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Using Multimodal Assessments to Capture Personalized Contexts of College Student Well-being in 2020: Case Study

机译:使用多模式评估将在2020年捕获大学生福祉的个性化背景:案例研究

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Background The year 2020 has been challenging for many, particularly for young adults who have been adversely affected by the COVID-19 pandemic. Emerging adulthood is a developmental phase with significant changes in the patterns of daily living; it is a risky phase for the onset of major mental illness. College students during the pandemic face significant risk, potentially losing several protective factors (eg, housing, routine, social support, job, and financial security) that are stabilizing for mental health and physical well-being. Individualized multiple assessments of mental health, referred to as multimodal personal chronicles, present an opportunity to examine indicators of health in an ongoing and personalized way using mobile sensing devices and wearable internet of things. Objective To assess the feasibility and provide an in-depth examination of the impact of the COVID-19 pandemic on college students through multimodal personal chronicles, we present a case study of an individual monitored using a longitudinal subjective and objective assessment approach over a 9-month period throughout 2020, spanning the prepandemic period of January through September. Methods The individual, referred to as Lee, completed psychological assessments measuring depression, anxiety, and loneliness across 4 time points in January, April, June, and September. We used the data emerging from the multimodal personal chronicles (ie, heart rate, sleep, physical activity, affect, behaviors) in relation to psychological assessments to understand patterns that help to explicate changes in the individual’s psychological well-being across the pandemic. Results Over the course of the pandemic, Lee’s depression severity was highest in April, shortly after shelter-in-place orders were mandated. His depression severity remained mildly severe throughout the rest of the months. Associations in positive and negative affect, physiology, sleep, and physical activity patterns varied across time periods. Lee’s positive affect and negative affect were positively correlated in April (r=0.53, P=.04) whereas they were negatively correlated in September (r=–0.57, P=.03). Only in the month of January was sleep negatively associated with negative affect (r=–0.58, P=.03) and diurnal beats per minute (r=–0.54, P=.04), and then positively associated with heart rate variability (resting root mean square of successive differences between normal heartbeats) (r=0.54, P=.04). When looking at his available contextual data, Lee noted certain situations as supportive coping factors and other situations as potential stressors. Conclusions We observed more pandemic concerns in April and noticed other contextual events relating to this individual’s well-being, reflecting how college students continue to experience life events during the pandemic. The rich monitoring data alongside contextual data may be beneficial for clinicians to understand client experiences and offer personalized treatment plans. We discuss benefits as well as future directions of this system, and the conclusions we can draw regarding the links between the COVID-19 pandemic and college student mental health.
机译:背景技术2020年为许多人挑战,特别是对于受Covid-19大流行受到不利影响的年轻成年人。新兴成年期是一种发展阶段,日常生活模式的显着变化;它是主要精神疾病发作的危险阶段。大流行期间的大学生面临重大风险,潜在地失去了稳定心理健康和身体健康的若干保护因素(例如,住房,常规,社会支持,工作和财务安全性)。个性化对心理健康的多重评估,称为多模式个人编年史,现在有机会以使用移动传感设备和可穿戴物联网的持续和个性化的方式审查健康指标。目的通过多模式个人编年史,评估可行性,并对Covid-19大流行对大学生的影响进行深入检查,我们提出了使用纵向主观和客观评估方法在9-中监测个人的案例研究整个2020年的月期,跨越1月至9月的前期血统。方法将个人称为LEE,在1月,4月,6月和9月,在4个时间点占据了抑郁症,焦虑和孤独的心理评估。我们利用来自多模式个人编年史(即心率,睡眠,身体活动,影响,行为)的数据,以了解有助于突出个人心理幸福在大流行中的变化的模式。结果在大流行过程中,李的抑郁症严重程度在4月份最高,在理所当然的订单后不久就很快。在整个几个月的余下,他的抑郁症严重程度仍然温和。呈正面和负面影响,生理学,睡眠和身体活动模式的关联在时间段中变化。 Lee的阳性影响和负面影响在4月份(r = 0.53,p = .04)呈正相关(r = 0.53),而它们在9月份呈负相关(r = -0.57,p = .03)。只有在1月份的睡眠不相关(r = -0.58,p = .03)和每分钟的昼夜节拍(r = -0.54,p = .04),然后与心率变异性正相关(在正常心跳之间的连续差异的速度均匀均匀)(r = 0.54,p = .04)。在查看他可用的上下文数据时,Lee将某些情况作为支持性应激因子和其他情况作为潜在的压力源。结论我们在4月观察到了更多的大流行问题,并注意到与这个个人幸福有关的其他语境事件,反映了大学生在大流行期间如何体验生活事件。丰富的监测数据与上下文数据相同可能有利于临床医生了解客户体验并提供个性化的待遇计划。我们讨论福利以及该系统的未来方向,以及我们可以借鉴Covid-19大流行和大学生心理健康之间的联系的结论。

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