yeahshow/word2vec_medical_record
Using NLP and RNN to build a clinical decision support model, taking input of structured medical record text (SOAP style records)
This project helps medical professionals analyze structured medical record text, like SOAP notes, to extract meaningful insights. It takes these free-text records as input and produces categorized outputs, which can assist with clinical decision-making. Physicians, nurses, and other healthcare practitioners who work with patient records would find this useful.
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Use this if you need to automatically categorize information or identify patterns from free-text medical records to support clinical decisions.
Not ideal if you're looking for a tool to process unstructured data beyond SOAP-style notes or require highly nuanced, non-categorical predictions.
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Jun 27, 2018
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