Prediction models for identifying medication overuse or medication overuse headache in migraine patients: a systematic review.

IF 7.3 1区 医学 Q1 CLINICAL NEUROLOGY
Teerapong Aramruang, Akshita Malhotra, Pawin Numthavaj, Panu Looareesuwan, Thunyarat Anothaisintawee, Charungthai Dejthevaporn, Nat Sirirutbunkajorn, John Attia, Ammarin Thakkinstian
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引用次数: 0

Abstract

Background: Migraine is a debilitating neurological disorder that presents significant management challenges, resulting in underdiagnosis and inappropriate treatments, leaving patients at risk of medication overuse (MO). MO contributes to disease progression and the development of medication overuse headache (MOH). Predicting which migraine patients are at risk of MO/MOH is crucial for effective management. Thus, this systematic review aims to review and critique available prediction models for MO/MOH in migraine patients.

Methods: A systematic search was conducted using Embase, Scopus, Medline/PubMed, ACM Digital Library, and IEEE databases from inception to April 22, 2024. The risk of bias was assessed using the prediction model risk of bias assessment tool.

Results: Out of 1,579 articles, six studies with nine models met the inclusion criteria. Three studies developed new prediction models, while the remaining validated existing scores. Most studies utilized cross-sectional and prospective data collection in specific headache settings and migraine types. The models included up to 53 predictors, with sample sizes from 17 to 1,419 participants. Traditional statistical models (logistic regression and least absolute shrinkage and selection operator regression) were used in two studies, while one utilized a machine learning (ML) technique (support vector machines). Receiver operating characteristic analysis was employed to validate existing scores. The area under the receiver operating characteristic (AUROC) for the ML model (0.83) outperformed the traditional statistical model (0.62) in internal validation. The AUROCs ranged from 0.84 to 0.85 for the validation of existing scores. Common predictors included age and gender; genetic data and questionnaire evaluations were also included. All studies demonstrated a high risk of bias in model construction and high concerns regarding applicability to participants.

Conclusion: This review identified promising results for MO/MOH prediction models in migraine patients, although the field remains limited. Future research should incorporate important risk factors, assess discrimination and calibration, and perform external validation. Further studies with robust designs, appropriate settings, high-quality and quantity data, and rigorous methodologies are necessary to advance this field.

识别偏头痛患者药物过度使用或药物过度使用性头痛的预测模型:系统综述。
背景:偏头痛是一种使人衰弱的神经系统疾病,给治疗带来了巨大挑战,导致诊断不足和治疗不当,使患者面临药物过度使用(MO)的风险。过度用药会导致疾病恶化,并引发过度用药性头痛(MOH)。预测哪些偏头痛患者有MO/MOH风险对有效管理至关重要。因此,本系统综述旨在对现有的偏头痛患者MO/MOH预测模型进行回顾和点评:方法:使用Embase、Scopus、Medline/PubMed、ACM数字图书馆和IEEE数据库进行了系统性检索,检索时间从开始到2024年4月22日。使用预测模型偏倚风险评估工具对偏倚风险进行了评估:在 1579 篇文章中,有 6 项研究的 9 个模型符合纳入标准。三项研究开发了新的预测模型,其余研究则验证了现有的评分。大多数研究利用了在特定头痛环境和偏头痛类型中收集的横断面和前瞻性数据。这些模型包括多达53个预测因子,样本量从17到1,419名参与者不等。有两项研究采用了传统的统计模型(逻辑回归、最小绝对值收缩和选择算子回归),另有一项研究采用了机器学习(ML)技术(支持向量机)。受体操作特征分析被用来验证现有的评分。在内部验证中,ML 模型的接收器操作特征下面积(AUROC)(0.83)优于传统统计模型(0.62)。对现有评分进行验证时,接受者操作特征下面积介于 0.84 和 0.85 之间。常见的预测因素包括年龄和性别;遗传数据和问卷评估也包括在内。所有研究都表明,在构建模型时存在较高的偏差风险,并且对参与者的适用性存在较高的担忧:本综述为偏头痛患者的MO/MOH预测模型确定了有希望的结果,尽管该领域仍然有限。未来的研究应纳入重要的风险因素,评估辨别和校准,并进行外部验证。要推动这一领域的发展,还需要进行更多的研究,这些研究应具有稳健的设计、适当的设置、高质量和高数量的数据以及严格的方法。
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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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