Triantafyllou Matthaios, Klontzas Michail E, Koltsakis Emmanouil, Papakosta Vasiliki, Spanakis Konstantinos, Karantanas Apostolos H
Department of Medical Imaging, University Hospital of Heraklion, 71110 Heraklion, Greece.
Department of Radiology, School of Medicine, University of Crete, Voutes Campus, 71500 Heraklion, Greece.
Diagnostics (Basel). 2023 Aug 3;13(15):2587. doi: 10.3390/diagnostics13152587.
Detecting active inflammatory sacroiliitis at an early stage is vital for prescribing medications that can modulate disease progression and significantly delay or prevent debilitating forms of axial spondyloarthropathy. Conventional radiography and computed tomography offer limited sensitivity in detecting acute inflammatory findings as these methods primarily identify chronic structural lesions. Conversely, Magnetic Resonance Imaging (MRI) is the preferred technique for detecting bone marrow edema, although it is a complex process requiring extensive expertise. Additionally, ascertaining the origin of lesions can be challenging, even for experienced medical professionals. Machine learning (ML) has showcased its proficiency in various fields by uncovering patterns that are not easily perceived from multi-dimensional datasets derived from medical imaging. The aim of this study is to develop a radiomic signature to aid clinicians in diagnosing active sacroiliitis. A total of 354 sacroiliac joints were segmented from axial fluid-sensitive MRI images, and their radiomic features were extracted. After selecting the most informative features, a number of ML algorithms were utilized to identify the optimal method for detecting active sacroiliitis, leading to the selection of an Extreme Gradient Boosting (XGBoost) model that accomplished an Area Under the Receiver-Operating Characteristic curve (AUC-ROC) of 0.71, thus further showcasing the potential of radiomics in the field.
早期检测活动性炎性骶髂关节炎对于开具能够调节疾病进展并显著延迟或预防致残性轴向脊柱关节病的药物至关重要。传统的X线摄影和计算机断层扫描在检测急性炎症表现方面灵敏度有限,因为这些方法主要识别慢性结构病变。相反,磁共振成像(MRI)是检测骨髓水肿的首选技术,尽管这是一个需要广泛专业知识的复杂过程。此外,即使对于经验丰富的医学专业人员来说,确定病变的起源也可能具有挑战性。机器学习(ML)通过从医学影像的多维数据集中发现不易察觉的模式,在各个领域展示了其优势。本研究的目的是开发一种放射组学特征,以帮助临床医生诊断活动性骶髂关节炎。从轴向液体敏感MRI图像中分割出总共354个骶髂关节,并提取其放射组学特征。在选择最具信息量的特征后,使用了多种ML算法来确定检测活动性骶髂关节炎的最佳方法,最终选择了一种极端梯度提升(XGBoost)模型,该模型的受试者工作特征曲线下面积(AUC-ROC)为0.71,进一步展示了放射组学在该领域的潜力。