naacl2021第六届健康应用社交媒体挖掘(#SMM4H)共享任务概述

A. Magge, A. Klein, Antonio Miranda-Escalada, M. Ali Al-Garadi, I. Alimova, Z. Miftahutdinov, Eulàlia Farré, Salvador Lima López, Ivan Flores, K. O’Connor, D. Weissenbacher, E. Tutubalina, A. Sarker, J. Banda, Martin Krallinger, G. Gonzalez-Hernandez
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引用次数: 70

摘要

过去十年来,社交媒体使用的全球增长为挖掘与健康相关的信息开辟了研究途径,这些信息最终可用于改善公众健康。健康应用的社交媒体挖掘(#SMM4H)在其第六次迭代中分享了一些任务,旨在推进Twitter等社交媒体文本在药物警戒、疾病跟踪和以患者为中心的结果方面的使用。#SMM4H 2021共举办了八项任务,包括用英语和俄语重新进行药物不良反应提取,以及从Twitter和WebMD论坛检测药物不依从性、检测自我报告的不良妊娠结果、检测COVID-19的病例和症状、识别Twitter用户用西班牙语提到的职业,以及检测自我报告的乳腺癌诊断等新任务。这8个任务包括12个独立的子任务,跨越3种语言,需要使用二值分类、多类分类、命名实体识别和实体规范化方法。共有97个注册团队和40个提交预测的团队,与之前的迭代相比,对共享任务的兴趣增长了70%,参与度增长了38%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Overview of the Sixth Social Media Mining for Health Applications (#SMM4H) Shared Tasks at NAACL 2021
The global growth of social media usage over the past decade has opened research avenues for mining health related information that can ultimately be used to improve public health. The Social Media Mining for Health Applications (#SMM4H) shared tasks in its sixth iteration sought to advance the use of social media texts such as Twitter for pharmacovigilance, disease tracking and patient centered outcomes. #SMM4H 2021 hosted a total of eight tasks that included reruns of adverse drug effect extraction in English and Russian and newer tasks such as detecting medication non-adherence from Twitter and WebMD forum, detecting self-reported adverse pregnancy outcomes, detecting cases and symptoms of COVID-19, identifying occupations mentioned in Spanish by Twitter users, and detecting self-reported breast cancer diagnosis. The eight tasks included a total of 12 individual subtasks spanning three languages requiring methods for binary classification, multi-class classification, named entity recognition and entity normalization. With a total of 97 registering teams and 40 teams submitting predictions, the interest in the shared tasks grew by 70% and participation grew by 38% compared to the previous iteration.
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