作者
Stefanie Friedrich, Hercules Dalianis
发表日期
2015/9
研讨会论文
Proceedings of the Sixth International Workshop on Health Text Mining and Information Analysis
页码范围
121-130
简介
A method to find adverse drug reactions in electronic health records written in Swedish is presented. A total of 14,751 health records were manually classified into four groups. The records are normalised by pre-processing using both dictionaries and manually created word lists. Three different supervised machine learning algorithm were used to find the best results; decision tree, random forest and LibSVM. The best performance on a test dataset was with LibSVM obtaining a precision of 0.69 and a recall of 0.66, and a F-score of 0.67. Our method found 865 of 981 true positives (88.2%) in a 3-class dataset which is an improvement of 49.5% over previous approaches.
引用总数
201620172018201920202021202220232024133211
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