Deep Learning for Predicting Progression of Patellofemoral Osteoarthritis Based on Lateral Knee Radiographs, Demographic Data, and Symptomatic Assessments.

IF 1.3 4区 医学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Methods of Information in Medicine Pub Date : 2024-05-01 Epub Date: 2024-04-11 DOI:10.1055/a-2305-2115
Neslihan Bayramoglu, Martin Englund, Ida K Haugen, Muneaki Ishijima, Simo Saarakkala
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Abstract

Objective: In this study, we propose a novel framework that utilizes deep learning and attention mechanisms to predict the radiographic progression of patellofemoral osteoarthritis (PFOA) over a period of 7 years.

Material and methods: This study included subjects (1,832 subjects, 3,276 knees) from the baseline of the Multicenter Osteoarthritis Study (MOST). Patellofemoral joint regions of interest were identified using an automated landmark detection tool (BoneFinder) on lateral knee X-rays. An end-to-end deep learning method was developed for predicting PFOA progression based on imaging data in a five-fold cross-validation setting. To evaluate the performance of the models, a set of baselines based on known risk factors were developed and analyzed using gradient boosting machine (GBM). Risk factors included age, sex, body mass index, and Western Ontario and McMaster Universities Arthritis Index score, and the radiographic osteoarthritis stage of the tibiofemoral joint (Kellgren and Lawrence [KL] score). Finally, to increase predictive power, we trained an ensemble model using both imaging and clinical data.

Results: Among the individual models, the performance of our deep convolutional neural network attention model achieved the best performance with an area under the receiver operating characteristic curve (AUC) of 0.856 and average precision (AP) of 0.431, slightly outperforming the deep learning approach without attention (AUC = 0.832, AP = 0.4) and the best performing reference GBM model (AUC = 0.767, AP = 0.334). The inclusion of imaging data and clinical variables in an ensemble model allowed statistically more powerful prediction of PFOA progression (AUC = 0.865, AP = 0.447), although the clinical significance of this minor performance gain remains unknown. The spatial attention module improved the predictive performance of the backbone model, and the visual interpretation of attention maps focused on the joint space and the regions where osteophytes typically occur.

Conclusion: This study demonstrated the potential of machine learning models to predict the progression of PFOA using imaging and clinical variables. These models could be used to identify patients who are at high risk of progression and prioritize them for new treatments. However, even though the accuracy of the models were excellent in this study using the MOST dataset, they should be still validated using external patient cohorts in the future.

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基于膝关节外侧X光片、人口统计学数据和症状评估的深度学习预测髌骨骨关节炎的进展情况
目的:在本研究中,我们提出了一种新的框架,利用深度学习和注意力机制来预测髌骨骨关节炎(PFOA)在七年内的放射学进展:在这项研究中,我们提出了一个新颖的框架,利用深度学习和注意力机制来预测七年内髌股骨关节炎(PFOA)的放射学进展:本研究纳入了多中心骨关节炎研究(MOST)基线的受试者(1832名受试者,3276个膝关节)。使用膝关节侧位 X 光片上的自动地标检测工具(BoneFinder)确定髌股关节感兴趣区。开发了一种端到端的深度学习方法,用于在 5 倍交叉验证设置中根据成像数据预测 PFOA 的进展。为了评估模型的性能,使用梯度提升机(GBM)开发并分析了一组基于已知风险因素的基线。风险因素包括年龄、性别、体重指数(BMI)和 WOMAC 评分,以及胫股关节的放射骨关节炎分期(KL 评分)。最后,为了提高预测能力,我们利用影像学和临床数据训练了一个集合模型:在单个模型中,我们的深度卷积神经网络注意力模型性能最佳,AUC 为 0.856,AP 为 0.431;略优于无注意力的深度学习方法(AUC=0.832,AP=0.4)和性能最佳的参考 GBM 模型(AUC=0.767,AP=0.334)。在一个集合模型中加入成像数据和临床变量后,对 PFOA 进展的预测在统计学上更为有力(AUC=0.865,AP=0.447),但这一微小的性能提升的临床意义仍不得而知。空间注意力模块提高了骨干模型的预测性能,注意力图的可视化解读侧重于关节空间和骨质增生的典型发生区域:本研究证明了机器学习模型利用成像和临床变量预测 PFOA 进展的潜力。这些模型可用于识别病情恶化风险较高的患者,并优先选择新的治疗方法。不过,尽管本研究中使用 MOST 数据集的模型准确性很高,但今后仍应使用外部患者队列对其进行验证。
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来源期刊
Methods of Information in Medicine
Methods of Information in Medicine 医学-计算机:信息系统
CiteScore
3.70
自引率
11.80%
发文量
33
审稿时长
6-12 weeks
期刊介绍: Good medicine and good healthcare demand good information. Since the journal''s founding in 1962, Methods of Information in Medicine has stressed the methodology and scientific fundamentals of organizing, representing and analyzing data, information and knowledge in biomedicine and health care. Covering publications in the fields of biomedical and health informatics, medical biometry, and epidemiology, the journal publishes original papers, reviews, reports, opinion papers, editorials, and letters to the editor. From time to time, the journal publishes articles on particular focus themes as part of a journal''s issue.
期刊最新文献
Cross-lingual Natural Language Processing on Limited Annotated Case/Radiology Reports in English and Japanese: Insights from the Real-MedNLP Workshop. Artificial Intelligence-Based Prediction of Contrast Medium Doses for Computed Tomography Angiography Using Optimized Clinical Parameter Sets. Development and Validation of a Natural Language Processing Algorithm to Pseudonymize Documents in the Context of a Clinical Data Warehouse. Deep Learning for Predicting Progression of Patellofemoral Osteoarthritis Based on Lateral Knee Radiographs, Demographic Data, and Symptomatic Assessments. Europe's Largest Research Infrastructure for Curated Medical Data Models with Semantic Annotations.
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