears and Bulls. 

Around the web

Compensation for heart specialists continues to climb. What does this say about cardiology as a whole? Could private equity's rising influence bring about change? We spoke to MedAxiom CEO Jerry Blackwell, MD, MBA, a veteran cardiologist himself, to learn more.

The American College of Cardiology has shared its perspective on new CMS payment policies, highlighting revenue concerns while providing key details for cardiologists and other cardiology professionals. 

As debate simmers over how best to regulate AI, experts continue to offer guidance on where to start, how to proceed and what to emphasize. A new resource models its recommendations on what its authors call the “SETO Loop.”