Quantitative MRI Assessment of Post-Surgical Spinal Cord Injury Through Radiomic Analysis.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Azadeh Sharafi, Andrew P Klein, Kevin M Koch
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Abstract

This study investigates radiomic efficacy in post-surgical traumatic spinal cord injury (SCI), overcoming MRI limitations from metal artifacts to enhance diagnosis, severity assessment, and lesion characterization or prognosis and therapy guidance. Traumatic spinal cord injury (SCI) causes severe neurological deficits. While MRI allows qualitative injury evaluation, standard imaging alone has limitations for precise SCI diagnosis, severity stratification, and pathology characterization, which are needed to guide prognosis and therapy. Radiomics enables quantitative tissue phenotyping by extracting a high-dimensional set of descriptive texture features from medical images. However, the efficacy of postoperative radiomic quantification in the presence of metal-induced MRI artifacts from spinal instrumentation has yet to be fully explored. A total of 50 healthy controls and 12 SCI patients post-stabilization surgery underwent 3D multi-spectral MRI. Automated spinal cord segmentation was followed by radiomic feature extraction. Supervised machine learning categorized SCI versus controls, injury severity, and lesion location relative to instrumentation. Radiomics differentiated SCI patients (Matthews correlation coefficient (MCC) 0.97; accuracy 1.0), categorized injury severity (MCC: 0.95; ACC: 0.98), and localized lesions (MCC: 0.85; ACC: 0.90). Combined T1 and T2 features outperformed individual modalities across tasks with gradient boosting models showing the highest efficacy. The radiomic framework achieved excellent performance, differentiating SCI from controls and accurately categorizing injury severity. The ability to reliably quantify SCI severity and localization could potentially inform diagnosis, prognosis, and guide therapy. Further research is warranted to validate radiomic SCI biomarkers and explore clinical integration.

通过放射组学分析定量MRI评估术后脊髓损伤。
本研究探讨了放射学在术后创伤性脊髓损伤(SCI)中的疗效,克服了金属伪影的MRI限制,以增强诊断、严重程度评估、病变表征或预后和治疗指导。外伤性脊髓损伤(SCI)引起严重的神经功能缺损。虽然MRI可以对损伤进行定性评估,但单独的标准成像在精确的脊髓损伤诊断、严重程度分层和病理表征方面存在局限性,这些都是指导预后和治疗所必需的。放射组学通过从医学图像中提取一组高维描述性纹理特征来实现定量组织表型。然而,在脊柱内固定术中存在金属诱导MRI伪影的情况下,术后放射量化的有效性尚未得到充分探讨。50名健康对照者和12名脊髓损伤患者在稳定手术后接受了3D多光谱MRI检查。自动脊髓分割后进行放射学特征提取。监督式机器学习将脊髓损伤与对照组、损伤严重程度和相对于器械的病变位置进行分类。放射组学鉴别脊髓损伤患者(Matthews相关系数(MCC) 0.97;准确度1.0),分类损伤严重程度(MCC: 0.95;ACC: 0.98)和局部病变(MCC: 0.85;ACC: 0.90)。综合T1和T2特征在任务中的表现优于单个模式,梯度增强模型显示出最高的效果。放射框架取得了优异的性能,区分了脊髓损伤和对照组,并准确地分类了损伤的严重程度。能够可靠地量化脊髓损伤的严重程度和定位,可以潜在地为诊断、预后和指导治疗提供信息。需要进一步的研究来验证放射学SCI生物标志物并探索临床整合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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