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Development of an automated phenotyping algorithm for hepatorenal syndrome
Journal article   Open access   Peer reviewed

Development of an automated phenotyping algorithm for hepatorenal syndrome

Jejo D. Koola, Sharon E. Davis, Omar Al-Nimri, Sharidan K. Parr, Daniel Fabbri, Bradley A. Malin, Samuel B. Ho and Michael E. Matheny
Journal of Biomedical Informatics, Vol.80
2018

Abstract

Acute Kidney Injury Aged Algorithms Diagnosis, Computer-Assisted Electronic Health Records Female Hepatorenal Syndrome Humans Liver Cirrhosis Male Middle Aged Natural Language Processing Odds Ratio Phenotype Retrospective Studies ROC Curve Support Vector Machine Calibration Decision trees Diseases Image segmentation Learning algorithms Natural language processing systems Records management Regression analysis Semantics Support vector machines Throughput Acute kidney injury Cirrhosis Dimension reduction Hepatorenal syndrome Phenotyping acute kidney failure adult Article Bayesian learning calibration cohort analysis controlled study diagnostic test accuracy study disease classification female hepatorenal syndrome hospitalization human ICD-9 intermethod comparison liver cirrhosis logistic regression analysis machine learning major clinical study male medical record review middle aged multifactor dimensionality reduction natural language processing predictive value priority journal random forest receiver operating characteristic retrospective study sensitivity and specificity support vector machine Youden index aged algorithm complication computer assisted diagnosis electronic health record hepatorenal syndrome odds ratio pathophysiology phenotype procedures Data mining
url
https://doi.org/10.1016/j.jbi.2018.03.001View
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