关于中风症状的不确定决定:通过后果改变偏见

Jordan D. Bailey, Jonathan C. Baker, Adam K. Arabian
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引用次数: 0

摘要

中风对个人生活和医疗系统的影响是巨大的。如果在适当的时间进行治疗,中风造成的损害是有限的,因此早期识别至关重要。一些旨在帮助潜在中风患者辨别中风症状的常见干预措施(如 FAST)往往会导致假阴性结果。脑卒中可表现出多种症状,因此很难区分脑卒中症状和非脑卒中症状。由于患者通常不知道某组症状是中风症状的概率,因此这个问题是在不确定条件下做出的决定。信号检测方法使我们能够考虑个人或群体区分脑卒中症状和非脑卒中症状的能力,并测量做出特定决定的动机或偏差。我们研究了反馈水平对亚马逊 Mechanical Turk 随机抽样参与者表现的影响。我们发现,旨在产生对中风检测的自由偏向的反馈比 FAST 产生更少的失误,同时误报率保持在 50% 以下。鉴于脑卒中很难分辨,这表明干预措施应侧重于激励高危人群在不确定条件下的求助行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Uncertain decisions regarding stroke symptoms: Changing bias through consequences

Uncertain decisions regarding stroke symptoms: Changing bias through consequences

The impact of stroke on the lives of individuals and the health-care system is considerable. Damage from stroke can be limited if the treatment is administered at the appropriate time, so early recognition is essential. Some common interventions (e.g., FAST) designed to help potential stroke victims discriminate stroke symptoms often result in false negatives. Strokes can present with a wide variety of symptoms, making it difficult to discriminate stroke symptoms from non-stroke symptoms. Because the probability that a given set of symptoms are stroke symptoms is typically unknown to the victim, the problem is a decision under conditions of uncertainty. Signal detection methodology allows us to consider the ability of an individual or group to discriminate between stroke symptoms and non-stroke symptoms, as well as measure the motivation or bias toward a particular decision. We examined the effects of levels of feedback on performance of a random sample of participants from Amazon Mechanical Turk. We found that feedback designed to generate liberal bias toward stroke detection yielded fewer misses than FAST while maintaining a false alarm rate below 50%. Given that strokes are difficult to discriminate, this suggests that interventions should be focused on incentivizing help-seeking behaviors in conditions of uncertainty for those most at risk.

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