论文标题
基于AI的安全信号检测方法从社交网络检测:2017年在Doctissimo论坛上应用于Levothyrox丑闻
AI-based Approach for Safety Signals Detection from Social Networks: Application to the Levothyrox Scandal in 2017 on Doctissimo Forum
论文作者
论文摘要
社交媒体可以成为促进药物守护中新安全信号的重要信息来源。各种方法已使用AI(例如NLP技术)来研究社交媒体数据的分析,以检测不良药物事件。现有的方法集中在提取和鉴定不良药物反应,药物相互作用和滥用药物的情况下。但是,没有工程通过考虑相关指标的演变来解决潜在安全信号的检测。此外,尽管在各种医疗保健应用中进行了深入学习的成功,但并未针对此任务进行探索。我们提出了一种基于AI的方法,用于检测患者评论的潜在药物安全信号,该方法可用作药物守护程序监视过程的一部分,以标记进行深入的药物治疗调查的必要性。我们专注于法国的左梭菌病例,该病例随着药物配方的变化引起了媒体的极大关注,从而导致患者正常报告的不良药物反应的频率增加。我们的方法是两个方面。 (1)我们研究了从患者评论中提取的各种基于NLP的指标,包括单词和n-grams频率,语义相似性,不良药物反应提及和情感分析。 (2)我们提出了一个深度学习的体系结构,称为Word Cloud卷积神经网络(WC-CNN),该网络在患者评论中提取的单词云上训练CNN。我们研究不同时间分辨率和不同NLP预处理技术对模型性能的影响。我们的结果表明,将来可以使用所提出的指标来有效检测新的安全信号。以每月分辨率提取的单词云进行训练的WC-CNN模型以75%的精度优于其他模型。
Social media can be an important source of information facilitating the detection of new safety signals in pharmacovigilance. Various approaches have investigated the analysis of social media data using AI such as NLP techniques for detecting adverse drug events. Existing approaches have focused on the extraction and identification of Adverse Drug Reactions, Drug-Drug Interactions and drug misuse. However, non of the works tackled the detection of potential safety signals by taking into account the evolution in time of relevant indicators. Moreover, despite the success of deep learning in various healthcare applications, it was not explored for this task. We propose an AI-based approach for the detection of potential pharmaceutical safety signals from patients' reviews that can be used as part of the pharmacovigilance surveillance process to flag the necessity of an in-depth pharmacovigilance investigation. We focus on the Levothyrox case in France which triggered huge attention from the media following the change of the medication formula, leading to an increase in the frequency of adverse drug reactions normally reported by patients. Our approach is two-fold. (1) We investigate various NLP-based indicators extracted from patients' reviews including words and n-grams frequency, semantic similarity, Adverse Drug Reactions mentions, and sentiment analysis. (2) We propose a deep learning architecture, named Word Cloud Convolutional Neural Network (WC-CNN) which trains a CNN on word clouds extracted from the patients comments. We study the effect of different time resolutions and different NLP pre-processing techniques on the model performance. Our results show that the proposed indicators could be used in the future to effectively detect new safety signals. The WC-CNN model trained on word clouds extracted at monthly resolution outperforms the others with an accuracy of 75%.