Clinical Utility of the Automatic Phenotype Annotation in Unstructured
Clinical Notes: ICU Use Cases
- URL: http://arxiv.org/abs/2107.11665v1
- Date: Sat, 24 Jul 2021 17:55:55 GMT
- Title: Clinical Utility of the Automatic Phenotype Annotation in Unstructured
Clinical Notes: ICU Use Cases
- Authors: Jingqing Zhang, Luis Bolanos, Ashwani Tanwar, Albert Sokol, Julia Ive,
Vibhor Gupta, Yike Guo
- Abstract summary: We propose the automatic annotation of phenotypes from clinical notes as a method to capture essential information to predict outcomes in the Intensive Care Unit.
We demonstrate and validate our approach conducting experiments on the prediction of in-hospital mortality, physiological decompensation and length of stay in the ICU setting.
- Score: 11.22817749252584
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Clinical notes contain information not present elsewhere, including drug
response and symptoms, all of which are highly important when predicting key
outcomes in acute care patients. We propose the automatic annotation of
phenotypes from clinical notes as a method to capture essential information to
predict outcomes in the Intensive Care Unit (ICU). This information is
complementary to typically used vital signs and laboratory test results. We
demonstrate and validate our approach conducting experiments on the prediction
of in-hospital mortality, physiological decompensation and length of stay in
the ICU setting for over 24,000 patients. The prediction models incorporating
phenotypic information consistently outperform the baseline models leveraging
only vital signs and laboratory test results. Moreover, we conduct a thorough
interpretability study, showing that phenotypes provide valuable insights at
the patient and cohort levels. Our approach illustrates the viability of using
phenotypes to determine outcomes in the ICU.
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