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脑动静脉畸形放射外科治疗后干预巢状脑实质与放射性改变风险:一项使用无监督机器学习算法的研究

Intervening Nidal Brain Parenchyma and Risk of Radiation-Induced Changes After Radiosurgery for Brain Arteriovenous Malformation: A Study Using an Unsupervised Machine Learning Algorithm.

作者信息

Lee Cheng-Chia, Yang Huai-Che, Lin Chung-Jung, Chen Ching-Jen, Wu Hsiu-Mei, Shiau Cheng-Ying, Guo Wan-Yuo, Hung-Chi Pan David, Liu Kang-Du, Chung Wen-Yuh, Peng Syu-Jyun

机构信息

Department of Neurosurgery, Neurological Institute, Taipei Veterans General Hospital, Taipei, Taiwan; School of Medicine, National Yang-Ming University, Taipei, Taiwan; Brain Research Center, National Yang-Ming University, Taipei, Taiwan.

Department of Neurosurgery, Neurological Institute, Taipei Veterans General Hospital, Taipei, Taiwan; School of Medicine, National Yang-Ming University, Taipei, Taiwan.

出版信息

World Neurosurg. 2019 May;125:e132-e138. doi: 10.1016/j.wneu.2018.12.220. Epub 2019 Jan 22.

Abstract

OBJECTIVE

To assess the sensitivity and specificity of arteriovenous malformation (AVM) nidal component identification and quantification using an unsupervised machine learning algorithm and to evaluate the association between intervening nidal brain parenchyma and radiation-induced changes (RICs) after stereotactic radiosurgery.

METHODS

Fully automated segmentation via unsupervised classification with fuzzy c-means clustering was used to analyze the AVM nidus on T2-weighted magnetic resonance imaging studies. The proportions of vasculature, brain parenchyma, and cerebrospinal fluid were quantified. These were compared with the results from manual segmentation. The association between the brain parenchyma component and RIC development was assessed.

RESULTS

The proposed algorithm was applied to 39 unruptured AVMs in 39 patients (17 female and 22 male patients), with a median age of 27 years. The median proportion of the constituents was as follows: vasculature, 31.3%; brain parenchyma, 48.4%; and cerebrospinal fluid, 16.8%. RICs were identified in 17 of the 39 patients (43.6%). Compared with manual segmentation, the automated algorithm was able to achieve a Dice similarity index of 79.5% (sensitivity, 73.5%; specificity, 85.5%). RICs were associated with a greater proportion of intervening nidal brain parenchyma (52.0% vs. 45.3%; P = 0.015). Obliteration was not associated with greater proportions of nidal vasculature (36.0% vs. 31.2%; P = 0.152).

CONCLUSIONS

The automated segmentation algorithm was able to achieve classification of the AVM nidus components with relative accuracy. Greater proportions of intervening nidal brain parenchyma were associated with RICs.

摘要

目的

使用无监督机器学习算法评估动静脉畸形(AVM)巢状成分识别和量化的敏感性和特异性,并评估立体定向放射治疗后介入性巢状脑实质与放射性改变(RICs)之间的关联。

方法

采用模糊c均值聚类的无监督分类进行全自动分割,以分析T2加权磁共振成像研究中的AVM巢。对血管、脑实质和脑脊液的比例进行量化。将这些结果与手动分割的结果进行比较。评估脑实质成分与RICs发生之间的关联。

结果

该算法应用于39例患者的39个未破裂AVM(17例女性和22例男性患者),中位年龄为27岁。成分的中位比例如下:血管,31.3%;脑实质,48.4%;脑脊液,16.8%。39例患者中有17例(43.6%)发现有RICs。与手动分割相比,自动算法能够实现79.5%的骰子相似性指数(敏感性,73.5%;特异性,85.5%)。RICs与更大比例的介入性巢状脑实质相关(52.0%对45.3%;P = 0.015)。闭塞与巢状血管的更大比例无关(36.0%对31.2%;P = 0.152)。

结论

自动分割算法能够相对准确地实现AVM巢状成分的分类。更大比例的介入性巢状脑实质与RICs相关。

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