Daily estimates of individual discharge likelihood with deep learning natural language processing in general medicine: a prospective and external validation study

被引:0
|
作者
Stephen Bacchi
Toby Gilbert
Samuel Gluck
Joy Cheng
Yiran Tan
Ivana Chim
Jim Jannes
Timothy Kleinig
Simon Koblar
机构
[1] Royal Adelaide Hospital,School of Medicine, Faculty Health and Medical Science
[2] University of Adelaide,undefined
来源
Internal and Emergency Medicine | 2022年 / 17卷
关键词
Length of stay; Artificial intelligence; Neural network; Natural language processing;
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中图分类号
学科分类号
摘要
Machine learning, in particular deep learning, may be able to assist in the prediction of the length of stay and timing of discharge for individual patients. Artificial neural networks applied to medical text have previously shown promise in this area. In this study, a previously derived artificial neural network was applied to prospective and external validation datasets. In the prediction of discharge within the next 2 days, when the algorithm was applied to prospective and external datasets, the area under the receiver operator curve for this task were 0.78 and 0.74, respectively. The performance in the prediction of discharge within the next 7 days was more limited (area under the receiver operator curve 0.68 and 0.67). This study has shown that in prospective and external validation datasets the previously derived deep learning algorithms have demonstrated moderate performance in the prediction of which patients will be discharged within the next 2 days. Future studies may seek to further refine or evaluate the effect of the implementation of such algorithms.
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页码:411 / 415
页数:4
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