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Machine Learning Algorithms to Predict Mortality and Allocate Palliative Care for Older Patients With Hip Fracture
Authors:Michael P. Cary  Farica Zhuang  Rachel Lea Draelos  Wei Pan  Sathya Amarasekara  Brian J. Douthit  Yunah Kang  Cathleen S. Colón-Emeric
Affiliation:1. School of Nursing, Duke University, Durham, NC, USA;2. Center for the Study of Aging and Human Development, Duke University, Durham, NC, USA;3. Department of Computer Science, Duke University, Durham, NC, USA;4. School of Medicine, Duke University, Durham, NC, USA;5. Geriatric Research, Education and Clinical Center, Durham Veterans Affairs Medical Center, Durham, NC, USA
Abstract:ObjectivesTo evaluate a machine learning model designed to predict mortality for Medicare beneficiaries aged >65 years treated for hip fracture in Inpatient Rehabilitation Facilities (IRFs).DesignRetrospective design/cohort analysis of Centers for Medicare & Medicaid Services Inpatient Rehabilitation Facility–Patient Assessment Instrument data.Setting and ParticipantsA total of 17,140 persons admitted to Medicare-certified IRFs in 2015 following hospitalization for hip fracture.MeasuresPatient characteristics include sociodemographic (age, gender, race, and social support) and clinical factors (functional status at admission, chronic conditions) and IRF length of stay. Outcomes were 30-day and 1-year all-cause mortality. We trained and evaluated 2 classification models, logistic regression and a multilayer perceptron (MLP), to predict the probability of 30-day and 1-year mortality and evaluated the calibration, discrimination, and precision of the models.ResultsFor 30-day mortality, MLP performed well [acc = 0.74, area under the receiver operating characteristic curve (AUROC) = 0.76, avg prec = 0.10, slope = 1.14] as did logistic regression (acc = 0.78, AUROC = 0.76, avg prec = 0.09, slope = 1.20). For 1-year mortality, the performances were similar for both MLP (acc = 0.68, AUROC = 0.75, avg prec = 0.32, slope = 0.96) and logistic regression (acc = 0.68, AUROC = 0.75, avg prec = 0.32, slope = 0.95).Conclusion and ImplicationsA scoring system based on logistic regression may be more feasible to run in current electronic medical records. But MLP models may reduce cognitive burden and increase ability to calibrate to local data, yielding clinical specificity in mortality prediction so that palliative care resources may be allocated more effectively.
Keywords:Functional status  mortality  hip fracture  inpatient rehabilitation facilities
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