NM_016592.5:c.34C>T
Variant summary
Our verdict is Likely pathogenic. Variant got 8 ACMG points: 8P and 0B. PVS1_StrongPM2PP5_Moderate
The NM_016592.5(GNAS):c.34C>T(p.Arg12*) variant causes a stop gained change involving the alteration of a non-conserved nucleotide. The variant allele was found at a frequency of 0.00000186 in 1,611,410 control chromosomes in the GnomAD database, with no homozygous occurrence. In-silico tool predicts a pathogenic outcome for this variant. Variant has been reported in ClinVar as Likely pathogenic (★).
Frequency
Consequence
NM_016592.5 stop_gained
Scores
Clinical Significance
Conservation
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ACMG classification
Verdict is Likely_pathogenic. Variant got 8 ACMG points.
Transcripts
RefSeq
Ensembl
Frequencies
GnomAD3 genomes AF: 0.00000658 AC: 1AN: 152086Hom.: 0 Cov.: 32
GnomAD4 exome AF: 0.00000137 AC: 2AN: 1459324Hom.: 0 Cov.: 36 AF XY: 0.00000138 AC XY: 1AN XY: 726066
GnomAD4 genome AF: 0.00000658 AC: 1AN: 152086Hom.: 0 Cov.: 32 AF XY: 0.0000135 AC XY: 1AN XY: 74278
ClinVar
Submissions by phenotype
Pseudopseudohypoparathyroidism Pathogenic:1
The observed stop gain variant c.34C>T (p.Arg12Ter) in GNAS gene has not been reported previously as a pathogenic variant nor as a benign variant, to our knowledge. The c.34C>T variant is absent in gnomAD Exomes database. This variant has not been submitted to the ClinVar database. The nucleotide change c.34C>T in GNAS is predicted as conserved by GERP++ and PhyloP across 100 vertebrates. This variant is predicted to cause loss of normal protein function through protein truncation. Mutation taster predicts that this variant is likely to undergo non-sense mediated decay. Loss of function variant in GNAS gene have been reported previously in individuals affected with pseudohypoparathyroidism Ia, pseudopseudohypoparathyroidism, and progressive osseous heteroplasia. Additional studies will be required to prove the pathogenicity of this variant. For these reasons, this variant has been classified as Likely Pathogenic. -
Computational scores
Source:
Splicing
Find out detailed SpliceAI scores and Pangolin per-transcript scores at