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Symptom Distribution Regularity of Insomnia: Network and Spectral Clustering Analysis

机译:失眠症的症状分布规律:网络和光谱聚类分析

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Background Recent research in machine-learning techniques has led to signi?cant progress in various research ?elds. In particular, knowledge discovery using this method has become a hot topic in traditional Chinese medicine. As the key clinical manifestations of patients, symptoms play a signi?cant role in clinical diagnosis and treatment, which evidently have their underlying traditional Chinese medicine mechanisms. Objective We aimed to explore the core symptoms and potential regularity of symptoms for diagnosing insomnia to reveal the key symptoms, hidden relationships underlying the symptoms, and their corresponding syndromes. Methods An insomnia dataset with 807 samples was extracted from real-world electronic medical records. After cleaning and selecting the theme data referring to the syndromes and symptoms, the symptom network analysis model was constructed using complex network theory. We used four evaluation metrics of node centrality to discover the core symptom nodes from multiple aspects. To explore the hidden relationships among symptoms, we trained each symptom node in the network to obtain the symptom embedding representation using the Skip-Gram model and node embedding theory. After acquiring the symptom vocabulary in a digital vector format, we calculated the similarities between any two symptom embeddings, and clustered these symptom embeddings into five communities using the spectral clustering algorithm. Results The top five core symptoms of insomnia diagnosis, including difficulty falling asleep, easy to wake up at night, dysphoria and irascibility, forgetful, and spiritlessness and weakness, were identified using evaluation metrics of node centrality. The symptom embeddings with hidden relationships were constructed, which can be considered as the basic dataset for future insomnia research. The symptom network was divided into five communities, and these symptoms were accurately categorized into their corresponding syndromes. Conclusions These results highlight that network and clustering analyses can objectively and effectively find the key symptoms and relationships among symptoms. Identification of the symptom distribution and symptom clusters of insomnia further provide valuable guidance for clinical diagnosis and treatment.
机译:背景技术机器学习技术的最新研究导致了各种研究中的进展?eld。特别是,使用这种方法的知识发现已成为中医中的热门话题。作为患者的关键临床表现,症状在临床诊断和治疗中发挥着缺陷,显然是他们的潜在中药机制。目的我们旨在探讨核心症状和潜在规律的症状,诊断失眠,揭示关键症状,症状潜在的隐藏关系及其相应的综合征。方法从真实的电子医疗记录中提取具有807个样本的失眠数据集。清洁和选择综合征和症状的主题数据后,使用复杂的网络理论构建症状网络分析模型。我们使用了节点中心的四个评估度量,以发现来自多个方面的核心症状节点。为了探讨症状之间的隐藏关系,我们培训了网络中的每个症状节点,以获得使用Skip-Gram模型和节点嵌入理论的症状嵌入表示。在以数字矢量格式获取症状词汇后,我们计算了任何两个症状嵌入之间的相似性,并使用光谱聚类算法将这些症状嵌入的嵌入物嵌入为五个社区。结果利用节点中心的评价度量确定了难以入睡的前五个核心症状,包括困难,难以睡眠,令人遗憾,令人遗憾的,健忘,无情和无力。构建了具有隐藏关系的症状嵌入,可以被视为未来失眠研究的基本数据集。症状网络分为五个社区,这些症状被准确地分为相应的综合征。结论这些结果强调了网络和聚类分析可以客观地和有效地找到症状之间的关键症状和关系。鉴定失眠症的症状分布和症状簇进一步为临床诊断和治疗提供了有价值的指导。

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