Bonakdari Hossein, Pelletier Jean-Pierre, Martel-Pelletier Johanne
Osteoarthritis Research Unit, University of Montreal Hospital Research Centre (CRCHUM), 900 Saint-Denis Street, 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.
J Transl Med. 2020 Dec 9;18(1):466. doi: 10.1186/s12967-020-02628-x.
An important task in developing accurate public health intervention evaluation methods based on historical interrupted time series (ITS) records is to determine the exact lag time between pre- and post-intervention. We propose a novel continuous transitional data-driven hybrid methodology using a non-linear approach based on a combination of stochastic and artificial intelligence methods that facilitate the evaluation of ITS data without knowledge of lag time. Understanding the influence of implemented intervention on outcome(s) is imperative for decision makers in order to manage health systems accurately and in a timely manner.
To validate a developed hybrid model, we used, as an example, a published dataset based on a real health problem on the effects of the Italian smoking ban in public spaces on hospital admissions for acute coronary events. We employed a continuous methodology based on data preprocessing to identify linear and nonlinear components in which autoregressive moving average and generalized structure group method of data handling were combined to model stochastic and nonlinear components of ITS. We analyzed the rate of admission for acute coronary events from January 2002 to November 2006 using this new data-driven hybrid methodology that allowed for long-term outcome prediction.
Our results showed the Pearson correlation coefficient of the proposed combined transitional data-driven model exhibited an average of 17.74% enhancement from the single stochastic model and 2.05% from the nonlinear model. In addition, data demonstrated that the developed model improved the mean absolute percentage error and correlation coefficient values for which 2.77% and 0.89 were found compared to 4.02% and 0.76, respectively. Importantly, this model does not use any predefined lag time between pre- and post-intervention.
Most of the previous studies employed the linear regression and considered a lag time to interpret the impact of intervention on public health outcome. The proposed hybrid methodology improved ITS prediction from conventional methods and could be used as a reliable alternative in public health intervention evaluation.
基于历史中断时间序列(ITS)记录开发准确的公共卫生干预评估方法的一项重要任务是确定干预前后的确切滞后时间。我们提出了一种新颖的连续过渡数据驱动混合方法,该方法使用基于随机和人工智能方法相结合的非线性方法,无需了解滞后时间即可促进ITS数据的评估。对于决策者而言,了解实施的干预措施对结果的影响对于准确及时地管理卫生系统至关重要。
为了验证所开发的混合模型,我们以一个已发表的数据集为例,该数据集基于意大利公共场所吸烟禁令对急性冠状动脉事件住院率影响这一实际健康问题。我们采用了基于数据预处理的连续方法来识别线性和非线性成分,其中自回归移动平均和广义数据处理结构组方法相结合,以对ITS的随机和非线性成分进行建模。我们使用这种新的数据驱动混合方法分析了2002年1月至2006年11月期间急性冠状动脉事件的住院率,该方法可进行长期结果预测。
我们的结果表明,所提出的组合过渡数据驱动模型的Pearson相关系数相比单一随机模型平均提高了17.74%,相比非线性模型提高了2.05%。此外,数据表明,所开发的模型改善了平均绝对百分比误差和相关系数值,与之相比,之前的值分别为4.02%和0.76,而现在分别为2.77%和0.89。重要的是,该模型在干预前后未使用任何预定义的滞后时间。
大多数先前的研究采用线性回归并考虑滞后时间来解释干预对公共卫生结果的影响。所提出的混合方法改进了传统方法对ITS的预测,可作为公共卫生干预评估中的可靠替代方法。