Time to reality check the promises of machine learning-powered precision medicine

Jack Wilkinson(Manchester Academic Health Science Centre), Kellyn F Arnold(University of Leeds), Eleanor J. Murray(Boston University), Maarten van Smeden(Leiden University Medical Center), Kareem Carr(Harvard University), Rachel Sippy(SUNY Upstate Medical University), Marc de Kamps(University of Leeds), Andrew L. Beam(Boston University), Stefan Konigorski(Hasso Plattner Institute), Christoph Lippert(Hasso Plattner Institute), Mark S. Gilthorpe(University of Leeds), Peter W. G. Tennant(University of Leeds)
The Lancet Digital Health
September 16, 2020
Cited by 238Open Access
Full Text

Abstract

Machine learning methods, combined with large electronic health databases, could enable a personalised approach to medicine through improved diagnosis and prediction of individual responses to therapies. If successful, this strategy would represent a revolution in clinical research and practice. However, although the vision of individually tailored medicine is alluring, there is a need to distinguish genuine potential from hype. We argue that the goal of personalised medical care faces serious challenges, many of which cannot be addressed through algorithmic complexity, and call for collaboration between traditional methodologists and experts in medical machine learning to avoid extensive research waste.


Related Papers

No related papers found

Powered by citation graph analysis