TY - JOUR AU - Elmessiry, Adel AU - Cooper, William O AU - Catron, Thomas F AU - Karrass, Jan AU - Zhang, Zhe AU - Singh, Munindar P PY - 2017 DA - 2017/07/31 TI - Triaging Patient Complaints: Monte Carlo Cross-Validation of Six Machine Learning Classifiers JO - JMIR Med Inform SP - e19 VL - 5 IS - 3 KW - natural language processing KW - NLP KW - machine learning KW - patient complaints AB - Background: Unsolicited patient complaints can be a useful service recovery tool for health care organizations. Some patient complaints contain information that may necessitate further action on the part of the health care organization and/or the health care professional. Current approaches depend on the manual processing of patient complaints, which can be costly, slow, and challenging in terms of scalability. Objective: The aim of this study was to evaluate automatic patient triage, which can potentially improve response time and provide much-needed scale, thereby enhancing opportunities to encourage physicians to self-regulate. Methods: We implemented a comparison of several well-known machine learning classifiers to detect whether a complaint was associated with a physician or his/her medical practice. We compared these classifiers using a real-life dataset containing 14,335 patient complaints associated with 768 physicians that was extracted from patient complaints collected by the Patient Advocacy Reporting System developed at Vanderbilt University and associated institutions. We conducted a 10-splits Monte Carlo cross-validation to validate our results. Results: We achieved an accuracy of 82% and F-score of 81% in correctly classifying patient complaints with sensitivity and specificity of 0.76 and 0.87, respectively. Conclusions: We demonstrate that natural language processing methods based on modeling patient complaint text can be effective in identifying those patient complaints requiring physician action. SN - 2291-9694 UR - http://medinform.jmir.org/2017/3/e19/ UR - https://doi.org/10.2196/medinform.7140 UR - http://www.ncbi.nlm.nih.gov/pubmed/28760726 DO - 10.2196/medinform.7140 ID - info:doi/10.2196/medinform.7140 ER -