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复发缓解型多发性硬化症个体化治疗反应预测的框架。

Framework for personalized prediction of treatment response in relapsing remitting multiple sclerosis.

机构信息

PwC Digital Services, Zürich, Switzerland.

NeuroTransData, Neuburg an der Donau, Germany.

出版信息

BMC Med Res Methodol. 2020 Feb 7;20(1):24. doi: 10.1186/s12874-020-0906-6.

Abstract

BACKGROUND

Personalized healthcare promises to successfully advance the treatment of heterogeneous neurological disorders such as relapsing remitting multiple sclerosis by addressing the caveats of traditional healthcare. This study presents a framework for personalized prediction of treatment response based on real-world data from the NeuroTransData network.

METHODS

A framework for personalized prediction of response to various treatments currently available for relapsing remitting multiple sclerosis patients was proposed. Two indicators of therapy effectiveness were used: number of relapses, and confirmed disability progression. The following steps were performed: (1) Data preprocessing and selection of predictors according to quality and inclusion criteria; (2) Implementation of hierarchical Bayesian generalized linear models for estimating treatment response; (3) Validation of the resulting predictive models based on several performance measures and routines, together with additional analyses that focus on evaluating the usability in clinical practice, such as comparing predicted treatment response with the empirically observed course of multiple sclerosis for different adherence profiles.

RESULTS

The results revealed that the predictive models provide robust and accurate predictions and generalize to new patients and clinical sites. Three different out-of-sample validation schemes (10-fold cross-validation, leave-one-site-out cross-validation, and excluding a test set) were employed to assess generalizability based on three different statistical performance measures (mean squared error, Harrell's concordance statistic, and negative log-likelihood). Sensitivity to different choices of the priors, to the characteristics of the underlying patient population, and to the sample size, was assessed. Finally, it was shown that model predictions are clinically meaningful.

CONCLUSIONS

Applying personalized predictive models in relapsing remitting multiple sclerosis patients is still new territory that is rapidly evolving and has many challenges. The proposed framework addresses the following challenges: robustness and accuracy of the predictions, generalizability to new patients and clinical sites and comparability of the predicted effectiveness of different therapies. The methodological and clinical soundness of the results builds the basis for a future support of patients and doctors when the current treatment is not generating the desired effect and they are considering a therapy switch. (A) The framework is developed using quality-proven real-world data of patients with relapsing remitting multiple sclerosis. Patients have heterogeneous individual characteristics and diverse disease profiles, indicated for example by variations in frequency of relapses and degree of disability. Longitudinal characteristics regarding disease history (e.g. number of previous relapses in the last 12 months) are extracted at the time of an intended therapy switch, i.e. at time point "Today" (left). All clinical parameters are captured in a standardized way (right). (B) The model predicts the course of the disease based on the observed data (panel A), and is able to account for the impact of various available therapies on chosen clinical endpoints. The resulting ranking of therapies has a dependency on patient characteristics, illustrated here by a different highest ranked therapy depending on the number of relapse in the previous 12 months. (C) The model is evaluated for various generalization properties. Compared to performance on the training set (gray) it is able to predict for new patients not part of the training set (red).Top: Prediction for new patients. Middle: Prediction for new clinical sites. Bottom: Prediction for different time windows. (D) In order to assess the clinical impact of the model, disease activity is compared between patients treated with the highest ranked therapy and those treated with any of the other therapies. Patients adhering to the highest ranked therapy are associated with a better disease outcome when compared to those who did not.

摘要

背景

个性化医疗有望通过解决传统医疗的局限性,成功推进对复发性缓解型多发性硬化等异质神经疾病的治疗。本研究提出了一个基于 NeuroTransData 网络的真实世界数据的个性化治疗反应预测框架。

方法

提出了一个用于预测复发性缓解型多发性硬化症患者目前可用的各种治疗方法反应的个性化预测框架。使用了两个治疗效果指标:复发次数和确诊残疾进展。进行了以下步骤:(1)根据质量和纳入标准进行数据预处理和预测因子选择;(2)实施分层贝叶斯广义线性模型来估计治疗反应;(3)基于几个性能指标和例程对生成的预测模型进行验证,同时进行其他分析,重点评估在临床实践中的可用性,例如比较不同依从性特征的预测治疗反应与多发性硬化症的实际病程。

结果

结果表明,预测模型提供了稳健和准确的预测,并能推广到新的患者和临床站点。采用了三种不同的样本外验证方案(10 折交叉验证、留一站点外交叉验证和排除测试集),基于三种不同的统计性能指标(均方误差、哈雷尔一致性统计量和负对数似然)来评估泛化能力。评估了对先验选择、基础患者人群特征和样本量的敏感性。最后,结果表明模型预测具有临床意义。

结论

在复发性缓解型多发性硬化症患者中应用个性化预测模型仍然是一个快速发展且存在许多挑战的新领域。所提出的框架解决了以下挑战:预测的稳健性和准确性、对新患者和临床站点的泛化能力以及不同治疗方法的预测效果的可比性。结果的方法学和临床稳健性为未来在当前治疗效果不理想且正在考虑治疗转换时为患者和医生提供支持奠定了基础。(A)该框架使用经过质量验证的复发性缓解型多发性硬化症患者的真实世界数据开发。患者具有异质的个体特征和不同的疾病特征,例如复发频率和残疾程度的变化。在计划治疗转换时(即“今天”时间点)提取疾病史的纵向特征(例如过去 12 个月内的复发次数),即时间点“今天”(左)。所有临床参数都以标准化的方式捕获(右)。(B)该模型基于观察到的数据预测疾病进程(面板 A),并能够解释各种可用疗法对所选临床终点的影响。由此产生的治疗方案排名取决于患者特征,如图所示,取决于过去 12 个月内的复发次数,最高排名的治疗方案不同。(C)模型的各种泛化性质进行评估。与训练集上的性能(灰色)相比,它能够预测不属于训练集的新患者(红色)。顶:预测新患者。中:预测新临床站点。底:预测不同时间窗口。(D)为了评估模型的临床影响,将接受最高排名治疗的患者与接受任何其他治疗的患者的疾病活动进行比较。与未接受最高排名治疗的患者相比,接受该治疗的患者疾病结局更好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0971/7006411/e483f5b91670/12874_2020_906_Fig1_HTML.jpg

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