Computational Healthcare Library
The goal of Computational Healthcare Library is to help computer scientists perform high impact healthcare research by providing a simple interface to large publicly available healthcare datasets.
Computational Healthcare Library for more information and documentationsPlease visit
With Computational Healthcare library you can:
- Build Outcomes prediction engine
- Load & analyze data from up to 200 Million visits & 70 Million patients
- Specify aggregation strategies and compute aggregate statistics in a privacy preserving manner
- Build embedding models, perform transfer learning, predict rehospitalizations/revisits using TensorFlow
- Benchmark results against baseline algorithms trained on publicly available datasets
- In future it can be used for testing Differential Privacy algorithms for computing aggregate statistics & privacy preserving Machine Learning
Please note that this repository does not contains any data, nor do we provide any data. You should acquire the datasets on your own from AHRQ or other state agencies.
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