基于 CT 的放射组学:预测严重动脉粥样硬化性肾动脉狭窄患者经皮腔内肾血管成形术后的早期预后。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Jia Fu, Mengjie Fang, Zhiyong Lin, Jianxing Qiu, Min Yang, Jie Tian, Di Dong, Yinghua Zou
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引用次数: 0

摘要

本研究旨在全面评估基于非对比度计算机断层扫描(CT)的放射组学在预测经皮腔内肾血管成形术(PTRA)后严重动脉粥样硬化性肾动脉狭窄(ARAS)患者的早期预后方面的作用。研究人员回顾性招募了52名患者,收集了他们的临床特征和治疗前的CT图像。在中位 3.7 个月的随访期间,18 名患者被证实从治疗中获益,即估计肾小球滤过率从基线改善了 20%。通过自我监督学习训练的深度学习网络用于增强成像表型特征。从受影响的肾脏和肾周脂肪区域提取了放射组学特征,包括116个手工特征和78个深度学习特征。后者的更多特征与单变量分析确定的早期结果相关,并在放射组学热图和火山图中直观地表现出来。在使用共识聚类和最小绝对收缩及选择算子法进行特征选择后,对五个机器学习模型进行了评估。对于肾脏特征,逻辑回归的留一交叉验证准确率最高,为 0.780(95%CI:0.660-0.880),而对于肾周脂肪特征,支持向量机的准确率为 0.865(95%CI:0.769-0.942)。使用 SHapley Additive exPlanations 直观解释预测机制,发现直方图特征和深度学习特征分别是对肾脏特征和肾周脂肪特征影响最大的因素。多变量分析表明,这两个特征都是独立的预测因素。两者结合后,接收者操作特征曲线下面积达到 0.888(95%CI:0.784-0.992),表明两个区域的成像表型互为补充。总之,基于非对比CT的放射组学可用于预测PTRA的早期疗效,从而帮助确定适合接受这种治疗的ARAS患者,其中肾周脂肪组织具有更高的预测价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CT-based radiomics: predicting early outcomes after percutaneous transluminal renal angioplasty in patients with severe atherosclerotic renal artery stenosis.

This study aimed to comprehensively evaluate non-contrast computed tomography (CT)-based radiomics for predicting early outcomes in patients with severe atherosclerotic renal artery stenosis (ARAS) after percutaneous transluminal renal angioplasty (PTRA). A total of 52 patients were retrospectively recruited, and their clinical characteristics and pretreatment CT images were collected. During a median follow-up period of 3.7 mo, 18 patients were confirmed to have benefited from the treatment, defined as a 20% improvement from baseline in the estimated glomerular filtration rate. A deep learning network trained via self-supervised learning was used to enhance the imaging phenotype characteristics. Radiomics features, comprising 116 handcrafted features and 78 deep learning features, were extracted from the affected renal and perirenal adipose regions. More features from the latter were correlated with early outcomes, as determined by univariate analysis, and were visually represented in radiomics heatmaps and volcano plots. After using consensus clustering and the least absolute shrinkage and selection operator method for feature selection, five machine learning models were evaluated. Logistic regression yielded the highest leave-one-out cross-validation accuracy of 0.780 (95%CI: 0.660-0.880) for the renal signature, while the support vector machine achieved 0.865 (95%CI: 0.769-0.942) for the perirenal adipose signature. SHapley Additive exPlanations was used to visually interpret the prediction mechanism, and a histogram feature and a deep learning feature were identified as the most influential factors for the renal signature and perirenal adipose signature, respectively. Multivariate analysis revealed that both signatures served as independent predictive factors. When combined, they achieved an area under the receiver operating characteristic curve of 0.888 (95%CI: 0.784-0.992), indicating that the imaging phenotypes from both regions complemented each other. In conclusion, non-contrast CT-based radiomics can be leveraged to predict the early outcomes of PTRA, thereby assisting in identifying patients with ARAS suitable for this treatment, with perirenal adipose tissue providing added predictive value.

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CiteScore
7.20
自引率
4.30%
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