The Impact of Information Relevancy and Interactivity on Intensivists' Trust in a Machine Learning-Based Bacteremia Prediction System: Simulation Study.
Omer Katzburg, Michael Roimi, Amit Frenkel, Roy Ilan, Yuval Bitan
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引用次数: 0
Abstract
Background: The exponential growth in computing power and the increasing digitization of information have substantially advanced the machine learning (ML) research field. However, ML algorithms are often considered "black boxes," and this fosters distrust. In medical domains, in which mistakes can result in fatal outcomes, practitioners may be especially reluctant to trust ML algorithms.
Objective: The aim of this study is to explore the effect of user-interface design features on intensivists' trust in an ML-based clinical decision support system.
Methods: A total of 47 physicians from critical care specialties were presented with 3 patient cases of bacteremia in the setting of an ML-based simulation system. Three conditions of the simulation were tested according to combinations of information relevancy and interactivity. Participants' trust in the system was assessed by their agreement with the system's prediction and a postexperiment questionnaire. Linear regression models were applied to measure the effects.
Results: Participants' agreement with the system's prediction did not differ according to the experimental conditions. However, in the postexperiment questionnaire, higher information relevancy ratings and interactivity ratings were associated with higher perceived trust in the system (P<.001 for both). The explicit visual presentation of the features of the ML algorithm on the user interface resulted in lower trust among the participants (P=.05).
Conclusions: Information relevancy and interactivity features should be considered in the design of the user interface of ML-based clinical decision support systems to enhance intensivists' trust. This study sheds light on the connection between information relevancy, interactivity, and trust in human-ML interaction, specifically in the intensive care unit environment.
背景:计算能力的指数级增长和信息的日益数字化极大地推动了机器学习(ML)研究领域的发展。然而,机器学习算法通常被视为 "黑盒子",这就造成了不信任。在医疗领域,错误可能导致致命后果,因此从业人员可能尤其不愿意相信 ML 算法:本研究旨在探讨用户界面设计特征对重症监护医生信任基于 ML 的临床决策支持系统的影响:方法:在基于 ML 的模拟系统中,向来自重症监护专业的 47 名医生展示了 3 个菌血症患者病例。根据信息相关性和互动性的组合测试了三种模拟条件。参与者对系统预测的认同度和实验后的问卷调查评估了他们对系统的信任度。采用线性回归模型来衡量效果:结果:实验条件不同,参与者对系统预测的认同度也不同。然而,在实验后的问卷调查中,较高的信息相关性评分和互动性评分与较高的系统感知信任度有关(结论:信息相关性和互动性特征与系统感知信任度的关系是线性相关的):在设计基于 ML 的临床决策支持系统的用户界面时,应考虑信息相关性和交互性特征,以提高重症监护医生的信任度。本研究揭示了人机交互(特别是在重症监护室环境中)中信息相关性、交互性和信任之间的联系。