Bluesky Facebook Reddit Email

AI in medical research: promise and challenges

12.19.23 | PNAS Nexus

Apple iPhone 17 Pro

Apple iPhone 17 Pro delivers top performance and advanced cameras for field documentation, data collection, and secure research communications.


In an editorial, Monica M. Bertagnolli assesses the promise of artificial intelligence and machine learning (AI/ML) to study and improve health. The editorial was written by Dr. Bertagnolli in her capacity as director of the National Cancer Institute. AI/ML offer powerful new tools to analyze highly complex datasets, and researchers across biomedicine are taking advantage. However, Dr. Bertagnolli argues that human judgment is still required. Humans must select and develop the right computational models and ensure that the data used to train machine learning models are relevant, complete, high quality, and sufficiently copious. Many machine learning insights emerge from a “black box” without transparency into the logic underlying the predictions, which can impede acceptance for AI/ML-informed methods in clinical practice. “Explainable AI” can crack open the box to allow researchers more access to the causal links the methods are capturing. AI/ML-informed methods must also meet patient needs in the real world, and so interdisciplinary collaborations should include those engaged in clinical care. Researchers must also watch for bias; unrecognized confounders such as race and socioeconomic status can produce results that discriminate against some patient groups. AI/ML is an exciting new tool that also demands increased responsibility. Ultimately, AI is only as smart and as responsible as the humans who wield it.

In the same issue, Victor J. Dzau, President of the National Academy of Medicine shares his perspective on the same topic.

PNAS Nexus

Advancing health through artificial intelligence/machine learning: The critical importance of multidisciplinary collaboration

19-Dec-2023

Keywords

Article Information

Contact Information

James Alexander
National Cancer Institute, Bethesda, MD
alexandj@mail.nih.gov

Source

How to Cite This Article

APA:
PNAS Nexus. (2023, December 19). AI in medical research: promise and challenges. Brightsurf News. https://www.brightsurf.com/news/19NWD0Q1/ai-in-medical-research-promise-and-challenges.html
MLA:
"AI in medical research: promise and challenges." Brightsurf News, Dec. 19 2023, https://www.brightsurf.com/news/19NWD0Q1/ai-in-medical-research-promise-and-challenges.html.