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Prediction of Metabolic Syndrome based on Non-invasive Measurement Features for Chronic Disease Management

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Published:20 September 2022Publication History

ABSTRACT

Metabolic syndrome is a chronic disease in which metabolism-related abnormal factors are complex. Metabolic syndrome is currently diagnosed by determining the number of abnormal factors based on physical measurements and blood tests. Metabolic syndrome causes complications in patients with diabetes or the cardiovascular system; therefore, prevention and management are particularly important. Metabolic syndrome can be prevented effectively by allowing individuals to manage it themselves; however, blood tests are a major obstacle to the public. Therefore, this study is conducted to devise a method that can easily predict metabolic syndrome without requiring a blood test. A dataset containing data of 69,944 adult Korean men and women is used to develop a predictive model. This dataset contains not only physical measurements and blood test results, but also life logs pertaining to diet, food intake, drinking, and smoking. Using these data, we identify features that contribute significantly to the prediction of metabolic syndrome, except for items associated with blood test. Finally, we propose a predictive model that allows the public to easily manage metabolic syndrome using only non-invasive factors. Furthermore, we investigate methods to improve the predictive performance from the perspective of four subgroups, based on waist circumference and blood pressure.

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  1. Prediction of Metabolic Syndrome based on Non-invasive Measurement Features for Chronic Disease Management

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      ICCTA '22: Proceedings of the 2022 8th International Conference on Computer Technology Applications
      May 2022
      286 pages
      ISBN:9781450396226
      DOI:10.1145/3543712

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      Publication History

      • Published: 20 September 2022

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