[HTML][HTML] Evidence based selection of commonly used RT-qPCR reference genes for the analysis of mouse skeletal muscle

KC Thomas, XF Zheng, F Garces Suarez, JM Raftery… - PloS one, 2014 - journals.plos.org
KC Thomas, XF Zheng, F Garces Suarez, JM Raftery, KGR Quinlan, N Yang, KN North
PloS one, 2014journals.plos.org
The ability to obtain accurate and reproducible data using quantitative real-time Polymerase
Chain Reaction (RT-qPCR) is limited by the process of data normalization. The use of
'housekeeping'or 'reference'genes is the most common technique used to normalize RT-
qPCR data. However, commonly used reference genes are often poorly validated and may
change as a result of genetic background, environment and experimental intervention. Here
we present an analysis of 10 reference genes in mouse skeletal muscle (Actb, Aldoa …
The ability to obtain accurate and reproducible data using quantitative real-time Polymerase Chain Reaction (RT-qPCR) is limited by the process of data normalization. The use of ‘housekeeping’ or ‘reference’ genes is the most common technique used to normalize RT-qPCR data. However, commonly used reference genes are often poorly validated and may change as a result of genetic background, environment and experimental intervention. Here we present an analysis of 10 reference genes in mouse skeletal muscle (Actb, Aldoa, Gapdh, Hprt1, Ppia, Rer1, Rn18s, Rpl27, Rpl41 and Rpl7L1), which were identified as stable either by microarray or in the literature. Using the MIQE guidelines we compared wild-type (WT) mice across three genetic backgrounds (R129, C57BL/6j and C57BL/10) as well as analyzing the α-actinin-3 knockout (Actn3 KO) mouse, which is a model of the common null polymorphism (R577X) in human ACTN3. Comparing WT mice across three genetic backgrounds, we found that different genes were more tightly regulated in each strain. We have developed a ranked profile of the top performing reference genes in skeletal muscle across these common mouse strains. Interestingly the commonly used reference genes; Gapdh, Rn18s, Hprt1 and Actb were not the most stable. Analysis of our experimental variant (Actn3 KO) also resulted in an altered ranking of reference gene suitability. Furthermore we demonstrate that a poor reference gene results in increased variability in the normalized expression of a gene of interest, and can result in loss of significance. Our data demonstrate that reference genes need to be validated prior to use. For the most accurate normalization, it is important to test several genes and use the geometric mean of at least three of the most stably expressed genes. In the analysis of mouse skeletal muscle, strain and intervention played an important role in selecting the most stable reference genes.
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