Towards Reducing Diagnostic Errors with Interpretable Risk Prediction

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.10109
Denis Jered McInerney, William Dickinson, Lucy Flynn, Andrea Young, Geoffrey Young, J.-W. van de Meent, Byron C. Wallace
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Abstract

Many diagnostic errors occur because clinicians cannot easily access relevant information in patient Electronic Health Records (EHRs). In this work we propose a method to use LLMs to identify pieces of evidence in patient EHR data that indicate increased or decreased risk of specific diagnoses; our ultimate aim is to increase access to evidence and reduce diagnostic errors. In particular, we propose a Neural Additive Model to make predictions backed by evidence with individualized risk estimates at time-points where clinicians are still uncertain, aiming to specifically mitigate delays in diagnosis and errors stemming from an incomplete differential. To train such a model, it is necessary to infer temporally fine-grained retrospective labels of eventual"true"diagnoses. We do so with LLMs, to ensure that the input text is from before a confident diagnosis can be made. We use an LLM to retrieve an initial pool of evidence, but then refine this set of evidence according to correlations learned by the model. We conduct an in-depth evaluation of the usefulness of our approach by simulating how it might be used by a clinician to decide between a pre-defined list of differential diagnoses.
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通过可解释的风险预测减少诊断错误
由于临床医生无法轻松获取患者电子健康记录(EHR)中的相关信息,因此出现了许多诊断错误。在这项工作中,我们提出了一种方法,利用 LLMs 来识别病人电子健康记录数据中表明特定诊断风险增加或减少的证据片段;我们的最终目的是增加证据的获取途径,减少诊断错误。特别是,我们提出了一种神经相加模型,在临床医生仍不确定的时间点上,以证据为支持进行预测,并提供个性化的风险估计,目的是特别减少因不完全鉴别而导致的诊断延误和错误。要训练这样一个模型,就必须推断出最终 "真实 "诊断的时间细粒度回溯标签。我们使用 LLM 来完成这项工作,以确保在做出可靠诊断之前,输入的文本是真实的。我们使用 LLM 来检索初始证据库,然后根据模型学习到的相关性来完善这组证据。我们通过模拟临床医生如何使用我们的方法在预定义的鉴别诊断列表中做出决定,对我们的方法的实用性进行了深入评估。
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