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Evolutionary Action of de novo missense variants across pathways prioritizes genes linked to autism and predicts patient phenotypic severity

View ORCID ProfileAmanda Koire, Christie Buchovecky, Panagiotis Katsonis, Young Won Kim, Stephen J. Wilson, Olivier Lichtarge
doi: https://doi.org/10.1101/158329
Amanda Koire
Baylor College of Medicine;
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  • ORCID record for Amanda Koire
Christie Buchovecky
Colombia University
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Panagiotis Katsonis
Baylor College of Medicine;
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Young Won Kim
Baylor College of Medicine;
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Stephen J. Wilson
Baylor College of Medicine;
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Olivier Lichtarge
Baylor College of Medicine;
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  • For correspondence: lichtarge@bcm.edu
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Abstract

The pathogenicity of individual de novo missense mutations in autism spectrum disorder remains difficult to validate. Here we asked in 2,384 probands whether these variants exhibited collective functional impact biases across pathways. As measured with Evolutionary Action (EA) in 368 gene groupings, we found significant biases in axonogenesis, synaptic transmission, and other neurodevelopmental pathways. Strikingly, both de novo and inherited missense variants in prioritized genes correlated with patient IQ. This general integrative approach thus detects missense variants most likely to contribute to autism pathogenesis and is the first, to our knowledge, to link missense variant impact to autism phenotypic severity.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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  • Posted June 30, 2017.

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Evolutionary Action of de novo missense variants across pathways prioritizes genes linked to autism and predicts patient phenotypic severity
Amanda Koire, Christie Buchovecky, Panagiotis Katsonis, Young Won Kim, Stephen J. Wilson, Olivier Lichtarge
bioRxiv 158329; doi: https://doi.org/10.1101/158329
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Evolutionary Action of de novo missense variants across pathways prioritizes genes linked to autism and predicts patient phenotypic severity
Amanda Koire, Christie Buchovecky, Panagiotis Katsonis, Young Won Kim, Stephen J. Wilson, Olivier Lichtarge
bioRxiv 158329; doi: https://doi.org/10.1101/158329

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