Zhou Xiaokang, Li Yue, Liang Wei
IEEE/ACM Trans Comput Biol Bioinform. 2021 May-Jun;18(3):912-921. doi: 10.1109/TCBB.2020.2994780. Epub 2021 Jun 3.
The rapidly developed Health 2.0 technology has provided people with more opportunities to conduct online medical consultation than ever before. Understanding contexts within different online medical communications and activities becomes a significant issue to facilitate patients' medical decision making process. As a subcategory of machine learning, neural networks have drawn increasing attentions in natural language processing applications. In this article, we focus on modeling and analyzing the patient-physician-generated data based on an integrated CNN-RNN framework, in order to deal with the situation that patients' online inquiries are usually not very long. A so-called DP-CRNN algorithm is developed with a newly designed neural network structure, to extract and highlight the combination of semantic and sequential features in terms of patient's inquiries. An intelligent recommendation method is then proposed to provide patients with automatic clinic guidance and pre-diagnosis suggestions, in which a clustering mechanism is utilized to refine the learning process with more precise diagnosis scope and more representative features. Experiments based on the collected real world data demonstrate the effectiveness of our proposed model and method for intelligent pre-diagnosis service in online medical environments.
快速发展的健康2.0技术为人们提供了比以往更多的进行在线医疗咨询的机会。了解不同在线医疗通信和活动中的上下文成为促进患者医疗决策过程的一个重要问题。作为机器学习的一个子类别,神经网络在自然语言处理应用中受到越来越多的关注。在本文中,我们专注于基于集成的CNN-RNN框架对患者与医生生成的数据进行建模和分析,以处理患者在线咨询通常不长的情况。通过新设计的神经网络结构开发了一种所谓的DP-CRNN算法,以提取并突出患者咨询中语义和序列特征的组合。然后提出一种智能推荐方法,为患者提供自动临床指导和预诊断建议,其中利用聚类机制以更精确的诊断范围和更具代表性的特征来优化学习过程。基于收集到的真实世界数据进行的实验证明了我们提出的模型和方法在在线医疗环境中进行智能预诊断服务的有效性。