The accuracy of clinicians' predictions of survival in advanced cancer: a review.

Stephanie Cheon(Health Sciences Centre), Arnav Agarwal(Health Sciences Centre), Marko M. Popovic(Health Sciences Centre), Milica Milakovic(Sunnybrook Health Science Centre), Michael Lam(Sunnybrook Health Science Centre), Wayne Fu(Health Sciences Centre), Julia DiGiovanni(Health Sciences Centre), Henry Lam(Sunnybrook Health Science Centre), Breanne Lechner(Health Sciences Centre), Natalie Pulenzas(Sunnybrook Health Science Centre), Ronald Chow(Health Sciences Centre), Edward Chow(Sunnybrook Health Science Centre)
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Abstract

The process of formulating an accurate survival prediction is often difficult but important, as it influences the decisions of clinicians, patients, and their families. The current article aims to review the accuracy of clinicians' predictions of survival (CPS) in advanced cancer patients. A literature search of Cochrane CENTRAL, EMBASE, and MEDLINE was conducted to identify studies that reported clinicians' prediction of survival in advanced cancer patients. Studies were included if the subjects consisted of advanced cancer patients and the data reported on the ability of clinicians to predict survival, with both estimated and observed survival data present. Studies reporting on the ability of biological and molecular markers to predict survival were excluded. Fifteen studies that met the inclusion and exclusion criteria were identified. Clinicians in five studies underestimated patients' survival (estimated to observed survival ratio between 0.5 and 0.92). In contrast, 12 studies reported clinicians' overestimation of survival (ratio between 1.06 and 6). CPS in advanced cancer patients is often inaccurate and overestimated. Given these findings, clinicians should be aware of their tendency to be overoptimistic. Further investigation of predictive patient and clinician characteristics is warranted to improve clinicians' ability to predict survival.


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