作者
Madhumita Sushil, Simon Šuster, Kim Luyckx, Walter Daelemans
发表日期
2018/8/1
期刊
Journal of biomedical informatics
卷号
84
页码范围
103-113
出版商
Academic Press
简介
We have three contributions in this work: 1. We explore the utility of a stacked denoising autoencoder and a paragraph vector model to learn task-independent dense patient representations directly from clinical notes. To analyze if these representations are transferable across tasks, we evaluate them in multiple supervised setups to predict patient mortality, primary diagnostic and procedural category, and gender. We compare their performance with sparse representations obtained from a bag-of-words model. We observe that the learned generalized representations significantly outperform the sparse representations when we have few positive instances to learn from, and there is an absence of strong lexical features. 2. We compare the model performance of the feature set constructed from a bag of words to that obtained from medical concepts. In the latter case, concepts represent problems, treatments, and tests …
引用总数
201820192020202120222023202435891353
学术搜索中的文章
M Sushil, S Šuster, K Luyckx, W Daelemans - Journal of biomedical informatics, 2018