利用基因组标记对中国地方牛种进行机器学习算法分类的准确性。

Q3 Medicine 遗传 Pub Date : 2024-07-01 DOI:10.16288/j.yczz.24-059
Hui Liang, Xue Wang, Jing-Fang Si, Yi Zhang
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引用次数: 0

摘要

农场动物遗传资源的保护和利用需要准确的品种分类。传统的分类方法主要依赖表型特征。然而,由于表型特征的鉴定存在困难,很难区分高度相似的品种。机器学习算法在利用基因组信息进行品种分类方面显示出独特的优势。为了评估中国牛的品种分类方法,本研究利用了来自中国 7 个地方品种 213 个个体的基因组 SNP 数据,比较了 3 种特征选择方法(FST 值排序和筛选、mRMR 和 Relief-F)和 3 种机器学习算法(随机森林、支持向量机和 Naive Bayes)的分类准确性。结果表明1)使用 FST 方法筛选超过 1500 个 SNPs,或使用 mRMR 算法筛选超过 1000 个 SNPs,SVM 分类算法的分类准确率可达 99.47% 以上;2)最有效的算法是 SVM,其次是 NB,而最佳 SNP 选择方法是 FST 和 mRMR,其次是 Relief-F;3)物种误分类经常发生在相似度高的品种之间。本研究表明,机器学习分类模型结合基因组数据是地方牛品种分类的有效方法,为我国牛品种的快速准确分类提供了技术基础。
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Classification accuracy of machine learning algorithms for Chinese local cattle breeds using genomic markers.

Accurate breed classification is required for the conservation and utilization of farm animal genetic resources. Traditional classification methods mainly rely on phenotypic characterization. However, it is difficult to distinguish between the highly similar breeds due to the challenges in qualifying the phenotypic character. Machine learning algorithms show unique advantages in breed classification using genomic information. To evaluate the classification methods for Chinese cattle breeds, this study utilized genomic SNP data from 213 individuals across seven Chinese local breeds and compared the classification accuracies of three feature selection methods (FST value sorting and screening, mRMR, and Relief-F) and three machine learning algorithms (Random Forest, Support Vector Machine, and Naive Bayes). Results showed that: 1) using the FST method to screen more than 1500 SNPs, or using the mRMR algorithm to screen more than 1000 SNPs, the SVM classification algorithm can achieve more than 99.47% classification accuracy; 2) the most effective algorithm was SVM, followed by NB, while the best SNP selection method was FST and mRMR, followed by Relief-F; 3) species misclassification often occurs between breeds with high similarity. This study demonstrates that machine learning classification models combined with genomic data are effective methods for the classification of local cattle breeds, providing a technical basis for the rapid and accurate classification of cattle breeds in China.

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来源期刊
遗传
遗传 Medicine-Medicine (all)
CiteScore
2.50
自引率
0.00%
发文量
6699
期刊介绍:
期刊最新文献
Advancements and prospects in reconstructing the genetic genealogies of ancient and modern human populations using ancestral recombination graphs. Advances in high throughput sequencing methods for DNA damage and repair. Application of Mendelian randomization analysis in investigating the genetic background of blood biomarkers for colorectal cancer. Computational dissection of the regulatory mechanisms of aberrant metabolism in remodeling the microenvironment of breast cancer. Gut metagenome-derived image augmentation and deep learning improve prediction accuracy of metabolic disease classification.
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