1. min-SIA: a Lightweight Algorithm to Predict the Risk of 6-Month Mortality at the Time of Hospital Admission
- Author
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Roshan Tourani, Donald R. Sullivan, György J. Simon, and Nishant Sahni
- Subjects
Prognostic variable ,Palliative care ,Vital signs ,Risk Assessment ,01 natural sciences ,Cohort Studies ,03 medical and health sciences ,0302 clinical medicine ,Internal Medicine ,Humans ,Medicine ,Hospital Mortality ,030212 general & internal medicine ,0101 mathematics ,Retrospective Studies ,Original Research ,medicine.diagnostic_test ,business.industry ,010102 general mathematics ,Complete blood count ,Retrospective cohort study ,Red blood cell distribution width ,Hospitals ,Hospitalization ,Cohort ,Hospital admission ,business ,Algorithm ,Algorithms - Abstract
BACKGROUND: Predicting death in a cohort of clinically diverse, multi-condition hospitalized patients is difficult. This frequently hinders timely serious illness care conversations. Prognostic models that can determine 6-month death risk at the time of hospital admission can improve access to serious illness care conversations. OBJECTIVE: The objective is to determine if the demographic, vital sign, and laboratory data from the first 48 h of a hospitalization can be used to accurately quantify 6-month mortality risk. DESIGN: This is a retrospective study using electronic medical record data linked with the state death registry. PARTICIPANTS: Participants were 158,323 hospitalized patients within a 6-hospital network over a 6-year period. MAIN MEASURES: Main measures are the following: the first set of vital signs, complete blood count, basic and complete metabolic panel, serum lactate, pro-BNP, troponin-I, INR, aPTT, demographic information, and associated ICD codes. The outcome of interest was death within 6 months. KEY RESULTS: Model performance was measured on the validation dataset. A random forest model—mini serious illness algorithm—used 8 variables from the initial 48 h of hospitalization and predicted death within 6 months with an AUC of 0.92 (0.91–0.93). Red cell distribution width was the most important prognostic variable. min-SIA (mini serious illness algorithm) was very well calibrated and estimated the probability of death to within 10% of the actual value. The discriminative ability of the min-SIA was significantly better than historical estimates of clinician performance. CONCLUSION: min-SIA algorithm can identify patients at high risk of 6-month mortality at the time of hospital admission. It can be used to improved access to timely, serious illness care conversations in high-risk patients. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1007/s11606-020-05733-1) contains supplementary material, which is available to authorized users.
- Published
- 2020
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