Discovering hidden patterns: Association rules for cardiovascular diseases in type 2 diabetes mellitus.

Pradeep Kumar Dabla, Kamal Upreti, Dharmsheel Shrivastav, Vimal Mehta, Divakar Singh
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Abstract

Background: It is increasingly common to find patients affected by a combination of type 2 diabetes mellitus (T2DM) and coronary artery disease (CAD), and studies are able to correlate their relationships with available biological and clinical evidence. The aim of the current study was to apply association rule mining (ARM) to discover whether there are consistent patterns of clinical features relevant to these diseases. ARM leverages clinical and laboratory data to the meaningful patterns for diabetic CAD by harnessing the power help of data-driven algorithms to optimise the decision-making in patient care.

Aim: To reinforce the evidence of the T2DM-CAD interplay and demonstrate the ability of ARM to provide new insights into multivariate pattern discovery.

Methods: This cross-sectional study was conducted at the Department of Biochemistry in a specialized tertiary care centre in Delhi, involving a total of 300 consented subjects categorized into three groups: CAD with diabetes, CAD without diabetes, and healthy controls, with 100 subjects in each group. The participants were enrolled from the Cardiology IPD & OPD for the sample collection. The study employed ARM technique to extract the meaningful patterns and relationships from the clinical data with its original value.

Results: The clinical dataset comprised 35 attributes from enrolled subjects. The analysis produced rules with a maximum branching factor of 4 and a rule length of 5, necessitating a 1% probability increase for enhancement. Prominent patterns emerged, highlighting strong links between health indicators and diabetes likelihood, particularly elevated HbA1C and random blood sugar levels. The ARM technique identified individuals with a random blood sugar level > 175 and HbA1C > 6.6 are likely in the "CAD-with-diabetes" group, offering valuable insights into health indicators and influencing factors on disease outcomes.

Conclusion: The application of this method holds promise for healthcare practitioners to offer valuable insights for enhancing patient treatment targeting specific subtypes of CAD with diabetes. Implying artificial intelligence techniques with medical data, we have shown the potential for personalized healthcare and the development of user-friendly applications aimed at improving cardiovascular health outcomes for this high-risk population to optimise the decision-making in patient care.

发现隐藏的模式:2 型糖尿病心血管疾病的关联规则。
背景:2型糖尿病(T2DM)和冠状动脉疾病(CAD)并发的患者越来越常见,研究能够根据现有的生物学和临床证据将两者的关系联系起来。当前研究的目的是应用关联规则挖掘(ARM)来发现与这些疾病相关的临床特征是否存在一致的模式。ARM利用临床和实验室数据,通过利用数据驱动算法的强大帮助来优化患者护理决策,从而为糖尿病并发症提供有意义的模式。目的:加强T2DM-CAD相互作用的证据,并展示ARM为多变量模式发现提供新见解的能力:这项横断面研究在德里一家专业三级医疗中心的生物化学系进行,共涉及 300 名同意受试者,分为三组:糖尿病合并 CAD 组、无糖尿病合并 CAD 组和健康对照组,每组 100 人。受试者从心脏内科 IPD 和 OPD 登记并进行样本采集。研究采用 ARM 技术从具有原始值的临床数据中提取有意义的模式和关系:结果:临床数据集由注册受试者的 35 个属性组成。分析产生的规则的最大分支因子为 4,规则长度为 5,需要增加 1%的概率进行增强。分析结果表明,健康指标与糖尿病可能性之间存在密切联系,尤其是 HbA1C 和随机血糖水平升高。ARM技术确定了随机血糖水平大于175和HbA1C大于6.6的个体很可能属于 "CAD-糖尿病 "组,为健康指标和疾病结果的影响因素提供了有价值的见解:结论:这一方法的应用有望为医疗从业人员提供有价值的见解,以加强针对特定亚型糖尿病合并 CAD 患者的治疗。我们将人工智能技术与医疗数据相结合,展示了个性化医疗保健的潜力,并开发了用户友好型应用程序,旨在改善这一高风险人群的心血管健康状况,优化患者护理决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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