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Mining disease sequential risk patterns from nationwide clinical databases for early assessment of chronic obstructive pulmonary disease

机译:来自全国性临床数据库的采矿疾病序列风险模式,提前评估慢性阻塞性肺疾病

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Chronic diseases may cause heavy burden on health care resources and disturb the quality of life. Chronic Obstructive Pulmonary Disease (COPD) is an important chronic disease, which takes a long period of time to progress and hard to detect in early stage. In this work, we propose a novel approach for early assessment on COPD by mining COPD-related sequential risk patterns from diagnostic clinical records using sequential rule mining and classification techniques. Through experimental evaluation on a large-scale nationwide clinical database in Taiwan, our approach is shown to be not only capable of deriving many sequential risk patterns, but also reliable in prediction results. Moreover, the discovered sequential risk patterns may provide potential clues for physicians to derive novel markers for early detection on COPD. To our best knowledge, this is the first work that addresses the important issue of early assessment on COPD through mining sequential risk patterns from large-scale clinical databases.
机译:慢性疾病可能会对医疗保健资源造成沉重的负担,并扰乱生活质量。慢性阻塞性肺疾病(COPD)是一种重要的慢性疾病,需要很长一段时间才能在早期进步和难以检测。在这项工作中,我们通过使用顺序规则采矿和分类技术,提出了通过从诊断临床记录中采集COPD相关的顺序风险模式,提出了一种关于COPD的早期评估方法。通过在台湾大规模全国范围的临床数据库的实验评估,我们的方法被证明不仅能够导出许多顺序风险模式,而且在预测结果中也可靠。此外,所发现的顺序风险模式可以为医生提供潜在的线索,以导出在COPD上的早期检测的新标记。为了我们的最佳知识,这是通过从大规模临床数据库中挖掘顺序风险模式来解决对COPD的早期评估重要问题的第一个工作。

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