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Assessment of Machine Learning vs Standard Prediction Rules for Predicting Hospital Readmissions.
Morgan, Daniel J; Bame, Bill; Zimand, Paul; Dooley, Patrick; Thom, Kerri A; Harris, Anthony D; Bentzen, Soren; Ettinger, Walt; Garrett-Ray, Stacy D; Tracy, J Kathleen; Liang, Yuanyuan.
Afiliação
  • Morgan DJ; Department of Population Health, University of Maryland Medical System, Baltimore.
  • Bame B; Department of Epidemiology and Public Health, University of Maryland School of Medicine, Baltimore.
  • Zimand P; Department of Healthcare Epidemiology, Veterans Affairs Maryland Healthcare System, Baltimore.
  • Dooley P; Department of Population Health, University of Maryland Medical System, Baltimore.
  • Thom KA; Department of Population Health, University of Maryland Medical System, Baltimore.
  • Harris AD; Department of Population Health, University of Maryland Medical System, Baltimore.
  • Bentzen S; Department of Population Health, University of Maryland Medical System, Baltimore.
  • Ettinger W; Department of Epidemiology and Public Health, University of Maryland School of Medicine, Baltimore.
  • Garrett-Ray SD; Department of Epidemiology and Public Health, University of Maryland School of Medicine, Baltimore.
  • Tracy JK; Department of Healthcare Epidemiology, Veterans Affairs Maryland Healthcare System, Baltimore.
  • Liang Y; Department of Epidemiology and Public Health, University of Maryland School of Medicine, Baltimore.
JAMA Netw Open ; 2(3): e190348, 2019 03 01.
Article em En | MEDLINE | ID: mdl-30848808
Importance: Hospital readmissions are associated with patient harm and expense. Ways to prevent hospital readmissions have focused on identifying patients at greatest risk using prediction scores. Objective: To identify the type of score that best predicts hospital readmissions. Design, Setting, and Participants: This prognostic study included 14 062 consecutive adult hospital patients with 16 649 discharges from a tertiary care center, suburban community hospital, and urban critical access hospital in Maryland from September 1, 2016, through December 31, 2016. Patients not included as eligible discharges by the Centers for Medicare & Medicaid Services or the Chesapeake Regional Information System for Our Patients were excluded. A machine learning rank score, the Baltimore score (B score) developed using a machine learning technique, for each individual hospital using data from the 2 years before September 1, 2016, was compared with standard readmission risk assessment scores to predict 30-day unplanned readmissions. Main Outcomes and Measures: The 30-day readmission rate evaluated using various readmission scores: B score, HOSPITAL score, modified LACE score, and Maxim/RightCare score. Results: Of the 10 732 patients (5605 [52.2%] male; mean [SD] age, 54.56 [22.42] years) deemed to be eligible for the study, 1422 were readmitted. The area under the receiver operating characteristic curve (AUROC) for individual rules was 0.63 (95% CI, 0.61-0.65) for the HOSPITAL score, which was significantly lower than the 0.66 for modified LACE score (95% CI, 0.64-0.68; P < .001). The B score machine learning score was significantly better than all other scores; 48 hours after admission, the AUROC of the B score was 0.72 (95% CI, 0.70-0.73), which increased to 0.78 (95% CI, 0.77-0.79) at discharge (all P < .001). At the hospital using Maxim/RightCare score, the AUROC was 0.63 (95% CI, 0.59-0.69) for HOSPITAL, 0.64 (95% CI, 0.61-0.68) for Maxim/RightCare, and 0.66 (95% CI, 0.62-0.69) for modified LACE score. The B score was 0.72 (95% CI, 0.69-0.75) 48 hours after admission and 0.81 (95% CI, 0.79-0.84) at discharge. In directly comparing the B score with the sensitivity at cutoff values for modified LACE, HOSPITAL, and Maxim/RightCare scores, the B score was able to identify the same number of readmitted patients while flagging 25.5% to 54.9% fewer patients. Conclusions and Relevance: Among 3 hospitals in different settings, an automated machine learning score better predicted readmissions than commonly used readmission scores. More efficiently targeting patients at higher risk of readmission may be the first step toward potentially preventing readmissions.
Assuntos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Readmissão do Paciente / Medição de Risco / Aprendizado de Máquina / Hospitalização Tipo de estudo: Etiology_studies / Prognostic_studies / Risk_factors_studies Limite: Female / Humans / Male / Middle aged País/Região como assunto: America do norte Idioma: En Ano de publicação: 2019 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Readmissão do Paciente / Medição de Risco / Aprendizado de Máquina / Hospitalização Tipo de estudo: Etiology_studies / Prognostic_studies / Risk_factors_studies Limite: Female / Humans / Male / Middle aged País/Região como assunto: America do norte Idioma: En Ano de publicação: 2019 Tipo de documento: Article