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基于机器学习和假设驱动的优化公牛精液冷冻保存液。

Machine learning and hypothesis driven optimization of bull semen cryopreservation media.

机构信息

Department of Computer Science, Memorial University of Newfoundland, St John's, NL, Canada.

Department of Biology, University of Saskatchewan, Saskatoon, Canada.

出版信息

Sci Rep. 2022 Dec 25;12(1):22328. doi: 10.1038/s41598-022-25104-6.

Abstract

Cryopreservation provides a critical tool for dairy herd genetics management. Due to widely varying inter- and within-bull post thaw fertility, recent research on cryoprotectant extender medium has not dramatically improved suboptimal post-thaw recovery in industry. This progress is stymied by the interactions between samples and the many components of extender media and is often compounded by industry irrelevant sample sizes. To address these challenges, here we demonstrate blank-slate optimization of bull sperm cryopreservation media by supervised machine learning. We considered two supervised learning models: artificial neural networks and Gaussian process regression (GPR). Eleven media components and initial concentrations were identified from publications in bull semen cryopreservation, and an initial 200 extender-post-thaw motility pairs were used to train and 32 extender-post-thaw motility pairs to test the machine learning algorithms. The median post-thaw motility after coupling differential evolution with GPR the increased from 52.6 ± 6.9% to 68.3 ± 6.0% at generations 7 and 17 respectively, with several media performing dramatically better than control media counterparts. This is the first study in which machine learning was used to determine the best combination of constituents to optimize bull sperm cryopreservation media, and provides a template for optimization in other cell types.

摘要

冷冻保存为奶牛群遗传学管理提供了一个关键工具。由于公牛间和公牛内解冻后活力差异很大,最近关于冷冻保护剂扩展介质的研究并没有显著提高行业中解冻后恢复效果不佳的情况。这一进展受到样本与扩展介质的许多成分之间相互作用的阻碍,并且通常因行业无关的样本大小而变得更加复杂。为了解决这些挑战,我们在这里通过有监督的机器学习来展示公牛精子冷冻保存介质的空白优化。我们考虑了两种有监督的学习模型:人工神经网络和高斯过程回归(GPR)。从公牛精液冷冻保存的出版物中确定了 11 种介质成分和初始浓度,并使用最初的 200 个扩展剂解冻后活力对来训练机器学习算法,并使用 32 个扩展剂解冻后活力对来进行测试。通过将差分进化与 GPR 相结合,解冻后活力的中位数从第 7 代的 52.6±6.9%分别增加到第 17 代的 68.3±6.0%,有几种介质的性能明显优于对照介质。这是首次使用机器学习来确定优化公牛精子冷冻保存介质的最佳成分组合的研究,为其他细胞类型的优化提供了模板。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/84d2/9790888/2f10c2bfe903/41598_2022_25104_Fig1_HTML.jpg

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