The TabNet Model for Diagnosing Axial Spondyloarthritis Using MRI Imaging Findings and Clinical Risk Factors

IF 2.4 4区 医学 Q2 RHEUMATOLOGY International Journal of Rheumatic Diseases Pub Date : 2024-12-17 DOI:10.1111/1756-185X.70004
Zhaojuan Zhang, Yiling Pan, Yanjie Lu, Lusi Ye, Mo Zheng, Guodao Zhang, Dan Chen
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Abstract

Objectives

The aim of this study is to develop and validate a model for predicting axial spondyloarthritis (axSpA) based on sacroiliac joint (SIJ)-MRI imaging findings and clinical risk factors.

Methods

The study is implemented on the data of 942 patients which contains of 707 patients with axSpA and 235 patients with non-axSpA. To begin with, the patients were split into training (n = 753) and validation (n = 189) cohorts. Secondly, multiple assessors manually extract the features of active inflammation (bone marrow edema) and structural lesions (erosions, sclerosis, ankylosis, joint space changes, and fat lesions). Meanwhile, we utilize 11 machine learning models and TabNet to develop imaging models, which contain six clinical risk factors for clinical models and combined clinical-imaging models. Finally, the diagnostic performance of the aforementioned models was evaluated in the validation cohort including accuracy, area under the receiver operating characteristic curve (AUC), sensitivity, specificity, F1-score, and Matthew's correlation coefficient (MCC).

Results

Six features were extracted from the imaging findings. The combined clinical-imaging models outperform the clinical and imaging models. In contrast, the combined clinical-imaging model via TabNet (CCMRT) achieved the optimal AUC of 0.93(95% CI: 0.89, 0.97). Furthermore, it is observed that the bilateral joint space changes and right-sided erosions, HLA-B27 positivity, and CRP values significantly affected axSpA diagnostic prediction.

Conclusion

The prediction model based on clinical risk factors and SIJ-MRI imaging features can distinguish axSpA and non-axSpA effectively. In addition, the TabNet demonstrates superior diagnostic efficacy compared with machine learning models.

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利用MRI影像表现和临床危险因素诊断轴型脊柱炎的TabNet模型。
目的:本研究的目的是建立并验证一个基于骶髂关节(SIJ) mri成像结果和临床危险因素预测轴性脊柱炎(axSpA)的模型。方法:对942例患者的数据进行研究,其中axSpA患者707例,非axSpA患者235例。首先,患者被分成训练组(n = 753)和验证组(n = 189)。其次,多名评估员手动提取活动性炎症(骨髓水肿)和结构性病变(糜蚀、硬化、强直、关节间隙改变、脂肪病变)的特征。同时,我们利用11个机器学习模型和TabNet开发了包含6个临床危险因素的临床模型和临床-影像学联合模型。最后,在验证队列中评估上述模型的诊断性能,包括准确性、受试者工作特征曲线下面积(AUC)、敏感性、特异性、f1评分和马修相关系数(MCC)。结果:从影像学表现中提取出6个特征。临床-影像学联合模型优于临床-影像学模型。相比之下,通过TabNet (CCMRT)联合临床成像模型(CCMRT)获得的最佳AUC为0.93(95% CI: 0.89, 0.97)。此外,我们观察到双侧关节间隙改变和右侧侵蚀、HLA-B27阳性和CRP值显著影响axSpA的诊断预测。结论:基于临床危险因素和SIJ-MRI影像特征的预测模型能有效区分axSpA和非axSpA。此外,与机器学习模型相比,TabNet显示出更好的诊断效果。
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来源期刊
CiteScore
3.70
自引率
4.00%
发文量
362
审稿时长
1 months
期刊介绍: The International Journal of Rheumatic Diseases (formerly APLAR Journal of Rheumatology) is the official journal of the Asia Pacific League of Associations for Rheumatology. The Journal accepts original articles on clinical or experimental research pertinent to the rheumatic diseases, work on connective tissue diseases and other immune and allergic disorders. The acceptance criteria for all papers are the quality and originality of the research and its significance to our readership. Except where otherwise stated, manuscripts are peer reviewed by two anonymous reviewers and the Editor.
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