Hungerbuehler Ines, Daley Kate, Cavanagh Kate, Garcia Claro Heloísa, Kapps Michael
Vitalk, TNH Health, São Paulo, Brazil.
School of Psychology, University of Sussex, Brighton, United Kingdom.
JMIR Form Res. 2021 Apr 21;5(4):e21678. doi: 10.2196/21678.
Stress, burnout, and mental health problems such as depression and anxiety are common, and can significantly impact workplaces through absenteeism and reduced productivity. To address this issue, organizations must first understand the extent of the difficulties by mapping the mental health of their workforce. Online surveys are a cost-effective and scalable approach to achieve this but typically have low response rates, in part due to a lack of interactivity. Chatbots offer one potential solution, enhancing engagement through simulated natural human conversation and use of interactive features.
The aim of this study was to explore if a text-based chatbot is a feasible approach to engage and motivate employees to complete a workplace mental health assessment. This paper describes the design process and results of a pilot implementation.
A fully automated chatbot ("Viki") was developed to evaluate employee risks of suffering from depression, anxiety, stress, insomnia, burnout, and work-related stress. Viki uses a conversation style and gamification features to enhance engagement. A cross-sectional analysis was performed to gain first insights of a pilot implementation within a small to medium-sized enterprise (120 employees).
The response rate was 64.2% (77/120). In total, 98 employees started the assessment, 77 of whom (79%) completed it. The majority of participants scored in the mild range for anxiety (20/40, 50%) and depression (16/28, 57%), in the moderate range for stress (10/22, 46%), and at the subthreshold level for insomnia (14/20, 70%) as defined by their questionnaire scores.
A chatbot-based workplace mental health assessment seems to be a highly engaging and effective way to collect anonymized mental health data among employees with response rates comparable to those of face-to-face interviews.
压力、职业倦怠以及抑郁和焦虑等心理健康问题很常见,会通过旷工和生产力下降对工作场所产生重大影响。为解决这一问题,组织必须首先通过梳理员工的心理健康状况来了解困难的程度。在线调查是实现这一目标的一种经济高效且可扩展的方法,但通常回复率较低,部分原因是缺乏互动性。聊天机器人提供了一种潜在的解决方案,通过模拟自然的人际对话和使用互动功能来提高参与度。
本研究的目的是探讨基于文本的聊天机器人是否是一种可行的方法,以促使和激励员工完成工作场所心理健康评估。本文描述了试点实施的设计过程和结果。
开发了一个全自动聊天机器人(“Viki”)来评估员工患抑郁症、焦虑症、压力、失眠、职业倦怠和工作相关压力的风险。Viki采用对话风格和游戏化功能来提高参与度。进行了横断面分析,以初步了解在一家中小企业(120名员工)内的试点实施情况。
回复率为64.2%(77/120)。总共有98名员工开始评估,其中77名(79%)完成了评估。根据问卷得分定义,大多数参与者的焦虑(20/40,50%)和抑郁(16/28,57%)得分处于轻度范围,压力(10/22,46%)得分处于中度范围,失眠(14/20,70%)得分处于亚阈值水平。
基于聊天机器人的工作场所心理健康评估似乎是一种极具吸引力且有效的方法,可在员工中收集匿名心理健康数据,其回复率与面对面访谈相当。