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通过监督学习对杂交鼠基因型进行分析,以预测个体的肝脏免疫耐受情况。

Supervised machine learning of outbred mouse genotypes to predict hepatic immunological tolerance of individuals.

机构信息

Laboratory of Transplantation Immunology, National Research Institute for Child Health and Development, 2-10-1 Okura, Setagaya-ku, Tokyo, 157-8535, Japan.

Oral Medicine Research Center, Fukuoka Dental College, Fukuoka, Japan.

出版信息

Sci Rep. 2024 Oct 17;14(1):24399. doi: 10.1038/s41598-024-73999-0.

Abstract

It is essential to elucidate the molecular mechanisms underlying liver transplant tolerance and rejection. In cases of mouse liver transplantation between inbred strains, immunological rejection of the allograft is reduced with spontaneous apoptosis without immunosuppressive drugs, which differs from the actual clinical result. This may be because inbred strains are genetically homogeneous and less heterogeneous than others. We exploited outbred CD1 mice, which show highly heterogeneous genotypes among individuals, to search for biomarkers related to immune responses and to construct a model for predicting the outcome of liver allografting. Of the 36 mice examined, 18 died within 3 weeks after transplantation, while the others survived for more than 6 weeks. Whole-exome sequencing of the 36 donors revealed more than 9 million variants relative to the C57BL/6 J reference. We selected 6517 single-nucleotide and indel variants and performed machine learning to determine whether or not we could predict the prognosis of each genotype. Models were built by both deep learning with a one-dimensional convolutional neural network and linear classification and evaluated by leave-one-out cross-validation. Given that one short-lived mouse died early in an accident, the models perfectly predicted the outcome of all individuals, suggesting the importance of genotype collection. In addition, linear classification models provided a list of loci potentially responsible for these responses. The present methods as well as results is likely to be applicable to liver transplantation in humans.

摘要

阐明肝移植耐受和排斥的分子机制至关重要。在近交系小鼠之间进行肝移植时,同种异体移植物的免疫排斥会在没有免疫抑制药物的情况下自发凋亡,这与实际的临床结果不同。这可能是因为近交系在遗传上是同质的,比其他系更同质。我们利用遗传异质性较高的远交系 CD1 小鼠,寻找与免疫反应相关的生物标志物,并构建肝移植预后预测模型。在检查的 36 只小鼠中,有 18 只在移植后 3 周内死亡,而其余的则存活超过 6 周。36 个供体的全外显子测序相对于 C57BL/6J 参考序列揭示了超过 900 万个变异。我们选择了 6517 个单核苷酸和插入缺失变异,并进行机器学习以确定我们是否可以预测每个基因型的预后。通过一维卷积神经网络和线性分类的深度学习构建模型,并通过留一法交叉验证进行评估。由于一只寿命短的小鼠在一次事故中早期死亡,因此模型完美地预测了所有个体的结果,这表明基因型收集的重要性。此外,线性分类模型提供了可能导致这些反应的潜在基因座列表。本方法及结果可能适用于人类肝移植。

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