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Dive into the research topics where Brian D. Aevermann is active.

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Featured researches published by Brian D. Aevermann.


Nature Protocols | 2016

Using single nuclei for RNA-seq to capture the transcriptome of postmortem neurons

Suguna Rani Krishnaswami; Rashel V. Grindberg; Mark Novotny; Pratap Venepally; Benjamin Lacar; Kunal Bhutani; Sara B. Linker; Son Pham; Jennifer A. Erwin; Jeremy A. Miller; Rebecca Hodge; James McCarthy; Martijn J. E. Kelder; Jamison McCorrison; Brian D. Aevermann; Francisco Diez Fuertes; Richard H. Scheuermann; Jun Lee; Ed Lein; Nicholas J. Schork; Michael J. McConnell; Fred H. Gage; Roger S. Lasken

A protocol is described for sequencing the transcriptome of a cell nucleus. Nuclei are isolated from specimens and sorted by FACS, cDNA libraries are constructed and RNA-seq is performed, followed by data analysis. Some steps follow published methods (Smart-seq2 for cDNA synthesis and Nextera XT barcoded library preparation) and are not described in detail here. Previous single-cell approaches for RNA-seq from tissues include cell dissociation using protease treatment at 30 °C, which is known to alter the transcriptome. We isolate nuclei at 4 °C from tissue homogenates, which cause minimal damage. Nuclear transcriptomes can be obtained from postmortem human brain tissue stored at -80 °C, making brain archives accessible for RNA-seq from individual neurons. The method also allows investigation of biological features unique to nuclei, such as enrichment of certain transcripts and precursors of some noncoding RNAs. By following this procedure, it takes about 4 d to construct cDNA libraries that are ready for sequencing.


Nucleic Acids Research | 2017

Influenza Research Database: An integrated bioinformatics resource for influenza virus research.

Yun Zhang; Brian D. Aevermann; Tavis K. Anderson; David F. Burke; Gwenaelle Dauphin; Zhiping Gu; Sherry He; Sanjeev Kumar; Christopher N. Larsen; Alexandra J. Lee; Xiaomei Li; Catherine A. Macken; Colin Mahaffey; Brett E. Pickett; Brian Reardon; Thomas Smith; Lucy Stewart; Christian Suloway; Guangyu Sun; Lei Tong; Amy L. Vincent; Bryan Walters; Sam Zaremba; Hongtao Zhao; Liwei Zhou; Christian M. Zmasek; Edward B. Klem; Richard H. Scheuermann

The Influenza Research Database (IRD) is a U.S. National Institute of Allergy and Infectious Diseases (NIAID)-sponsored Bioinformatics Resource Center dedicated to providing bioinformatics support for influenza virus research. IRD facilitates the research and development of vaccines, diagnostics and therapeutics against influenza virus by providing a comprehensive collection of influenza-related data integrated from various sources, a growing suite of analysis and visualization tools for data mining and hypothesis generation, personal workbench spaces for data storage and sharing, and active user community support. Here, we describe the recent improvements in IRD including the use of cloud and high performance computing resources, analysis and visualization of user-provided sequence data with associated metadata, predictions of novel variant proteins, annotations of phenotype-associated sequence markers and their predicted phenotypic effects, hemagglutinin (HA) clade classifications, an automated tool for HA subtype numbering conversion, linkouts to disease event data and the addition of host factor and antiviral drug components. All data and tools are freely available without restriction from the IRD website at https://www.fludb.org.


Scientific Data | 2014

A comprehensive collection of systems biology data characterizing the host response to viral infection

Brian D. Aevermann; Brett E. Pickett; Sanjeev Kumar; Edward B. Klem; Sudhakar Agnihothram; Peter S. Askovich; Armand Bankhead; Meagen Bolles; Victoria S. Carter; Jean Chang; Therese R. Clauss; Pradyot Dash; Alan H. Diercks; Amie J. Eisfeld; Amy B. Ellis; Shufang Fan; Martin T. Ferris; Lisa E. Gralinski; Richard Green; Marina A. Gritsenko; Masato Hatta; Robert A. Heegel; Jon M. Jacobs; Sophia Jeng; Laurence Josset; Shari M. Kaiser; Sara Kelly; G. Lynn Law; Chengjun Li; Jiangning Li

The Systems Biology for Infectious Diseases Research program was established by the U.S. National Institute of Allergy and Infectious Diseases to investigate host-pathogen interactions at a systems level. This program generated 47 transcriptomic and proteomic datasets from 30 studies that investigate in vivo and in vitro host responses to viral infections. Human pathogens in the Orthomyxoviridae and Coronaviridae families, especially pandemic H1N1 and avian H5N1 influenza A viruses and severe acute respiratory syndrome coronavirus (SARS-CoV), were investigated. Study validation was demonstrated via experimental quality control measures and meta-analysis of independent experiments performed under similar conditions. Primary assay results are archived at the GEO and PeptideAtlas public repositories, while processed statistical results together with standardized metadata are publically available at the Influenza Research Database (www.fludb.org) and the Virus Pathogen Resource (www.viprbrc.org). By comparing data from mutant versus wild-type virus and host strains, RNA versus protein differential expression, and infection with genetically similar strains, these data can be used to further investigate genetic and physiological determinants of host responses to viral infection.


Journal of Virology | 2015

Diversifying Selection Analysis Predicts Antigenic Evolution of 2009 Pandemic H1N1 Influenza A Virus in Humans

Alexandra J. Lee; Suman R. Das; Wei Wang; Theresa Fitzgerald; Brett E. Pickett; Brian D. Aevermann; David J. Topham; Ann R. Falsey; Richard H. Scheuermann

ABSTRACT Although a large number of immune epitopes have been identified in the influenza A virus (IAV) hemagglutinin (HA) protein using various experimental systems, it is unclear which are involved in protective immunity to natural infection in humans. We developed a data mining approach analyzing natural H1N1 human isolates to identify HA protein regions that may be targeted by the human immune system and can predict the evolution of IAV. We identified 16 amino acid sites experiencing diversifying selection during the evolution of prepandemic seasonal H1N1 strains and found that 11 sites were located in experimentally determined B-cell/antibody (Ab) epitopes, including three distinct neutralizing Caton epitopes: Sa, Sb, and Ca2 [A. J. Caton, G. G. Brownlee, J. W. Yewdell, and W. Gerhard, Cell 31:417–427, 1982, http://dx.doi.org/10.1016/0092-8674(82)90135-0]. We predicted that these diversified epitope regions would be the targets of mutation as the 2009 H1N1 pandemic (pH1N1) lineage evolves in response to the development of population-level protective immunity in humans. Using a chi-squared goodness-of-fit test, we identified 10 amino acid sites that significantly differed between the pH1N1 isolates and isolates from the recent 2012-2013 and 2013-2014 influenza seasons. Three of these sites were located in the same diversified B-cell/Ab epitope regions as identified in the analysis of prepandemic sequences, including Sa and Sb. As predicted, hemagglutination inhibition (HI) assays using human sera from subjects vaccinated with the initial pH1N1 isolate demonstrated reduced reactivity against 2013-2014 isolates. Taken together, these results suggest that diversifying selection analysis can identify key immune epitopes responsible for protective immunity to influenza virus in humans and thereby predict virus evolution. IMPORTANCE The WHO estimates that approximately 5 to 10% of adults and 20 to 30% of children in the world are infected by influenza virus each year. While an adaptive immune response helps eliminate the virus following acute infection, the virus rapidly evolves to evade the established protective memory immune response, thus allowing for the regular seasonal cycles of influenza virus infection. The analytical approach described here, which combines an analysis of diversifying selection with an integration of immune epitope data, has allowed us to identify antigenic regions that contribute to protective immunity and are therefore the key targets of immune evasion by the virus. This information can be used to determine when sequence variations in seasonal influenza virus strains have affected regions responsible for protective immunity in order to decide when new vaccine formulations are warranted.


BMC Bioinformatics | 2017

Cell type discovery and representation in the era of high-content single cell phenotyping

Trygve E. Bakken; Lindsay G. Cowell; Brian D. Aevermann; Mark Novotny; Rebecca Hodge; Jeremy A. Miller; Alexandra J. Lee; Ivan Chang; Jamison McCorrison; Bali Pulendran; Yu Qian; Nicholas J. Schork; Roger S. Lasken; Ed Lein; Richard H. Scheuermann

BackgroundA fundamental characteristic of multicellular organisms is the specialization of functional cell types through the process of differentiation. These specialized cell types not only characterize the normal functioning of different organs and tissues, they can also be used as cellular biomarkers of a variety of different disease states and therapeutic/vaccine responses. In order to serve as a reference for cell type representation, the Cell Ontology has been developed to provide a standard nomenclature of defined cell types for comparative analysis and biomarker discovery. Historically, these cell types have been defined based on unique cellular shapes and structures, anatomic locations, and marker protein expression. However, we are now experiencing a revolution in cellular characterization resulting from the application of new high-throughput, high-content cytometry and sequencing technologies. The resulting explosion in the number of distinct cell types being identified is challenging the current paradigm for cell type definition in the Cell Ontology.ResultsIn this paper, we provide examples of state-of-the-art cellular biomarker characterization using high-content cytometry and single cell RNA sequencing, and present strategies for standardized cell type representations based on the data outputs from these cutting-edge technologies, including “context annotations” in the form of standardized experiment metadata about the specimen source analyzed and marker genes that serve as the most useful features in machine learning-based cell type classification models. We also propose a statistical strategy for comparing new experiment data to these standardized cell type representations.ConclusionThe advent of high-throughput/high-content single cell technologies is leading to an explosion in the number of distinct cell types being identified. It will be critical for the bioinformatics community to develop and adopt data standard conventions that will be compatible with these new technologies and support the data representation needs of the research community. The proposals enumerated here will serve as a useful starting point to address these challenges.


Nature Neuroscience | 2018

Transcriptomic and morphophysiological evidence for a specialized human cortical GABAergic cell type

Eszter Boldog; Trygve E. Bakken; Rebecca Hodge; Mark Novotny; Brian D. Aevermann; Judith Baka; Sándor Bordé; Jennie L. Close; Francisco Diez-Fuertes; Song-Lin Ding; Nóra Faragó; Ágnes Katalin Kocsis; Balázs Kovács; Zoe Maltzer; Jamison McCorrison; Jeremy A. Miller; Gábor Molnár; Gáspár Oláh; Attila Ozsvár; Márton Rózsa; Soraya I. Shehata; Kimberly A. Smith; Susan M. Sunkin; Danny N. Tran; Pratap Venepally; Abby Wall; László G. Puskás; Pál Barzó; Nicholas J. Schork; Richard H. Scheuermann

We describe convergent evidence from transcriptomics, morphology, and physiology for a specialized GABAergic neuron subtype in human cortex. Using unbiased single-nucleus RNA sequencing, we identify ten GABAergic interneuron subtypes with combinatorial gene signatures in human cortical layer 1 and characterize a group of human interneurons with anatomical features never described in rodents, having large ‘rosehip’-like axonal boutons and compact arborization. These rosehip cells show an immunohistochemical profile (GAD1+CCK+, CNR1–SST–CALB2–PVALB–) matching a single transcriptomically defined cell type whose specific molecular marker signature is not seen in mouse cortex. Rosehip cells in layer 1 make homotypic gap junctions, predominantly target apical dendritic shafts of layer 3 pyramidal neurons, and inhibit backpropagating pyramidal action potentials in microdomains of the dendritic tuft. These cells are therefore positioned for potent local control of distal dendritic computation in cortical pyramidal neurons.The authors use single-nucleus RNA-seq to identify 10 GABAergic interneuron subtypes in human cortex layer 1. Molecular, morphological, and physiological evidence points to an emerging human cell type, the rosehip cell, not found in other species.


bioRxiv | 2018

Conserved cell types with divergent features between human and mouse cortex

Rebecca Hodge; Trygve E. Bakken; Jeremy A. Miller; Kimberly A. Smith; Eliza Barkan; Lucas T. Graybuck; Jennie L. Close; Brian Long; Osnat Penn; Zizhen Yao; Jeroen Eggermont; Thomas Hollt; Boaz P. Levi; Soraya I. Shehata; Brian D. Aevermann; Allison Beller; Darren Bertagnolli; Krissy Brouner; Tamara Casper; Charles S. Cobbs; Rachel A. Dalley; Nick Dee; Song-Lin Ding; Richard G. Ellenbogen; Olivia Fong; Emma Garren; Jeff Goldy; Ryder P Gwinn; Daniel Hirschstein; C. Dirk Keene

Elucidating the cellular architecture of the human neocortex is central to understanding our cognitive abilities and susceptibility to disease. Here we applied single nucleus RNA-sequencing to perform a comprehensive analysis of cell types in the middle temporal gyrus of human cerebral cortex. We identify a highly diverse set of excitatory and inhibitory neuronal types that are mostly sparse, with excitatory types being less layer-restricted than expected. Comparison to a similar mouse cortex single cell RNA-sequencing dataset revealed a surprisingly well-conserved cellular architecture that enables matching of homologous types and predictions of human cell type properties. Despite this general conservation, we also find extensive differences between homologous human and mouse cell types, including dramatic alterations in proportions, laminar distributions, gene expression, and morphology. These species-specific features emphasize the importance of directly studying human brain.


bioRxiv | 2018

Big data and single cell transcriptomics: implications for ontological representation

Brian D. Aevermann; Mark Novotny; Trygve E. Bakken; Jeremy A. Miller; Alexander D. Diehl; David Osumi-Sutherland; Roger S. Lasken; Ed Lein; Richard H. Scheuermann

Cells are fundamental functional units of multicellular organisms, with different cell types playing distinct physiological roles in the body. The recent advent of single cell transcriptional profiling using RNA sequencing is producing “big data”, enabling the identification of novel human cell types at an unprecedented rate. In this review, we summarize recent work characterizing cell types in the human central nervous and immune systems using single cell and single nuclei RNA sequencing, and discuss the implications that these discoveries are having on the representation of cell types in the reference Cell Ontology (CL). We propose a method based on random forest machine learning for identifying sets of necessary and sufficient marker genes that can be used to assemble consistent and reproducible cell type definitions for incorporation into the CL. The representation of defined cell type classes and their relationships in the CL using this strategy will make the cell type classes findable, accessible, interoperable, and reusable (FAIR), allowing the CL to serve as a reference knowledgebase of information about the role that distinct cellular phenotypes play in human health and disease.


Human Molecular Genetics | 2018

Cell type discovery using single-cell transcriptomics: implications for ontological representation

Brian D. Aevermann; Mark Novotny; Trygve E. Bakken; Jeremy A. Miller; Alexander D. Diehl; David Osumi-Sutherland; Roger S. Lasken; Ed Lein; Richard H. Scheuermann

Abstract Cells are fundamental function units of multicellular organisms, with different cell types playing distinct physiological roles in the body. The recent advent of single-cell transcriptional profiling using RNA sequencing is producing ‘big data’, enabling the identification of novel human cell types at an unprecedented rate. In this review, we summarize recent work characterizing cell types in the human central nervous and immune systems using single-cell and single-nuclei RNA sequencing, and discuss the implications that these discoveries are having on the representation of cell types in the reference Cell Ontology (CL). We propose a method, based on random forest machine learning, for identifying sets of necessary and sufficient marker genes, which can be used to assemble consistent and reproducible cell type definitions for incorporation into the CL. The representation of defined cell type classes and their relationships in the CL using this strategy will make the cell type classes being identified by high-throughput/high-content technologies findable, accessible, interoperable and reusable (FAIR), allowing the CL to serve as a reference knowledgebase of information about the role that distinct cellular phenotypes play in human health and disease.


bioRxiv | 2017

Equivalent high-resolution identification of neuronal cell types with single-nucleus and single-cell RNA-sequencing

Trygve E. Bakken; Rebecca Hodge; Jeremy M Miller; Zizhen Yao; Thuc Nghi Nguyen; Brian D. Aevermann; Eliza Barkan; Darren Bertagnolli; Tamara Casper; Nick Dee; Emma Garren; Jeff Goldy; Lucas T. Gray; Matthew Kroll; Roger S. Lasken; Kanan Lathia; Sheana Parry; Christine Rimorin; Richard H. Scheuermann; Nicholas J. Schork; Soraya I. Shehata; Michael Tieu; John Phillips; Amy Bernard; Kimberly A. Smith; Hongkui Zeng; Ed Lein; Bosiljka Tasic

Transcriptional profiling of complex tissues by RNA-sequencing of single nuclei presents some advantages over whole cell analysis. It enables unbiased cellular coverage, lack of cell isolation-based transcriptional effects, and application to archived frozen specimens. Using a well-matched pair of single-nucleus RNA-seq (snRNA-seq) and single-cell RNA-seq (scRNA-seq) SMART-Seq v4 datasets from mouse visual cortex, we demonstrate that similarly high-resolution clustering of closely related neuronal types can be achieved with both methods if intronic sequences are included in nuclear RNA-seq analysis. More transcripts are detected in individual whole cells (∼11,000 genes) than nuclei (∼7,000 genes), but the majority of genes have similar detection across cells and nuclei. We estimate that the nuclear proportion of total cellular mRNA varies from 20% to over 50% for large and small pyramidal neurons, respectively. Together, these results illustrate the high information content of nuclear RNA for characterization of cellular diversity in brain tissues.

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Jeremy A. Miller

Allen Institute for Brain Science

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Trygve E. Bakken

Allen Institute for Brain Science

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Ed Lein

Allen Institute for Brain Science

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Mark Novotny

J. Craig Venter Institute

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Rebecca Hodge

Allen Institute for Brain Science

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Roger S. Lasken

J. Craig Venter Institute

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