Machine learning prediction model for functional prognosis of acute ischemic stroke based on MRI radiomics of white matter hyperintensities.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yayuan Xia, Linhui Li, Peipei Liu, Tianxu Zhai, Yibing Shi
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引用次数: 0

Abstract

Objective: The purpose of the current study is to explore the value of a nomogram that integrates clinical factors and MRI white matter hyperintensities (WMH) radiomics features in predicting the prognosis at 90 days for patients with acute ischemic stroke (AIS).

Methods: A total of 202 inpatients with acute anterior circulation ischemic stroke from the Department of Neurology, Xuzhou Central Hospital between September 2023 and March 2024 were retrospectively enrolled. Inpatient clinical data and cranial MRI images were acquired. In this study, the sample was randomly divided into a training cohort comprising 141 cases and a validation cohort of 61 cases in a 7:3 ratio. WMH lesions on fluid-attenuated inversion recovery (FLAIR) sequences were automatically segmented and manually adjusted using Matlab and ITK-SNAP software. The segmentation led to the identification of total white matter hyperintensity (TWMH), periventricular white matter hyperintensity (PWMH), and deep white matter hyperintensity (DWMH). Subsequently, radiomics features were meticulously extracted from these three distinct regions of interest (ROIs). Radiomic models for the three ROIs were developed using six machine learning algorithms. The clinical model was built by identifying clinical risk factors through univariate and multivariate logistic regression analyses. A combined model was subsequently developed incorporating the best radiomics model with significant clinical factors. To illustrate these risk factors, a graphical representation known as a nomogram was devised.

Results: Age, previous stroke history, coronary artery disease, admission blood glucose levels, homocysteine levels, and infarct volume were identified as independent clinical predictors of AIS prognosis. A total of 16, 21, and 22 radiomics features were selected from TWMH, PWMH, and DWMH, respectively. The TWMH radiomics model using the SVM classifier exhibited the best predictive performance for AIS prognosis, achieving a sensitivity of 90.0%, a specificity of 81.3%, an accuracy of 85.3%, and an AUC of 0.916 in the validation set. The combined model outperformed both the clinical and radiomics models, exhibiting exceptional predictive capabilities with a validation cohort sensitivity of 89.3%, specificity of 84.8%, accuracy of 86.9%, and AUC of 0.939.

Conclusion: The FLAIR sequence-based WMH radiomics approach demonstrates effective prediction of the 90-day functional prognosis in patients with AIS. The integration of TWMH radiomics and clinical factors in a combined model exhibits superior performance. This innovative model shows potential in aiding clinicians to enhance their assessment of patient prognosis and tailor personalized treatment strategies.

Clinical trial number: Not applicable.

基于MRI白质高信号放射组学的急性缺血性脑卒中功能预后机器学习预测模型。
目的:本研究的目的是探讨结合临床因素和MRI白质高强度(WMH)放射组学特征的nomogram预测急性缺血性卒中(AIS)患者90天预后的价值。方法:回顾性分析2023年9月至2024年3月徐州市中心医院神经内科住院急性前循环缺血性脑卒中患者202例。获得住院患者的临床资料和颅脑MRI图像。在本研究中,样本按7:3的比例随机分为训练队列141例和验证队列61例。利用Matlab和ITK-SNAP软件对FLAIR序列上的WMH病变进行自动分割和手动调整。通过分割确定了全白质高信号(TWMH)、心室周围白质高信号(PWMH)和深部白质高信号(DWMH)。随后,从这三个不同的兴趣区域(roi)中精心提取放射组学特征。使用六种机器学习算法开发了三个roi的放射学模型。通过单因素和多因素logistic回归分析,识别临床危险因素,建立临床模型。随后开发了一个结合最佳放射组学模型和重要临床因素的组合模型。为了说明这些风险因素,设计了一种称为nomogram图形表示。结果:年龄、既往卒中史、冠状动脉疾病、入院血糖水平、同型半胱氨酸水平和梗死体积被确定为AIS预后的独立临床预测因素。分别从TWMH、PWMH和DWMH中选择了16、21和22个放射组学特征。使用SVM分类器的TWMH放射组学模型对AIS预后的预测效果最好,在验证集中灵敏度为90.0%,特异性为81.3%,准确率为85.3%,AUC为0.916。联合模型优于临床模型和放射组学模型,具有出色的预测能力,验证队列灵敏度为89.3%,特异性为84.8%,准确度为86.9%,AUC为0.939。结论:基于FLAIR序列的WMH放射组学方法可有效预测AIS患者90天功能预后。TWMH放射组学和临床因素在联合模型中的整合表现出优越的性能。这个创新的模型显示了帮助临床医生提高他们的病人预后评估和量身定制个性化的治疗策略的潜力。临床试验号:不适用。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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