Title
Classification of radiology reports for falls in an HIV study cohort.
Abstract
Methods We used the Veterans Aging Cohort Study Virtual Cohort (VACS-VC), an electronic health record-based cohort of 146 530 veterans for whom radiology reports were available (N =2 977 739). We created a reference standard of radiology reports, represented each report by a feature set of words and Unified Medical Language System concepts, and then developed several support vector machine (SVM) classifiers for falls. We compared mutual information (MI) ranking and embedded feature selection approaches. The SVM classifier with MI feature selection was chosen to classify all radiology reports in VACS-VC. Results Our SVM classifier with MI feature selection achieved an area under the curve score of 97.04 on the test set. When applied to all the radiology reports in VACS-VC, 80 416 of these reports were classified as positive for a fall. Of these, 11 484 were associated with a fall-related external cause of injury code (E-code) and 68 932 were not, corresponding to 29 280 patients with potential fall-related injuries who could not have been found using E-codes. Discussion Feature selection was crucial to improving the classifier's performance. Feature selection with MI allowed us to select the number of discriminative features to use for classification, in contrast to the embedded feature selection method, in which the number of features is chosen automatically. Conclusion Machine learning is an effective method of identifying patients who have suffered a fall. The development of this classifier supplements the clinical researcher's toolkit and reduces dependence on under-coded structured electronic health record data.
Year
DOI
Venue
2016
10.1093/jamia/ocv155
JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION
Keywords
Field
DocType
information retrieval,text mining,falls,aging,HIV
Data mining,Feature selection,Artificial intelligence,Classifier (linguistics),Discriminative model,Cohort study,Medicine,Cohort,Support vector machine,Radiology,Unified Medical Language System,Machine learning,Test set
Journal
Volume
Issue
ISSN
23
E1
1067-5027
Citations 
PageRank 
References 
5
0.39
9
Authors
4
Name
Order
Citations
PageRank
Jonathan Bates1172.49
samah jamal fodeh250.39
Cynthia Brandt323143.89
Julie A Womack450.39