West China Hospital, Sichuan University, Chengdu, China.
Department of Data Science and AI, Faculty of Information Technology, Monash University, Melbourne, VIC, Australia.
Front Endocrinol (Lausanne). 2022 Jul 18;13:939367. doi: 10.3389/fendo.2022.939367. eCollection 2022.
Thyroid disease instances have rapidly increased in the past few decades; however, the cause of the disease remains unclear. Understanding the pathogenesis of thyroid disease will potentially reduce morbidity and mortality rates. Currently, the identified risk factors from existing studies are controversial as they were determined through qualitative analysis and were not further confirmed by quantitative implementations. Association rule mining, as a subset of data mining techniques, is dedicated to revealing underlying correlations among multiple attributes from a complex heterogeneous dataset, making it suitable for thyroid disease pathogenesis identification. This study adopts two association rule mining algorithms (i.e., Apriori and FP-Growth Tree) to identify risk factors correlated with thyroid disease. Extensive experiments were conducted to reach impartial findings with respect to knowledge discovery through two independent digital health datasets. The findings confirmed that gender, hypertension, and obesity are positively related to thyroid disease development. The history of I treatment and Triiodothyronine level can be potential factors for evaluating subsequent thyroid disease.
在过去的几十年中,甲状腺疾病的病例迅速增加;然而,该疾病的病因仍不清楚。了解甲状腺疾病的发病机制可能会降低发病率和死亡率。目前,现有研究确定的风险因素存在争议,因为它们是通过定性分析确定的,而没有通过定量实施进一步证实。关联规则挖掘是数据挖掘技术的一个子集,致力于从复杂的异构数据集中揭示多个属性之间的潜在相关性,因此非常适合用于甲状腺疾病发病机制的识别。本研究采用两种关联规则挖掘算法(即 Apriori 和 FP-Growth 树)来识别与甲状腺疾病相关的风险因素。通过两个独立的数字健康数据集进行了广泛的实验,以达到公正的知识发现结果。研究结果证实,性别、高血压和肥胖与甲状腺疾病的发展呈正相关。I 治疗和三碘甲状腺原氨酸水平的历史可能是评估后续甲状腺疾病的潜在因素。