探索发作性偏头痛患者对非类固醇抗炎药物反应的潜在神经影像生物标志物。

IF 7.3 1区 医学 Q1 CLINICAL NEUROLOGY
Heng-Le Wei, Yu-Sheng Yu, Meng-Yao Wang, Gang-Ping Zhou, Junrong Li, Hong Zhang, Zhengyang Zhou
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引用次数: 0

摘要

背景:非甾体抗炎药(NSAIDs)被认为是治疗急性偏头痛发作的一线药物。然而,不同个体的反应存在很大差异。因此,本研究旨在探索一种基于振幅振荡百分比(PerAF)和灰质体积(GMV)的机器学习模型,以预测偏头痛治疗中对非甾体抗炎药的反应:方法:采用倾向评分匹配法来匹配偏头痛患者对非甾体抗炎药的反应和无反应,确保临床特征和偏头痛相关特征的一致性。采用多模态磁共振成像提取PerAF和GMV,然后使用最小绝对收缩和选择算子回归及递归特征消除算法进行特征选择。构建多个预测模型,最后选择预测残差最小的模型。使用接收者操作特征曲线下面积(ROCAUC)、精确度-召回曲线下面积(PRAUC)、平衡准确度(BACC)、灵敏度、F1 分数、阳性预测值(PPV)和阴性预测值(NPV)对模型性能进行评估。使用公共数据库进行了外部验证。然后,对偏头痛的神经影像预测指标和临床特征进行了相关性分析:结果:共招募了 118 名偏头痛患者(59 名应答者和 59 名无应答者)。观察到六个特征(左侧岛叶和左侧颞横回的 PerAF;右侧额上回、左侧中央后回、右侧中央后回和左侧楔前回的 GMV)。训练组和测试组的模型指标(ROCAUC、PRAUC、BACC、灵敏度、F1得分、PPV和NPV)分别为0.982、0.983、0.927、0.976、0.930、0.889和0.973,以及0.711、0.648、0.639、0.667、0.649、0.632和0.647。外部验证的模型指标分别为 0.631、0.651、0.611、0.808、0.656、0.553 和 0.706。此外,在无反应者中,左侧楔前肌 GMV 与发作时间之间存在明显的正相关性:我们的研究结果表明,多模态神经影像学特征在预测非甾体抗炎药治疗偏头痛的疗效方面具有潜力,并为偏头痛的神经机制及其优化治疗策略提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring potential neuroimaging biomarkers for the response to non-steroidal anti-inflammatory drugs in episodic migraine.

Background: Non-steroidal anti-inflammatory drugs (NSAIDs) are considered first-line medications for acute migraine attacks. However, the response exhibits considerable variability among individuals. Thus, this study aimed to explore a machine learning model based on the percentage of amplitude oscillations (PerAF) and gray matter volume (GMV) to predict the response to NSAIDs in migraine treatment.

Methods: Propensity score matching was adopted to match patients having migraine with response and nonresponse to NSAIDs, ensuring consistency in clinical characteristics and migraine-related features. Multimodal magnetic resonance imaging was employed to extract PerAF and GMV, followed by feature selection using the least absolute shrinkage and selection operator regression and recursive feature elimination algorithms. Multiple predictive models were constructed and the final model with the smallest predictive residuals was chosen. The model performance was evaluated using the area under the receiver operating characteristic (ROCAUC) curve, area under the precision-recall curve (PRAUC), balance accuracy (BACC), sensitivity, F1 score, positive predictive value (PPV), and negative predictive value (NPV). External validation was performed using a public database. Then, correlation analysis was performed between the neuroimaging predictors and clinical features in migraine.

Results: One hundred eighteen patients with migraine (59 responders and 59 non-responders) were enrolled. Six features (PerAF of left insula and left transverse temporal gyrus; and GMV of right superior frontal gyrus, left postcentral gyrus, right postcentral gyrus, and left precuneus) were observed. The random forest model with the lowest predictive residuals was selected and model metrics (ROCAUC, PRAUC, BACC, sensitivity, F1 score, PPV, and NPV) in the training and testing groups were 0.982, 0.983, 0.927, 0.976, 0.930, 0.889, and 0.973; and 0.711, 0.648, 0.639, 0.667,0.649, 0.632, and 0.647, respectively. The model metrics of external validation were 0.631, 0.651, 0.611, 0.808, 0.656, 0.553, and 0.706. Additionally, a significant positive correlation was found between the GMV of the left precuneus and attack time in non-responders.

Conclusions: Our findings suggest the potential of multimodal neuroimaging features in predicting the efficacy of NSAIDs in migraine treatment and provide novel insights into the neural mechanisms underlying migraine and its optimized treatment strategy.

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来源期刊
Journal of Headache and Pain
Journal of Headache and Pain 医学-临床神经学
CiteScore
11.80
自引率
13.50%
发文量
143
审稿时长
6-12 weeks
期刊介绍: The Journal of Headache and Pain, a peer-reviewed open-access journal published under the BMC brand, a part of Springer Nature, is dedicated to researchers engaged in all facets of headache and related pain syndromes. It encompasses epidemiology, public health, basic science, translational medicine, clinical trials, and real-world data. With a multidisciplinary approach, The Journal of Headache and Pain addresses headache medicine and related pain syndromes across all medical disciplines. It particularly encourages submissions in clinical, translational, and basic science fields, focusing on pain management, genetics, neurology, and internal medicine. The journal publishes research articles, reviews, letters to the Editor, as well as consensus articles and guidelines, aimed at promoting best practices in managing patients with headaches and related pain.
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