Real-world Clinical Study and Medical Machine Intelligence Study for Traditional Chinese Internal Medicine by Using Medical Big Data and Artificial ... View Homepage


Ontology type: schema:MedicalStudy     


Clinical Trial Info

YEARS

2017-2022

ABSTRACT

This real-world study aimed at 1. exploring the relationships of traditional Chinese medicine (TCM) syndrome and internal diseases, 2. investigating the relationships of TCM treatment and internal diseases, and 3. creating medical machine intelligence to help internal physician in clinical practice. Big data methods and artificial intelligence algorithms are used to assess the associations based on electronic case files of patients. More... »

URL

https://clinicaltrials.gov/show/NCT03274908

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