论文标题
单词嵌入神经网络以促进膝盖骨关节炎研究
Word Embedding Neural Networks to Advance Knee Osteoarthritis Research
论文作者
论文摘要
骨关节炎(OA)是全球最普遍的慢性关节疾病,膝关节OA占据了80%以上常见的关节。膝盖OA还不是一种可治愈的疾病,它会影响大量患者,这对患者和医疗保健系统的昂贵。膝关节OA的病因,诊断和治疗可能是由于其临床和身体表现的变异性所争论的。尽管膝盖OA列出了一系列众多术语列表,旨在标准化慢性关节疾病的诊断,预后,治疗和临床结果的命名,但实际上,在不同的数据源中,与膝盖OA相关的广泛术语,包括但不限于生物医学文学,临床,医疗素养,健康素养,社交和健康社会媒体,包括但不限于生物医学文学。在这些数据源中,生物医学文献中发表的科学文章通常是研究疾病的原则性管道。快速,关于大规模科学文献的准确文本挖掘可能会发现新颖的知识和术语,以更好地了解膝盖OA并提高膝盖OA诊断,预防和治疗的质量。目前的作品旨在利用人工神经网络策略自动提取与膝盖OA疾病相关的词汇。我们的发现表明,开发单词嵌入神经网络的可行性,用于自主关键字提取和膝盖oa的抽象。
Osteoarthritis (OA) is the most prevalent chronic joint disease worldwide, where knee OA takes more than 80% of commonly affected joints. Knee OA is not a curable disease yet, and it affects large columns of patients, making it costly to patients and healthcare systems. Etiology, diagnosis, and treatment of knee OA might be argued by variability in its clinical and physical manifestations. Although knee OA carries a list of well-known terminology aiming to standardize the nomenclature of the diagnosis, prognosis, treatment, and clinical outcomes of the chronic joint disease, in practice there is a wide range of terminology associated with knee OA across different data sources, including but not limited to biomedical literature, clinical notes, healthcare literacy, and health-related social media. Among these data sources, the scientific articles published in the biomedical literature usually make a principled pipeline to study disease. Rapid yet, accurate text mining on large-scale scientific literature may discover novel knowledge and terminology to better understand knee OA and to improve the quality of knee OA diagnosis, prevention, and treatment. The present works aim to utilize artificial neural network strategies to automatically extract vocabularies associated with knee OA diseases. Our finding indicates the feasibility of developing word embedding neural networks for autonomous keyword extraction and abstraction of knee OA.