对全球 15 个牛种群的 DeepGenomeScan 检测到空间上不同的正向选择信号。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-10-01 Epub Date: 2024-09-24 DOI:10.1089/omi.2024.0154
Harshit Kumar, Xinghu Qin, Bharat Bhushan, Triveni Dutt, Manjit Panigrahi
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引用次数: 0

摘要

要了解驱动物种进化和适应的遗传机制,识别处于选择过程中的基因组区域至关重要。传统方法往往无法检测到复杂的、空间变化的选择信号。然而,深度学习的最新进展为发现传统方法可能忽略的微妙选择信号提供了前景广阔的新方法。在这项研究中,我们利用深度学习框架 DeepGenomeScan 在全球 15 个牛种群中检测空间变化的选择信号。我们的分析揭示了牛基因组中选择性扫描热点的新见解,揭示了以前未被发现的与生理和适应性特征相关的关键基因。我们发现了与牛奶蛋白质和脂肪百分比相关的重要数量性状位点。通过将本研究发现的选择特征与牛基因组变异数据库中报告的选择特征进行比较,我们发现了38个通过传统方法无法发现的新的选择基因。这些基因主要与牛奶和肉的产量和质量有关。我们的研究结果加深了我们对空间变化选择对牛基因组多样性影响的理解,为未来的遗传改良和保护研究奠定了基础。这是第一项基于深度学习的牛选择特征研究,为进化和家畜基因组学研究提供了新的见解。
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DeepGenomeScan of 15 Worldwide Bovine Populations Detects Spatially Varying Positive Selection Signals.

Identifying genomic regions under selection is essential for understanding the genetic mechanisms driving species evolution and adaptation. Traditional methods often fall short in detecting complex, spatially varying selection signals. Recent advances in deep learning, however, present promising new approaches for uncovering subtle selection signals that traditional methods might miss. In this study, we utilized the deep learning framework DeepGenomeScan to detect spatially varying selection signatures across 15 bovine populations worldwide. Our analysis uncovered novel insights into selective sweep hotspots within the bovine genome, revealing key genes associated with physiological and adaptive traits that were previously undetected. We identified significant quantitative trait loci linked to milk protein and fat percentages. By comparing the selection signatures identified in this study with those reported in the Bovine Genome Variation Database, we discovered 38 novel genes under selection that were not identified through traditional methods. These genes are primarily associated with milk and meat yield and quality. Our findings enhance our understanding of spatially varying selection's impact on bovine genomic diversity, laying a foundation for future research in genetic improvement and conservation. This is the first deep learning-based study of selection signatures in cattle, offering new insights for evolutionary and livestock genomics research.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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