通过强调字面意义来改进健康提及分类:公共卫生监测的多样性和概括性研究

O. T. Aduragba, Jialin Yu, A. Cristea, Yang Long
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摘要

人们经常在社交媒体和在线论坛上使用疾病或症状术语,而不是用来描述他们的健康状况。因此,NLP健康提及分类(HMC)任务的目的是识别用户讨论健康状况的帖子,而不是象征性的。现有的计算研究通常只研究发达国家中有代表性的群体中提及的健康问题。卫生监测能力有限的发展中国家无法从这些数据中受益,从而管理公共卫生危机。为了推进HMC研究并使更多不同的人群受益,我们提出了尼日利亚健康提及数据集(NHMD),这是一个从尼日利亚人专用网络论坛收集的新数据集。国家卫生保健计划包括根据尼日利亚四种流行疾病(艾滋病毒/艾滋病、疟疾、中风和结核病)提取的7,763个人工标记帖子。对于NHMD,我们使用当前最先进的HMC模型进行了广泛的实验,并确定与现有的公共数据集相比,NHMD包含分布外示例。因此,它非常适合领域适应研究。NHMD数据集的引入提高了脆弱人群的多样性覆盖率,并在全球公共卫生监测环境中推广了HMC任务。此外,我们提出了一种新的HMC任务多任务学习方法,将字面词义预测作为辅助任务。实验结果表明,就F1得分而言,该方法在统计上显著优于最先进的方法(p < 0.01, Wilcoxon检验),这表明我们的新数据集对现有的HMC方法提出了强有力的挑战。
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Improving Health Mention Classification Through Emphasising Literal Meanings: A Study Towards Diversity and Generalisation for Public Health Surveillance
People often use disease or symptom terms on social media and online forums in ways other than to describe their health. Thus the NLP health mention classification (HMC) task aims to identify posts where users are discussing health conditions literally, not figuratively. Existing computational research typically only studies health mentions within well-represented groups in developed nations. Developing countries with limited health surveillance abilities fail to benefit from such data to manage public health crises. To advance the HMC research and benefit more diverse populations, we present the Nairaland health mention dataset (NHMD), a new dataset collected from a dedicated web forum for Nigerians. NHMD consists of 7,763 manually labelled posts extracted based on four prevalent diseases (HIV/AIDS, Malaria, Stroke and Tuberculosis) in Nigeria. With NHMD, we conduct extensive experiments using current state-of-the-art models for HMC and identify that, compared to existing public datasets, NHMD contains out-of-distribution examples. Hence, it is well suited for domain adaptation studies. The introduction of the NHMD dataset imposes better diversity coverage of vulnerable populations and generalisation for HMC tasks in a global public health surveillance setting. Additionally, we present a novel multi-task learning approach for HMC tasks by combining literal word meaning prediction as an auxiliary task. Experimental results demonstrate that the proposed approach outperforms state-of-the-art methods statistically significantly (p < 0.01, Wilcoxon test) in terms of F1 score over the state-of-the-art and shows that our new dataset poses a strong challenge to the existing HMC methods.
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