Identifying the Most Important Factors in Determining the Osteoporosis in Women Using Data Mining Techniques

Q3 Medicine Acta medica Iranica Pub Date : 2023-07-12 DOI:10.18502/acta.v61i4.13174
M. Salamat, A. Salamat, M. Sattari, S. Saeedbakhsh, Mehdi Asgari
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Abstract

Osteoporosis is one of the primary causes of disability and mortality in the elderly. If osteoporosis's significant features can be identified, the risk of developing this disease will be reduced. In recent years, data mining approaches have become a suitable tool for medical researchers. This study applied data mining methods to identify osteoporosis’s significant features. This study applied data from women having osteoporosis or osteopenia in the period 2011-2019 in the Osteoporosis Diagnosis Center, Isfahan, Iran. Data mining methods such as linear regression, naïve bayes, decision tree, support vector machine, random forest, and neural network were implemented on the dataset. This study consisted of 8258 patients’ information, of which 1482 had osteoporosis. The results showed that the support vector machine, decision tree, neural network are the best method based on accuracy, precision, and AUC measures. Six candidate features were age, weight, back pain, low activity, menopause date, and previous fracture. Support vector machine, decision tree, and neural network are the best candidate techniques for predicting osteoporosis. Thin older people are more at risk of osteoporosis than other people. Yet, people with middleweight and middle age are at lower risk of osteoporosis.
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利用数据挖掘技术确定女性骨质疏松症的最重要因素
骨质疏松症是老年人致残和死亡的主要原因之一。如果骨质疏松症的显著特征能够被识别出来,那么患这种疾病的风险就会降低。近年来,数据挖掘方法已经成为医学研究人员的一个合适的工具。本研究应用数据挖掘方法识别骨质疏松症的显著特征。本研究应用了伊朗伊斯法罕骨质疏松症诊断中心2011-2019年骨质疏松症或骨质减少症女性的数据。在数据集上实现了线性回归、naïve贝叶斯、决策树、支持向量机、随机森林和神经网络等数据挖掘方法。本研究共纳入8258例患者资料,其中1482例患有骨质疏松症。结果表明,基于准确度、精密度和AUC度量,支持向量机、决策树和神经网络是最佳的方法。六个候选特征是年龄、体重、背痛、活动量低、绝经日期和以前的骨折。支持向量机、决策树和神经网络是预测骨质疏松症的最佳候选技术。瘦弱的老年人比其他人更容易患骨质疏松症。然而,中等体重和中年人患骨质疏松症的风险较低。
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来源期刊
Acta medica Iranica
Acta medica Iranica Medicine-Medicine (all)
CiteScore
0.70
自引率
0.00%
发文量
83
审稿时长
18 weeks
期刊介绍: ACTA MEDICA IRANICA (p. ISSN 0044-6025; e. ISSN: 1735-9694) is the official journal of the Faculty of Medicine, Tehran University of Medical Sciences. The journal is the oldest scientific medical journal of the country, which has been published from 1960 onward in English language. Although it had been published quarterly in the past, the journal has been published bimonthly (6 issues per year) from the year 2004. Acta Medica Iranica it is an international journal with multidisciplinary scope which publishes original research papers, review articles, case reports, and letters to the editor from all over the world. The journal has a wide scope and allows scientists, clinicians, and academic members to publish their original works in this field.
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