AI-driven Optimization in Healthcare: the Diagnostic Process

Jérôme Yves Lyon, Y. Bogodistov, J. Moormann
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引用次数: 3

Abstract

Purpose: Process optimization in healthcare using artificial intelligence (AI) is still in its infancy. In this study, we address the research question “To what extent can an AI-driven chatbot help to optimize the diagnostic process?” Design / Method / Approach: First, we developed a mathematical model for the utility (i.e., total satisfaction received from consuming a good or service) resulting from the diagnostic process in primary healthcare. We calculated this model using MS Excel. Second, after identifying the main pain points for optimization (e.g., waiting time in the queue), we ran a small experiment (n = 25) in which we looked at time to diagnosis, average waiting time, and their standard deviations. In addition, we used a questionnaire to examine patient perceptions of the interaction with an AI-driven chatbot. Findings: Our results show that scheduling is the main factor causing issues in a physician’s work. An AI-driven chatbot may help to optimize waiting time as well as provide data for faster and more accurate diagnosis. We found that patients trust AI-driven solutions primarily when a real (not virtual) physician is also involved in the diagnostic process. Practical Implications: AI-driven chatbots may indeed help to optimize diagnostic processes. Nevertheless, physicians need to remain involved in the process in order to establish patient trust in the diagnosis. Originality / Value: We analyze the utility to physicians and patients of a diagnostic process and show that, while scheduling may reduce the overall process utility, AI-based solutions may increase the overall process utility. Research Limitations / Future Research: First, our simulation includes a number of assumptions with regard to the distribution of mean times for encounter and treatment. Second, the data we used for our model were obtained from different papers, and thus from different healthcare systems. Third, our experimental study has a very small sample size and only one test-physician. Paper type: Empirical 
人工智能驱动的医疗保健优化:诊断过程
目的:利用人工智能进行医疗保健过程优化仍处于初级阶段。在这项研究中,我们解决了一个研究问题“人工智能驱动的聊天机器人在多大程度上有助于优化诊断过程?”设计/方法/方法:首先,我们开发了一个数学模型,用于初级医疗保健中诊断过程产生的效用(即消费商品或服务的总满意度)。我们使用MS Excel计算了这个模型。其次,在确定了优化的主要痛点(例如,队列中的等待时间)后,我们进行了一个小型实验(n=25),研究了诊断时间、平均等待时间及其标准偏差。此外,我们还使用了一份问卷来调查患者对人工智能驱动的聊天机器人互动的看法。研究结果:我们的研究结果表明,日程安排是导致医生工作问题的主要因素。人工智能驱动的聊天机器人可能有助于优化等待时间,并为更快、更准确的诊断提供数据。我们发现,当真实(而非虚拟)医生也参与诊断过程时,患者主要信任人工智能驱动的解决方案。实际意义:人工智能驱动的聊天机器人可能确实有助于优化诊断过程。然而,医生需要继续参与这一过程,以建立患者对诊断的信任。独创性/价值:我们分析了诊断过程对医生和患者的效用,并表明,虽然日程安排可能会降低整体过程效用,但基于人工智能的解决方案可能会增加整体过程效用。研究局限性/未来研究:首先,我们的模拟包括许多关于遭遇和治疗平均时间分布的假设。其次,我们用于模型的数据来自不同的论文,因此来自不同的医疗系统。第三,我们的实验研究样本量很小,只有一名测试医生。论文类型:实证
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