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关于时间序列和中断时间序列最优建模预测关节炎疾病结局的观点。

Viewpoint on Time Series and Interrupted Time Series Optimum Modeling for Predicting Arthritic Disease Outcomes.

机构信息

Osteoarthritis Research Unit, University of Montreal Hospital Research Centre (CRCHUM), 900 Saint-Denis, R11.412, Montreal, QC, H2X 0A9, Canada.

Department of Soil and Agri-Food Engineering, Laval University, 2425 rue de l'Agriculture, Québec, QC, G1V 0A6, Canada.

出版信息

Curr Rheumatol Rep. 2020 May 20;22(7):27. doi: 10.1007/s11926-020-00907-6.

Abstract

PURPOSE OF REVIEW

The propose of this viewpoint is to improve or facilitate the clinical decision-making in the management/treatment strategies of arthritis patients through knowing, understanding, and having access to an interactive process allowing assessment of the patient disease outcome in the future.

RECENT FINDINGS

In recent years, the time series (TS) concept has become the center of attention as a predictive model for making forecast of unseen data values. TS and one of its technologies, the interrupted TS (ITS) analysis (TS with one or more interventions), predict the next period(s) value(s) of a given patient based on their past and current information. Traditional TS/ITS methods involve segmented regression-based technologies (linear and nonlinear), while stochastic (linear modeling) and artificial intelligence approaches, including machine learning (complex nonlinear relationships between variables), are also used; however, each have limitations. We will briefly describe TS/ITS, provide examples of their application in arthritic diseases; describe their methods, challenges, and limitations; and propose a combined (stochastic and artificial intelligence) procedure in post-intervention that will optimize ITS modeling. This combined method will increase the accuracy of ITS modeling by profiting from the advantages of both stochastic and nonlinear models to capture all ITS deterministic and stochastic components. In addition, this combined method will allow ITS outcomes to be predicted as continuous variables without having to consider the time lag produced between the pre- and post-intervention periods, thus minimizing the prediction error not only for the given data but also for all possible future patterns in ITS. The use of reliable prediction methodologies for arthritis patients will permit treatment of not only the disease, but also the patient with the disease, ensuring the best outcome prediction for the patient.

摘要

综述目的

本文旨在通过了解、理解和获得一种允许评估患者未来疾病结果的互动过程,提高或促进关节炎患者管理/治疗策略的临床决策。

最近的发现

近年来,时间序列(TS)概念已成为预测模型的中心,用于对未见数据值进行预测。TS 及其技术之一,即中断时间序列(ITS)分析(具有一个或多个干预的 TS),基于患者的过去和当前信息预测给定患者下一时期的一个或多个值。传统的 TS/ITS 方法涉及基于分段回归的技术(线性和非线性),而随机(线性建模)和人工智能方法,包括机器学习(变量之间的复杂非线性关系)也被使用;然而,每种方法都有其局限性。我们将简要描述 TS/ITS,提供其在关节炎疾病中的应用示例;描述它们的方法、挑战和局限性;并提出一种联合(随机和人工智能)方法,在干预后优化 ITS 建模。这种联合方法将通过利用随机和非线性模型的优势来捕捉所有 ITS 确定性和随机性组件,从而提高 ITS 建模的准确性。此外,这种联合方法将允许将 ITS 结果预测为连续变量,而无需考虑干预前后时期之间产生的时间滞后,从而不仅最小化给定数据的预测误差,而且最小化 ITS 中所有可能未来模式的预测误差。为关节炎患者使用可靠的预测方法将不仅能够治疗疾病,还能够治疗患有疾病的患者,从而确保为患者提供最佳的预后预测。

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