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DxFormer:一种基于解码器-编码器转换器的解耦自动诊断系统,具有密集的症状表示。

DxFormer: a decoupled automatic diagnostic system based on decoder-encoder transformer with dense symptom representations.

机构信息

School of Data Science, Fudan University, Shanghai 200433, China.

Research Institute of Automatic and Complex Systems, Fudan University, Shanghai 200433, China.

出版信息

Bioinformatics. 2023 Jan 1;39(1). doi: 10.1093/bioinformatics/btac744.

Abstract

MOTIVATION

Symptom-based automatic diagnostic system queries the patient's potential symptoms through continuous interaction with the patient and makes predictions about possible diseases. A few studies use reinforcement learning (RL) to learn the optimal policy from the joint action space of symptoms and diseases. However, existing RL (or Non-RL) methods focus on disease diagnosis while ignoring the importance of symptom inquiry. Although these systems have achieved considerable diagnostic accuracy, they are still far below its performance upper bound due to few turns of interaction with patients and insufficient performance of symptom inquiry. To address this problem, we propose a new automatic diagnostic framework called DxFormer, which decouples symptom inquiry and disease diagnosis, so that these two modules can be independently optimized. The transition from symptom inquiry to disease diagnosis is parametrically determined by the stopping criteria. In DxFormer, we treat each symptom as a token, and formalize the symptom inquiry and disease diagnosis to a language generation model and a sequence classification model, respectively. We use the inverted version of Transformer, i.e. the decoder-encoder structure, to learn the representation of symptoms by jointly optimizing the reinforce reward and cross-entropy loss.

RESULTS

We conduct experiments on three real-world medical dialogue datasets, and the experimental results verify the feasibility of increasing diagnostic accuracy by improving symptom recall. Our model overcomes the shortcomings of previous RL-based methods. By decoupling symptom query from the process of diagnosis, DxFormer greatly improves the symptom recall and achieves the state-of-the-art diagnostic accuracy.

AVAILABILITY AND IMPLEMENTATION

Both code and data are available at https://github.com/lemuria-wchen/DxFormer.

SUPPLEMENTARY INFORMATION

Supplementary data are available at Bioinformatics online.

摘要

动机

基于症状的自动诊断系统通过与患者的持续交互查询患者的潜在症状,并对可能的疾病做出预测。有几项研究使用强化学习(RL)从症状和疾病的联合动作空间中学习最优策略。然而,现有的 RL(或非 RL)方法侧重于疾病诊断,而忽略了症状查询的重要性。尽管这些系统已经取得了相当高的诊断准确性,但由于与患者的交互次数较少和症状查询性能不足,它们仍然远远低于其性能上限。为了解决这个问题,我们提出了一种新的自动诊断框架,称为 DxFormer,它将症状查询和疾病诊断解耦,以便这两个模块可以独立优化。从症状查询到疾病诊断的转换由停止标准参数确定。在 DxFormer 中,我们将每个症状视为一个令牌,并将症状查询和疾病诊断分别形式化为语言生成模型和序列分类模型。我们使用 Transformer 的逆版本,即解码器-编码器结构,通过共同优化强化奖励和交叉熵损失来学习症状的表示。

结果

我们在三个真实世界的医疗对话数据集上进行了实验,实验结果验证了通过提高症状召回率来提高诊断准确性的可行性。我们的模型克服了以前基于 RL 的方法的缺点。通过将症状查询从诊断过程中解耦,DxFormer 大大提高了症状召回率,并达到了最先进的诊断准确性。

可用性和实现

代码和数据都可在 https://github.com/lemuria-wchen/DxFormer 上获得。

补充信息

补充数据可在生物信息学在线获得。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ca8f/9825744/4ee6464fc04d/btac744f1.jpg

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