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Genetic Analysis Algorithm for the Study of Patients with Multiple Congenital Anomalies and Isolated Congenital Heart Disease †.

Authors :
Delea, Marisol
Massara, Lucia S.
Espeche, Lucia D.
Bidondo, María Paz
Barbero, Pablo
Oliveri, Jaen
Brun, Paloma
Fabro, Mónica
Galain, Micaela
Fernández, Cecilia S.
Taboas, Melisa
Bruque, Carlos D.
Kolomenski, Jorge E.
Izquierdo, Agustín
Berenstein, Ariel
Cosentino, Viviana
Martinoli, Celeste
Vilas, Mariana
Rittler, Mónica
Mendez, Rodrigo
Source :
Genes; Jul2022, Vol. 13 Issue 7, p1172-1172, 20p
Publication Year :
2022

Abstract

Congenital anomalies (CA) affect 3–5% of newborns, representing the second-leading cause of infant mortality in Argentina. Multiple congenital anomalies (MCA) have a prevalence of 2.26/1000 births in newborns, while congenital heart diseases (CHD) are the most frequent CA with a prevalence of 4.06/1000 births. The aim of this study was to identify the genetic causes in Argentinian patients with MCA and isolated CHD. We recruited 366 patients (172 with MCA and 194 with isolated CHD) born between June 2015 and August 2019 at public hospitals. DNA from peripheral blood was obtained from all patients, while karyotyping was performed in patients with MCA. Samples from patients presenting conotruncal CHD or DiGeorge phenotype (n = 137) were studied using MLPA. Ninety-three samples were studied by array-CGH and 18 by targeted or exome next-generation sequencing (NGS). A total of 240 patients were successfully studied using at least one technique. Cytogenetic abnormalities were observed in 13 patients, while 18 had clinically relevant imbalances detected by array-CGH. After MLPA, 26 patients presented 22q11 deletions or duplications and one presented a TBX1 gene deletion. Following NGS analysis, 12 patients presented pathogenic or likely pathogenic genetic variants, five of them, found in KAT6B, SHH, MYH11, MYH7 and EP300 genes, are novel. Using an algorithm that combines molecular techniques with clinical and genetic assessment, we determined the genetic contribution in 27.5% of the analyzed patients. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20734425
Volume :
13
Issue :
7
Database :
Complementary Index
Journal :
Genes
Publication Type :
Academic Journal
Accession number :
158240767
Full Text :
https://doi.org/10.3390/genes13071172