Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Aaron Szafer is active.

Publication


Featured researches published by Aaron Szafer.


Nature | 2014

Transcriptional landscape of the prenatal human brain

Jeremy A. Miller; Song Lin Ding; Susan M. Sunkin; Kimberly A. Smith; Lydia Ng; Aaron Szafer; Amanda Ebbert; Zackery L. Riley; Joshua J. Royall; Kaylynn Aiona; James M. Arnold; Crissa Bennet; Darren Bertagnolli; Krissy Brouner; Stephanie Butler; Shiella Caldejon; Anita Carey; Christine Cuhaciyan; Rachel A. Dalley; Nick Dee; Tim Dolbeare; Benjamin Facer; David Feng; Tim P. Fliss; Garrett Gee; Jeff Goldy; Lindsey Gourley; Benjamin W. Gregor; Guangyu Gu; Robert Howard

The anatomical and functional architecture of the human brain is mainly determined by prenatal transcriptional processes. We describe an anatomically comprehensive atlas of the mid-gestational human brain, including de novo reference atlases, in situ hybridization, ultra-high-resolution magnetic resonance imaging (MRI) and microarray analysis on highly discrete laser-microdissected brain regions. In developing cerebral cortex, transcriptional differences are found between different proliferative and post-mitotic layers, wherein laminar signatures reflect cellular composition and developmental processes. Cytoarchitectural differences between human and mouse have molecular correlates, including species differences in gene expression in subplate, although surprisingly we find minimal differences between the inner and outer subventricular zones even though the outer zone is expanded in humans. Both germinal and post-mitotic cortical layers exhibit fronto-temporal gradients, with particular enrichment in the frontal lobe. Finally, many neurodevelopmental disorder and human-evolution-related genes show patterned expression, potentially underlying unique features of human cortical formation. These data provide a rich, freely-accessible resource for understanding human brain development.


Nature Neuroscience | 2015

Canonical genetic signatures of the adult human brain

Michael Hawrylycz; Jeremy A. Miller; Vilas Menon; David Feng; Tim Dolbeare; Angela L. Guillozet-Bongaarts; Anil G. Jegga; Bruce J. Aronow; Chang Kyu Lee; Amy Bernard; Matthew F. Glasser; Donna L. Dierker; Jörg Menche; Aaron Szafer; Forrest Collman; Pascal Grange; Kenneth A. Berman; Stefan Mihalas; Zizhen Yao; Lance Stewart; Albert-László Barabási; Jay Schulkin; John Phillips; Lydia Ng; Chinh Dang; David R. Haynor; Allan R. Jones; David C. Van Essen; Christof Koch; Ed Lein

The structure and function of the human brain are highly stereotyped, implying a conserved molecular program responsible for its development, cellular structure and function. We applied a correlation-based metric called differential stability to assess reproducibility of gene expression patterning across 132 structures in six individual brains, revealing mesoscale genetic organization. The genes with the highest differential stability are highly biologically relevant, with enrichment for brain-related annotations, disease associations, drug targets and literature citations. Using genes with high differential stability, we identified 32 anatomically diverse and reproducible gene expression signatures, which represent distinct cell types, intracellular components and/or associations with neurodevelopmental and neurodegenerative disorders. Genes in neuron-associated compared to non-neuronal networks showed higher preservation between human and mouse; however, many diversely patterned genes displayed marked shifts in regulation between species. Finally, highly consistent transcriptional architecture in neocortex is correlated with resting state functional connectivity, suggesting a link between conserved gene expression and functionally relevant circuitry.


Nature | 2016

A comprehensive transcriptional map of primate brain development

Trygve E. Bakken; Jeremy A. Miller; Song Lin Ding; Susan M. Sunkin; Kimberly A. Smith; Lydia Ng; Aaron Szafer; Rachel A. Dalley; Joshua J. Royall; Tracy Lemon; Sheila Shapouri; Kaylynn Aiona; James M. Arnold; Jeffrey L. Bennett; Darren Bertagnolli; Kristopher Bickley; Andrew F. Boe; Krissy Brouner; Stephanie Butler; Emi J. Byrnes; Shiella Caldejon; Anita Carey; Shelby Cate; Mike Chapin; Jefferey Chen; Nick Dee; Tsega Desta; Tim Dolbeare; Nadia Dotson; Amanda Ebbert

The transcriptional underpinnings of brain development remain poorly understood, particularly in humans and closely related non-human primates. We describe a high-resolution transcriptional atlas of rhesus monkey (Macaca mulatta) brain development that combines dense temporal sampling of prenatal and postnatal periods with fine anatomical division of cortical and subcortical regions associated with human neuropsychiatric disease. Gene expression changes more rapidly before birth, both in progenitor cells and maturing neurons. Cortical layers and areas acquire adult-like molecular profiles surprisingly late in postnatal development. Disparate cell populations exhibit distinct developmental timing of gene expression, but also unexpected synchrony of processes underlying neural circuit construction including cell projection and adhesion. Candidate risk genes for neurodevelopmental disorders including primary microcephaly, autism spectrum disorder, intellectual disability, and schizophrenia show disease-specific spatiotemporal enrichment within developing neocortex. Human developmental expression trajectories are more similar to monkey than rodent, although approximately 9% of genes show human-specific regulation with evidence for prolonged maturation or neoteny compared to monkey.


The Journal of Comparative Neurology | 2016

Comprehensive cellular-resolution atlas of the adult human brain

Song-Lin Ding; Joshua J. Royall; Susan M. Sunkin; Lydia Ng; Benjamin Facer; Phil Lesnar; Angie Guillozet-Bongaarts; Bergen McMurray; Aaron Szafer; Tim Dolbeare; Allison Stevens; Lee S. Tirrell; Thomas Benner; Shiella Caldejon; Rachel A. Dalley; Nick Dee; Christopher Lau; Julie Nyhus; Melissa Reding; Zackery L. Riley; David Sandman; Elaine Shen; Andre van der Kouwe; Ani Varjabedian; Michelle Write; Lilla Zöllei; Chinh Dang; James A. Knowles; Christof Koch; John Phillips

Detailed anatomical understanding of the human brain is essential for unraveling its functional architecture, yet current reference atlases have major limitations such as lack of whole‐brain coverage, relatively low image resolution, and sparse structural annotation. We present the first digital human brain atlas to incorporate neuroimaging, high‐resolution histology, and chemoarchitecture across a complete adult female brain, consisting of magnetic resonance imaging (MRI), diffusion‐weighted imaging (DWI), and 1,356 large‐format cellular resolution (1 µm/pixel) Nissl and immunohistochemistry anatomical plates. The atlas is comprehensively annotated for 862 structures, including 117 white matter tracts and several novel cyto‐ and chemoarchitecturally defined structures, and these annotations were transferred onto the matching MRI dataset. Neocortical delineations were done for sulci, gyri, and modified Brodmann areas to link macroscopic anatomical and microscopic cytoarchitectural parcellations. Correlated neuroimaging and histological structural delineation allowed fine feature identification in MRI data and subsequent structural identification in MRI data from other brains. This interactive online digital atlas is integrated with existing Allen Institute for Brain Science gene expression atlases and is publicly accessible as a resource for the neuroscience community. J. Comp. Neurol. 524:3127–3481, 2016.


Archive | 2014

The Allen Brain Atlas

Michael Hawrylycz; Lydia Ng; David Feng; Susan M. Sunkin; Aaron Szafer; Chinh Dang

The Allen Brain Atlas is an online publicly available resource that integrates gene expression and connectivity data with neuroanatomical information for the mouse, human, and non-human primate. Launched in 2004 by the Allen Institute for Brain Science, the portal currently receives about 45000 unique users each month. More than one petabyte of in situ hybridization imagery and over 240 million microarray data points from six adult human brains representing 3700 tissue samples have been generated to date. As one of the most comprehensive gene expression resources for the nervous system, scientists regularly use these resources to study the expression profile of genes in the various regions of the brain. Additional usage includes searching for biomarkers, correlating gene expression to neuroanatomy, and other large-scale correlative data analysis. This chapter reviews the resources available and describes how they were constructed to enable development of visualization and search tools to analyze the massive amount of data generated. Finally, examples are provided on how these tools can be leveraged for scientific discovery.


Nature | 2018

Shared and distinct transcriptomic cell types across neocortical areas

Bosiljka Tasic; Zizhen Yao; Lucas T. Graybuck; Kimberly A. Smith; Thuc Nghi Nguyen; Darren Bertagnolli; Jeff Goldy; Emma Garren; Michael N. Economo; Sarada Viswanathan; Osnat Penn; Trygve E. Bakken; Vilas Menon; Jeremy A. Miller; Olivia Fong; Karla E. Hirokawa; Kanan Lathia; Christine Rimorin; Michael Tieu; Rachael Larsen; Tamara Casper; Eliza Barkan; Matthew Kroll; Sheana Parry; Nadiya V. Shapovalova; Daniel Hirschstein; Julie Pendergraft; Heather A. Sullivan; Tae Kyung Kim; Aaron Szafer

The neocortex contains a multitude of cell types that are segregated into layers and functionally distinct areas. To investigate the diversity of cell types across the mouse neocortex, here we analysed 23,822 cells from two areas at distant poles of the mouse neocortex: the primary visual cortex and the anterior lateral motor cortex. We define 133 transcriptomic cell types by deep, single-cell RNA sequencing. Nearly all types of GABA (γ-aminobutyric acid)-containing neurons are shared across both areas, whereas most types of glutamatergic neurons were found in one of the two areas. By combining single-cell RNA sequencing and retrograde labelling, we match transcriptomic types of glutamatergic neurons to their long-range projection specificity. Our study establishes a combined transcriptomic and projectional taxonomy of cortical cell types from functionally distinct areas of the adult mouse cortex.Single-cell transcriptomics of more than 20,000 cells from two functionally distinct areas of the mouse neocortex identifies 133 transcriptomic types, and provides a foundation for understanding the diversity of cortical cell types.


eLife | 2017

Neuropathological and transcriptomic characteristics of the aged brain

Jeremy A. Miller; Angela L. Guillozet-Bongaarts; Laura E. Gibbons; Nadia Postupna; Anne Renz; Allison Beller; Susan M. Sunkin; Lydia Ng; Shannon E. Rose; Kimberly A. Smith; Aaron Szafer; Chris Barber; Darren Bertagnolli; Kristopher Bickley; Krissy Brouner; Shiella Caldejon; Mike Chapin; Mindy L Chua; Natalie M Coleman; Eiron Cudaback; Christine Cuhaciyan; Rachel A. Dalley; Nick Dee; Tsega Desta; Tim Dolbeare; Nadezhda Dotson; Michael Fisher; Nathalie Gaudreault; Garrett Gee; Terri L. Gilbert

As more people live longer, age-related neurodegenerative diseases are an increasingly important societal health issue. Treatments targeting specific pathologies such as amyloid beta in Alzheimer’s disease (AD) have not led to effective treatments, and there is increasing evidence of a disconnect between traditional pathology and cognitive abilities with advancing age, indicative of individual variation in resilience to pathology. Here, we generated a comprehensive neuropathological, molecular, and transcriptomic characterization of hippocampus and two regions cortex in 107 aged donors (median = 90) from the Adult Changes in Thought (ACT) study as a freely-available resource (http://aging.brain-map.org/). We confirm established associations between AD pathology and dementia, albeit with increased, presumably aging-related variability, and identify sets of co-expressed genes correlated with pathological tau and inflammation markers. Finally, we demonstrate a relationship between dementia and RNA quality, and find common gene signatures, highlighting the importance of properly controlling for RNA quality when studying dementia.


bioRxiv | 2018

Classification of electrophysiological and morphological types in mouse visual cortex

Nathan W. Gouwens; Staci A. Sorensen; Jim Berg; Chang-Kyu Lee; Tim Jarsky; Jonathan T. Ting; Susan M. Sunkin; David Feng; Costas A. Anastassiou; Eliza Barkan; Kris Bickley; Nicole Blesie; Thomas Braun; Krissy Brouner; Agata Budzillo; Shiella Caldejon; Tamara Casper; Dan Casteli; Peter Chong; Kirsten Crichton; Christine Cuhaciyan; Tanya L. Daigle; Rachel A. Dalley; Nick Dee; Tsega Desta; Samuel Dingman; Alyse Doperalski; Nadezhda Dotson; Tom Egdorf; Michael Fisher

Understanding the diversity of cell types in the brain has been an enduring challenge and requires detailed characterization of individual neurons in multiple dimensions. To profile morpho-electric properties of mammalian neurons systematically, we established a single cell characterization pipeline using standardized patch clamp recordings in brain slices and biocytin-based neuronal reconstructions. We built a publicly-accessible online database, the Allen Cell Types Database, to display these data sets. Intrinsic physiological and morphological properties were measured from over 1,800 neurons from the adult laboratory mouse visual cortex. Quantitative features were used to classify neurons into distinct types using unsupervised methods. We establish a taxonomy of morphologically- and electrophysiologically-defined cell types for this region of cortex with 17 e-types and 35 m-types, as well as an initial correspondence with previously-defined transcriptomic cell types using the same transgenic mouse lines.


Science | 2018

An anatomic transcriptional atlas of human glioblastoma

Ralph B. Puchalski; Nameeta Shah; Jeremy A. Miller; Rachel A. Dalley; Steve R. Nomura; Jae-Guen Yoon; Kimberly A. Smith; Michael Lankerovich; Darren Bertagnolli; Kris Bickley; Andrew F. Boe; Krissy Brouner; Stephanie Butler; Shiella Caldejon; Mike Chapin; Suvro Datta; Nick Dee; Tsega Desta; Tim Dolbeare; Nadezhda Dotson; Amanda Ebbert; David Feng; Xu Feng; Michael Fisher; Garrett Gee; Jeff Goldy; Lindsey Gourley; Benjamin W. Gregor; Guangyu Gu; Nika Hejazinia

Anatomically correct tumor genomics Glioblastoma is the most lethal form of human brain cancer. The genomic alterations and gene expression profiles characterizing this tumor type have been widely studied. Puchalski et al. created the Ivy Glioblastoma Atlas, a freely available online resource for the research community. The atlas, a collaborative effort between bioinformaticians and pathologists, maps molecular features of glioblastomas, such as transcriptional signatures, to histologically defined anatomical regions of the tumors. The relationships identified in this atlas, in conjunction with associated databases of clinical and genomic information, could provide new insights into the pathogenesis, diagnosis, and treatment of glioblastoma. Science, this issue p. 660 An online resource maps the molecular genetic features of glioblastoma, a lethal brain cancer, to its anatomic features. Glioblastoma is an aggressive brain tumor that carries a poor prognosis. The tumor’s molecular and cellular landscapes are complex, and their relationships to histologic features routinely used for diagnosis are unclear. We present the Ivy Glioblastoma Atlas, an anatomically based transcriptional atlas of human glioblastoma that aligns individual histologic features with genomic alterations and gene expression patterns, thus assigning molecular information to the most important morphologic hallmarks of the tumor. The atlas and its clinical and genomic database are freely accessible online data resources that will serve as a valuable platform for future investigations of glioblastoma pathogenesis, diagnosis, and treatment.


Nature Communications | 2018

Generalized leaky integrate-and-fire models classify multiple neuron types

Corinne Teeter; Ramakrishnan Iyer; Vilas Menon; Nathan W. Gouwens; David Feng; Jim Berg; Aaron Szafer; Nicholas Cain; Hongkui Zeng; Michael Hawrylycz; Christof Koch; Stefan Mihalas

There is a high diversity of neuronal types in the mammalian neocortex. To facilitate construction of system models with multiple cell types, we generate a database of point models associated with the Allen Cell Types Database. We construct a set of generalized leaky integrate-and-fire (GLIF) models of increasing complexity to reproduce the spiking behaviors of 645 recorded neurons from 16 transgenic lines. The more complex models have an increased capacity to predict spiking behavior of hold-out stimuli. We use unsupervised methods to classify cell types, and find that high level GLIF model parameters are able to differentiate transgenic lines comparable to electrophysiological features. The more complex model parameters also have an increased ability to differentiate between transgenic lines. Thus, creating simple models is an effective dimensionality reduction technique that enables the differentiation of cell types from electrophysiological responses without the need for a priori-defined features. This database will provide a set of simplified models of multiple cell types for the community to use in network models.Simplified neuron models, such as generalized leaky integrate-and-fire (GLIF) models, are extensively used in network modeling. Here the authors systematically generate and compare GLIF models of varying complexity for their ability to classify cell types in the Allen Cell Types Database and faithfully reproduce spike trains.

Collaboration


Dive into the Aaron Szafer's collaboration.

Top Co-Authors

Avatar

David Feng

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Jeremy A. Miller

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Lydia Ng

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Nick Dee

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Rachel A. Dalley

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Susan M. Sunkin

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Darren Bertagnolli

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Kimberly A. Smith

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Krissy Brouner

Allen Institute for Brain Science

View shared research outputs
Top Co-Authors

Avatar

Shiella Caldejon

Allen Institute for Brain Science

View shared research outputs
Researchain Logo
Decentralizing Knowledge