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An optimised ensemble for antibody-mediated rejection status prediction in kidney transplant patients

机译:用于肾脏移植患者抗体介导排斥状态预测的优化组合

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Antibody-mediated rejection (AMR) is one of the primary mechanisms of graft loss following organ transplantation. A key difficulty with AMR diagnosis is that symptoms typically manifest when the graft is already damaged beyond repair. Diagnosis is also complicated by differing interpretations of histological data by pathologists, highlighting the urgent need for more quantitative approaches. In this paper we propose an ensemble classifier approach to predicting AMR status from gene expression data. We employ two random oversampling techniques - Synthetic Minority Oversampling Technique (SMOTE) and Adaptive Synthetic Oversampling (ADASYN) - to address the class imbalance in the original data set, and use particle swarm optimisation (PSO) for the selection of the ensemble hyperparameters. Our results demonstrate that applying the PSO-optimised ensemble to the balanced data set provides better predictive performance than the ensemble alone, and represents an important step towards more accurate sub-clinical prediction of AMR status and improved patient risk stratification.
机译:抗体介导的排斥反应(AMR)是器官移植后移植物丢失的主要机制之一。 AMR诊断的主要困难在于,当移植物已经损坏且无法修复时,通常会出现症状。病理学家对组织学数据的不同解释也使诊断变得复杂,这凸显了对更多定量方法的迫切需求。在本文中,我们提出了一种集成分类器方法,可从基因表达数据预测AMR状态。我们采用两种随机过采样技术-综合少数民族过采样技术(SMOTE)和自适应综合过采样(ADASYN)-解决原始数据集中的类不平衡问题,并使用粒子群优化(PSO)来选择整体超参数。我们的结果表明,将PSO优化的集合应用于平衡数据集可提供比单独的集合更好的预测性能,并且是朝着更准确的AMR状态亚临床预测和改善患者风险分层迈出的重要一步。

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