A novel approach to anxiety level prediction using small sets of judgment and survey variables

Sumra Bari, Byoung-Woo Kim, Nicole L. Vike, Shamal Lalvani, Leandros Stefanopoulos, Nicos Maglaveras, Martin Block, Jeffrey Strawn, Aggelos K. Katsaggelos, Hans C. Breiter
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Abstract

Anxiety, a condition characterized by intense fear and persistent worry, affects millions each year and, when severe, is distressing and functionally impairing. Numerous machine learning frameworks have been developed and tested to predict features of anxiety and anxiety traits. This study extended these approaches by using a small set of interpretable judgment variables (n = 15) and contextual variables (demographics, perceived loneliness, COVID-19 history) to (1) understand the relationships between these variables and (2) develop a framework to predict anxiety levels [derived from the State Trait Anxiety Inventory (STAI)]. This set of 15 judgment variables, including loss aversion and risk aversion, models biases in reward/aversion judgments extracted from an unsupervised, short (2–3 min) picture rating task (using the International Affective Picture System) that can be completed on a smartphone. The study cohort consisted of 3476 de-identified adult participants from across the United States who were recruited using an email survey database. Using a balanced Random Forest approach with these judgment and contextual variables, STAI-derived anxiety levels were predicted with up to 81% accuracy and 0.71 AUC ROC. Normalized Gini scores showed that the most important predictors (age, loneliness, household income, employment status) contributed a total of 29–31% of the cumulative relative importance and up to 61% was contributed by judgment variables. Mediation/moderation statistics revealed that the interactions between judgment and contextual variables appears to be important for accurately predicting anxiety levels. Median shifts in judgment variables described a behavioral profile for individuals with higher anxiety levels that was characterized by less resilience, more avoidance, and more indifference behavior. This study supports the hypothesis that distinct constellations of 15 interpretable judgment variables, along with contextual variables, could yield an efficient and highly scalable system for mental health assessment. These results contribute to our understanding of underlying psychological processes that are necessary to characterize what causes variance in anxiety conditions and its behaviors, which can impact treatment development and efficacy.

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利用小型判断和调查变量集预测焦虑水平的新方法。
焦虑症是一种以强烈恐惧和持续担忧为特征的病症,每年影响着数百万人,严重时会使人痛苦不堪,并损害其功能。为了预测焦虑和焦虑特征,人们开发并测试了许多机器学习框架。本研究通过使用一小组可解释的判断变量(n = 15)和环境变量(人口统计学、感知到的孤独感、COVID-19 历史)对这些方法进行了扩展,以(1)了解这些变量之间的关系,(2)开发一个预测焦虑水平的框架[源自国家特质焦虑量表(STAI)]。这组 15 个判断变量(包括损失厌恶和风险厌恶)模拟了奖励/厌恶判断的偏差,这些偏差是从一项可在智能手机上完成的无监督、短时(2-3 分钟)图片评级任务(使用国际情感图片系统)中提取的。研究队列由 3476 名来自美国各地的去身份化成年参与者组成,他们是通过电子邮件调查数据库招募的。使用平衡的随机森林方法并结合这些判断和上下文变量,STAI 衍生焦虑水平的预测准确率高达 81%,AUC ROC 为 0.71。归一化基尼分数显示,最重要的预测因素(年龄、孤独感、家庭收入、就业状况)共占累积相对重要性的 29-31% ,而判断变量占了 61%。中介/调节统计显示,判断变量和环境变量之间的相互作用似乎对准确预测焦虑水平非常重要。判断变量的中位数变化描述了焦虑水平较高的个体的行为特征,其特点是抗压能力较弱、回避行为较多和冷漠行为较多。这项研究支持这样的假设,即 15 个可解释的判断变量的不同组合,加上环境变量,可以产生一个高效且高度可扩展的心理健康评估系统。这些结果有助于我们了解潜在的心理过程,而这些心理过程是描述焦虑状况及其行为差异的原因所必需的,会影响治疗的发展和效果。
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