Genome-wide association study and genomic prediction of growth traits in bighead catfish (Clarias macrocephalus Gunther, 1864)

被引:6
|
作者
Chaivichoo, Prapaiphan [1 ]
Sukhavachana, Sila [2 ]
Khumthong, Rabuesak [3 ]
Srisapoome, Prapansak [2 ]
Na-Nakorn, Uthairat [2 ,4 ]
Chatchaiphan, Satid [2 ]
机构
[1] Kasetsart Univ, Grad Sch, Grad Program Aquaculture, Bangkok 10900, Thailand
[2] Kasetsart Univ, Fac Fisheries, Dept Aquaculture, Bangkok 10900, Thailand
[3] Betagro Sci Ctr Co Ltd, Pathum Thani 12120, Thailand
[4] Acad Sci, Royal Soc Thailand, Bangkok 10300, Thailand
关键词
G?nther ?s walking catfish; Genetic improvement; GWAS; SNPs; FACTOR-RESPONSIVE GENE; IMPROVEMENT; PARAMETERS; TOLERANCE; SELECTION; MULTIPLE; SURVIVAL; IDENTIFICATION; AQUACULTURE; RESISTANCE;
D O I
10.1016/j.aquaculture.2022.738748
中图分类号
S9 [水产、渔业];
学科分类号
0908 ;
摘要
Next-generation sequencing (NGS) enables cost-effective exploration of genome-wide single nucleotide poly-morphisms (SNPs). This new technology has made enormous contributions in various fields including genetic improvement. This study was conducted to identify SNPs that associated with growth traits (body weight, standard length, and total length) of bighead catfish (Clarias macrocephalus Gunther, 1864) using genome-wide association studies (GWAS), and to estimate genetic parameters of these growth traits using genomic best linear unbiased prediction (GBLUP). Individual DNA samples from 991 eight-month-old bighead catfish across 74 full -sibs and 31 half-sibs were collected and subjected to next-generation sequencing using the DArTSeq platform. In return, 9530 SNPs were obtained and used for analysis together with the recorded phenotypic data. The analysis was performed using weighted genomic best linear unbiased prediction (wGBLUP), facilitated by the BLUPF90 family of programs, and identified a set of 19 markers associated with all growth traits; the proportion of explained variance ranged from 1.02 to 6.59%. Four SNP sequences were annotated to Egl nine 2-like gene (egln2), zinc finger FYVE-type containing 21 gene (zfyve21), junctophilin 3a (jph3a), and a hypothetical protein. Furthermore, GBLUP was used to estimate GEBV and heritability of the growth traits. PBLUP was also performed using pedigrees obtained from SNP-based parentage information to estimate PEBV and heritability. The results revealed that GBLUP improved accuracy of EBV estimates over PBLUP. Heritability of growth traits estimated by GBLUP ranged between 0.29 +/- 0.05 (for standard length) and 0.55 +/- 0.06 (for body weight), with accuracy ranging from 0.672 to 0.724 and prediction bias close to one. When compared to GBLUP, heritability estimated by PBLUP was lower, and with lower accuracy, while bias was lower only for standard length. In conclusion, the growth-associated SNPs identified herein explained only a small portion of genetic variance, and thus using these SNPs for marker-assisted selection is not promising. Instead, genomic selection based on GEBV is a better approach, provided that genotyping cost can be optimized. The knowledge gained from this study is beneficial to genetic improvement of bighead catfish and other related species.
引用
收藏
页数:8
相关论文
共 50 条
  • [21] Genome-wide association study and genomic prediction for growth traits in yellow-plumage chicken using genotyping-by-sequencing
    Yang, Ruifei
    Xu, Zhenqiang
    Wang, Qi
    Zhu, Di
    Bian, Cheng
    Ren, Jiangli
    Huang, Zhuolin
    Zhu, Xiaoning
    Tian, Zhixin
    Wang, Yuzhe
    Jiang, Ziqin
    Zhao, Yiqiang
    Zhang, Dexiang
    Li, Ning
    Hu, Xiaoxiang
    GENETICS SELECTION EVOLUTION, 2021, 53 (01)
  • [22] Genome-Wide Association Study and Genomic Prediction of Oxalate Content in Spinach
    Xiong, Haizheng
    Shi, Ainong
    Mou, Beiquan
    HORTSCIENCE, 2023, 58 (09) : S138 - S138
  • [23] Genome-Wide Association Study and Genomic Prediction of Disease Resistance in Spinach
    Shi, Ainong
    Bhattarai, Gehendra
    Xiong, Haizheng
    Avila, Carlos A.
    Liu, Bo
    Gyawali, Sanjaya
    Joshi, Vijay
    Stein, Larry
    Mou, Beiquan
    du Toit, Lindsey J.
    Correll, James C.
    HORTSCIENCE, 2023, 58 (09) : S209 - S209
  • [24] Genomic Prediction and Genome-Wide Association Study for Boar Taint Compounds
    Faggion, Sara
    Boschi, Elena
    Veroneze, Renata
    Carnier, Paolo
    Bonfatti, Valentina
    ANIMALS, 2023, 13 (15):
  • [25] Genome-wide association study and genomic predictions for exterior traits in Yorkshire pigs
    Lee, Jungjae
    Lee, SeokHyun
    Park, Jong-Eun
    Moon, Sung-Ho
    Choi, Sung-Woon
    Go, Gwang-Woong
    Lim, Dajeong
    Kim, Jun-Mo
    JOURNAL OF ANIMAL SCIENCE, 2019, 97 (07) : 2793 - 2802
  • [26] Genome-wide association study and genomic selection for yield and related traits in soybean
    Ravelombola, Waltram
    Qin, Jun
    Shi, Ainong
    Song, Qijian
    Yuan, Jin
    Wang, Fengmin
    Chen, Pengyin
    Yan, Long
    Feng, Yan
    Zhao, Tiantian
    Meng, Yaning
    Guan, Kexin
    Yang, Chunyan
    Zhang, Mengchen
    PLOS ONE, 2021, 16 (08):
  • [27] Overview of Genomic Insights into Chicken Growth Traits Based on Genome-Wide Association Study and microRNA Regulation
    Xu, Zhenqiang
    Nie, Qinghua
    Zhang, Xiquan
    CURRENT GENOMICS, 2013, 14 (02) : 137 - 146
  • [28] Genome-Wide Association Study of Hoarding Traits
    Perroud, Nader
    Guipponi, Michel
    Pertusa, Alberto
    Fullana, Miguel Angel
    Iervolino, Alessandra C.
    Cherkas, Lynn
    Spector, Tim
    Collier, David
    Mataix-Cols, David
    AMERICAN JOURNAL OF MEDICAL GENETICS PART B-NEUROPSYCHIATRIC GENETICS, 2011, 156B (02) : 240 - 242
  • [29] GENOME-WIDE ASSOCIATION STUDY FOR GROWTH AND FEED EFFICIENCY TRAITS IN RABBITS
    Garreau, Herve
    Labrune, Yann
    Chapuis, Herve
    Ruesche, Julien
    Riquet, Juliette
    Demars, Julie
    Benitez, Florence
    Richard, Francois
    Drouilhet, Laurence
    Zemb, Olivier
    Gilbert, Helene
    WORLD RABBIT SCIENCE, 2023, 31 (03) : 169 - 169
  • [30] Genome-wide association study of growth traits in the Jinghai Yellow chicken
    Zhang, G. X.
    Fan, Q. C.
    Zhang, T.
    Wang, J. Y.
    Wang, W. H.
    Xue, Q.
    Wang, Y. J.
    GENETICS AND MOLECULAR RESEARCH, 2015, 14 (04) : 15331 - 15338