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Mining Disease Risk Patterns from Nationwide Clinical Databases for the Assessment of Early Rheumatoid Arthritis Risk

机译:从全国临床数据库中挖掘疾病风险模式以评估早期类风湿关节炎的风险

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摘要

Rheumatoid arthritis (RA) is a chronic autoimmune rheumatic disease that can cause painful swelling in the joint lining, morning stiffness, and joint deformation/destruction. These symptoms decrease both quality of life and life expectancy. However, if RA can be diagnosed in the early stages, it can be controlled with pharmacotherapy. Although many studies have examined the possibility of early assessment and diagnosis, few have considered the relationship between significant risk factors and the early assessment of RA. In this paper, we present a novel framework for early RA assessment that utilizes data preprocessing, risk pattern mining, validation, and analysis. Under our proposed framework, two risk patterns can be discovered. Type I refers to well-known risk patterns that have been identified by existing studies, whereas Type II denotes unknown relationship risk patterns that have rarely or never been reported in the literature. These Type II patterns are very valuable in supporting novel hypotheses in clinical trials of RA, and constitute the main contribution of this work. To ensure the robustness of our experimental evaluation, we use a nationwide clinical database containing information on 1,314 RA-diagnosed patients over a 12-year follow-up period (1997–2008) and 965,279 non-RA patients. Our proposed framework is employed on this large-scale population-based dataset, and is shown to effectively discover rich RA risk patterns. These patterns may assist physicians in patient assessment, and enhance opportunities for early detection of RA. The proposed framework is broadly applicable to the mining of risk patterns for major disease assessments. This enables the identification of early risk patterns that are significantly associated with a target disease.
机译:类风湿关节炎(RA)是一种慢性自身免疫性风湿性疾病,可引起关节内膜疼痛性肿胀,晨僵和关节变形/破坏。这些症状会降低生活质量和预期寿命。但是,如果可以在早期诊断出RA,则可以通过药物治疗加以控制。尽管许多研究检查了早期评估和诊断的可能性,但很少有人考虑过重大危险因素与RA早期评估之间的关系。在本文中,我们提出了一种用于早期RA评估的新颖框架,该框架利用了数据预处理,风险模式挖掘,验证和分析。在我们提出的框架下,可以发现两种风险模式。 I型是指现有研究已经确定的众所周知的风险模式,而II型是指很少或从未在文献中报道过的未知关系风险模式。这些II型模式对于支持RA临床试验中的新假设非常有价值,并且构成了这项工作的主要贡献。为了确保我们的实验评估的可靠性,我们使用了一个全国性的临床数据库,该数据库包含有关12年随访期(1997-2008年)的1,314例RA诊断患者和965,279例非RA患者的信息。我们提出的框架用于此大规模的基于人口的数据集,并被证明可以有效地发现丰富的RA风险模式。这些模式可以帮助医生进行患者评估,并增加RA早期检测的机会。拟议的框架广泛适用于重大疾病评估的风险模式挖掘。这使得能够识别与目标疾病显着相关的早期风险模式。

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