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基于机器学习的单侧三叉神经痛危险因素

Risk Factors for Unilateral Trigeminal Neuralgia Based on Machine Learning.

作者信息

Ge Xiuhong, Wang Luoyu, Pan Lei, Ye Haiqi, Zhu Xiaofen, Feng Qi, Ding Zhongxiang

机构信息

Department of Radiology, Hangzhou First People's Hospital, Zhejiang University School of Medicine, Hangzhou, China.

Centre for Cognition and Brain Disorders, The Affiliated Hospital of Hangzhou Normal University, Hangzhou, China.

出版信息

Front Neurol. 2022 Apr 8;13:862973. doi: 10.3389/fneur.2022.862973. eCollection 2022.

Abstract

PURPOSE

Neurovascular compression (NVC) is considered as the main factor leading to the classical trigeminal neuralgia (CTN), and a part of idiopathic TN (ITN) may be caused by NVC (ITN-nvc). This study aimed to explore the risk factors for unilateral CTN or ITN-nvc (UC-ITN), which have bilateral NVC, using machine learning (ML).

METHODS

A total of 89 patients with UC-ITN were recruited prospectively. According to whether there was NVC on the unaffected side, patients with UC-ITN were divided into two groups. All patients underwent a magnetic resonance imaging (MRI) scan. The bilateral cisternal segment of the trigeminal nerve was manually delineated, which avoided the offending vessel (Ofv), and the features were extracted. Dimensionality reduction, feature selection, model construction, and model evaluation were performed step-by-step.

RESULTS

Four textural features with greater weight were selected in patients with UC-ITN without NVC on the unaffected side. For UC-ITN patients with NVC on the unaffected side, six textural features with greater weight were selected. The textural features (rad_score) showed significant differences between the affected and unaffected sides ( < 0.05). The nomogram model had optimal diagnostic power, and the area under the curve (AUC) in the training and validation cohorts was 0.76 and 0.77, respectively. The Ofv and rad_score were the risk factors for UC-ITN according to nomogram.

CONCLUSION

Besides NVC, the texture features of trigeminal-nerve cisternal segment and Ofv were also the risk factors for UC-ITN. These findings provided a basis for further exploration of the microscopic etiology of UC-ITN.

摘要

目的

神经血管压迫(NVC)被认为是导致经典三叉神经痛(CTN)的主要因素,特发性三叉神经痛(ITN)的一部分可能由NVC引起(ITN - nvc)。本研究旨在利用机器学习(ML)探索具有双侧NVC的单侧CTN或ITN - nvc(UC - ITN)的危险因素。

方法

前瞻性招募了89例UC - ITN患者。根据患侧是否存在NVC,将UC - ITN患者分为两组。所有患者均接受磁共振成像(MRI)扫描。手动勾勒三叉神经的双侧脑池段,避开责任血管(Ofv),并提取特征。逐步进行降维、特征选择、模型构建和模型评估。

结果

在患侧无NVC的UC - ITN患者中,选择了4个权重较大的纹理特征。对于患侧有NVC的UC - ITN患者,选择了6个权重较大的纹理特征。纹理特征(rad_score)在患侧和对侧之间存在显著差异(<0.05)。列线图模型具有最佳诊断效能,训练队列和验证队列中的曲线下面积(AUC)分别为0.76和0.77。根据列线图,Ofv和rad_score是UC - ITN的危险因素。

结论

除NVC外,三叉神经脑池段的纹理特征和Ofv也是UC - ITN的危险因素。这些发现为进一步探索UC - ITN的微观病因提供了依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ac92/9024101/b117c058db30/fneur-13-862973-g0001.jpg

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