Zhang Yue, Xie Gang, Zhang Lingfeng, Li Junlin, Tang Wuli, Wang Danni, Yang Ling, Li Kang
Chongqing Medical University, Chongqing, China.
Department of Radiology, Chongqing General Hospital, Chongqing University, Chongqing, China.
Front Neurol. 2024 Sep 2;15:1413795. doi: 10.3389/fneur.2024.1413795. eCollection 2024.
Machine learning (ML) models were constructed according to non-contrast computed tomography (NCCT) images as well as clinical and laboratory information to assess risk stratification for the occurrence of hemorrhagic transformation (HT) in acute ischemic stroke (AIS) patients.
A retrospective cohort was constructed with 180 AIS patients who were diagnosed at two centers between January 2019 and October 2023 and were followed for HT outcomes. Patients were analyzed for clinical risk factors for developing HT, infarct texture features were extracted from NCCT images, and the radiomics score (Rad-score) was calculated. Then, five ML models were established and evaluated, and the optimal ML algorithm was used to construct the clinical, radiomics, and clinical-radiomics models. Receiver operating characteristic (ROC) curves were used to compare the performance of the three models in predicting HT.
Based on the outcomes of the AIS patients, 104 developed HT, and the remaining 76 had no HT. The HT group consisted of 27 hemorrhagic infarction (HI) and 77 parenchymal-hemorrhage (PH). Patients with HT had a greater neutrophil-to-lymphocyte ratio (NLR), baseline National Institutes of Health Stroke Scale (NIHSS) score, infarct volume, and Rad-score and lower Alberta stroke program early CT score (ASPECTS) (all < 0.01) than patients without HT. The best ML algorithm for building the model was logistic regression. In the training and validation cohorts, the AUC values for the clinical, radiomics, and clinical-radiomics models for predicting HT were 0.829 and 0.876, 0.813 and 0.898, and 0.876 and 0.957, respectively. In subgroup analyses with different treatment modalities, different infarct sizes, and different stroke time windows, the assessment accuracy of the clinical-radiomics model was not statistically meaningful (all > 0.05), with an overall accuracy of 79.5%. Moreover, this model performed reliably in predicting the PH and HI subcategories, with accuracies of 82.9 and 92.9%, respectively.
ML models based on clinical and NCCT radiomics characteristics can be used for early risk evaluation of HT development in AIS patients and show great potential for clinical precision in treatment and prognostic assessment.
根据非增强计算机断层扫描(NCCT)图像以及临床和实验室信息构建机器学习(ML)模型,以评估急性缺血性卒中(AIS)患者发生出血性转化(HT)的风险分层。
构建了一个回顾性队列,纳入了2019年1月至2023年10月期间在两个中心确诊的180例AIS患者,并对其HT结局进行随访。分析患者发生HT的临床危险因素,从NCCT图像中提取梗死灶纹理特征,并计算放射组学评分(Rad评分)。然后,建立并评估了五个ML模型,并使用最优的ML算法构建临床、放射组学和临床-放射组学模型。采用受试者操作特征(ROC)曲线比较这三种模型预测HT的性能。
根据AIS患者的结局,104例发生了HT,其余76例未发生HT。HT组包括27例出血性梗死(HI)和77例脑实质出血(PH)。与未发生HT的患者相比,发生HT的患者中性粒细胞与淋巴细胞比值(NLR)、基线美国国立卫生研究院卒中量表(NIHSS)评分、梗死体积和Rad评分更高,而阿尔伯塔卒中项目早期CT评分(ASPECTS)更低(均P<0.01)。构建模型的最佳ML算法是逻辑回归。在训练和验证队列中,临床、放射组学和临床-放射组学模型预测HT的AUC值分别为0.829和0.876、0.813和0.898、0.876和0.957。在不同治疗方式、不同梗死灶大小和不同卒中时间窗的亚组分析中,临床-放射组学模型的评估准确性无统计学意义(均P>0.05),总体准确率为79.5%。此外,该模型在预测PH和HI亚类时表现可靠,准确率分别为82.9%和92.9%。
基于临床和NCCT放射组学特征的ML模型可用于AIS患者HT发生的早期风险评估,并在治疗和预后评估的临床精准性方面显示出巨大潜力。