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Validation of a Machine Learning Model That Outperforms Clinical Risk Scoring Systems for Upper Gastrointestinal Bleeding.
Shung, Dennis L; Au, Benjamin; Taylor, Richard Andrew; Tay, J Kenneth; Laursen, Stig B; Stanley, Adrian J; Dalton, Harry R; Ngu, Jeffrey; Schultz, Michael; Laine, Loren.
Afiliação
  • Shung DL; Yale School of Medicine, New Haven, Connecticut. Electronic address: dennis.shung@yale.edu.
  • Au B; Yale School of Medicine, New Haven, Connecticut.
  • Taylor RA; Yale School of Medicine, New Haven, Connecticut.
  • Tay JK; Stanford University, Palo Alto, California.
  • Laursen SB; Odense University Hospital, Odense, Denmark.
  • Stanley AJ; Glasgow Royal Infirmary, Glasgow, United Kingdom.
  • Dalton HR; Royal Cornwall Hospital, Cornwall, United Kingdom.
  • Ngu J; Christchurch Hospital, Christchurch, New Zealand.
  • Schultz M; Dunedin Hospital, Dunedin, New Zealand.
  • Laine L; Yale School of Medicine, New Haven, Connecticut; Veterans Affairs Connecticut Healthcare System, West Haven, Connecticut. Electronic address: loren.laine@yale.edu.
Gastroenterology ; 158(1): 160-167, 2020 01.
Article em En | MEDLINE | ID: mdl-31562847
BACKGROUND & AIMS: Scoring systems are suboptimal for determining risk in patients with upper gastrointestinal bleeding (UGIB); these might be improved by a machine learning model. We used machine learning to develop a model to calculate the risk of hospital-based intervention or death in patients with UGIB and compared its performance with other scoring systems. METHODS: We analyzed data collected from consecutive unselected patients with UGIB from medical centers in 4 countries (the United States, Scotland, England, and Denmark; n = 1958) from March 2014 through March 2015. We used the data to derive and internally validate a gradient-boosting machine learning model to identify patients who met a composite endpoint of hospital-based intervention (transfusion or hemostatic intervention) or death within 30 days. We compared the performance of the machine learning prediction model with validated pre-endoscopic clinical risk scoring systems (the Glasgow-Blatchford score [GBS], admission Rockall score, and AIMS65). We externally validated the machine learning model using data from 2 Asia-Pacific sites (Singapore and New Zealand; n = 399). Performance was measured by area under receiver operating characteristic curve (AUC) analysis. RESULTS: The machine learning model identified patients who met the composite endpoint with an AUC of 0.91 in the internal validation set; the clinical scoring systems identified patients who met the composite endpoint with AUC values of 0.88 for the GBS (P = .001), 0.73 for Rockall score (P < .001), and 0.78 for AIMS65 score (P < .001). In the external validation cohort, the machine learning model identified patients who met the composite endpoint with an AUC of 0.90, the GBS with an AUC of 0.87 (P = .004), the Rockall score with an AUC of 0.66 (P < .001), and the AIMS65 with an AUC of 0.64 (P < .001). At cutoff scores at which the machine learning model and GBS identified patients who met the composite endpoint with 100% sensitivity, the specificity values were 26% with the machine learning model versus 12% with GBS (P < .001). CONCLUSIONS: We developed a machine learning model that identifies patients with UGIB who met a composite endpoint of hospital-based intervention or death within 30 days with a greater AUC and higher levels of specificity, at 100% sensitivity, than validated clinical risk scoring systems. This model could increase identification of low-risk patients who can be safely discharged from the emergency department for outpatient management.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado de Máquina / Hemorragia Gastrointestinal / Modelos Biológicos Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aprendizado de Máquina / Hemorragia Gastrointestinal / Modelos Biológicos Idioma: En Ano de publicação: 2020 Tipo de documento: Article