To construct a forecasting model of the anthropometric chronic disease risk factor score

Yi Chou Chuang, Ming Hsu Wang, Ding Hau Huang, Chien Hsin Yang, Jen Der Lin

Research output: Contribution to journalArticle

3 Citations (Scopus)

Abstract

Background: Many health indices have a relationship with anthropometric indices. This research attempts to provide a new measurement: a chronic disease risk factor score built into the regression model. This new model will help people visualize their health status and get multiple information during the process of the healthy examination. Methods: Data from 8,034 subjects were collected from the data bank of the Health Examination Center in Chang Gung Memorial Hospital. Related anthropometric indices and biochemical factors were selected and used to construct a regression model. The anthropometric indices used were body mass index, waist hip ratio, waist hip area ratio, health index, waist leg ratio and trunk leg ratio. Biochemical data included blood pressure, glucose, triglyceride, cholesterol and uric acid, combined to form an anthropometric chronic disease risk factor score. Results: Subjects under 45 years of age had the highest chronic disease risk factor score, and were selected to construct a regression model. The R-square of this model is 0.355; its predictive error is near 12%. After verification with a testing group, the regression model could be used to predict health status. Conclusion: The purpose of this study was to develop a new anthropometric chronic disease risk factor score by combining anthropometric indices and biochemical data. A multiple regression model was used to illustrate health status via anthropometric chronic disease risk factor scores for the subjects participating in the health examination. The results show that the chronic disease risk factor score is useful for prescribing relevant medical treatment as well as for other research.

Original languageEnglish
Pages (from-to)135-142
Number of pages8
JournalChang Gung Medical Journal
Volume29
Issue number2
Publication statusPublished - Mar 1 2006
Externally publishedYes

Fingerprint

Chronic Disease
Health Status
Waist-Hip Ratio
Health
Leg
Uric Acid
Research
Blood Glucose
Triglycerides
Body Mass Index
Cholesterol
Databases
Blood Pressure

Keywords

  • Anthropometric chronic disease risk factor score (ACDRFS)
  • Body mass index (BMI)
  • Chronic disease risk factor score
  • Waist hip ratio (WHR)
  • Whole body scanner

ASJC Scopus subject areas

  • Medicine(all)

Cite this

To construct a forecasting model of the anthropometric chronic disease risk factor score. / Chuang, Yi Chou; Wang, Ming Hsu; Huang, Ding Hau; Yang, Chien Hsin; Lin, Jen Der.

In: Chang Gung Medical Journal, Vol. 29, No. 2, 01.03.2006, p. 135-142.

Research output: Contribution to journalArticle

Chuang, Yi Chou ; Wang, Ming Hsu ; Huang, Ding Hau ; Yang, Chien Hsin ; Lin, Jen Der. / To construct a forecasting model of the anthropometric chronic disease risk factor score. In: Chang Gung Medical Journal. 2006 ; Vol. 29, No. 2. pp. 135-142.
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