Chiang Byron, Law Yik Wa, Yip Paul Siu Fai
Centre of Suicide Research and Prevention, University of Hong Kong, Hong Kong, China (Hong Kong).
Department of Social Work and Social Administration, The University of Hong Kong, Hong Kong, China (Hong Kong).
JMIR Form Res. 2024 Aug 7;8:e46823. doi: 10.2196/46823.
According to the Organisation for Economic Co-operation and Development, its member states experienced worsening mental health during the COVID-19 pandemic, leading to an increase of 60% to 1000% in digital counseling access. Hong Kong, too, witnessed a surge in demand for crisis intervention services during the pandemic, attracting both nonrepeat and repeat service users during the process. As a result of the continuing demand, platforms offering short-term emotional support are facing an efficiency challenge in managing caller responses.
This aim of this paper was to assess the queuing performance of a 24-hour text-based web-based crisis counseling platform using a Python-based discrete-event simulation (DES) model. The model evaluates the staff combinations needed to meet demand and informs service priority decisions. It is able to account for unbalanced and overlapping shifts, unequal simultaneous serving capacities among custom worker types, time-dependent user arrivals, and the influence of user type (nonrepeat users vs repeat users) and suicide risk on service durations.
Use and queue statistics by user type and staffing conditions were tabulated from past counseling platform database records. After calculating the data distributions, key parameters were incorporated into the DES model to determine the supply-demand equilibrium and identify potential service bottlenecks. An unobserved-components time-series model was fitted to make 30-day forecasts of the arrival rate, with the results piped back to the DES model to estimate the number of workers needed to staff each work shift, as well as the number of repeat service users encountered during a service operation.
The results showed a marked increase (from 3401/9202, 36.96% to 5042/9199, 54.81%) in the overall conversion rate after the strategic deployment of human resources according to the values set in the simulations, with an 85% chance of queuing users receiving counseling service within 10 minutes and releasing an extra 39.57% (3631/9175) capacity to serve nonrepeat users at potential risk.
By exploiting scientifically informed data models with DES, nonprofit web-based counseling platforms, even those with limited resources, can optimize service capacity strategically to manage service bottlenecks and increase service uptake.
根据经济合作与发展组织的数据,其成员国在新冠疫情期间心理健康状况恶化,导致数字咨询服务的访问量增长了60%至1000%。香港在疫情期间对危机干预服务的需求也激增,在此过程中吸引了非重复和重复服务用户。由于需求持续存在,提供短期情感支持的平台在管理来电者回复方面面临效率挑战。
本文旨在使用基于Python的离散事件模拟(DES)模型评估一个基于网络的24小时文本危机咨询平台的排队性能。该模型评估满足需求所需的人员组合,并为服务优先级决策提供信息。它能够考虑不平衡和重叠的轮班、不同类型工作人员的不等同同时服务能力、随时间变化的用户到达情况,以及用户类型(非重复用户与重复用户)和自杀风险对服务时长的影响。
从过去咨询平台的数据库记录中列出按用户类型和人员配置条件的使用情况和排队统计数据。在计算数据分布后,将关键参数纳入DES模型,以确定供需平衡并识别潜在的服务瓶颈。拟合一个未观察成分的时间序列模型,对到达率进行30天的预测,结果反馈回DES模型,以估计每个工作班次所需的工作人员数量,以及服务运营期间遇到的重复服务用户数量。
结果显示,根据模拟设定的值进行人力资源战略部署后,总体转化率显著提高(从3,401/9,202,36.96%提高到5,042/9,199,54.81%),排队用户有85%的机会在10分钟内获得咨询服务,并释放出额外39.57%(3,631/9,175)的能力为有潜在风险的非重复用户提供服务。
通过利用基于DES的科学数据模型,即使是资源有限的非营利性网络咨询平台,也可以从战略上优化服务能力,以管理服务瓶颈并提高服务利用率。