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5′RNA-Seq identifies Fhl1 as a genetic modifier in cardiomyopathy
Danos C. Christodoulou, … , Christine E. Seidman, J.G. Seidman
Danos C. Christodoulou, … , Christine E. Seidman, J.G. Seidman
Published February 10, 2014
Citation Information: J Clin Invest. 2014;124(3):1364-1370. https://doi.org/10.1172/JCI70108.
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Technical Advance Cardiology

5′RNA-Seq identifies Fhl1 as a genetic modifier in cardiomyopathy

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Abstract

The transcriptome is subject to multiple changes during pathogenesis, including the use of alternate 5′ start-sites that can affect transcription levels and output. Current RNA sequencing techniques can assess mRNA levels, but do not robustly detect changes in 5′ start-site use. Here, we developed a transcriptome sequencing strategy that detects genome-wide changes in start-site usage (5′RNA-Seq) and applied this methodology to identify regulatory events that occur in hypertrophic cardiomyopathy (HCM). Compared with transcripts from WT mice, 92 genes had altered start-site usage in a mouse model of HCM, including four-and-a-half LIM domains protein 1 (Fhl1). HCM-induced altered transcriptional regulation of Fhl1 resulted in robust myocyte expression of a distinct protein isoform, a response that was conserved in humans with genetic or acquired cardiomyopathies. Genetic ablation of Fhl1 in HCM mice was deleterious, which suggests that Fhl1 transcriptional changes provide salutary effects on stressed myocytes in this disease. Because Fhl1 is a chromosome X–encoded gene, stress-induced changes in its transcription may contribute to gender differences in the clinical severity of HCM. Our findings indicate that 5′RNA-Seq has the potential to identify genome-wide changes in 5′ start-site usage that are associated with pathogenic phenotypes.

Authors

Danos C. Christodoulou, Hiroko Wakimoto, Kenji Onoue, Seda Eminaga, Joshua M. Gorham, Steve R. DePalma, Daniel S. Herman, Polakit Teekakirikul, David A. Conner, David M. McKean, Andrea A. Domenighetti, Anton Aboukhalil, Stephen Chang, Gyan Srivastava, Barbara McDonough, Philip L. De Jager, Ju Chen, Martha L. Bulyk, Jochen D. Muehlschlegel, Christine E. Seidman, J.G. Seidman

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Figure 1

5′RNA-Seq allows sensitive assessment of start-site changes.

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5′RNA-Seq allows sensitive assessment of start-site changes.
(A) Distrib...
(A) Distribution of reads with transcript reference (sense; left) or complement strand (antisense; right) plotted at positions normalized for transcript length. (B) Algorithm for assessing changes in distributions at gene start-sites. (C) Distribution of 92 genes with significant (P < 0.05) start-site fold changes in HCM. Fhl1 had the most robust change (see Supplemental Table 2).
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