Evaluating the Diagnostic Accuracy of a Novel Bayesian Decision-Making Algorithm for Vision Loss

Amy Basilious, Chris N. Govas, Alexander M. Deans, P. Yoganathan, R. Deans
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Abstract

The current diagnostic aids for acute vision loss are static flowcharts that do not provide dynamic, stepwise workups. We tested the diagnostic accuracy of a novel dynamic Bayesian algorithm for acute vision loss. Seventy-nine “participants” with acute vision loss in Windsor, Canada were assessed by an emergency medicine or primary care provider who completed a questionnaire about ocular symptoms/findings (without requiring fundoscopy). An ophthalmologist then attributed an independent “gold-standard diagnosis”. The algorithm employed questionnaire data to produce a differential diagnosis. The referrer diagnostic accuracy was 30.4%, while the algorithm’s accuracy was 70.9%, increasing to 86.1% with the algorithm’s top two diagnoses included and 88.6% with the top three included. In urgent cases of vision loss (n = 54), the referrer diagnostic accuracy was 38.9%, while the algorithm’s top diagnosis was correct in 72.2% of cases, increasing to 85.2% (top two included) and 87.0% (top three included). The algorithm’s sensitivity for urgent cases using the top diagnosis was 94.4% (95% CI: 85–99%), with a specificity of 76.0% (95% CI: 55–91%). This novel algorithm adjusts its workup at each step using clinical symptoms. In doing so, it successfully improves diagnostic accuracy for vision loss using clinical data collected by non-ophthalmologists.
评估一种新的贝叶斯决策算法对视力丧失的诊断准确性
目前急性视力丧失的诊断辅助工具是静态流程图,不能提供动态的、逐步的检查。我们测试了一种新的动态贝叶斯算法对急性视力丧失的诊断准确性。在加拿大温莎,79名急性视力丧失的“参与者”由急诊医学或初级保健提供者进行评估,他们填写了一份关于眼部症状/发现的问卷(不需要眼底镜检查)。一位眼科医生随后给出了独立的“金标准诊断”。该算法采用问卷数据进行鉴别诊断。转诊者的诊断准确率为30.4%,而算法的诊断准确率为70.9%,包括算法前两名诊断准确率为86.1%,包括前三名诊断准确率为88.6%。在54例紧急视力丧失病例中,转诊诊断正确率为38.9%,而算法的最高诊断正确率为72.2%,分别增加到85.2%(前2例)和87.0%(前3例)。该算法对使用最高诊断的紧急病例的敏感性为94.4% (95% CI: 85-99%),特异性为76.0% (95% CI: 55-91%)。这种新颖的算法根据临床症状调整每一步的检查结果。在这样做的过程中,它成功地提高了使用非眼科医生收集的临床数据对视力丧失的诊断准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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