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

被引:1
|
作者
Bonakdari, Hossein [1 ,2 ]
Pelletier, Jean-Pierre [1 ]
Martel-Pelletier, Johanne [1 ]
机构
[1] Univ Montreal, Hosp Res Ctr CRCHUM, Osteoarthrit Res Unit, 900 St Denis,R11-412, Montreal, PQ H2X 0A9, Canada
[2] Laval Univ, Dept Soil & Agrifood Engn, 2425 Rue Agr, Quebec City, PQ G1V 0A6, Canada
关键词
Data-driven; Time series; Interrupted time series; Arthritis; Clinical decision-making; Management; treatment strategies; RHEUMATOID-ARTHRITIS; MULTIFACETED INTERVENTION; KNEE REPLACEMENT; CARE; VACCINATION; INFLIXIMAB; REGRESSION; TRENDS; IMPACT; DRUGS;
D O I
10.1007/s11926-020-00907-6
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
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.
引用
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页数:11
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