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使用人工智能技术预测患者对药物的看法。

Predicting patients' sentiments about medications using artificial intelligence techniques.

作者信息

Sorayaie Azar Amir, Babaei Rikan Samin, Naemi Amin, Bagherzadeh Mohasefi Jamshid, Wiil Uffe Kock

机构信息

SDU Health Informatics and Technology, The Maersk Mc-Kinney Moller Institute, University of Southern Denmark, Odense, Denmark.

Department of Computer Engineering, Urmia University, Urmia, Iran.

出版信息

Sci Rep. 2024 Dec 30;14(1):31928. doi: 10.1038/s41598-024-83222-9.

Abstract

The increasing development of technology has led to the increase of digital data in various fields, such as medication-related texts. Sentiment Analysis (SA) in medication is essential to give clinicians insights into patients' feedback about the treatment procedure. Therefore, this study intends to develop Artificial Intelligence (AI) models to predict patients' sentiments. This study used a large medication review dataset to perform a SA of medications. Three scenarios were considered for classification, including two, three, and ten classes. The Word2Vec algorithm and pre-trained word embeddings, including the general and clinical domains, were utilized in model development. Seven Machine Learning (ML) and Deep Learning (DL) models were developed for various scenarios. The best hyperparameters for all models were fine-tuned. Moreover, two ensemble learning models were developed from the proposed ML and DL models. For the first time, a technique was implemented to interpret the results for explainability and interpretability. The results showed that the developed deep ensemble model (DL_ENS), using PubMed and PMC, as pre-trained word embedding representation, achieved the best results, with accuracy and F1-Score of 92.96% and 92.27% in two classes, 92.18% and 88.50 in three classes, and 90.31% and 67.07% in ten classes, respectively. Combining DL models and developing a DL_ENS with clinical domain pre-trained word embedding representation can accurately predict classes and scores of patients' sentiments about medications compared to previous studies on the same dataset. Due to the transparency in decision-making, our DL_ENS model can be used as an auxiliary tool to help clinicians prescribe medications.

摘要

技术的不断发展导致了各个领域数字数据的增加,比如与药物相关的文本。药物方面的情感分析(SA)对于让临床医生深入了解患者对治疗过程的反馈至关重要。因此,本研究旨在开发人工智能(AI)模型来预测患者的情感。本研究使用了一个大型药物评论数据集来进行药物的情感分析。考虑了三种分类场景,包括两类、三类和十类。在模型开发中使用了Word2Vec算法以及预训练的词嵌入,包括通用领域和临床领域的词嵌入。针对不同场景开发了七种机器学习(ML)和深度学习(DL)模型。对所有模型的最佳超参数进行了微调。此外,从所提出的ML和DL模型中开发了两种集成学习模型。首次实施了一种技术来解释结果以实现可解释性。结果表明,所开发的深度集成模型(DL_ENS),使用PubMed和PMC作为预训练词嵌入表示,取得了最佳结果,在两类分类中准确率和F1分数分别为92.96%和92.27%,在三类分类中为92.18%和88.50,在十类分类中为90.31%和67.07%。与之前对同一数据集的研究相比,将DL模型结合并开发具有临床领域预训练词嵌入表示的DL_ENS可以准确预测患者对药物的情感类别和分数。由于决策的透明度,我们的DL_ENS模型可以用作辅助工具来帮助临床医生开药。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a6f7/11685940/212972f86d93/41598_2024_83222_Fig1_HTML.jpg

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