脑动静脉畸形破裂风险评估:利用血液动力学和形态学特征的集合模型。

IF 4.5 1区 医学 Q1 NEUROIMAGING
Haoyu Zhu, Lian Liu, Shikai Liang, Chao Ma, Yuzhou Chang, Longhui Zhang, Xiguang Fu, Yuqi Song, Jiarui Zhang, Yupeng Zhang, Chuhan Jiang
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引用次数: 0

摘要

背景:脑动静脉畸形(AVM脑动静脉畸形(AVM)是一种脑血管疾病,有颅内出血的风险。然而,很少有可靠的定量指标能准确预测出血风险。本研究旨在通过定量分析AVM瘤巢内的血流动力学和形态学特征,确定出血风险的潜在生物标志物:该研究包括三个数据集,分别是 2008 年 1 月至 2023 年 12 月期间连续出现的未经治疗的 AVM 患者。训练数据集和测试数据集用于训练和评估模型。一个由接受保守治疗的患者组成的独立验证数据集用于评估模型在随访期间预测后续出血的性能。根据数字减影血管造影术(DSA)定量提取血液动力学和形态学特征。在训练数据集上使用各种机器学习算法构建了单个模型和集合模型。使用混淆矩阵相关指标评估模型性能:这项研究包括 844 例 AVM 患者,分布于训练数据集(597 例)、测试数据集(149 例)和验证数据集(98 例)。对每位患者定量提取了 5 个血液动力学特征和 14 个形态学特征。根据五个单独的机器学习模型构建的集合模型在测试数据集上的曲线下面积为 0.880(0.824-0.937),在独立验证数据集上的曲线下面积为 0.864(0.769-0.959):结论:从 DSA 数据中提取的定量血流动力学和形态学特征是评估 AVM 破裂风险的潜在指标。集合模型有效整合了多维特征,在预测动静脉畸形的后续破裂方面表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rupture risk assessment in cerebral arteriovenous malformations: an ensemble model using hemodynamic and morphological features.

Background: Cerebral arteriovenous malformation (AVM) is a cerebrovascular disorder posing a risk for intracranial hemorrhage. However, there are few reliable quantitative indices to predict hemorrhage risk accurately. This study aimed to identify potential biomarkers for hemorrhage risk by quantitatively analyzing the hemodynamic and morphological features within the AVM nidus.

Methods: This study included three datasets comprising consecutive patients with untreated AVMs between January 2008 to December 2023. Training and test datasets were used to train and evaluate the model. An independent validation dataset of patients receiving conservative treatment was used to evaluate the model performance in predicting subsequent hemorrhage during follow-up. Hemodynamic and morphological features were quantitatively extracted based on digital subtraction angiography (DSA). Individual models using various machine learning algorithms and an ensemble model were constructed on the training dataset. Model performance was assessed using the confusion matrix-related metrics.

Results: This study included 844 patients with AVMs, distributed across the training (n=597), test (n=149), and validation (n=98) datasets. Five hemodynamic and 14 morphological features were quantitatively extracted for each patient. The ensemble model, constructed based on five individual machine-learning models, achieved an area under the curve of 0.880 (0.824-0.937) on the test dataset and 0.864 (0.769-0.959) on the independent validation dataset.

Conclusion: Quantitative hemodynamic and morphological features extracted from DSA data serve as potential indicators for assessing the rupture risk of AVM. The ensemble model effectively integrated multidimensional features, demonstrating favorable performance in predicting subsequent rupture of AVM.

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来源期刊
CiteScore
9.50
自引率
14.60%
发文量
291
审稿时长
4-8 weeks
期刊介绍: The Journal of NeuroInterventional Surgery (JNIS) is a leading peer review journal for scientific research and literature pertaining to the field of neurointerventional surgery. The journal launch follows growing professional interest in neurointerventional techniques for the treatment of a range of neurological and vascular problems including stroke, aneurysms, brain tumors, and spinal compression.The journal is owned by SNIS and is also the official journal of the Interventional Chapter of the Australian and New Zealand Society of Neuroradiology (ANZSNR), the Canadian Interventional Neuro Group, the Hong Kong Neurological Society (HKNS) and the Neuroradiological Society of Taiwan.
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