Register to View Extracting Severity Markers From Unstructured Clinical Data of Congestive Heart Failure Patients Using a Pretrained Text-To-Text Transfer Transformer Model

Apr 15, 2022

On May 15 – May 18, 2022, this poster was on display at ISPOR 2022.

What is the Objective of this Poster?

  • These results suggest that T5 models are capable of extracting disease specific knowledge from clinical notes.
  • Areas for further research include studying how variations in question
    wording and note splitting can influence results, determining sensitivity and specificity of the T5 model, and studying ways to improve performance, sensitivity, and process automation.
  • Applications include incorporation into health economic models and
    improving predictive accuracy for CHF readmission and mortality.

Register to view this poster now!

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