Department of Neurosurgery, Beijing Tiantan Hospital, Capital Medical University, 119 South Fourth Ring Road West, Fengtai District, Beijing, People's Republic of China.
China National Clinical Research Center for Neurological Diseases, Beijing, People's Republic of China.
Transl Stroke Res. 2022 Dec;13(6):939-948. doi: 10.1007/s12975-021-00933-1. Epub 2021 Aug 12.
The diffuseness of brain arteriovenous malformations (bAVMs) is a significant factor in surgical outcome evaluation and hemorrhagic risk prediction. However, there are still predicaments in identifying diffuseness, such as the judging variety resulting from different experience and difficulties in quantification. The purpose of this study was to develop a machine learning (ML) model to automatically identify the diffuseness of bAVM niduses using three-dimensional (3D) time-of-flight magnetic resonance angiography (TOF-MRA) images. A total of 635 patients with bAVMs who underwent TOF-MRA imaging were enrolled. Three experienced neuroradiologists delineated the bAVM lesions and identified the diffuseness on TOF-MRA images, which were considered the ground-truth reference. The U-Net-based segmentation model was trained to segment lesion areas. Eight mainstream ML models were trained through the radiomic features of segmented lesions to identify diffuseness, based on which an integrated model was built and yielded the best performance. In the test set, the Dice score, F2 score, precision, and recall for the segmentation model were 0.80 [0.72-0.84], 0.80 [0.71-0.86], 0.84 [0.77-0.93], and 0.82 [0.69-0.89], respectively. For the diffuseness identification model, the ensemble-based model was applied with an area under the Receiver-operating characteristic curves (AUC) of 0.93 (95% CI 0.87-0.99) in the training set. The AUC, accuracy, precision, recall, and F1 score for the diffuseness identification model were 0.95, 0.90, 0.81, 0.84, and 0.83, respectively, in the test set. The ML models showed good performance in automatically detecting bAVM lesions and identifying diffuseness. The method may help to judge the diffuseness of bAVMs objectively, quantificationally, and efficiently.
脑动静脉畸形(bAVM)的弥散程度是手术结果评估和出血风险预测的重要因素。然而,在识别弥散程度方面仍然存在困境,例如不同经验导致的判断多样性和量化困难。本研究旨在开发一种机器学习(ML)模型,使用三维(3D)时间飞跃磁共振血管造影(TOF-MRA)图像自动识别 bAVM 病灶的弥散程度。共纳入 635 例接受 TOF-MRA 成像的 bAVM 患者。三位有经验的神经放射科医生在 TOF-MRA 图像上勾画 bAVM 病变并确定弥散程度,将其作为ground-truth 参考。基于 U-Net 的分割模型用于分割病变区域。基于分割病变的放射组学特征,通过 8 种主流 ML 模型训练来识别弥散程度,在此基础上构建集成模型并获得最佳性能。在测试集中,分割模型的 Dice 评分、F2 评分、精度和召回率分别为 0.80[0.72-0.84]、0.80[0.71-0.86]、0.84[0.77-0.93]和 0.82[0.69-0.89]。对于弥散程度识别模型,在训练集中,基于集成的模型应用于受试者工作特征曲线(ROC)下面积(AUC)为 0.93(95%CI 0.87-0.99)。在测试集中,弥散程度识别模型的 AUC、准确性、精度、召回率和 F1 评分分别为 0.95、0.90、0.81、0.84 和 0.83。ML 模型在自动检测 bAVM 病变和识别弥散程度方面表现出良好的性能。该方法可能有助于客观、定量和高效地判断 bAVM 的弥散程度。