Intracranial aneurysm instability prediction model based on 4D-Flow MRI and HR-MRI.

IF 5.6 2区 医学 Q1 CLINICAL NEUROLOGY
Fei Peng, Jiaxiang Xia, Fandong Zhang, Shiyu Lu, Hao Wang, Jiashu Li, Xinmin Liu, Yao Zhong, Jiahuan Guo, Yonghong Duan, Binbin Sui, Chuyang Ye, Yi Ju, Shuai Kang, Yizhou Yu, Xin Feng, Xingquan Zhao, Rui Li, Aihua Liu
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引用次数: 0

Abstract

This study aims to develop a reliable predictive model for assessing intracranial aneurysm (IA) instability by utilizing four-dimensional flow magnetic resonance imaging (4D-Flow MRI) and high-resolution MRI (HR-MRI). Initially, we curated a prospective dataset, dubbed the primary cohort, by aggregating patient data that was consecutively enrolled across two centers from November 2018 to November 2021. Unstable aneurysms were defined as those with symptoms, morphological change or ruptured during follow-up periods. We introduce a specialized ensemble learning framework, termed the Hybrid Model, which synergistically combines two heterogeneous base learning algorithms: 4D-Flow logistic regression (4D-Flow-LR) and Multi-crop Attention Branch Network (MicroAB-Net). The ability of the hybrid model to predict aneurysm instability was compared with baseline models: PHASES (population, hypertension, age, size, earlier rupture, and site) LR, ELAPSS (earlier subarachnoid hemorrhage, location, age, population, size, and shape) LR, aneurysm wall enhancement (AWE) LR, and Radiomics using the area under the curve (AUC) with Delong's test. Finally, the Hybrid Model was further validated in the validation cohort (patients enrolled between December 2021 to May 2022). In the primary cohort, 189 patients (144 women [76.2 ​%]; aged 58.90 years ​± ​10.32) with 213 IAs were included. In the validation cohort, 48 patients (35 women [72.9 ​%]; aged 55.0 years ​± ​10.77) with 53 IAs were included. The Hybrid Model achieved the highest performance both in the primary cohort (AUC ​= ​0.854) and the validation cohort (AUC ​= ​0.876). The Hybrid model provided a promising prediction of aneurysm instability.

基于4D-Flow MRI和HR-MRI的颅内动脉瘤不稳定性预测模型。
本研究旨在利用四维流磁共振成像(4D-Flow MRI)和高分辨率MRI (HR-MRI)建立可靠的预测模型来评估颅内动脉瘤(IA)的不稳定性。最初,我们通过汇总2018年11月至2021年11月在两个中心连续入组的患者数据,策划了一个前瞻性数据集,称为初级队列。不稳定动脉瘤定义为在随访期间出现症状、形态改变或破裂的动脉瘤。我们介绍了一个专门的集成学习框架,称为混合模型,它协同结合了两种异构基础学习算法:4D-Flow逻辑回归(4D-Flow- lr)和多作物注意分支网络(MicroAB-Net)。混合模型预测动脉瘤不稳定性的能力与基线模型进行比较:阶段(人群、高血压、年龄、大小、早期破裂和部位)LR、ELAPSS(早期蛛网膜下腔出血、位置、年龄、人口、大小和形状)LR、动脉瘤壁增强(AWE) LR和使用Delong测试的曲线下面积(AUC)的放射组学。最后,在验证队列(2021年12月至2022年5月入组的患者)中进一步验证混合模型。在主要队列中,189例患者(144例女性,76.2%);年龄58.90岁±10.32岁,IAs 213例。在验证队列中,48例患者(女性35例,占72.9%);年龄55.0岁±10.77岁,53例IAs。混合模型在主要队列(AUC = 0.854)和验证队列(AUC = 0.876)中均取得了最高的表现。Hybrid模型为预测动脉瘤不稳定性提供了一种很有希望的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Neurotherapeutics
Neurotherapeutics 医学-神经科学
CiteScore
11.00
自引率
3.50%
发文量
154
审稿时长
6-12 weeks
期刊介绍: Neurotherapeutics® is the journal of the American Society for Experimental Neurotherapeutics (ASENT). Each issue provides critical reviews of an important topic relating to the treatment of neurological disorders written by international authorities. The Journal also publishes original research articles in translational neuroscience including descriptions of cutting edge therapies that cross disciplinary lines and represent important contributions to neurotherapeutics for medical practitioners and other researchers in the field. Neurotherapeutics ® delivers a multidisciplinary perspective on the frontiers of translational neuroscience, provides perspectives on current research and practice, and covers social and ethical as well as scientific issues.
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