Radiomics machine learning based on asymmetrically prominent cortical and deep medullary veins combined with clinical features to predict prognosis in acute ischemic stroke: a retrospective study.

IF 2.3 3区 生物学 Q2 MULTIDISCIPLINARY SCIENCES
PeerJ Pub Date : 2025-06-06 eCollection Date: 2025-01-01 DOI:10.7717/peerj.19469
Hongyi Li, Cancan Chang, Bo Zhou, Yu Lan, Peizhuo Zang, Shannan Chen, Shouliang Qi, Ronghui Ju, Yang Duan
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引用次数: 0

Abstract

Background: Acute ischemic stroke (AIS) has a poor prognosis and a high recurrence rate. Predicting the outcomes of AIS patients in the early stages of the disease is therefore important. The establishment of intracerebral collateral circulation significantly improves the survival of brain cells and the outcomes of AIS patients. However, no machine learning method has been applied to investigate the correlation between the dynamic evolution of intracerebral venous collateral circulation and AIS prognosis. Therefore, we employed a support vector machine (SVM) algorithm to analyze asymmetrically prominent cortical veins (APCVs) and deep medullary veins (DMVs) to establish a radiomic model for predicting the prognosis of AIS by combining clinical indicators.

Methods: The magnetic resonance imaging (MRI) data and clinical indicators of 150 AIS patients were retrospectively analyzed. Regions of interest corresponding to the DMVs and APCVs were delineated, and least absolute shrinkage and selection operator (LASSO) regression was used to select features extracted from these regions. An APCV-DMV radiomic model was created via the SVM algorithm, and independent clinical risk factors associated with AIS were combined with the radiomic model to generate a joint model. The SVM algorithm was selected because of its proven efficacy in handling high-dimensional radiomic data compared with alternative classifiers (e.g., random forest) in pilot experiments.

Results: Nine radiomic features associated with AIS patient outcomes were ultimately selected. In the internal training test set, the AUCs of the clinical, DMV-APCV radiomic and joint models were 0.816, 0.976 and 0.996, respectively. The DeLong test revealed that the predictive performance of the joint model was better than that of the individual models, with a test set AUC of 0.996, sensitivity of 0.905, and specificity of 1.000 (P < 0.05).

Conclusions: Using radiomic methods, we propose a novel joint predictive model that combines the imaging histologic features of the APCV and DMV with clinical indicators. This model quantitatively characterizes the morphological and functional attributes of venous collateral circulation, elucidating its important role in accurately evaluating the prognosis of patients with AIS and providing a noninvasive and highly accurate imaging tool for early prognostic prediction.

基于不对称突出的皮质和深髓静脉结合临床特征的放射组学机器学习预测急性缺血性脑卒中预后的回顾性研究
背景:急性缺血性脑卒中(AIS)预后差,复发率高。因此,预测AIS患者在疾病早期的预后非常重要。脑侧支循环的建立可显著提高AIS患者的脑细胞存活率和预后。然而,尚未有机器学习方法应用于探讨脑内静脉侧支循环动态演变与AIS预后的相关性。因此,我们采用支持向量机(SVM)算法分析不对称突出皮质静脉(APCVs)和深髓静脉(DMVs),并结合临床指标建立预测AIS预后的放射学模型。方法:回顾性分析150例AIS患者的磁共振成像(MRI)资料及临床指标。绘制dmv和apcv对应的兴趣区域,并使用最小绝对收缩和选择算子(LASSO)回归来选择从这些区域提取的特征。通过SVM算法建立APCV-DMV放射组学模型,并将与AIS相关的独立临床危险因素与放射组学模型结合生成联合模型。选择支持向量机算法是因为在试点实验中,与其他分类器(如随机森林)相比,它在处理高维放射性数据方面被证明是有效的。结果:最终选择了与AIS患者预后相关的9个放射学特征。在内部训练测试集中,临床模型、DMV-APCV放射学模型和关节模型的auc分别为0.816、0.976和0.996。DeLong检验显示,联合模型的预测性能优于个体模型,检验集AUC为0.996,灵敏度为0.905,特异性为1.000 (P < 0.05)。结论:利用放射组学方法,我们提出了一种将APCV和DMV的影像学组织学特征与临床指标相结合的新型联合预测模型。该模型定量表征了静脉侧支循环的形态和功能属性,阐明了其在准确评估AIS患者预后中的重要作用,为早期预后预测提供了一种无创、高精度的成像工具。
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来源期刊
PeerJ
PeerJ MULTIDISCIPLINARY SCIENCES-
CiteScore
4.70
自引率
3.70%
发文量
1665
审稿时长
10 weeks
期刊介绍: PeerJ is an open access peer-reviewed scientific journal covering research in the biological and medical sciences. At PeerJ, authors take out a lifetime publication plan (for as little as $99) which allows them to publish articles in the journal for free, forever. PeerJ has 5 Nobel Prize Winners on the Board; they have won several industry and media awards; and they are widely recognized as being one of the most interesting recent developments in academic publishing.
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