揭示甲状腺疾病的相关性:一种基于例外情况的数据挖掘技术

Xinyu Zhang, Vincent C. S. Lee, James C. Lee
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引用次数: 0

摘要

背景:近年来,甲状腺疾病的患病率迅速上升,主要归因于快速的生活方式,这往往导致不良的饮食选择、工作与生活失衡、社会压力、基因突变和诊断能力的提高。然而,这些因素对甲状腺疾病的确切影响仍然是一个有争议的话题。因此,迫切需要全面了解相关关联,以潜在地降低相关的发病率和死亡率。方法:本研究采用关联规则挖掘技术来揭示甲状腺疾病关联的复杂和多样的流行病学联系之间的隐藏相关性。我们提出了一个框架,该框架将文本挖掘和关联规则挖掘算法与异常性测量相结合,通过真实的数字健康记录同时识别与疾病相关的常见和异常风险因素。通过两种算法分析了两个不同的数据集,并保留了相互因素进行解释。结果:结果证实年龄、性别和甲状腺病史是与后续甲状腺癌症呈正相关的危险因素。此外,据观察,没有糖尿病、高血压或肥胖等潜在慢性疾病与被诊断为甲状腺癌症的可能性降低有关。结论:总之,所提出的框架证明了其良好的可行性,应进一步推荐用于不同疾病的深入知识发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling Thyroid Disease Associations: An Exceptionality-Based Data Mining Technique
Background: The prevalence of thyroid disease has seen a rapid increase in recent times, primarily attributed to the fast pace of lifestyles that often result in poor dietary choices, work-life imbalances, social stress, genetic mutations, and improved diagnostic capabilities. However, the precise contribution of these factors to thyroid disease remains a subject of controversy. Consequently, there is a pressing need to gain a comprehensive understanding of the related associations in order to potentially mitigate the associated morbidity and mortality rates. Methods: This study employed association rule mining techniques to reveal hidden correlations among complex and diverse epidemiological connections pertaining to thyroid disease associations. We proposed a framework which incorporates text mining and association rule mining algorithms with exceptionality measurement to simultaneously identify common and exception risk factors correlated with the disease through real-life digital health records. Two distinctive datasets were analyzed through two algorithms, and mutual factors were retained for interpretation. Results: The results confirmed that age, gender, and history of thyroid disease are risk factors positively related to subsequent thyroid cancer. Furthermore, it was observed that the absence of underlying chronic disease conditions, such as diabetes, hypertension, or obesity, are associated with reduced likelihood of being diagnosed with thyroid cancer. Conclusions: Collectively, the proposed framework demonstrates its sound feasibility and should be further recommended for different disease in-depth knowledge discovery.
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