(2023) Identifying the Most Important Factors in Determining the Osteoporosis in Women Using Data Mining Techniques. Acta Medica Iranica. pp. 229-237. ISSN 00446025 (ISSN)
Full text not available from this repository.
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. © 2023 Tehran University of Medical Sciences. All rights reserved.
Item Type: | Article |
---|---|
Keywords: | Data mining Osteoporosis Women calcium corticosteroid accuracy adult aged area under the curve Article asthma backache Bayesian learning body height body weight controlled study data collection method data preprocessing data processing decision tree diagnostic test accuracy study feature selection female fracture hormone substitution human independent variable insulin dependent diabetes mellitus kidney disease linear regression analysis machine learning measurement precision menopause menstrual irregularity mortality nerve cell network non insulin dependent diabetes mellitus prediction probability random forest RapidMiner rheumatoid arthritis software stomach disease |
Page Range: | pp. 229-237 |
Journal or Publication Title: | Acta Medica Iranica |
Journal Index: | Scopus |
Volume: | 61 |
Number: | 4 |
Identification Number: | https://doi.org/10.18502/acta.v61i4.13174 |
ISSN: | 00446025 (ISSN) |
Depositing User: | خانم ناهید ضیائی |
URI: | http://eprints.mui.ac.ir/id/eprint/28258 |
Actions (login required)
![]() |
View Item |