| Literature DB >> 26262127 |
Li Zhou1, Amy W Baughman2, Victor J Lei1, Kenneth H Lai2, Amol S Navathe3, Frank Chang1, Margarita Sordo1, Maxim Topaz2, Feiran Zhong2, Madhavan Murrali4, Shamkant Navathe4, Roberto A Rocha1.
Abstract
About 1 in 10 adults are reported to exhibit clinical depression and the associated personal, societal, and economic costs are significant. In this study, we applied the MTERMS NLP system and machine learning classification algorithms to identify patients with depression using discharge summaries. Domain experts reviewed both the training and test cases, and classified these cases as depression with a high, intermediate, and low confidence. For depression cases with high confidence, all of the algorithms we tested performed similarly, with MTERMS' knowledge-based decision tree slightly better than the machine learning classifiers, achieving an F-measure of 89.6%. MTERMS also achieved the highest F-measure (70.6%) on intermediate confidence cases. The RIPPER rule learner was the best performing machine learning method, with an F-measure of 70.0%, and a higher precision but lower recall than MTERMS. The proposed NLP-based approach was able to identify a significant portion of the depression cases (about 20%) that were not on the coded diagnosis list.Entities:
Mesh:
Year: 2015 PMID: 26262127
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630