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首页> 外文期刊>Animal Genetics >Transcriptome analysis to identify differential gene expression affecting meat quality in heavy Italian pigs.
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Transcriptome analysis to identify differential gene expression affecting meat quality in heavy Italian pigs.

机译:转录组分析以鉴定影响重型意大利猪肉品质的差异基因表达。

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摘要

Suppressive subtractive hybridization (SSH) was used to analyse the muscle transcriptome and identify genes affecting meat quality within an Italian pig population of Large White and Landrace purebred individuals. Seven phenotypes were recorded at slaughter: dorsal fat thickness, ham fat thickness, ham fat coverage, muscle compactness, marbling, meat colour and colour uniformity. Two subtractive libraries were created from longissimus dorsi tissue of selected pigs with extreme phenotypes for meat quality. Eighty-four differentially expressed ESTs were identified, which showed homology to expressed pig sequences and/or to genomic pig sequences produced within the pig genome project. Sixty-eight sequences were mapped on the pig genome, and most of these sequences co-localized with the same chromosomal positions as QTLs that have been previously identified for meat quality. Thirty sequences, including eight matching known genes previously related to muscle metabolic pathways, were selected to statistically validate their differential expression. Association analysis and t-test results indicated that 28 ESTs of the 30 analysed were associated with phenotypes investigated here and have significant differential expression levels (P <= 0.05) between the two tails of the phenotypic distribution.
机译:抑制性消减杂交(SSH)用于分析肌肉转录组,并鉴定影响大白种和长白猪纯种个体的意大利猪群内肉质的基因。屠宰时记录了七个表型:背脂肪厚度,火腿脂肪厚度,火腿脂肪覆盖率,肌肉紧实度,大理石花纹,肉色和颜色均匀度。从所选猪的背最长肌组织中建立了两个消减文库,这些猪的肉质具有极端表型。鉴定出八十四个差异表达的EST,它们与猪基因组计划中产生的表达的猪序列和/或基因组猪序列具有同源性。 68个序列被定位在猪基因组上,并且大多数这些序列与QTL的染色体位置共定位,而QTL先前已被确定用于肉质。选择三十个序列,包括八个与先前与肌肉代谢途径相关的匹配的已知基因,以统计学地验证其差异表达。关联分析和 t 测试结果表明,在所分析的30个表型中,有28个EST与此处研究的表型相关,并且两者之间存在显着的差异表达水平( P <= 0.05)表型分布的尾巴。

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