ISeeU2: Visually Interpretable ICU mortality prediction using deep
learning and free-text medical notes
- URL: http://arxiv.org/abs/2005.09284v1
- Date: Tue, 19 May 2020 08:30:34 GMT
- Title: ISeeU2: Visually Interpretable ICU mortality prediction using deep
learning and free-text medical notes
- Authors: William Caicedo-Torres, Jairo Gutierrez
- Abstract summary: We show a Deep Learning model trained on MIMIC-III to predict mortality using raw nursing notes, together with visual explanations for word importance.
Our model reaches a ROC of 0.8629, outperforming the traditional SAPS-II score and providing enhanced interpretability when compared with similar Deep Learning approaches.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Accurate mortality prediction allows Intensive Care Units (ICUs) to
adequately benchmark clinical practice and identify patients with unexpected
outcomes. Traditionally, simple statistical models have been used to assess
patient death risk, many times with sub-optimal performance. On the other hand
deep learning holds promise to positively impact clinical practice by
leveraging medical data to assist diagnosis and prediction, including mortality
prediction. However, as the question of whether powerful Deep Learning models
attend correlations backed by sound medical knowledge when generating
predictions remains open, additional interpretability tools are needed to
foster trust and encourage the use of AI by clinicians. In this work we show a
Deep Learning model trained on MIMIC-III to predict mortality using raw nursing
notes, together with visual explanations for word importance. Our model reaches
a ROC of 0.8629 (+/-0.0058), outperforming the traditional SAPS-II score and
providing enhanced interpretability when compared with similar Deep Learning
approaches.
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