A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical Data

A large number of people suffer from certain types of osteoarthritis, such as knee, hip, and spine osteoarthritis. A correct prediction of osteoarthritis is an essential step to effectively diagnose and prevent severe osteoarthritis. Osteoarthritis is commonly diagnosed by experts through manual ins...

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Main Authors: Jihye Lim, Jungyoon Kim, Songhee Cheon
Format: Article
Language:English
Published: MDPI AG 2019-04-01
Series:International Journal of Environmental Research and Public Health
Subjects:
Online Access:https://www.mdpi.com/1660-4601/16/7/1281
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spelling doaj-706ba1e4defc4fcd974786311a7ec4842020-11-25T00:27:38ZengMDPI AGInternational Journal of Environmental Research and Public Health1660-46012019-04-01167128110.3390/ijerph16071281ijerph16071281A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical DataJihye Lim0Jungyoon Kim1Songhee Cheon2Department of Healthcare Management, Youngsan University, Yangsan 626-790, KoreaDepartment of Computer Science, Kent State University, Kent, OH 44242, USADepartment of Physical Therapy, Youngsan University, Yangsan 626-790, KoreaA large number of people suffer from certain types of osteoarthritis, such as knee, hip, and spine osteoarthritis. A correct prediction of osteoarthritis is an essential step to effectively diagnose and prevent severe osteoarthritis. Osteoarthritis is commonly diagnosed by experts through manual inspection of patients&#8217; medical images, which are usually collected in hospitals. Checking the occurrence of osteoarthritis is somewhat time-consuming for patients. In addition, the current studies are focused on automatically detecting osteoarthritis through image-based deep learning algorithms. This needs patients&#8217; medical images, which requires patients to visit the hospital. However, medical utilization and health behavior information as statistical data are easier to collect and access than medical images. Using indirect statistical data without any medical images to predict the occurrence of diverse forms of OA can have significant impacts on pro-active and preventive medical care. In this study, we used a deep neural network for detecting the occurrence of osteoarthritis using patient&#8217;s statistical data of medical utilization and health behavior information. The study was based on 5749 subjects. Principal component analysis with quantile transformer scaling was employed to generate features from the patients&#8217; simple background medical records and identify the occurrence of osteoarthritis. Our experiments showed that the proposed method using deep neural network with scaled PCA resulted in 76.8% of area under the curve (<i>AUC</i>) and minimized the effort to generate features. Hence, this methos can be a promising tool for patients and doctors to prescreen for possible osteoarthritis to reduce health costs and patients&#8217; time in hospitals.https://www.mdpi.com/1660-4601/16/7/1281osteoarthritispredictiondeep learningfeature extraction
collection DOAJ
language English
format Article
sources DOAJ
author Jihye Lim
Jungyoon Kim
Songhee Cheon
spellingShingle Jihye Lim
Jungyoon Kim
Songhee Cheon
A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical Data
International Journal of Environmental Research and Public Health
osteoarthritis
prediction
deep learning
feature extraction
author_facet Jihye Lim
Jungyoon Kim
Songhee Cheon
author_sort Jihye Lim
title A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical Data
title_short A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical Data
title_full A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical Data
title_fullStr A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical Data
title_full_unstemmed A Deep Neural Network-Based Method for Early Detection of Osteoarthritis Using Statistical Data
title_sort deep neural network-based method for early detection of osteoarthritis using statistical data
publisher MDPI AG
series International Journal of Environmental Research and Public Health
issn 1660-4601
publishDate 2019-04-01
description A large number of people suffer from certain types of osteoarthritis, such as knee, hip, and spine osteoarthritis. A correct prediction of osteoarthritis is an essential step to effectively diagnose and prevent severe osteoarthritis. Osteoarthritis is commonly diagnosed by experts through manual inspection of patients&#8217; medical images, which are usually collected in hospitals. Checking the occurrence of osteoarthritis is somewhat time-consuming for patients. In addition, the current studies are focused on automatically detecting osteoarthritis through image-based deep learning algorithms. This needs patients&#8217; medical images, which requires patients to visit the hospital. However, medical utilization and health behavior information as statistical data are easier to collect and access than medical images. Using indirect statistical data without any medical images to predict the occurrence of diverse forms of OA can have significant impacts on pro-active and preventive medical care. In this study, we used a deep neural network for detecting the occurrence of osteoarthritis using patient&#8217;s statistical data of medical utilization and health behavior information. The study was based on 5749 subjects. Principal component analysis with quantile transformer scaling was employed to generate features from the patients&#8217; simple background medical records and identify the occurrence of osteoarthritis. Our experiments showed that the proposed method using deep neural network with scaled PCA resulted in 76.8% of area under the curve (<i>AUC</i>) and minimized the effort to generate features. Hence, this methos can be a promising tool for patients and doctors to prescreen for possible osteoarthritis to reduce health costs and patients&#8217; time in hospitals.
topic osteoarthritis
prediction
deep learning
feature extraction
url https://www.mdpi.com/1660-4601/16/7/1281
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