The myth of generalisability in clinical research and machine learning in health care
Autor
Futoma, Joseph
Simons, Morgan
Panch, Trishan
Doshi-Velez, Finale
Celi, Leo Anthony
Institución
Resumen
Dr Lee, an esteemed intensivist from the USA, is
rounding in an intensive care unit (ICU). He is asked by
a team member who is taking care of patients with
COVID-19 if they can triage their patients to optimise use
of scarce resources, such as ventilators, with their
hospital’s new machine learning model to predict
mortality.1
He is about to say yes, but stops himself. Do
the findings of the preprints and fast-tracked published
articles that this model is based on apply to his patient
population?2
Problems with the increase in hastily
written articles notwithstanding, are the conclusions of
research based on patients with COVID-19 in China and
Italy from several months ago still valid in his ICU today,
given the differences in practice patterns and rapidly
changing guidelines and protocols?