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Main Authors: Khan, Rina, Sauve, Annabelle, Bayoumi, Imaan, Simpson, Amber L., Stinson, Catherine
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.06144
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author Khan, Rina
Sauve, Annabelle
Bayoumi, Imaan
Simpson, Amber L.
Stinson, Catherine
author_facet Khan, Rina
Sauve, Annabelle
Bayoumi, Imaan
Simpson, Amber L.
Stinson, Catherine
contents Artificial intelligence (AI) in healthcare has led to many promising developments; however, increasingly, AI research is funded by the private sector leading to potential trade-offs between benefits to patients and benefits to industry. Health AI practitioners should prioritize successful adaptation into clinical practice in order to provide meaningful benefits to patients, but translation usually requires collaboration with industry. We discuss three features of AI studies that hamper the integration of AI into clinical practice from the perspective of researchers and clinicians. These include lack of clinically relevant metrics, lack of clinical trials and longitudinal studies to validate results, and lack of patient and physician involvement in the development process. For partnerships between industry and health research to be sustainable, a balance must be established between patient and industry benefit. We propose three approaches for addressing this gap: improved transparency and explainability of AI models, fostering relationships with industry partners that have a reputation for centering patient benefit in their practices, and prioritization of overall healthcare benefits. With these priorities, we can sooner realize meaningful AI technologies used by clinicians where mutua
format Preprint
id arxiv_https___arxiv_org_abs_2601_06144
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The Patient/Industry Trade-off in Medical Artificial Intelligence
Khan, Rina
Sauve, Annabelle
Bayoumi, Imaan
Simpson, Amber L.
Stinson, Catherine
Computers and Society
Artificial Intelligence
Artificial intelligence (AI) in healthcare has led to many promising developments; however, increasingly, AI research is funded by the private sector leading to potential trade-offs between benefits to patients and benefits to industry. Health AI practitioners should prioritize successful adaptation into clinical practice in order to provide meaningful benefits to patients, but translation usually requires collaboration with industry. We discuss three features of AI studies that hamper the integration of AI into clinical practice from the perspective of researchers and clinicians. These include lack of clinically relevant metrics, lack of clinical trials and longitudinal studies to validate results, and lack of patient and physician involvement in the development process. For partnerships between industry and health research to be sustainable, a balance must be established between patient and industry benefit. We propose three approaches for addressing this gap: improved transparency and explainability of AI models, fostering relationships with industry partners that have a reputation for centering patient benefit in their practices, and prioritization of overall healthcare benefits. With these priorities, we can sooner realize meaningful AI technologies used by clinicians where mutua
title The Patient/Industry Trade-off in Medical Artificial Intelligence
topic Computers and Society
Artificial Intelligence
url https://arxiv.org/abs/2601.06144