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eDRAM: Effective early disease risk assessment with matrix factorization on a large-scale medical database: A case study on rheumatoid arthritis

机译:eDRAM:在大型医学数据库中采用矩阵分解进行有效的早期疾病风险评估:类风湿关节炎的案例研究

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摘要

Recently, a number of analytical approaches for probing medical databases have been developed to assist in disease risk assessment and to determine the association of a clinical condition with others, so that better and intelligent healthcare can be provided. The early assessment of disease risk is an emerging topic in medical informatics. If diseases are detected at an early stage, prognosis can be improved and medical resources can be used more efficiently. For example, if rheumatoid arthritis (RA) is detected at an early stage, appropriate medications can be used to prevent bone deterioration. In early disease risk assessment, finding important risk factors from large-scale medical databases and performing individual disease risk assessment have been challenging tasks. A number of recent studies have considered risk factor analysis approaches, such as association rule mining, sequential rule mining, regression, and expert advice. In this study, to improve disease risk assessment, machine learning and matrix factorization techniques were integrated to discover important and implicit risk factors. A novel framework is proposed that can effectively assess early disease risks, and RA is used as a case study. This framework comprises three main stages: data preprocessing, risk factor optimization, and early disease risk assessment. This is the first study integrating matrix factorization and machine learning for disease risk assessment that is applied to a nation-wide and longitudinal medical diagnostic database. In the experimental evaluations, a cohort established from a large-scale medical database was used that included 1007 RA-diagnosed patients and 921,192 control patients examined over a nine-year follow-up period (2000–2008). The evaluation results demonstrate that the proposed approach is more efficient and stable for disease risk assessment than state-of-the-art methods.
机译:近来,已经开发出许多用于探查医学数据库的分析方法,以辅助疾病风险评估以及确定临床状况与其他疾病之间的关联,从而可以提供更好和智能的医疗保健。疾病风险的早期评估是医学信息学中一个新兴的话题。如果及早发现疾病,则可以改善预后,可以更有效地利用医疗资源。例如,如果在早期发现类风湿关节炎(RA),则可以使用适当的药物来预防骨质退化。在早期疾病风险评估中,从大规模医学数据库中找到重要的风险因素并进行个别疾病风险评估一直是一项艰巨的任务。最近的许多研究都考虑了风险因素分析方法,例如关联规则挖掘,顺序规则挖掘,回归和专家建议。在这项研究中,为了改善疾病风险评估,将机器学习和矩阵分解技术集成在一起以发现重要和隐含的风险因素。提出了一种可以有效评估早期疾病风险的新颖框架,并将RA用作案例研究。该框架包括三个主要阶段:数据预处理,风险因素优化和疾病早期风险评估。这是将矩阵分解和机器学习用于疾病风险评估相结合的第一项研究,该研究已应用于全国性纵向医疗诊断数据库。在实验评估中,使用了从大型医学数据库建立的队列,其中包括在九年的随访期内(2000-2008年)检查的1007名经RA诊断的患者和921192名对照患者。评估结果表明,与最新方法相比,该方法在疾病风险评估中更有效,更稳定。

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