类风湿关节炎合并心血管病高危风险患者预后不良的影响因素的预测模型
目的 探讨类风湿关节炎(RA)合并心血管病高危风险患者预后不良的影响因素,构建并验证风险预测模型。方法 回顾性分析2021年1月至2023年1月于河北医科大学第二医院接受治疗的195例RA合并心血管病高危风险患者的病历资料。依据80/20定律随机分为训练集(156例)和验证集(39例)。根据RA患者心血管疾病预后结局分为预后良好组和预后不良组,筛查RA患者发生心血管疾病的影响因素,构建并验证RA患者发生心血管疾病的风险预测模型。结果 156例RA合并心血管病高危风险患者中,发生心血管疾病44例 ...
雷玲彦, 邵会雨, 刘絮莹
doaj
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类风湿关节炎合并心血管病高危风险患者预后不良的影响因素的预测模型 附视频
目的 探讨类风湿关节炎(RA)合并心血管病高危风险患者预后不良的影响因素,构建并验证风险预测模型。方法 回顾性分析2021年1月至2023年1月于河北医科大学第二医院接受治疗的195例RA合并心血管病高危风险患者的病历资料。依据80/20定律随机分为训练集(156例)和验证集(39例)。根据RA患者心血管疾病预后结局分为预后良好组和预后不良组,筛查RA患者发生心血管疾病的影响因素,构建并验证RA患者发生心血管疾病的风险预测模型。结果 156例RA合并心血管病高危风险患者中,发生心血管疾病44例 ...
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