Machine Learning to Allocate Palliative Care Consultations During Cancer Treatment

Author:

He Jiang Chen12ORCID,Moffat Gordon Taylor1ORCID,Podolsky Sho3,Khan Ferhana3,Liu Ning3ORCID,Taback Nathan4,Gallinger Steven12,Hannon Breffni1ORCID,Krzyzanowska Monika K.13ORCID,Ghassemi Marzyeh5ORCID,Chan Kelvin K.W.36ORCID,Grant Robert C.12ORCID

Affiliation:

1. Princess Margaret Cancer Centre, University Health Network, Toronto, ON, Canada

2. Ontario Institute for Cancer Research, Toronto, ON, Canada

3. ICES, Toronto, ON, Canada

4. Department of Statistical Sciences, University of Toronto, Toronto, ON, Canada

5. Massachusetts Institute of Technology, Cambridge, MA

6. Odette Cancer Centre, Sunnybrook Health Sciences Centre, Toronto, ON, Canada

Abstract

PURPOSE For patients with advanced cancer, early consultations with palliative care (PC) specialists reduce costs, improve quality of life, and prolong survival. However, capacity limitations prevent all patients from receiving PC shortly after diagnosis. We evaluated whether a prognostic machine learning system could promote early PC, given existing capacity. METHODS Using population-level administrative data in Ontario, Canada, we assembled a cohort of patients with incurable cancer who received palliative-intent systemic therapy between July 1, 2014, and December 30, 2019. We developed a machine learning system that predicted death within 1 year of each treatment using demographics, cancer characteristics, treatments, symptoms, laboratory values, and history of acute care admissions. We trained the system in patients who started treatment before July 1, 2017, and evaluated the potential impact of the system on PC in subsequent patients. RESULTS Among 560,210 treatments received by 54,628 patients, death occurred within 1 year of 45.2% of treatments. The machine learning system recommended the same number of PC consultations observed with usual care at the 60.0% 1-year risk of death, with a first-alarm positive predictive value of 69.7% and an outcome-level sensitivity of 74.9%. Compared with usual care, system-guided care could increase early PC by 8.5% overall (95% CI, 7.5 to 9.5; P < .001) and by 15.3% (95% CI, 13.9 to 16.6; P < .001) among patients who live 6 months beyond their first treatment, without requiring more PC consultations in total or substantially increasing PC among patients with a prognosis exceeding 2 years. CONCLUSION Prognostic machine learning systems could increase early PC despite existing resource constraints. These results demonstrate an urgent need to deploy and evaluate prognostic systems in real-time clinical practice to increase access to early PC.

Publisher

American Society of Clinical Oncology (ASCO)

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