Purpose. We present an approach for forecasting mental health conditions and emotions of a given population during the COVID-19 pandemic in Argentina based on language expressions used in social media. This approach permits anticipating high prevalence periods in short- to medium-term time horizons. Design. Mental health conditions and emotions are captured via markers, which link social media contents with lexicons. First, we build descriptive timelines for decision makers to monitor the evolution of markers, and their correlation with crisis events. Second, we model the timelines as time series, and support their forecasting, which in turn serve to identify high prevalence points for the estimated markers. Findings. Results showed that different time series forecasting strategies offer different capabilities. In the best scenario, the emergence of high prevalence periods of emotions and mental health disorders can be satisfactorily predicted with a neural network strategy, even when limited data is available in early stages of a crisis (e.g., 7 days). Originality. Although there have been efforts in the literature to predict mental states of individuals, the analysis of mental health at the collective level has received scarce attention. We take a step forward by proposing a forecasting approach for analyzing the mental health of a given population (or group of individuals) at a larger scale. Practical implications. We believe that this work contributes to a better understanding of how psychological processes related to crisis manifest in social media, being a valuable asset for the design, implementation and monitoring of health prevention and communication policies.
翻译:目的:我们提出一种方法,在阿根廷的COVID-19大流行期间,根据社交媒体使用的语言表达方式预测特定人群的心理健康状况和情绪;这一方法可以预测短期至中期时间范围内的高流行率时期;设计:通过标志捕捉心理健康状况和情绪,将社交媒体内容与词汇法联系起来。第一,我们为决策者建立描述性时间表,以监测标记的演变及其与危机事件的相关性。第二,我们将时间序列作为时间序列,并支持其预测,这反过来有助于确定估计指标的高流行率。结果显示,不同的时间序列预测战略提供了不同的能力。在最佳情况下,情绪和心理健康失调的高流行率的出现可以通过神经网络战略得到令人满意的预测,即使危机早期阶段(例如,7天)有有限的数据可用。我们为决策者建立描述性时间表,以监测标记的演变及其与危机事件的关系。尽管在文献中作出了预测个人精神状况的努力,但在集体一级对心理健康的分析却很少受到注意。我们向前迈出了一步,提出了一种预测方法,用以预测情绪和心理健康紊乱的流行期的出现。我们从更深入地分析了一种与人口有关的社会健康有关的政策。