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首页> 外文期刊>Journal of Big Data >Joint index vector: a novel assessment measure for stratified medicine in patients with rheumatoid arthritis
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Joint index vector: a novel assessment measure for stratified medicine in patients with rheumatoid arthritis

机译:联合指数向量:类风湿关节炎患者分层药物的一种新型评估方法

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Abstract ObjectiveTo predict the next-year status in patients with rheumatoid arthritis using big data.MethodsJoint index (JI) of upper/large (UL), upper/small (US), lower/large (LL), and lower/small (LS) was calculated as the sum of tender and swollen joint counts divided by the number of evaluable joints in each region of interest. Joint index vector V (x, y, z) was defined as x?=?JIUL?+?JIUS, y?=?JILL?+?JILS, and z?=?JIUL?+?JILL???JIUS???JILS. Low disease activity was defined as Vxy (=?√x2?+?y2?0.1 were further classified into three groups: evenly affected (EVN): z ?≤?0.2, small joint dominant (SML): z??0.2. To predict the next-year V (x, y, z) of each patient, a transformation matrix was computed from the mean vectors of the EVN, SML, and LAR groups and their translation vectors.Results Vxy was correlated with Simplified Disease Activity Index (SDAI) (r?=?0.82). Z of mean vector increased as the disability index of the Health Assessment Questionnaire (HAQ-DI) and the Steinbrocker class worsened. The LAR group had the worst HAQ-DI and the second highest SDAI after those in the SML group. Positive predictive value and likelihood ratio in predicting the LAR group were 58.7% and 5.9, respectively. Likelihood ratio was greater with treatment, at 7.2, 7.4, and 8.6 when targeted patients were treated with methotrexate, biologics, and both drugs, respectively.ConclusionsPatients with high disease activity and poor functional state were predicted with high probability using joint index vectors.
机译:摘要目的利用大数据预测类风湿关节炎患者的下一年度状况。方法上/大(UL),上/小(US),下/大(LL)和下/小(LS)的联合指数(JI) )的计算方法为,每个关节区域中的软弱和肿胀的关节计数之和除以可评估关节的数量。联合索引向量V(x,y,z)定义为x?=?JIUL?+?JIUS,y?=?JILL?+?JILS,以及z?=?JIUL?+?JILL ??? JIUS ??吉尔。疾病活动度低被定义为Vxy(=?√x2?+?y2?0.1进一步分为三组:均匀受影响(EVN):z≤≤0.2,小关节优势(SML):z≤0.2。为了预测每个患者的下一年V(x,y,z),从EVN,SML和LAR组的均值向量及其翻译向量计算出一个转换矩阵。结果Vxy与疾病简化活动指数相关( SDAI)(r?=?0.82)。随着健康评估问卷(HAQ-DI)和Steinbrocker类的残疾指数恶化,平均向量的Z值增加; LAR组的HAQ-DI最差,SDAI位居第二。 SML组中,预测LAR组的阳性预测值和似然比分别为58.7%和5.9,接受甲氨蝶呤,生物制剂和甲氨蝶呤治疗的目标患者在治疗中的可能性比更大,分别为7.2、7.4和8.6。结论两种疾病均具有较高的疾病活性和功能状态使用联合索引向量来高概率地预测。

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