/starsem2018-patient-representations

Code for Dligach and Miller 2018 paper Learning Patient Representations from Text

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Code for Dligach and Miller, 2018 *SEM paper Learning Patient Representations from Text

To train a billing code prediction model:

  • extract CUIs from MIMIC III patient data
  • cd Codes
  • ft.py cuis.cfg.

To run the experiments with i2b2 data:

  • cd Comorbidity
  • svm.py sparse.cfg
  • svm.py dense.cfg

For the experiments described in the paper, we used NumPy 1.13.0, scikit-learn 0.19.1, and Keras 2.0.4 with Theano 0.9.0 backend. Titan X GPU we used for training neural network models was provided by NVIDIA.