Audioprofile-directed screening identifies novel mutations in KCNQ4 causing hearing loss at the DFNA2 locus.
Publication year
2008Source
Genetics in Medicine, 10, 11, (2008), pp. 797-804ISSN
Publication type
Article / Letter to editor
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Organization
Otorhinolaryngology
Journal title
Genetics in Medicine
Volume
vol. 10
Issue
iss. 11
Page start
p. 797
Page end
p. 804
Subject
DCN 1: Perception and Action; DCN 2: Functional Neurogenomics; UMCN 3.3: Neurosensory disordersAbstract
PURPOSE: Gene identification in small families segregating autosomal dominant sensorineural hearing loss presents a significant challenge. To address this challenge, we have developed a machine learning-based software tool, AudioGene v2.0, to prioritize candidate genes for mutation screening based on audioprofiling. METHODS: We analyzed audiometric data from a cohort of American families with high-frequency autosomal dominant sensorineural hearing loss. Those families predicted to have a DFNA2 audioprofile by AudioGene v2.0 were screened for mutations in the KCNQ4 gene. RESULTS: Two novel missense mutations and a stop mutation were detected in three American families predicted to have DFNA2-related deafness for a positive predictive value of 6.3%. The false negative rate was 0%. The missense mutations were located in the channel pore region and the stop mutation was in transmembrane domain S5. The latter is the first DFNA2-causing stop mutation reported in KCNQ4. CONCLUSIONS: Our data suggest that the N-terminal end of the P-loop is crucial in maintaining the integrity of the KCNQ4 channel pore and AudioGene audioprofile analysis can effectively prioritize genes for mutation screening in small families segregating high-frequency autosomal dominant sensorineural hearing loss. AudioGene software will be made freely available to clinicians and researchers once it has been fully validated.
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- Academic publications [243908]
- Faculty of Medical Sciences [92803]
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