Title A comparison of decision tree induction with binary logistic regression for the prediction of the risk of cardiovascular diseases in adult men /
Authors Grabauskytė, Ingrida ; Tamošiūnas, Abdonas ; Kavaliauskas, Mindaugas ; Radišauskas, Ričardas ; Bernotienė, Gailutė ; Janilionis, Vytautas
DOI 10.15388/Informatica.2018.187
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Is Part of Informatica.. Vilnius : Vilniaus universiteto leidykla. 2018, vol. 29, iss. 4, p. 675-692.. ISSN 0868-4952. eISSN 1822-8844
Keywords [eng] logistic regression ; decision tree ; ischemic heart disease ; cardiovascular disease
Abstract [eng] The main purpose of this article was to compare traditional binary logistic regression analysis with decision tree analysis for the evaluation of the risk of cardiovascular diseases in adult men living in the city. Patients and methods. In our study, we used data from the Multifactorial Ischemic Heart Disease Prevention Study (MIHDPS). In the MIHDPS study, a random sample of male inhabitants of Kaunas city (Lithuania) aged 40-59 years was examined between 1977 and 1980. We analysed a sample of 5626 men. Taking blood pressure lowering medicine, disability, intermittent claudication, regular smoking, a higher value of the body mass index, systolic blood pressure, age, total serum cholesterol, and walking in winter were associated with a higher probability of ischemic heart disease or cardiovascular diseases. Having more siblings and drinking alcohol were associated with a lower probability of these diseases. The binary logistic regression method showed a very slightly lower level of errors than the decision tree did (the difference between the two methods was 2.04% for ischemic heart disease (IHD) and 2.86% for cardiovascular disease (CVD), but for consumers, the decision tree is easier to understand and interpret the results. Both of these methods are appropriate to analyse cardiovascular disease data.
Published Vilnius : Vilniaus universiteto leidykla
Type Journal article
Language English
Publication date 2018
CC license CC license description