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Kosmicki, Jack

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Kosmicki

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Jack

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Kosmicki, Jack

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Now showing 1 - 7 of 7
  • Publication

    Use of Machine Learning to Shorten Observation-based Screening and Diagnosis of Autism

    (Nature Publishing Group, 2012) Wall, Dennis Paul; Kosmicki, Jack; DeLuca, Todd; Harstad, Elizabeth; Fusaro, Vincent Alfred

    The Autism Diagnostic Observation Schedule-Generic (ADOS) is one of the most widely used instruments for behavioral evaluation of autism spectrum disorders. It is composed of four modules, each tailored for a specific group of individuals based on their language and developmental level. On average, a module takes between 30 and 60 min to deliver. We used a series of machine-learning algorithms to study the complete set of scores from Module 1 of the ADOS available at the Autism Genetic Resource Exchange (AGRE) for 612 individuals with a classification of autism and 15 non-spectrum individuals from both AGRE and the Boston Autism Consortium (AC). Our analysis indicated that 8 of the 29 items contained in Module 1 of the ADOS were sufficient to classify autism with 100% accuracy. We further validated the accuracy of this eight-item classifier against complete sets of scores from two independent sources, a collection of 110 individuals with autism from AC and a collection of 336 individuals with autism from the Simons Foundation. In both cases, our classifier performed with nearly 100% sensitivity, correctly classifying all but two of the individuals from these two resources with a diagnosis of autism, and with 94% specificity on a collection of observed and simulated non-spectrum controls. The classifier contained several elements found in the ADOS algorithm, demonstrating high test validity, and also resulted in a quantitative score that measures classification confidence and extremeness of the phenotype. With incidence rates rising, the ability to classify autism effectively and quickly requires careful design of assessment and diagnostic tools. Given the brevity, accuracy and quantitative nature of the classifier, results from this study may prove valuable in the development of mobile tools for preliminary evaluation and clinical prioritization—in particular those focused on assessment of short home videos of children—that speed the pace of initial evaluation and broaden the reach to a significantly larger percentage of the population at risk.

  • Publication

    Analysis of protein-coding genetic variation in 60,706 humans

    (2016) Lek, Monkol; Karczewski, Konrad; Minikel, Eric; Samocha, Kaitlin E.; Banks, Eric; Fennell, Timothy; O'Donnell-Luria, Anne H; Ware, James S; Hill, Andrew J; Cummings, Beryl; Tukiainen, Taru; Birnbaum, Daniel P; Kosmicki, Jack; Duncan, Laramie E; Estrada, Karol; Zhao, Fengmei; Zou, James; Pierce-Hoffman, Emma; Berghout, Joanne; Cooper, David N; Deflaux, Nicole; DePristo, Mark; Do, Ron; Flannick, Jason; Fromer, Menachem; Gauthier, Laura; Goldstein, Jackie; Gupta, Namrata; Howrigan, Daniel; Kiezun, Adam; Kurki, Mitja; Moonshine, Ami Levy; Natarajan, Pradeep; Orozco, Lorena; Peloso, Gina M; Poplin, Ryan; Rivas, Manuel A; Ruano-Rubio, Valentin; Rose, Samuel A; Ruderfer, Douglas M; Shakir, Khalid; Stenson, Peter D; Stevens, Christine; Thomas, Brett P; Tiao, Grace; Tusie-Luna, Maria T; Weisburd, Ben; Won, Hong-Hee; Yu, Dongmei; Altshuler, David; Ardissino, Diego; Boehnke, Michael; Danesh, John; Donnelly, Stacey; Elosua, Roberto; Florez, Jose; Gabriel, Stacey B; Getz, Gad; Glatt, Stephen J; Hultman, Christina M; Kathiresan, Sekar; Laakso, Markku; McCarroll, Steven; McCarthy, Mark I; McGovern, Dermot; McPherson, Ruth; Neale, Benjamin; Palotie, Aarno; Purcell, Shaun M; Saleheen, Danish; Scharf, Jeremiah; Sklar, Pamela; Sullivan, Patrick F; Tuomilehto, Jaakko; Tsuang, Ming T; Watkins, Hugh C; Wilson, James G; Daly, Mark; MacArthur, Daniel

    Summary Large-scale reference data sets of human genetic variation are critical for the medical and functional interpretation of DNA sequence changes. We describe the aggregation and analysis of high-quality exome (protein-coding region) sequence data for 60,706 individuals of diverse ethnicities generated as part of the Exome Aggregation Consortium (ExAC). This catalogue of human genetic diversity contains an average of one variant every eight bases of the exome, and provides direct evidence for the presence of widespread mutational recurrence. We have used this catalogue to calculate objective metrics of pathogenicity for sequence variants, and to identify genes subject to strong selection against various classes of mutation; identifying 3,230 genes with near-complete depletion of truncating variants with 72% having no currently established human disease phenotype. Finally, we demonstrate that these data can be used for the efficient filtering of candidate disease-causing variants, and for the discovery of human “knockout” variants in protein-coding genes.

  • Publication

    A framework for the interpretation of de novo mutation in human disease

    (2014) Samocha, Kaitlin E.; Robinson, Elise; Sanders, Stephan J.; Stevens, Christine; Sabo, Aniko; McGrath, Lauren M.; Kosmicki, Jack; Rehnström, Karola; Mallick, Swapan; Kirby, Andrew; Wall, Dennis P.; MacArthur, Daniel; Gabriel, Stacey B.; dePristo, Mark; Purcell, Shaun M.; Palotie, Aarno; Boerwinkle, Eric; Buxbaum, Joseph D.; Cook, Edwin H.; Gibbs, Richard A.; Schellenberg, Gerard D.; Sutcliffe, James S.; Devlin, Bernie; Roeder, Kathryn; Neale, Benjamin; Daly, Mark

    Spontaneously arising (‘de novo’) mutations play an important role in medical genetics. For diseases with extensive locus heterogeneity – such as autism spectrum disorders (ASDs) – the signal from de novo mutations (DNMs) is distributed across many genes, making it difficult to distinguish disease-relevant mutations from background variation. We provide a statistical framework for the analysis of DNM excesses per gene and gene set by calibrating a model of de novo mutation. We applied this framework to DNMs collected from 1,078 ASD trios and – while affirming a significant role for loss-of-function (LoF) mutations – found no excess of de novo LoF mutations in cases with IQ above 100, suggesting that the role of DNMs in ASD may reside in fundamental neurodevelopmental processes. We also used our model to identify ~1,000 genes that are significantly lacking functional coding variation in non-ASD samples and are enriched for de novo LoF mutations identified in ASD cases.

  • Publication

    Genetic risk for autism spectrum disorders and neuropsychiatric variation in the general population

    (2016) Robinson, Elise; St. Pourcain, Beate; Anttila, Verneri; Kosmicki, Jack; Bulik-Sullivan, Brendan; Grove, Jakob; Maller, Julian; Samocha, Kaitlin E.; Sanders, Stephan J.; Ripke, Stephan; Martin, Joanna; Hollegaard, Mads V.; Werge, Thomas; Hougaard, David M.; Neale, Benjamin; Evans, David M.; Skuse, David; Mortensen, Preben Bo; Børglum, Anders D.; Ronald, Angelica; Smith, George Davey; Daly, Mark

    Almost all genetic risk factors for autism spectrum disorders (ASDs) can be found in the general population, but the effects of that risk are unclear in people not ascertained for neuropsychiatric symptoms. Using several large ASD consortia and population based resources (total n>38,000), we find genomewide genetic links between ASDs and typical variation in social behavior and adaptive functioning. This finding is evidenced through both LD score correlation and de novo variant analysis, indicating that multiple types of genetic risk for ASDs influence a continuum of behavioral and developmental traits, the severe tail of which can result in an ASD or other neuropsychiatric disorder diagnosis. A continuum model should inform the design and interpretation of studies of neuropsychiatric disease biology.

  • Publication

    Synaptic, transcriptional, and chromatin genes disrupted in autism

    (2014) De Rubeis, Silvia; He, Xin; Goldberg, Arthur P.; Poultney, Christopher S.; Samocha, Kaitlin E.; Cicek, A Ercument; Kou, Yan; Liu, Li; Fromer, Menachem; Walker, Susan; Singh, Tarjinder; Klei, Lambertus; Kosmicki, Jack; Fu, Shih-Chen; Aleksic, Branko; Biscaldi, Monica; Bolton, Patrick F.; Brownfeld, Jessica M.; Cai, Jinlu; Campbell, Nicholas J.; Carracedo, Angel; Chahrour, Maria H.; Chiocchetti, Andreas G.; Coon, Hilary; Crawford, Emily L.; Crooks, Lucy; Curran, Sarah R.; Dawson, Geraldine; Duketis, Eftichia; Fernandez, Bridget A.; Gallagher, Louise; Geller, Evan; Guter, Stephen J.; Hill, R. Sean; Ionita-Laza, Iuliana; Gonzalez, Patricia Jimenez; Kilpinen, Helena; Klauck, Sabine M.; Kolevzon, Alexander; Lee, Irene; Lei, Jing; Lehtimäki, Terho; Lin, Chiao-Feng; Ma'ayan, Avi; Marshall, Christian R.; McInnes, Alison L.; Neale, Benjamin; Owen, Michael J.; Ozaki, Norio; Parellada, Mara; Parr, Jeremy R.; Purcell, Shaun; Puura, Kaija; Rajagopalan, Deepthi; Rehnström, Karola; Reichenberg, Abraham; Sabo, Aniko; Sachse, Michael; Sanders, Stephan J.; Schafer, Chad; Schulte-Rüther, Martin; Skuse, David; Stevens, Christine; Szatmari, Peter; Tammimies, Kristiina; Valladares, Otto; Voran, Annette; Wang, Li-San; Weiss, Lauren A.; Willsey, A. Jeremy; Yu, Timothy W.; Yuen, Ryan K.C.; Cook, Edwin H.; Freitag, Christine M.; Gill, Michael; Hultman, Christina M.; Lehner, Thomas; Palotie, Aarno; Schellenberg, Gerard D.; Sklar, Pamela; State, Matthew W.; Sutcliffe, James S.; Walsh, Christopher; Scherer, Stephen W.; Zwick, Michael E.; Barrett, Jeffrey C.; Cutler, David J.; Roeder, Kathryn; Devlin, Bernie; Daly, Mark; Buxbaum, Joseph D.

    Summary The genetic architecture of autism spectrum disorder involves the interplay of common and rare variation and their impact on hundreds of genes. Using exome sequencing, analysis of rare coding variation in 3,871 autism cases and 9,937 ancestry-matched or parental controls implicates 22 autosomal genes at a false discovery rate (FDR) < 0.05, and a set of 107 autosomal genes strongly enriched for those likely to affect risk (FDR < 0.30). These 107 genes, which show unusual evolutionary constraint against mutations, incur de novo loss-of-function mutations in over 5% of autistic subjects. Many of the genes implicated encode proteins for synaptic, transcriptional, and chromatin remodeling pathways. These include voltage-gated ion channels regulating propagation of action potentials, pacemaking, and excitability-transcription coupling, as well as histone-modifying enzymes and chromatin remodelers, prominently histone post-translational modifications involving lysine methylation/demethylation.

  • Publication

    Polygenic transmission disequilibrium confirms that common and rare variation act additively to create risk for autism spectrum disorders

    (2017) Weiner, Daniel; Wigdor, Emilie M.; Ripke, Stephan; Walters, Raymond; Kosmicki, Jack; Grove, Jakob; Samocha, Kaitlin E.; Goldstein, Jacqueline; Okbay, Aysu; Bybjerg-Grauholm, Jonas; Werge, Thomas; Hougaard, David M.; Taylor, Jacob; Skuse, David; Devlin, Bernie; Anney, Richard; Sanders, Stephan J.; Bishop, Somer; Mortensen, Preben Bo; Børglum, Anders D.; Smith, George Davey; Daly, Mark; Robinson, Elise

    Autism spectrum disorder (ASD) risk is influenced by common polygenic and de novo variation. We aimed to clarify the influence of polygenic risk for ASDs and to identify subgroups of ASD cases, including those with strong acting de novo variants, in which polygenic risk is relevant. Using a novel approach called the polygenic transmission disequilibrium test, and data from 6,454 families with a child with ASD, we show that polygenic risk for ASDs, schizophrenia, and greater educational attainment is over transmitted to children with ASDs. These findings hold independent of proband IQ. We find that polygenic variation contributes additively to risk in ASD cases who carry a strong acting de novo variant. Lastly, we show that elements of polygenic risk are independent and differ in their relationship with phenotype. These results confirm that ASDs’ genetic influences are additive and suggest they create risk through at least partially distinct etiologic pathways.

  • Publication

    Refining the role of de novo protein truncating variants in neurodevelopmental disorders using population reference samples

    (2017) Kosmicki, Jack; Samocha, Kaitlin E.; Howrigan, Daniel; Sanders, Stephan J.; Slowikowski, Kamil; Lek, Monkol; Karczewski, Konrad; Cutler, David J.; Devlin, Bernie; Roeder, Kathryn; Buxbaum, Joseph D.; Neale, Benjamin; MacArthur, Daniel; Wall, Dennis P.; Robinson, Elise; Daly, Mark

    Recent research has uncovered a significant role for de novo variation in neurodevelopmental disorders. Using aggregated data from 9246 families with autism spectrum disorder, intellectual disability, or developmental delay, we show ~1/3 of de novo variants are independently observed as standing variation in the Exome Aggregation Consortium’s cohort of 60,706 adults, and these de novo variants do not contribute to neurodevelopmental risk. We further use a loss-of-function (LoF)-intolerance metric, pLI, to identify a subset of LoF-intolerant genes that contain the observed signal of associated de novo protein truncating variants (PTVs) in neurodevelopmental disorders. LoF-intolerant genes also carry a modest excess of inherited PTVs; though the strongest de novo impacted genes contribute little to this, suggesting the excess of inherited risk resides lower-penetrant genes. These findings illustrate the importance of population-based reference cohorts for the interpretation of candidate pathogenic variants, even for analyses of complex diseases and de novo variation.