MI2DataLab/memr
R package for Multisource Embeddings for Medical Records
This tool helps medical researchers and data scientists analyze free-text doctor's notes and medical records. It takes unstructured medical text, like interview notes, examination findings, and recommendations, and converts them into structured numerical representations called embeddings. These embeddings can then be used to find patterns, cluster patients, or make predictions to support medical practice.
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Use this if you need to extract insights from large volumes of medical free-text data in R, such as identifying similar patient cases or predicting future recommendations.
Not ideal if you primarily work with structured medical data or require a tool that operates outside of the R programming environment.
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R
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Last pushed
Aug 28, 2021
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