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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Jan 30, 2019
Open Peer Review Period: Feb 4, 2019 - Apr 1, 2019
Date Accepted: May 31, 2019
(closed for review but you can still tweet)

The final, peer-reviewed published version of this preprint can be found here:

Identification of Knee Osteoarthritis Based on Bayesian Network: Pilot Study

Sheng B, Huang L, Wang X, Zhuang J, Tang L, Deng C, Zhang Y

Identification of Knee Osteoarthritis Based on Bayesian Network: Pilot Study

JMIR Med Inform 2019;7(3):e13562

DOI: 10.2196/13562

PMID: 31322132

PMCID: 6670282

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Identification of Knee Osteoarthritis Based on Bayesian Network: Pilot Study

  • Bo Sheng; 
  • Liang Huang; 
  • Xiangbin Wang; 
  • Jie Zhuang; 
  • Lihua Tang; 
  • Chao Deng; 
  • Yanxin Zhang

Background:

Early identification of knee osteoarthritis (OA) can improve treatment outcomes and reduce medical costs. However, there are major limitations among existing classification or prediction models, including abstract data processing and complicated dataset attributes, which hinder their applications in clinical practice.

Objective:

The aim of this study was to propose a Bayesian network (BN)–based classification model to classify people with knee OA. The proposed model can be treated as a prescreening tool, which can provide decision support for health professionals.

Methods:

The proposed model’s structure was based on a 3-level BN structure and then retrained by the Bayesian Search (BS) learning algorithm. The model’s parameters were determined by the expectation-maximization algorithm. The used dataset included backgrounds, the target disease, and predictors. The performance of the model was evaluated based on classification accuracy, area under the curve (AUC), specificity, sensitivity, positive predictive value (PPV), and negative predictive value (NPV); it was also compared with other well-known classification models. A test was also performed to explore whether physical fitness tests could improve the performance of the proposed model.

Results:

A total of 249 elderly people between the ages of 60 and 80 years, living in the Kongjiang community (Shanghai), were recruited from April to September 2007. A total of 157 instances were adopted as the dataset after data preprocessing. The experimental results showed that the results of the proposed model were higher than, or equal to, the mean scores of other classification models: .754 for accuracy, .78 for AUC, .78 for specificity, and .73 for sensitivity. The proposed model provided .45 for PPV and .92 for NPV at the prevalence of 20%. The proposed model also showed a significant improvement when compared with the traditional BN model: 6.3% increase in accuracy (from .709 to .754), 4.0% increase in AUC (from .75 to .78), 6.8% increase in specificity (from .73 to .78), 5.8% increase in sensitivity (from .69 to .73), 15.4% increase in PPV (from .39 to .45), and 2.2% increase in NPV (from .90 to .92). Furthermore, the test results showed that the performance of the proposed model could be largely enhanced through physical fitness tests in 3 evaluation indices: 10.6% increase in accuracy (from .682 to .754), 16.4% increase in AUC (from .67 to .78), and 30.0% increase in specificity (from .60 to .78).

Conclusions:

The proposed model presents a promising method to classify people with knee OA when compared with other classification models and the traditional BN model. It could be implemented in clinical practice as a prescreening tool for knee OA, which would not only improve the quality of health care for elderly people but also reduce overall medical costs.


 Citation

Please cite as:

Sheng B, Huang L, Wang X, Zhuang J, Tang L, Deng C, Zhang Y

Identification of Knee Osteoarthritis Based on Bayesian Network: Pilot Study

JMIR Med Inform 2019;7(3):e13562

DOI: 10.2196/13562

PMID: 31322132

PMCID: 6670282

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