Prediction of total knee replacement using deep learning analysis of knee MRI

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作者
Haresh Rengaraj Rajamohan
Tianyu Wang
Kevin Leung
Gregory Chang
Kyunghyun Cho
Richard Kijowski
Cem M. Deniz
机构
[1] New York University,Center for Data Science
[2] New York University,Courant Institute of Mathematical Sciences
[3] New York University Langone Health,Department of Radiology
[4] New York University Langone Health,Bernard and Irene Schwartz Center for Biomedical Imaging
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Scientific Reports | / 13卷
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Current methods for assessing knee osteoarthritis (OA) do not provide comprehensive information to make robust and accurate outcome predictions. Deep learning (DL) risk assessment models were developed to predict the progression of knee OA to total knee replacement (TKR) over a 108-month follow-up period using baseline knee MRI. Participants of our retrospective study consisted of 353 case–control pairs of subjects from the Osteoarthritis Initiative with and without TKR over a 108-month follow-up period matched according to age, sex, ethnicity, and body mass index. A traditional risk assessment model was created to predict TKR using baseline clinical risk factors. DL models were created to predict TKR using baseline knee radiographs and MRI. All DL models had significantly higher (p < 0.001) AUCs than the traditional model. The MRI and radiograph ensemble model and MRI ensemble model (where TKR risk predicted by several contrast-specific DL models were averaged to get the ensemble TKR risk prediction) had the highest AUCs of 0.90 (80% sensitivity and 85% specificity) and 0.89 (79% sensitivity and 86% specificity), respectively, which were significantly higher (p < 0.05) than the AUCs of the radiograph and multiple MRI models (where the DL models were trained to predict TKR risk using single contrast or 2 contrasts together as input). DL models using baseline MRI had a higher diagnostic performance for predicting TKR than a traditional model using baseline clinical risk factors and a DL model using baseline knee radiographs.
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[1]  
Felson DT(1998)An update on the epidemiology of knee and hip osteoarthritis with a view to prevention Arthritis Rheum. 41 1343-1355
[2]  
Zhang Y(2015)Lifetime medical costs of knee osteoarthritis management in the United States: Impact of extending indications for total knee arthroplasty Arthritis Care Res. (Hoboken) 67 203-215
[3]  
Losina E(2007)Effect of weight reduction in obese patients diagnosed with knee osteoarthritis: A systematic review and meta-analysis Ann. Rheum. Dis. 66 433-439
[4]  
Paltiel AD(2005)Aerobic walking or strengthening exercise for osteoarthritis of the knee? A systematic review Ann. Rheum. Dis. 64 544-548
[5]  
Weinstein AM(2016)Disease-modifying treatments for osteoarthritis (DMOADs) of the knee and hip: Lessons learned from failures and opportunities for the future Osteoarthr. Cartil. 24 2013-2021
[6]  
Yelin E(2014)Identifying and treating preclinical and early osteoarthritis Rheum. Dis. Clin. N. Am. 40 699-710
[7]  
Hunter DJ(2006)Workshop for consensus on osteoarthritis imaging: MRI of the knee Osteoarthr. Cartil. OARS Osteoarthr. Res. Soc. 14 44-45
[8]  
Chen SP(2009)Risk stratification for knee osteoarthritis progression: A narrative review Osteoarthr. Cartil. 17 1402-1407
[9]  
Klara K(2011)Risk factors predictive of joint replacement in a 2-year multicentre clinical trial in knee osteoarthritis using MRI: Results from over 6 years of observation Ann. Rheum. Dis. 70 1382-1388
[10]  
Suter LG(2015)Predictive value of semi-quantitative MRI-based scoring systems for future knee replacement: Data from the osteoarthritis initiative Skelet. Radiol. 44 1655-1662