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Predicting Kidney Transplant Survival Using Multiple Feature Representations for HLAs

机译:使用HLA的多个特征表示预测肾移植生存

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Kidney transplantation can significantly enhance living standards for people suffering from end-stage renal disease. A significant factor that affects graft survival time (the time until the transplant fails and the patient requires another transplant) for kidney transplantation is the compatibility of the Human Leukocyte Antigens (HLAs) between the donor and recipient. In this paper, we propose new biologically-relevant feature representations for incorporating HLA information into machine learning-based survival analysis algorithms. We evaluate our proposed HLA feature representations on a database of over 100,000 transplants and find that they improve prediction accuracy by about 1%, modest at the patient level but potentially significant at a societal level. Accurate prediction of survival times can improve transplant survival outcomes, enabling better allocation of donors to recipients and reducing the number of re-transplants due to graft failure with poorly matched donors.
机译:肾移植可以显着提高患有患有终末期肾病的人的生活水平。 影响移植物存活时间的重要因素(直到移植发生故障的时间,患者需要另一种移植)对肾移植的是人白细胞抗原(HLA)在供体和受体之间的相容性。 在本文中,我们提出了新的生物学相关特征表示,用于将HLA信息纳入基于机器学习的生存分析算法。 我们评估我们提出的HLA特征表示,在10万多万分比10万种移植数据库中,并发现它们在患者水平上提高预测准确性约1%,谦虚,但在社会层面潜在意义。 准确预测存活时间可以改善移植存活结果,使捐献者更好地将捐献者分配给受体,并减少因接枝失败而导致的施主差的移植失败。

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