CogStack/MedCATtutorials
General tutorials for the setup and use of MedCAT.
These tutorials guide healthcare researchers and data scientists through extracting medical information from Electronic Health Records (EHRs). You will learn to prepare your raw EHR data, build custom concept databases, and train models to identify and link diseases, symptoms, and other clinical concepts. The outcome is a powerful tool to automatically analyze large volumes of patient records for research or operational insights.
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Use this if you need to build, train, and optimize a custom MedCAT model to automatically extract specific medical entities and relationships from unstructured clinical text data.
Not ideal if you are looking for a pre-trained, ready-to-use model without any setup or customization, or if your data is not in a medical context.
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May 22, 2025
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