Feasibility of streamlining an interactive Bayesian-based diagnostic support tool designed for clinical practice

Po-Hao Chen, Emmanuel J. Botzolakis, S. Mohan, R. Bryan, T. Cook
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引用次数: 4

Abstract

In radiology, diagnostic errors occur either through the failure of detection or incorrect interpretation. Errors are estimated to occur in 30-35% of all exams and contribute to 40-54% of medical malpractice litigations. In this work, we focus on reducing incorrect interpretation of known imaging features. Existing literature categorizes cognitive bias leading a radiologist to an incorrect diagnosis despite having correctly recognized the abnormal imaging features: anchoring bias, framing effect, availability bias, and premature closure. Computational methods make a unique contribution, as they do not exhibit the same cognitive biases as a human. Bayesian networks formalize the diagnostic process. They modify pre-test diagnostic probabilities using clinical and imaging features, arriving at a post-test probability for each possible diagnosis. To translate Bayesian networks to clinical practice, we implemented an entirely web-based open-source software tool. In this tool, the radiologist first selects a network of choice (e.g. basal ganglia). Then, large, clearly labeled buttons displaying salient imaging features are displayed on the screen serving both as a checklist and for input. As the radiologist inputs the value of an extracted imaging feature, the conditional probabilities of each possible diagnosis are updated. The software presents its level of diagnostic discrimination using a Pareto distribution chart, updated with each additional imaging feature. Active collaboration with the clinical radiologist is a feasible approach to software design and leads to design decisions closely coupling the complex mathematics of conditional probability in Bayesian networks with practice.
精简交互式贝叶斯为基础的诊断支持工具设计临床实践的可行性
在放射学中,诊断错误要么是由于检测失败,要么是由于错误的解释。据估计,在所有检查中,有30-35%的检查出现了错误,并导致了40-54%的医疗事故诉讼。在这项工作中,我们的重点是减少对已知成像特征的错误解释。现有文献将导致放射科医生在正确识别异常影像学特征的情况下做出错误诊断的认知偏差分类为:锚定偏差、框架效应、可用性偏差和过早闭合。计算方法做出了独特的贡献,因为它们没有表现出与人类相同的认知偏差。贝叶斯网络将诊断过程形式化。他们利用临床和影像学特征修改测试前的诊断概率,为每种可能的诊断得出测试后的概率。为了将贝叶斯网络转化为临床实践,我们实现了一个完全基于网络的开源软件工具。在这个工具中,放射科医生首先选择一个网络(如基底神经节)。然后,显示显著成像特征的标记清晰的大按钮显示在屏幕上,作为检查表和输入。当放射科医生输入提取的成像特征值时,每种可能诊断的条件概率就会更新。该软件使用帕累托分布图呈现其诊断歧视水平,并随每个附加成像功能更新。与临床放射科医生积极合作是一种可行的软件设计方法,并将贝叶斯网络中条件概率的复杂数学与实践紧密结合起来。
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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