Release 56
(Apr 24, 2025)

QTL 66000 Description:

 Trait Information
Trait name: Milk fat percentage Vertebrate Trait Ontology: Milk total fat amount
Reported name: (n/a) Product Trait Ontology: Milk fat content
Symbol: MF Clinical Measurement Ontology: Milk fat percentage
 QTL Map Information
Chromosome:11
QTL Peak Location:23 (cM)
QTL Span:23.30-23.50 (cM)
13.3-13.4 (Mbp)
Upper, "Suggestive":n/a
Upper, "Significant":n/a
Peak:
Lower, "Significant":n/a
Lower, "Suggestive":n/a
Marker type:
Analysis type:Association
Model tested:Mendelian
Test base:n/a
Threshold significance level:Significant
P_values<0.0001
Dominance effect:n/a
Additive effect:n/a
Associated Gene:ACACA (acetyl-CoA carboxylase alpha)
Cis/Trans acting type:
Links:   Edit  |   Map view

 Extended information:
(none)

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  •  QTL Experiment in Brief
    Animals:Animals were Altamurana, Gentile di Puglia, and Sarda sheep.
     Breeds associated:
    Design:Animals were genotyped for one SNP in ACACA and analyzed for milk traits.
    Analysis:Mixed models were used.
    Software:SAS
    Notes: 
    Links:Edit

     Reference
    Authors:Moioli B, Scatà M C, De Matteis G, Annicchiarico G, Catillo G, Napolitano F
    Affiliation:Consiglio per la Ricerca e la Sperimentazione in Agricoltura, via Salaria 31, Monterotondo, Italy
    Title:The ACACA gene is a potential candidate gene for fat content in sheep milk
    Journal:Animal genetics, 2013, 44(5): 601-3
    Links:  PubMed  |  Abstract   |  List all data   |  Edit  

     Additional Information
    Comments:g.1330G>T
    User inputs on reference #23488977
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  • Cite this Data:

    Animal QTLdb: QTL66000 was published in 2013, and was curated into QTLdb on 2016-02-08. DBxREF link to this data: https://www.animalgenome.org/QTLdb/q?id=QTL_ID:66000

     

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