Francesca Angelone, Federica Kiyomi Ciliberti, Giovanni Paolo Tobia, Halldór Jónsson, Alfonso Maria Ponsiglione, Magnus Kjartan Gislason, Francesco Tortorella, Francesco Amato, Paolo Gargiulo
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引用次数: 0
摘要
骨关节炎(OA)是一种常见的关节疾病,影响着全世界的人们,关节疼痛和功能受限严重影响了人们的生活质量。这项研究探索了放射组学(定量图像分析与机器学习相结合)在增强膝关节OA诊断方面的潜力。利用 138 个膝关节的核磁共振成像和 CT 扫描的多模态数据集,从软骨片段中提取了放射组学特征。采用机器学习算法,根据放射学特征对退化膝关节和健康膝关节进行分类。在相关性和重要性分析的指导下进行特征选择,发现纹理和形状相关特征是关键的预测因素。稳健性分析评估了特征在分割变化中的稳定性,进一步完善了特征选择。结果表明,利用放射组学对膝关节 OA 进行分类的准确率很高,展示了其在早期疾病检测和个性化治疗方法方面的潜力。这项工作有助于推进OA评估,也是旨在开发OA新疗法的欧洲SINPAIN项目的一部分。
Innovative Diagnostic Approaches for Predicting Knee Cartilage Degeneration in Osteoarthritis Patients: A Radiomics-Based Study
Osteoarthritis (OA) is a common joint disease affecting people worldwide, notably impacting quality of life due to joint pain and functional limitations. This study explores the potential of radiomics — quantitative image analysis combined with machine learning — to enhance knee OA diagnosis. Using a multimodal dataset of MRI and CT scans from 138 knees, radiomic features were extracted from cartilage segments. Machine learning algorithms were employed to classify degenerated and healthy knees based on radiomic features. Feature selection, guided by correlation and importance analyses, revealed texture and shape-related features as key predictors. Robustness analysis, assessing feature stability across segmentation variations, further refined feature selection. Results demonstrate high accuracy in knee OA classification using radiomics, showcasing its potential for early disease detection and personalized treatment approaches. This work contributes to advancing OA assessment and is part of the European SINPAIN project aimed at developing new OA therapies.
期刊介绍:
The interdisciplinary interfaces of Information Systems (IS) are fast emerging as defining areas of research and development in IS. These developments are largely due to the transformation of Information Technology (IT) towards networked worlds and its effects on global communications and economies. While these developments are shaping the way information is used in all forms of human enterprise, they are also setting the tone and pace of information systems of the future. The major advances in IT such as client/server systems, the Internet and the desktop/multimedia computing revolution, for example, have led to numerous important vistas of research and development with considerable practical impact and academic significance. While the industry seeks to develop high performance IS/IT solutions to a variety of contemporary information support needs, academia looks to extend the reach of IS technology into new application domains. Information Systems Frontiers (ISF) aims to provide a common forum of dissemination of frontline industrial developments of substantial academic value and pioneering academic research of significant practical impact.