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KMID : 1150720210100030007
Integrative Medicine Research
2021 Volume.10 No. 3 p.7 ~ p.7
Machine learning-based prediction of Sasang constitution types using comprehensive clinical information and identification of key features for diagnosis
Park Sa-Yoon

Park Mu-Sun
Lee Won-Yung
Lee Choong-Yeol
Kim Ji-Hwan
Lee Si-Woo
Kim Chang-Eop
Abstract
Background: Despite the importance of accurate Sasang type diagnosis, a unique form of Korean medicine, there have been concerns about consistency among diagnoses. We investigate a data-driven integrative diagnostic model by applying machine learning to a multicenter clinical dataset with comprehensive features.

Methods: Extremely randomized trees (ERT), support vector machines, multinomial logistic regression, and K-nearest neighbor were applied, and performances were evaluated by cross-validation. The feature importance of the classifier was analyzed to understand which information is crucial in diagnosis.

Results: The ERT classifier showed the highest performance, with an overall f1 score of 0.60 ¡¾ 0.060. The feature classes of body measurement, personality, general information, and cold?heat were more decisive than others in classifying Sasang types. Costal angle was the most informative feature. In pairwise classification, we found Sasang type-dependent distinctions that body measurement features played a key role in TE-SE and TE-SY datasets, while personality and cold?heat features showed importance in SE-SY dataset.

Conclusion: Current study investigated a comprehensive diagnostic model for Sasang type using machine learning and achieved better performance than previous studies. This study helps data-driven decision making in clinics by revealing key features contributing to the Sasang type diagnosis.
KEYWORD
Sasang constitutional medicine, Machine learning, Extremely randomized trees, Diagnostic model, Feature importance
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