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Low Predictability of Readmissions and Death Using Machine Learning in Cirrhosis

Authors :
L. Thacker
Michael B. Fallon
Puneeta Tandon
Hugo E. Vargas
Vikram Anjur
Jasmohan S. Bajaj
Scott W. Biggins
Ravishankar K. Iyer
K. Rajender Reddy
Guadalupe Garcia-Tsao
Krishnakant Saboo
Chang Hu
Ram Subramanian
Paul J. Thuluvath
Jennifer C. Lai
Patrick S. Kamath
Florence Wong
Benedict Maliakkal
Jacqueline G. O'Leary
Source :
American Journal of Gastroenterology. 116:336-346
Publication Year :
2020
Publisher :
Ovid Technologies (Wolters Kluwer Health), 2020.

Abstract

Introduction Readmission and death in cirrhosis are common, expensive, and difficult to predict. Our aim was to evaluate the abilities of multiple artificial intelligence (AI) techniques to predict clinical outcomes based on variables collected at admission, during hospitalization, and at discharge. Methods We used the multicenter North American Consortium for the Study of End-Stage Liver Disease (NACSELD) cohort of cirrhotic inpatients who are followed up through 90-days postdischarge for readmission and death. We used statistical methods to select variables that are significant for readmission and death and trained 3 AI models, including logistic regression (LR), kernel support vector machine (SVM), and random forest classifiers (RFC), to predict readmission and death. We used the area under the receiver operating characteristic curve (AUC) from 10-fold crossvalidation for evaluation to compare sexes. Data were compared with model for end-stage liver disease (MELD) at discharge. Results We included 2,170 patients (57 ± 11 years, MELD 18 ± 7, 61% men, 79% White, and 8% Hispanic). The 30-day and 90-day readmission rates were 28% and 47%, respectively, and 13% died at 90 days. Prediction for 30-day readmission resulted in 0.60 AUC for all patients with RFC, 0.57 AUC with LR for women-only subpopulation, and 0.61 AUC with LR for men-only subpopulation. For 90-day readmission, the highest AUC was achieved with kernel SVM and RFC (AUC = 0.62). We observed higher predictive value when training models with only women (AUC = 0.68 LR) vs men (AUC = 0.62 kernel SVM). Prediction for death resulted in 0.67 AUC for all patients, 0.72 for women-only subpopulation, and 0.69 for men-only subpopulation, all with LR. MELD-Na model AUC was similar to those from the AI models. Discussion Despite using multiple AI techniques, it is difficult to predict 30- and 90-day readmissions and death in cirrhosis. AI model accuracies were equivalent to models generated using only MELD-Na scores. Additional biomarkers are needed to improve our predictive capability (See also the visual abstract at http://links.lww.com/AJG/B710).

Details

ISSN :
15720241 and 00029270
Volume :
116
Database :
OpenAIRE
Journal :
American Journal of Gastroenterology
Accession number :
edsair.doi...........02c81e9794536219b3219116546796cf