A decision support system to facilitate management of patients with acute gastrointestinal bleeding

  • Authors:
  • Adrienne Chu;Hongshik Ahn;Bhawna Halwan;Bruce Kalmin;Everson L. A. Artifon;Alan Barkun;Michail G. Lagoudakis;Atul Kumar

  • Affiliations:
  • Department of Applied Mathematics and Statistics, Stony Brook University, Stony Brook, NY 11794, United States;Department of Applied Mathematics and Statistics, Stony Brook University, Stony Brook, NY 11794, United States;SUNY Downstate, Brooklyn, NY 11203, United States;Division of Gastroenterology, Medical University of South Carolina, Charleston, SC 29425, United States;University of Sao Pualo School of Medicine, Sao Paulo, Brazil;Mc Gill University, Montreal, Canada H3A 2T5;Intelligent Systems Laboratory, Department of Electronic and Computer Engineering, Technical University of Crete, Kounoupidiana, 73100 Chania Hellas, Greece;United States Department of Veterans Affairs, Stony Brook University, Stony Brook, NY 11794, United States

  • Venue:
  • Artificial Intelligence in Medicine
  • Year:
  • 2008

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Abstract

Objective: To develop a model to predict the bleeding source and identify the cohort amongst patients with acute gastrointestinal bleeding (GIB) who require urgent intervention, including endoscopy. Patients with acute GIB, an unpredictable event, are most commonly evaluated and managed by non-gastroenterologists. Rapid and consistently reliable risk stratification of patients with acute GIB for urgent endoscopy may potentially improve outcomes amongst such patients by targeting scarce healthcare resources to those who need it the most. Design and methods: Using ICD-9 codes for acute GIB, 189 patients with acute GIB and all available data variables required to develop and test models were identified from a hospital medical records database. Data on 122 patients was utilized for development of the model and on 67 patients utilized to perform comparative analysis of the models. Clinical data such as presenting signs and symptoms, demographic data, presence of co-morbidities, laboratory data and corresponding endoscopic diagnosis and outcomes were collected. Clinical data and endoscopic diagnosis collected for each patient was utilized to retrospectively ascertain optimal management for each patient. Clinical presentations and corresponding treatment was utilized as training examples. Eight mathematical models including artificial neural network (ANN), support vector machine (SVM), k-nearest neighbor, linear discriminant analysis (LDA), shrunken centroid (SC), random forest (RF), logistic regression, and boosting were trained and tested. The performance of these models was compared using standard statistical analysis and ROC curves. Results: Overall the random forest model best predicted the source, need for resuscitation, and disposition with accuracies of approximately 80% or higher (accuracy for endoscopy was greater than 75%). The area under ROC curve for RF was greater than 0.85, indicating excellent performance by the random forest model. Conclusion: While most mathematical models are effective as a decision support system for evaluation and management of patients with acute GIB, in our testing, the RF model consistently demonstrated the best performance. Amongst patients presenting with acute GIB, mathematical models may facilitate the identification of the source of GIB, need for intervention and allow optimization of care and healthcare resource allocation; these however require further validation.