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A Machine Learning Algorithm Avoids Unnecessary Paracentesis for Exclusion of SBP in Cirrhosis in Resource-limited Settings.
Silvey, Scott; Patel, Nilang; Liu, Jinze; Tafader, Asiya; Nadeem, Mahum; Dhaliwal, Galvin; O'Leary, Jacqueline G; Patton, Heather; Morgan, Timothy R; Rogal, Shari; Bajaj, Jasmohan S.
Afiliação
  • Silvey S; Department of Population Health, Virginia Commonwealth University, Richmond, Virginia.
  • Patel N; Department of Medicine, Virginia Commonwealth University and Richmond VA Medical Center, Richmond, Virginia.
  • Liu J; Department of Population Health, Virginia Commonwealth University, Richmond, Virginia.
  • Tafader A; Department of Medicine, Virginia Commonwealth University and Richmond VA Medical Center, Richmond, Virginia.
  • Nadeem M; Department of Medicine, Virginia Commonwealth University and Richmond VA Medical Center, Richmond, Virginia.
  • Dhaliwal G; Department of Medicine, Virginia Commonwealth University and Richmond VA Medical Center, Richmond, Virginia.
  • O'Leary JG; Department of Medicine, University of Texas Southwestern and Dallas VA Medical Center, Dallas, Texas.
  • Patton H; Department of Medicine, University of California San Diego and San Diego VA Medical Center, San Diego, California.
  • Morgan TR; Medical Service, VA Long Beach Healthcare Center, Long Beach, California.
  • Rogal S; Department of Medicine, University of Pittsburgh Medical Center and Pittsburgh VA Medical Center, Pittsburgh, Pennsylvania.
  • Bajaj JS; Department of Medicine, Virginia Commonwealth University and Richmond VA Medical Center, Richmond, Virginia. Electronic address: jasmohan.bajaj@vcuhealth.org.
Article em En | MEDLINE | ID: mdl-38906441
ABSTRACT
BACKGROUND &

AIMS:

Despite the poor prognosis associated with missed or delayed spontaneous bacterial peritonitis (SBP) diagnosis, <15% get timely paracentesis, which persists despite guidelines/education in the United States. Measures to exclude SBP non-invasively where timely paracentesis cannot be performed could streamline this burden.

METHODS:

Using Veterans Health Administration Corporate Data Warehouse (VHA-CDW) we included patients with cirrhosis between 2009 and 2019 who underwent timely paracentesis and collected relevant clinical information (demographics, cirrhosis severity, medications, vitals, and comorbidities). XGBoost-models were trained on 75% of the primary cohort, with 25% reserved for testing. The final model was further validated in 2 cohorts Validation cohort #1 In VHA-CDW, those without prior SBP who received 2nd early paracentesis, and Validation cohort #2 Prospective data from 276 non-electively admitted University hospital patients.

RESULTS:

Negative predictive values (NPVs) at 5%,10%, and 15% probability cutoffs were examined. Primary cohort n = 9643 (mean age, 63.1 ± 8.7 years; 97.2% men; SBP, 15.0%) received first early paracentesis. Testing-set NPVs for SBP were 96.5%, 93.0%, and 91.6% at the 5%, 10%, and 15% probability thresholds, respectively. In Validation cohort #1 n = 2844 (mean age, 63.14 ± 8.37 years; 97.1% male; SBP, 9.7%) with NPVs were 98.8%, 95.3%, and 94.5%. In Validation cohort #2 n = 276 (mean age, 56.08 ± 9.09; 59.6% male; SBP, 7.6%) with NPVs were 100%, 98.9%, and 98.0% The final machine learning model showed the greatest net benefit on decision-curve analyses.

CONCLUSIONS:

A machine learning model generated using routinely collected variables excluded SBP with high NPV. Applying this model could ease the need to provide paracentesis in resource-limited settings by excluding those unlikely to have SBP.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Clin Gastroenterol Hepatol Assunto da revista: GASTROENTEROLOGIA Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Clin Gastroenterol Hepatol Assunto da revista: GASTROENTEROLOGIA Ano de publicação: 2024 Tipo de documento: Article