复发-缓解型多发性硬化症复发预后模型的开发、验证和临床应用

Konstantina Chalkou, Ewout Steyerberg, Patrick Bossuyt, Suvitha Subramaniam, Pascal Benkert, Jens Kuhle, Giulio Disanto, Ludwig Kappos, Chiara Zecca, Matthias Egger, Georgia Salanti
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引用次数: 4

摘要

背景:复发-缓解型多发性硬化症(RRMS)是多发性痴呆症(MS)最常见的亚型,其复发发生的预后可以支持个性化决策和疾病管理,并有助于有效选择患者进行未来的随机临床试验。以前只有三个关于这方面的预测模型发表,它们都有重要的方法学缺陷。目的:我们旨在利用真实世界的数据,介绍RRMS患者复发预后模型的开发、内部验证和潜在临床益处的评估。方法:我们遵循七个步骤来开发和验证预后模型:(1)通过文献回顾来选择预后因素,(2)在贝叶斯框架中开发广义线性混合效应模型,(3)检查样本量效率,(4)系数收缩,(5)使用多个输入处理缺失数据,(6)模型的内部验证。最后,我们使用决策曲线分析评估了所开发的预后模型的潜在临床效益。为了开发和验证我们的预后模型,我们遵循了TRIPOD声明。结果:我们选择了8个基线预后因素:年龄、性别、既往多发性硬化症治疗、上次复发后的月数、疾病持续时间、既往复发次数、扩展残疾状态量表(EDSS)评分和钆增强病变的数量。我们还开发了一个网络应用程序,用于计算个人在未来两年内复发的概率。乐观校正的c统计量为0.65,乐观校正的校准斜率为0.92。对于15%至30%的阈值概率,“基于预后模型的治疗”策略可带来最高的净效益,因此被认为是临床上最有用的策略。结论:与先前发表的RRMS预后模型相比,我们开发的预后模型具有几个优势。重要的是,我们评估了潜在的临床效益,以更好地量化该模型的临床影响。我们的网络应用程序一旦在未来得到外部验证,患者和医生就可以使用它来计算2年内复发的个体化概率,并为他们的疾病管理提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Development, validation and clinical usefulness of a prognostic model for relapse in relapsing-remitting multiple sclerosis.

Development, validation and clinical usefulness of a prognostic model for relapse in relapsing-remitting multiple sclerosis.

Development, validation and clinical usefulness of a prognostic model for relapse in relapsing-remitting multiple sclerosis.

Development, validation and clinical usefulness of a prognostic model for relapse in relapsing-remitting multiple sclerosis.

Background: Prognosis for the occurrence of relapses in individuals with relapsing-remitting multiple sclerosis (RRMS), the most common subtype of multiple sclerosis (MS), could support individualized decisions and disease management and could be helpful for efficiently selecting patients for future randomized clinical trials. There are only three previously published prognostic models on this, all of them with important methodological shortcomings.

Objectives: We aim to present the development, internal validation, and evaluation of the potential clinical benefit of a prognostic model for relapses for individuals with RRMS using real-world data.

Methods: We followed seven steps to develop and validate the prognostic model: (1) selection of prognostic factors via a review of the literature, (2) development of a generalized linear mixed-effects model in a Bayesian framework, (3) examination of sample size efficiency, (4) shrinkage of the coefficients, (5) dealing with missing data using multiple imputations, (6) internal validation of the model. Finally, we evaluated the potential clinical benefit of the developed prognostic model using decision curve analysis. For the development and the validation of our prognostic model, we followed the TRIPOD statement.

Results: We selected eight baseline prognostic factors: age, sex, prior MS treatment, months since last relapse, disease duration, number of prior relapses, expanded disability status scale (EDSS) score, and number of gadolinium-enhanced lesions. We also developed a web application that calculates an individual's probability of relapsing within the next 2 years. The optimism-corrected c-statistic is 0.65 and the optimism-corrected calibration slope is 0.92. For threshold probabilities between 15 and 30%, the "treat based on the prognostic model" strategy leads to the highest net benefit and hence is considered the most clinically useful strategy.

Conclusions: The prognostic model we developed offers several advantages in comparison to previously published prognostic models on RRMS. Importantly, we assessed the potential clinical benefit to better quantify the clinical impact of the model. Our web application, once externally validated in the future, could be used by patients and doctors to calculate the individualized probability of relapsing within 2 years and to inform the management of their disease.

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