LERP : Label-dependent and event-guided interpretable disease risk prediction using EHRs

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Deep LearningLERP
Overview

LERP : Label-dependent and event-guided interpretable disease risk prediction using EHRs

This is the code for the LERP.

image

Dataset

  1. The dataset used is MIMIC-III, you should download it from https://physionet.org/content/mimiciii/1.4/ first.

  2. Then, you should use MIMI-III benchmark tool to generate the Phenotype classification.

  3. Next, you should use the py files under the folder of data_processing.

 python data_processing/generate_event.py 
 python data_processing/generate_text.py
 data_processing/split_data.py 

Training

After you generate the dataset, you could use:

    python trainer_text_event.py

to train the LERP

Evaluation and case study

You could use the following commands to evaluate the LERP model and check the case study result.

    python evaluation_text_event.py
    python case_study_text_event.py
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