College of Electronic Information and Optical Engineering, Nankai University, Tianjin 300350, People's Republic of China.
Tianjin Key Laboratory of Optoelectronic Sensor and Sensing Network Technology, Nankai University, Tianjin 300350, People's Republic of China.
J Breath Res. 2023 Aug 25;17(4). doi: 10.1088/1752-7163/acf065.
Respiratory diseases are one of the leading causes of human death and exacerbate the global burden of non-communicable diseases. Finding a method to assist clinicians pre-diagnose these diseases is an urgent task. Existing artificial intelligence-based methods can improve the clinical diagnosis efficiency, but still face challenges. For example, the lack of interpretability, the problem of information redundancy or missing caused by only using static data, the difficulty of model to learn the interdependence between features, and the performance of model is limited by sparse datasets, etc. To alleviate these problems, we propose a novel RQPA-Net. It consists of Q&A diagnosis module (QAD) and pathological inference module (PI). The QAD is responsible for interacting with patients, adjusting inquiry strategies dynamically and collecting effective information for disease diagnosis. The designed multi-subspace network can alleviate the problem that classical method is difficult to understand the interdependence between features. The deep reinforcement learning designed also can alleviate the problem of classical methods lack of interpretability. The PI is responsible for reasoning potential pathological relationships between diseases or symptoms based on existing knowledge. Through integrating the advantages of deep learning and reinforcement learning techniques, PI can handle sparse datasets. Finally, for auxiliary diagnosis, the model achieves 0.9780 ± 0.0002 Recall, 0.9778 ± 0.0003 Acc, 0.9779 ± 0.0003 Precision and 0.9780 ± 0.0003 F1-score on the test set. In terms of assisting pathological analysis, compared with the end-to-end model, our model achieves higher comprehensive performance on different tasks and datasets with different degrees of sparsity. Even in sparse datasets, it can effectively infer potential associations between diseases or symptoms, and has higher potential clinical application. In this paper, we propose a novel network structure, which can not only assist doctors in diagnosing diseases, but also contribute to explore the potential disease mechanisms. It provides a new perspective for integrating AI technology and clinical practice.
呼吸系统疾病是人类死亡的主要原因之一,也是加重全球非传染性疾病负担的主要原因之一。寻找一种方法帮助临床医生对这些疾病进行预诊断是一项紧迫的任务。现有的基于人工智能的方法可以提高临床诊断效率,但仍面临挑战。例如,缺乏可解释性、仅使用静态数据导致的信息冗余或缺失问题、模型学习特征之间的相关性的困难以及模型的性能受到稀疏数据集的限制等。为了解决这些问题,我们提出了一种新的 RQPA-Net。它由问答诊断模块(QAD)和病理推理模块(PI)组成。QAD 负责与患者交互,动态调整查询策略,并为疾病诊断收集有效信息。设计的多子空间网络可以缓解经典方法难以理解特征之间相关性的问题。设计的深度强化学习也可以缓解经典方法缺乏可解释性的问题。PI 负责基于现有知识推理疾病或症状之间潜在的病理关系。通过整合深度学习和强化学习技术的优势,PI 可以处理稀疏数据集。最后,在辅助诊断方面,该模型在测试集上的召回率、准确率、精确率和 F1 得分分别达到 0.9780 ± 0.0002、0.9778 ± 0.0003、0.9779 ± 0.0003 和 0.9780 ± 0.0003。在辅助病理分析方面,与端到端模型相比,我们的模型在不同任务和不同稀疏程度的数据集中都能取得更高的综合性能。即使在稀疏数据集中,它也可以有效地推断疾病或症状之间的潜在关联,具有更高的潜在临床应用价值。在本文中,我们提出了一种新的网络结构,它不仅可以帮助医生诊断疾病,还有助于探索潜在的疾病机制。它为人工智能技术与临床实践的融合提供了新的视角。