Please use this identifier to cite or link to this item: http://cmuir.cmu.ac.th/jspui/handle/6653943832/72952
Title: Associations between Sex and Risk Factors for Predicting Chronic Kidney Disease
Authors: Hao Yun Kao
Chi Chang Chang
Chin Fang Chang
Ying Chen Chen
Chalong Cheewakriangkrai
Ya Ling Tu
Authors: Hao Yun Kao
Chi Chang Chang
Chin Fang Chang
Ying Chen Chen
Chalong Cheewakriangkrai
Ya Ling Tu
Keywords: Environmental Science;Medicine
Issue Date: 1-Feb-2022
Abstract: Gender is an important risk factor in predicting chronic kidney disease (CKD); however, it is under-researched. The purpose of this study was to examine whether gender differences affect the risk factors of early CKD prediction. This study used data from 19,270 adult health screenings, including 5101 with CKD, to screen for 11 independent variables selected as risk factors and to test for the significant effects of statistical Chi-square test variables, using seven machine learning techniques to train the predictive models. Performance indicators included classification accuracy, sensitivity, specificity, and precision. Unbalanced category issues were addressed using three extraction methods: manual sampling, the synthetic minority oversampling technique, and SpreadSub-sample. The Chi-square test revealed statistically significant results (p < 0.001) for gender, age, red blood cell count in urine, urine protein (PRO) content, and the PRO-to-urinary creatinine ratio. In terms of classifier prediction performance, the manual extraction method, logistic regression, exhibited the highest average prediction accuracy rate (0.8053) for men, whereas the manual extraction method, linear discriminant analysis, demonstrated the highest average prediction accuracy rate (0.8485) for women. The clinical features of a normal or abnormal PRO-to-urinary creatinine ratio indicated that PRO ratio, age, and urine red blood cell count are the most important risk factors with which to predict CKD in both genders. As a result, this study proposes a prediction model with acceptable prediction accuracy. The model supports doctors in diagnosis and treatment and achieves the goal of early detection and treatment. Based on the evidence-based medicine, machine learning methods are used to develop predictive model in this study. The model has proven to support the prediction of early clinical risk of CKD as much as possible to improve the efficacy and quality of clinical decision making.
URI: https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85123114445&origin=inward
http://cmuir.cmu.ac.th/jspui/handle/6653943832/72952
ISSN: 16604601
16617827
Appears in Collections:CMUL: Journal Articles

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