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A machine learning approach to predicting autism risk genes: Validation of known genes and discovery of new candidates

Ying Lin, Anjali M. Rajadhyaksha, James B. Potash, Shizhong Han
doi: https://doi.org/10.1101/463547
Ying Lin
1Department of Industrial Engineering, University of Houston, Houston, TX, 77204, USA
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Anjali M. Rajadhyaksha
2Department of Pediatrics, Division of Pediatric Neurology, Weill Cornell Medicine, New York, NY, 10065, USA
3Feil Family Brain and Mind Research Institute, Weill Cornell Medicine, New York, NY, 10065, USA
4Weill Cornell Autism Research Program, Weill Cornell Medicine, New York, NY, 10065, USA
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James B. Potash
5Department of Psychiatry and Behavioral Sciences, Johns Hopkins School of Medicine, Baltimore, MD, 21287, USA
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Shizhong Han
5Department of Psychiatry and Behavioral Sciences, Johns Hopkins School of Medicine, Baltimore, MD, 21287, USA
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Abstract

Autism spectrum disorder (ASD) is a complex neurodevelopmental condition with a strong genetic basis. The role of de novo mutations in ASD has been well established, but the set of genes implicated to date is still far from complete. The current study employs a machine learning-based approach to predict ASD risk genes using features from spatiotemporal gene expression patterns in human brain, gene-level constraint metrics, and other gene variation features. The genes identified through our prediction model were enriched for independent sets of ASD risk genes, and tended to be differentially expressed in ASD brains, especially in the frontal and parietal cortex. The highest-ranked genes not only included those with strong prior evidence for involvement in ASD (for example, TCF20 and FBOX11), but also indicated potentially novel candidates, such as DOCK3, MYCBP2 and CAND1, which are all involved in neuronal development. Through extensive validations, we also showed that our method outperformed state-of-the-art scoring systems for ranking ASD candidate genes. Gene ontology enrichment analysis of our predicted risk genes revealed biological processes clearly relevant to ASD, including neuronal signaling, neurogenesis, and chromatin remodeling, but also highlighted other potential mechanisms that might underlie ASD, such as regulation of RNA alternative splicing and ubiquitination pathway related to protein degradation. Our study demonstrates that human brain spatiotemporal gene expression patterns and gene-level constraint metrics can help predict ASD risk genes. Our gene ranking system provides a useful resource for prioritizing ASD candidate genes.

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Posted November 07, 2018.
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A machine learning approach to predicting autism risk genes: Validation of known genes and discovery of new candidates
Ying Lin, Anjali M. Rajadhyaksha, James B. Potash, Shizhong Han
bioRxiv 463547; doi: https://doi.org/10.1101/463547
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A machine learning approach to predicting autism risk genes: Validation of known genes and discovery of new candidates
Ying Lin, Anjali M. Rajadhyaksha, James B. Potash, Shizhong Han
bioRxiv 463547; doi: https://doi.org/10.1101/463547

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