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"Mining Themes in Clinical Notes to Identify Phenotypes and to Predict ..."
Ankita Agarwal et al. (2023)
- Ankita Agarwal, Tanvi Banerjee, William L. Romine, Krishnaprasad Thirunarayan, Lingwei Chen, Mia Cajita:
Mining Themes in Clinical Notes to Identify Phenotypes and to Predict Length of Stay in Patients admitted with Heart Failure. CoRR abs/2305.19373 (2023)
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