Purpose: Machine learning (ML) algorithms that incorporate routinely collected patient-reported outcomes (PROs) alongside electronic health record (EHR) variables may improve prediction of short-term mortality and facilitate earlier supportive and palliative care for patients with cancer.
Methods: We trained and validated two-phase ML algorithms that incorporated standard PRO assessments alongside approximately 200 routinely collected EHR variables, among patients with medical oncology encounters at a tertiary academic oncology and a community oncology practice.
Results: Among 12,350 patients, 5,870 (47.5%) completed PRO assessments. Compared with EHR- and PRO-only algorithms, the EHR + PRO model improved predictive performance in both tertiary oncology (EHR + PRO EHR PRO: area under the curve [AUC] 0.86 [0.85-0.87] 0.82 [0.81-0.83] 0.74 [0.74-0.74]) and community oncology (area under the curve 0.89 [0.88-0.90] 0.86 [0.85-0.88] 0.77 [0.76-0.79]) practices.
Conclusion: Routinely collected PROs contain added prognostic information not captured by an EHR-based ML mortality risk algorithm. Augmenting an EHR-based algorithm with PROs resulted in a more accurate and clinically relevant model, which can facilitate earlier and targeted supportive care for patients with cancer.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10166444 | PMC |
http://dx.doi.org/10.1200/CCI.22.00073 | DOI Listing |
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