Nartker Makaela S, Alaoui-Soce Abla, Wolfe Jeremy M
Department of Psychological and Brain Sciences, Johns Hopkins University, Baltimore, MD, USA.
Department of Psychology, Princeton University, Princeton, NJ, USA.
Cogn Res Princ Implic. 2020 Jul 29;5(1):32. doi: 10.1186/s41235-020-00235-4.
When radiologists search for a specific target (e.g., lung cancer), they are also asked to report any other clinically significant "incidental findings" (e.g., pneumonia). These incidental findings are missed at an undesirably high rate. In an effort to understand and reduce these errors, Wolfe et al. (Cognitive Research: Principles and Implications 2:35, 2017) developed "mixed hybrid search" as a model system for incidental findings. In this task, non-expert observers memorize six targets: half of these targets are specific images (analogous to the suspected diagnosis in the clinical task). The other half are broader, categorically defined targets, like "animals" or "cars" (analogous to the less well-specified incidental findings). In subsequent search through displays for any instances of any of the targets, observers miss about one third of the categorical targets, mimicking the incidental finding problem. In the present paper, we attempted to reduce the number of errors in the mixed hybrid search task with the goal of finding methods that could be deployed in a clinical setting. In Experiments 1a and 1b, we reminded observers about the categorical targets by inserting non-search trials in which categorical targets were clearly marked. In Experiment 2, observers responded twice on each trial: once to confirm the presence or absence of the specific targets, and once to confirm the presence or absence of the categorical targets. In Experiment 3, observers were required to confirm the presence or absence of every target on every trial using a checklist procedure. Only Experiment 3 produced a marked decline in categorical target errors, but at the cost of a substantial increase in response time.
当放射科医生搜索特定目标(如肺癌)时,他们还被要求报告任何其他具有临床意义的“偶然发现”(如肺炎)。这些偶然发现被遗漏的比例高得令人不满意。为了理解并减少这些错误,沃尔夫等人(《认知研究:原理与启示》2:35,2017)开发了“混合混合搜索”作为偶然发现的模型系统。在这个任务中,非专业观察者记住六个目标:其中一半目标是特定图像(类似于临床任务中的疑似诊断)。另一半是更宽泛的、按类别定义的目标,如“动物”或“汽车”(类似于不太明确的偶然发现)。在随后通过显示屏搜索任何目标的实例时,观察者会遗漏大约三分之一的类别目标,这与偶然发现问题类似。在本文中,我们试图减少混合混合搜索任务中的错误数量,目标是找到可应用于临床环境的方法。在实验1a和1b中,我们通过插入非搜索试验来提醒观察者类别目标,在这些试验中类别目标被明确标记。在实验2中,观察者在每次试验中回答两次:一次确认特定目标的存在与否,一次确认类别目标的存在与否。在实验3中,要求观察者使用清单程序在每次试验中确认每个目标的存在与否。只有实验3使类别目标错误显著下降,但代价是响应时间大幅增加。