Yao Xiang, Mao Ling, Lv Shunli, Ren Zhenghong, Li Wentao, Ren Ke
Department of Radiology, Xiang'an Hospital of Xiamen University, Xia Men, Fu Jian, China.
The School of Economics, Xiamen University, Xiamen, Fu Jian, China.
J Neurol Sci. 2020 May 15;412:116730. doi: 10.1016/j.jns.2020.116730. Epub 2020 Feb 10.
This study was aimed to discuss the application of radiomics using CT analysis in basal ganglia infarction (BGI) for determining the time since stroke onset (TSS) which could provide critical information to clinicians in deciding stroke treatment options such as thrombolysis.
This study involved 316 patients with BGI (237 in the training cohort and 79 in the independent validation cohort). Region of interest segmentation and feature extraction was done by ITK-SNAP software. We used the existing medical history to binarize the TSS into two categories: positive (< 4.5 h) and negative (≥ 4.5 h). The key radiomic signature features were retrieved by the least absolute shrinkage and selection operator multiple logistic regression model. Receiver operating characteristic curve and AUC analysis were used to evaluate the performance of the radiomic signature in both the training and validation cohorts.
295 features were extracted from a manually outlined infarction region. Five features were selected to construct the radiomic signature for TSS classification purposes. The performance of the radiomic signature to distinguish between positive and negative in the training cohort was good, with an AUC of 0.982, a sensitivity of 0.929, and a specificity of 0.959. In the validation cohort, the radiomic signature showed an AUC of 0.974, a sensitivity of 0.951, and a specificity of 0.961.
A unique radiomic signature was constructed for use as a diagnostic tool for discriminating the TSS in BGI and may guide decisions to use thrombolysis in patients with unknown times of BGI onset.
本研究旨在探讨利用CT分析的放射组学在基底节梗死(BGI)中确定卒中发病时间(TSS)的应用,这可为临床医生决定溶栓等卒中治疗方案提供关键信息。
本研究纳入316例BGI患者(训练队列237例,独立验证队列79例)。使用ITK-SNAP软件进行感兴趣区域分割和特征提取。我们利用现有的病史将TSS二分类为:阳性(<4.5小时)和阴性(≥4.5小时)。通过最小绝对收缩和选择算子多元逻辑回归模型检索关键的放射组学特征。采用受试者工作特征曲线和AUC分析评估训练队列和验证队列中放射组学特征的性能。
从手动勾勒的梗死区域提取了295个特征。选择5个特征构建用于TSS分类的放射组学特征。放射组学特征在训练队列中区分阳性和阴性的性能良好,AUC为0.982,敏感性为0.929,特异性为0.959。在验证队列中,放射组学特征的AUC为0.974,敏感性为0.951,特异性为0.961。
构建了一种独特的放射组学特征,用作鉴别BGI中TSS的诊断工具,并可能指导对BGI发病时间未知的患者使用溶栓治疗的决策。