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理解患者对医院的看法:一种用于检测患者意见中情绪的深度学习方法。

Understanding what patients think about hospitals: A deep learning approach for detecting emotions in patient opinions.

机构信息

Department of Information Technologies and Systems, Escuela Superior de Informática, University of Castilla-La Mancha, Ciudad Real, Spain.

出版信息

Artif Intell Med. 2022 Jun;128:102298. doi: 10.1016/j.artmed.2022.102298. Epub 2022 Apr 8.

Abstract

INTRODUCTION

Most hospital assessment systems are based on the study of objective statistical variables as well as patient opinions on their experiences with respect to the services offered by each hospital. Nevertheless, studies have indicated that most of these assessment systems fail to detect patient emotions when they are assessing their stays in a hospital. This information is vital to understanding most of the patient reviews, which are very complex and convey several emotions per review. Therefore, this study aimed to address the problem of detecting multiple emotions from patient reviews.

METHODS

First, a large set of patient opinions was collected from a website that allowed patients to publish their experiences when visiting hospitals. Second, each opinion was labeled with the corresponding conveyed emotions. Third, a deep learning architecture based on a bidirectional gated recurrent unit with a multichannel convolutional neural network layer was proposed to detect multiple emotions from these reviews. Finally, the hyperparameters of this architecture were fine-tuned and different pretrained word embedding models were configured to test its performance.

RESULTS

The results confirmed that our proposed method outperformed other deep learning and machine learning-based algorithms and achieved an average accuracy of 95.82%. Furthermore, the experiments show that clinical-domain word embedding slightly outperforms other general-domain word embeddings, although general-domain embeddings are larger in terms of dimensions.

CONCLUSIONS

The combination of the gated recurrent unit and the multichannel convolutional neural network is able to exploit both semantic and syntactic characteristics of patient opinions. The findings of this study identify research gaps related to areas such as opinion-based hospital recommendations, thereby providing future research directions.

摘要

简介

大多数医院评估系统基于对客观统计变量的研究,以及患者对其在医院获得的服务体验的意见。然而,研究表明,这些评估系统大多数未能检测到患者在评估住院经历时的情绪。这些信息对于理解大多数患者评论至关重要,因为这些评论非常复杂,每一条评论都传达了多种情绪。因此,本研究旨在解决从患者评论中检测多种情绪的问题。

方法

首先,从一个允许患者发布在医院就诊体验的网站上收集了大量患者意见。其次,将每条意见标记为所传达的相应情绪。第三,提出了一种基于双向门控循环单元和多通道卷积神经网络层的深度学习架构,用于从这些评论中检测多种情绪。最后,对该架构的超参数进行微调,并配置不同的预训练词向量模型以测试其性能。

结果

结果证实,我们提出的方法优于其他基于深度学习和机器学习的算法,平均准确率达到 95.82%。此外,实验表明,临床领域的词向量略优于其他通用领域的词向量,尽管通用领域的词向量在维度上更大。

结论

门控循环单元和多通道卷积神经网络的结合能够利用患者意见的语义和句法特征。本研究的结果确定了与基于意见的医院推荐等领域相关的研究空白,从而为未来的研究方向提供了参考。

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