
University of Groningen Matters of the heart: genetic and molecular characterisation of cardiomyopathies Posafalvi, Anna IMPORTANT NOTE: You are advised to consult the publisher's version (publisher's PDF) if you wish to cite from it. Please check the document version below. Document Version Publisher's PDF, also known as Version of record Publication date: 2015 Link to publication in University of Groningen/UMCG research database Citation for published version (APA): Posafalvi, A. (2015). Matters of the heart: genetic and molecular characterisation of cardiomyopathies. University of Groningen. Copyright Other than for strictly personal use, it is not permitted to download or to forward/distribute the text or part of it without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license (like Creative Commons). 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Download date: 29-09-2021 CHAPTER 3 EXOME SEQUENCING Chapter 3.1 Hunting for novel disease genes in autosomal dominant cardiomyopathies: elucidating a role for the sarcomeric pathway Rowida Almomani*, Anna Posafalvi*, Paul A van der Zwaag, Carlo L Marcelis, Bert Baars, Johanna C Herkert, Rudolf A de Boer, Karin Y van Spaendonck-Zwarts, Maarten P van den Berg, Richard J Sinke, J Peter van Tintelen§, Jan DH Jongbloed§ * The first two authors contributed equally § The last two authors contributed equally ABSTRACT We performed exome sequencing and a haplotype sharing test on a group of twelve families with autosomal dominant cardiomyopathy and no previous genetic diagnosis in order to identify potentially novel disease genes. Our approach resulted in the identification of the genetic cause of disease in 6/12 families. We found truncating variants in TTN in two dilated cardiomyopathy families, a frame-shift mutation in FLNC and a double missense mutation in FHL2 in two arrhythmogenic cardiomyopathy families, and missense variants in the COBL and STARD13 genes in two dilated cardiomyopathy families, respectively, both of which are genes that have not been related to cardiac pathology before. Thorough data-mining suggests a possible role for all of these genes in the disease mechanism of late onset cardiomyopathies. By creating a co-expression network of the five genes using an expression-array- based bioinformatics database and software created in the department, we show that 100 of the 166 proteins included in our network have been annotated with a potential function in cardiac development and physiology. Of these 100 proteins, 28 are known as disease genes in various types of cardiomyopathy, and a role in sarcomere assembly seems to be the common molecular pathway connecting a large proportion of these genes. INTRODUCTION Dilated cardiomyopathy (DCM) is a progressive heart disease mainly characterised by left ventricular dilatation and impaired cardiac contraction, while arrhythmogenic right ventricular cardiomyopathy (ARVC) is a common cause of sudden cardiac death because of its association with ventricular arrhythmias (Hershberger et al, Basso et al). Currently, there are more than 50 genes linked to the pathogenesis of familial DCM. In the pre-NGS era these genes could only explain up to 20% of Dutch DCM cases (25% in familial cases and 8% in sporadic cases) (van Spaendonck et al, 2013), while including screening of the titin (TTN) gene improved this to 45-50% (Wilde & Behr, Posafalvi et al, van Spaendonck et al 2014). Our gene-panel-based Next Generation Sequencing (NGS) method, which was recently implemented into routine DNA diagnostics, resulted in the identification of mutations and likely pathogenic variants in up to 55% of DCM index patients (see chapter 4.1). On the other hand, to date there are still ‘only’ 13 ARVC genes known (te Rijdt et al). One of these is the desmosomal plakophilin 2 gene (PKP2), and mutations in this gene are the most frequent cause of familial ARVC, occurring in up to 70% of the patients (van Tintelen et al). Until recently, the yield of attempts to identify genetic mutations in ARVC patient CHAPTER 3.1 cohorts via traditional sequencing was only ~50% (Cox et al, Quarta et al). In this study our aim was to identify the disease gene in families currently considered “unsolved” (without a known genetic factor potentially explaining the phenotype). For this purpose, we used exome sequencing (ES), i.e. sequen- cing of all protein-coding regions of the genome, to identify (potentially novel) disease genes in inherited cardiomyopathy patients/families. Since the inheritance pattern in the families studied was most likely to be autosomal dominant, and ES is well known to result in a huge number of heterozygous variants (potential mutations as well as benign variants), the data analysis was much more challenging than identifying the cause of the disease in a recessive form of the disease (such as in the rare cases of consanguinity). Hence, it was of special importance to narrow down the search for causal variants into chromosomal regions of particular interest. For this purpose, we combined ES with a haplotype sharing test (HST). HST has previously been shown to be a crucial step for successfully identifying regions carrying causative genes in cardiomyopathy families that are too small for classical linkage analysis (van der Zwaag et al). We applied HST as a filtering method during data analysis, and this helped us to prioritize the long list of genes containing heterozygous variants. AUTOSOMAL DOMINANT CARDIOMYOPATHIES 111 Using this combined approach of ES and HST, we succeeded in identifying the disease gene or putative disease gene in six out of our twelve families with autosomal dominant cardiomyopathies. We identified five potential disease genes, of which three were novel, one had occasionally been associated with cardiomyopathies, and one was the known cardiomyopathy gene TTN, which was not routinely screened for at that time due to its enormous size. MATERIALS AND METHODS Patients Families were selected because multiple affected members were available for HST analysis and because, in all cases, previous Sanger sequencing approaches and, in most cases, gene-panel-based NGS had not resulted in the identification of a pathogenic mutation or likely pathogenic variant. Eleven families were recruited from the cardiomyopathy cohort of the University Medical Center Groningen, the Netherlands, and one family was recruited from the University Medical Center Nijmegen, the Netherlands. The DCM patients were diagnosed according to established clinical criteria (Mestroni et al). One family had ARVC fulfilling the task force criteria (TFC) (Marcus et al), and one family had five family members with suspected ARVC, but not yet fulfilling all of those criteria. Our approach included (1) for most families, pre-screening of patients using gene-panel-based NGS targeting 55 known cardiomyopathy genes, and subsequent selection of candidate patients/families (some families were analysed using our gene-panel-based approach during the course of this study); (2) HST of all available affected family members and subsequent data analysis; (3) ES of at least two family members who are as distantly related as possible; (4) identification of probable disease regions and genes; (5) confirmation and co-segregation analysis; (6) mutational screening of probable disease genes in additional patients; and (7) co-expression network analysis to obtain supportive evidence of pathogenicity. Targeted sequencing DNA samples isolated from peripheral blood of patients were sequenced for 55 known cardiomyopathy disease genes as formerly described by Sikkema- Raddatz et al and Posafalvi et al (manuscript in preparation, see also chapter 4.1). Data analysis was performed using the MiSeq reporter program (Illumina, San 112 EXOME SEQUENCING Diego, CA, USA), Next Gene software (v2.2.1, Softgenetics, State College, PA, USA) and Cartagenia software (Cartagenia, Leuven, Belgium), as described (Sikkema-Raddatz et al, chapter 4.1). Haplotype sharing test To establish haplotypes and to identify possible shared haplotypes, single nucleotide polymorphism (SNP) genotyping of the DNA samples was performed using the Human 610-quad beadchip® 610K SNP array (Illumina) according to the manufacturer’s protocols. The data was analysed using Microsoft® Office Excel 2007 (Microsoft, Redmond, WA, USA) software as previously described by van der Zwaag et al. The longest shared haplotypes (LSH) identified were used for “ranking” candidate variants in the last step of the exome sequencing data analysis. In this step we assume that the longer a shared region is between affected family members, the higher the chance that it contains the mutual causative mutation. In the cases in which the mutation identified was not localised in the 1st LSH, we checked if those chromosomal regions which ranked better than the one carrying the mutation contained
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