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应用数据挖掘技术预测类风湿关节炎患者的预后

Applying Data Mining Techniques for Predicting Prognosis in Patients with Rheumatoid Arthritis.

作者信息

Wu Chien-Ting, Lo Chia-Lun, Tung Chien-Hsueh, Cheng Hsiu-Lan

机构信息

Department of Pharmacy, Dalin Tzu Chi Hospital, Buddhist Tzu Chi Medical Foundation, Dailin, Chia- Yi 622, Taiwan.

Institute of Healthcare Information Management, National Chung Cheng University, Minhsiung, Chia-Yi 621, Taiwan.

出版信息

Healthcare (Basel). 2020 Apr 3;8(2):85. doi: 10.3390/healthcare8020085.

Abstract

Rheumatoid arthritis (RA) is a systematic chronic inflammatory disease. The disease mechanism remains unclear and may have resulted from autoimmune problems caused by genetic predisposing and pathogen infection. In clinical practice, selection of the initial treatment is based on the degree of disease activity, and treatment plans will be added gradually according to increased severity of the disease. However, treatment results can be unclear and treatment process uncertain and ambiguous, which can cause healthcare quality to become worse. This study attempts to combine expert opinions to construct various classifiers using a number of data mining techniques to analyze the different prognosis of two patient groups, by predicting whether the inflammatory indicator erythrocyte sedimentation rates of these two groups will be within the normal range with different medication strategies. Clinical data were collected for construction of different classifiers and we evaluate the prediction accuracy rate of each classifier afterwards. The optimum prediction model is selected from these classifiers to predict the prognosis of RA within these treatment strategies and analyze various results. The results show the accuracy rate of the prediction model by Logistic, SVM and DT module were 0.7927, 07829 and 0.9094, respectively. In the RA complications dataset, the accuracy rate of were 0.9393, 0.9290 and 0.9812, respectively. Futhermore, gain ratio was used to further analyze the rules and to discover which branch nodes are the most importance factor. The results of this study are helpful for formulation and development of guidelines for clinical RA treatments, and implementation of a decision support system by using the prediction model can assist medical staff to make correct decisions in the disease's early stage.

摘要

类风湿关节炎(RA)是一种系统性慢性炎症性疾病。其发病机制尚不清楚,可能是由遗传易感性和病原体感染引起的自身免疫问题导致的。在临床实践中,初始治疗的选择基于疾病活动程度,并将根据疾病严重程度的增加逐步增加治疗方案。然而,治疗结果可能不明确,治疗过程也不确定且模糊,这可能导致医疗质量下降。本研究试图结合专家意见,使用多种数据挖掘技术构建各种分类器,通过预测两组患者采用不同药物治疗策略时炎症指标红细胞沉降率是否会在正常范围内,来分析两组患者的不同预后。收集临床数据以构建不同的分类器,然后评估每个分类器的预测准确率。从这些分类器中选择最佳预测模型,以预测这些治疗策略下RA的预后并分析各种结果。结果显示,逻辑回归、支持向量机和决策树模块的预测模型准确率分别为0.7927、0.7829和0.9094。在RA并发症数据集中,准确率分别为0.9393、0.9290和0.9812。此外,使用增益比进一步分析规则,以发现哪些分支节点是最重要的因素。本研究结果有助于制定和完善RA临床治疗指南,利用该预测模型实施决策支持系统可协助医务人员在疾病早期做出正确决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/70e2/7349569/3c9a99398363/healthcare-08-00085-g001.jpg

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