Faculty of Medicine, Medical Campus, Universiti Sultan Zainal Abidin, Kuala Terengganu 20400, Terengganu, Malaysia.
Faculty of Informatics and Computation, Gong Badak Campus, Universiti Sultan Zainal Abidin, Kuala Terengganu 20300, Terengganu, Malaysia.
Int J Environ Res Public Health. 2022 Dec 10;19(24):16601. doi: 10.3390/ijerph192416601.
During the initial phase of the coronavirus disease 2019 (COVID-19) pandemic, there was a critical need to create a valid and reliable screening and surveillance for university staff and students. Consequently, 11 medical experts participated in this cross-sectional study to judge three risk categories of either low, medium, or high, for all 1536 possible combinations of 11 key COVID-19 predictors. The independent experts' judgement on each combination was recorded via a novel dashboard-based rating method which presented combinations of these predictors in a dynamic display within Microsoft Excel. The validated instrument also incorporated an innovative algorithm-derived deduction for efficient rating tasks. The results of the study revealed an ordinal-weighted agreement coefficient of 0.81 (0.79 to 0.82, -value < 0.001) that reached a substantial class of inferential benchmarking. Meanwhile, on average, the novel algorithm eliminated 76.0% of rating tasks by deducing risk categories based on experts' ratings for prior combinations. As a result, this study reported a valid, complete, practical, and efficient method for COVID-19 health screening via a reliable combinatorial-based experts' judgement. The new method to risk assessment may also prove applicable for wider fields of practice whenever a high-stakes decision-making relies on experts' agreement on combinations of important criteria.
在 2019 年冠状病毒病(COVID-19)大流行的初始阶段,迫切需要为大学教职员工和学生创建有效的筛选和监测方法。因此,11 位医学专家参与了这项横断面研究,对 11 个 COVID-19 关键预测因素的所有 1536 种可能组合进行了低、中、高三种风险类别的判断。独立专家对每种组合的判断通过一种新颖的基于仪表板的评分方法进行记录,该方法在 Microsoft Excel 中以动态显示的方式呈现这些预测因素的组合。经过验证的工具还包含了一种创新的算法推导的扣除方法,以提高评分任务的效率。研究结果显示,有序加权一致性系数为 0.81(0.79 至 0.82,-值 < 0.001),达到了推断性基准的中等水平。同时,平均而言,该新算法通过基于专家对先前组合的评分推断风险类别,消除了 76.0%的评分任务。因此,本研究通过基于可靠组合的专家判断报告了一种有效的、完整的、实用的 COVID-19 健康筛查方法。该新的风险评估方法也可能适用于更广泛的实践领域,只要需要专家对重要标准组合达成一致意见来做出高风险决策。