首页> 外文期刊>Frontiers in Pediatrics >Prediction for Intravenous Immunoglobulin Resistance Combining Genetic Risk Loci Identified From Next Generation Sequencing and Laboratory Data in Kawasaki Disease
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Prediction for Intravenous Immunoglobulin Resistance Combining Genetic Risk Loci Identified From Next Generation Sequencing and Laboratory Data in Kawasaki Disease

机译:川崎病中下一代测序和实验室数据鉴定的静脉内免疫球蛋白抗性的预测

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Background: Kawasaki disease (KD) is the most common cause of acquired heart disease. A proportion of patients were resistant to intravenous immunoglobulin (IVIG), the primary treatment of KD, and the mechanism of IVIG resistance remains unclear. The accuracy of current models predictive of IVIG resistance is insufficient and doesn't meet the clinical expectations. Objectives: To develop a scoring model predicting IVIG resistance of patients with KD. Methods: We recruited 330 KD patients (50 IVIG non-responders, 280 IVIG responders) and 105 healthy children to explore the susceptibility loci of IVIG resistance in Kawasaki disease. A next generation sequencing technology that focused on 4 immune-related pathways and 472 single nucleotide polymorphisms (SNPs) was performed. An R package SNPassoc was used to identify the risk loci, and student's t -test was used to identify risk factors associated with IVIG resistance. A random forest-based scoring model of IVIG resistance was built based on the identified specific SNP loci with the laboratory data. Results: A total of 544 significant risk loci were found associated with IVIG resistance, including 27 previous published SNPs. Laboratory test variables, including erythrocyte sedimentation rate (ESR), platelet (PLT), and C reactive protein, were found significantly different between IVIG responders and non-responders. A scoring model was built using the top 9 SNPs and clinical features achieving an area under the ROC curve of 0.974. Conclusions: It is the first study that focused on immune system in KD using high-throughput sequencing technology. Our findings provided a prediction of the IVIG resistance by integrating the genotype and clinical variables. It also suggested a new perspective on the pathogenesis of IVIG resistance.
机译:背景:川崎病(KD)是最常见的心脏病的原因。一部分患者对静脉内免疫球蛋白(IVIG)耐药,Kd的主要处理,抗象性耐药机理仍然不清楚。目前模型的准确性预测IVIG电阻不足,不符合临床期望。目的:开发一种预测KD患者抗象性抗性的评分模型。方法:我们招募了330名KD患者(50名IVIG非响应者,280名IVIG响应者)和105名健康儿童,探讨了川崎病的抗IVIG抗性的敏感性基因座。进行了聚焦4个免疫相关途径和472个单核苷酸多态性(SNP)的下一代测序技术。 R包SnPassoc用于识别风险基因座,学生的T -Test用于识别与IVIG抗性相关的风险因素。基于具有实验室数据的识别的特定SNP基因座,建立了一种基于森林的森林的评分模型。结果:发现总共有544个重大风险基因座与IVIG抗性有关,包括27个上一个已发表的SNP。实验室测试变量,包括红细胞沉积率(ESR),血小板(PLT)和C反应蛋白,在IVIG响应者和非响应者之间发现显着差异。使用前9名SNP和临床功能建立了评分模型,临床特征达到了0.974的ROC曲线下的区域。结论:第一项研究专注于使用高通量测序技术在KD中的免疫系统。我们的研究结果提供了通过整合基因型和临床变量来预测IVIG抗性。它还提出了一种关于抗象性抗性发病机制的新视角。

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