Prognostic Effect of Trigeminal Neuralgia Treated With Percutaneous Balloon Compression by Machine Learning-based Modeling of Radiomic Morphological Features.

IF 2.6 2区 医学 Q2 ANESTHESIOLOGY
Pain physician Pub Date : 2024-12-01
Ji Wu, Keyu Chen, Hao Mei, Yuankun Cai, Lei Shen, Jingyi Yang, Dongyuan Xu, Songshan Chai, Nanxiang Xiong
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引用次数: 0

Abstract

Background: Trigeminal neuralgia (TN) is defined as spontaneous pain in the region of the trigeminal nerve that seriously affects a patient's quality of life. Percutaneous balloon compression of the trigeminal ganglion is a simple and reproducible surgical procedure that reduces the incidence of TN, but the postoperative outcome is poor in some patients, with it being ineffective or TN recurring.

Objectives: To establish a machine learning-based clinical imaging nomogram to predict the recurrence of trigeminal neuralgia in patients treated with percutaneous balloon compression.

Study design: Retrospective study.

Methods: The clinical data of 209 patients with TN treated with percutaneous balloon compression at Zhongnan Hospital of Wuhan University from January 2017 through August 2023 were retrospectively collected and randomized into training and validation cohorts. All imaging histologic morphological features were extracted from the intraoperative x-ray balloon region using 3D slicer software. The relationship among clinical factors, least absolute shrinkage and selection operator, and 4 machine learning predictions of the patient's TN prognosis were analyzed using a one-way analysis of clinical factors. A prediction model was constructed using receiver operating characteristics curve analysis. The performance of the clinical imaging histogram of patients' TN prognoses was evaluated using a receiver operating characteristics curve and decision curve analysis. The model was finally validated using a validation cohort and a receiver operating characteristics curve.

Results: The training group included 149 patients; 16 morphology-related imaging histological features were extracted for analysis. After one-way logistic regression analysis, least absolute shrinkage and selection operator analysis incorporated original_shape_Elongation, original_shape_MajorAxisLength, original_shape_flatness morphology-related imaging histologic features, gender, and affected side to give a total of 6 predictors. The final results were obtained for gender, affected side, and MajorAxisLength. Finally, 4 machine learning receiver operating characteristics curves for random forest tree, support vector machine, generalized linear model, and extreme gradient boosting models were obtained for the clinical and imaging features of gender, affected side, drug, original_shape_MajorAxisLength, and original_shape_flatness. The areas under the receiver operating characteristics curves were 0.990, 0.993, 0.990, and 0.986, respectively. Finally, predictive column maps of affected side, gender, original_shape_flatness, and MajorAxisLength were constructed using the support vector machine method, and the area under the receiver operating characteristics curve of the model was 0.99, which suggests that the model had good predictive ability. Decision curve analysis  and calibration curves showed high applicability of column-line diagrams in clinical practice. Our validation cohort consisting of 60 patients had an area under the receiver operating characteristics curve of 0.857.

Limitations: This study was performed in a single center. The nature of this study was retrospective rather than prospective and randomized, and it was not possible to entirely control for nuisance variables.

Conclusion: Screening clinical information by machine learning, combined with a clinical imaging histology nomogram, has good potential for predicting the prognosis of a patient's TN treated with percutaneous balloon compression, and is suitable for clinical application in patients with TN after percutaneous balloon compression.

基于机器学习的放射学形态学特征建模对经皮球囊压迫治疗三叉神经痛的预后影响。
背景:三叉神经痛(Trigeminal neuralgia, TN)被定义为三叉神经区域自发性疼痛,严重影响患者的生活质量。经皮球囊压迫三叉神经节是一种简单、可重复的手术方法,可减少TN的发生率,但部分患者术后效果较差,无效或TN复发。目的:建立一种基于机器学习的三叉神经痛临床影像图,预测经皮球囊压迫患者三叉神经痛复发。研究设计:回顾性研究。方法:回顾性收集2017年1月至2023年8月武汉大学中南医院经皮球囊压缩治疗的209例TN患者的临床资料,随机分为训练组和验证组。术中x线球囊区所有影像学组织学形态特征均采用三维切片软件提取。采用临床因素的单向分析,分析临床因素、最小绝对收缩和选择算子与4种机器学习预测患者TN预后的关系。利用受者工作特性曲线分析建立预测模型。采用受试者工作特征曲线和决策曲线分析评估患者TN预后的临床成像直方图的性能。最后使用验证队列和受试者工作特征曲线对模型进行验证。结果:训练组纳入149例患者;提取16个形态学相关的影像学组织学特征进行分析。经过单向logistic回归分析,最小绝对收缩和选择算子分析结合了original_shape_伸长、original_shape_MajorAxisLength、original_shape_flatness形态学相关的成像组织学特征、性别和影响侧,共给出了6个预测因子。最后的结果是性别、患侧和MajorAxisLength。最后,针对性别、患侧、药物、original_shape_MajorAxisLength和original_shape_flatness的临床和影像学特征,得到随机森林树、支持向量机、广义线性模型和极端梯度增强模型的4条机器学习接收者工作特征曲线。受试者工作特征曲线下面积分别为0.990、0.993、0.990、0.986。最后,利用支持向量机方法构建了受影响侧、性别、original_shape_flatness和MajorAxisLength的预测列图,模型的受者工作特征曲线下面积为0.99,表明模型具有较好的预测能力。决策曲线分析和校正曲线显示柱线图在临床实践中具有较高的适用性。我们的验证队列由60例患者组成,受试者工作特征曲线下的面积为0.857。局限性:本研究为单中心研究。本研究的性质是回顾性的,而不是前瞻性和随机的,并且不可能完全控制讨厌的变量。结论:通过机器学习筛选临床信息,结合临床影像学组织学形态图,对经皮球囊压迫后TN患者的预后有很好的预测潜力,适合于经皮球囊压迫后TN患者的临床应用。
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
Pain physician
Pain physician CLINICAL NEUROLOGY-CLINICAL NEUROLOGY
CiteScore
6.00
自引率
21.60%
发文量
234
期刊介绍: Pain Physician Journal is the official publication of the American Society of Interventional Pain Physicians (ASIPP). The open access journal is published 6 times a year. Pain Physician Journal is a peer-reviewed, multi-disciplinary, open access journal written by and directed to an audience of interventional pain physicians, clinicians and basic scientists with an interest in interventional pain management and pain medicine. Pain Physician Journal presents the latest studies, research, and information vital to those in the emerging specialty of interventional pain management – and critical to the people they serve.
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