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Dive into the research topics where Rebecca Hodge is active.

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Featured researches published by Rebecca Hodge.


Nature Methods | 2016

Fixed single-cell transcriptomic characterization of human radial glial diversity

Elliot R. Thomsen; John K. Mich; Zizhen Yao; Rebecca Hodge; Adele M. Doyle; Sumin Jang; Soraya I. Shehata; Angelique Nelson; Nadiya V. Shapovalova; Boaz P. Levi; Sharad Ramanathan

The diverse progenitors that give rise to the human neocortex have been difficult to characterize because progenitors, particularly radial glia (RG), are rare and are defined by a combination of intracellular markers, position and morphology. To circumvent these problems, we developed Fixed and Recovered Intact Single-cell RNA (FRISCR), a method for profiling the transcriptomes of individual fixed, stained and sorted cells. Using FRISCR, we profiled primary human RG that constitute only 1% of the midgestation cortex and classified them as ventricular zone−enriched RG (vRG) that express ANXA1 and CRYAB, and outer subventricular zone−localized RG (oRG) that express HOPX. Our study identified vRG and oRG markers and molecular profiles, an essential step for understanding human neocortical progenitor development. FRISCR allows targeted single-cell profiling of any tissues that lack live-cell markers.


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.


Nature Genetics | 2018

Genetic identification of brain cell types underlying schizophrenia

Nathan Skene; Trygve E. Bakken; Gerome Breen; James J. Crowley; Héléna A. Gaspar; Paola Giusti-Rodriguez; Rebecca Hodge; Jeremy A. Miller; Ana B. Muñoz-Manchado; Michael C. O’Donovan; Michael John Owen; Antonio F. Pardiñas; Jesper Ryge; James Tynan Rhys Walters; Sten Linnarsson; Ed Lein; Patrick F. Sullivan; Jens Hjerling-Leffler

With few exceptions, the marked advances in knowledge about the genetic basis of schizophrenia have not converged on findings that can be confidently used for precise experimental modeling. By applying knowledge of the cellular taxonomy of the brain from single-cell RNA sequencing, we evaluated whether the genomic loci implicated in schizophrenia map onto specific brain cell types. We found that the common-variant genomic results consistently mapped to pyramidal cells, medium spiny neurons (MSNs) and certain interneurons, but far less consistently to embryonic, progenitor or glial cells. These enrichments were due to sets of genes that were specifically expressed in each of these cell types. We also found that many of the diverse gene sets previously associated with schizophrenia (genes involved in synaptic function, those encoding mRNAs that interact with FMRP, antipsychotic targets, etc.) generally implicated the same brain cell types. Our results suggest a parsimonious explanation: the common-variant genetic results for schizophrenia point at a limited set of neurons, and the gene sets point to the same cells. The genetic risk associated with MSNs did not overlap with that of glutamatergic pyramidal cells and interneurons, suggesting that different cell types have biologically distinct roles in schizophrenia.Integration of single-cell RNA sequencing with genome-wide association data implicates specific brain cell types in schizophrenia. Gene sets previously associated with schizophrenia implicate the same cell types, which include pyramidal cells and medium spiny neurons.


Scientific Reports | 2017

STRT-seq-2i: dual-index 5ʹ single cell and nucleus RNA-seq on an addressable microwell array

Hannah Hochgerner; Peter Lönnerberg; Rebecca Hodge; Jaromir Mikes; Hermann Hubschle; Philip Lin; Simone Picelli; Gioele La Manno; Michael Ratz; Jude Dunne; Syed S. Husain; Ed Lein; Maithreyan Srinivasan; Amit Zeisel; Sten Linnarsson

Single-cell RNA-seq has become routine for discovering cell types and revealing cellular diversity, but archived human brain samples still pose a challenge to current high-throughput platforms. We present STRT-seq-2i, an addressable 9600-microwell array platform, combining sampling by limiting dilution or FACS, with imaging and high throughput at competitive cost. We applied the platform to fresh single mouse cortical cells and to frozen post-mortem human cortical nuclei, matching the performance of a previous lower-throughput platform while retaining a high degree of flexibility, potentially also for other high-throughput applications.


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

h-channels contribute to divergent electrophysiological properties of supragranular pyramidal neurons in human versus mouse cerebral cortex

Brian E. Kalmbach; Anatoly Buchin; Jeremy A. Miller; Trygve E. Bakken; Rebecca Hodge; Peter Chong; Rebecca de Frates; Kael Dai; Ryder P Gwinn; Charles S. Cobbs; Andrew L. Ko; Jeffrey G. Ojemann; Daniel L. Silbergeld; Christof Koch; Costas A. Anastassiou; Ed Lein; Jonathan T. Ting

Gene expression studies suggest that differential ion channel expression contributes to differences in rodent versus human neuronal physiology. We tested whether h-channels more prominently contribute to the physiological properties of human compared to mouse supragranular pyramidal neurons. Single cell/nucleus RNA sequencing revealed ubiquitous HCN1-subunit expression in excitatory neurons in human, but not mouse supragranular layers. Using patch-clamp recordings, we found stronger h-channel-related membrane properties in supragranular pyramidal neurons in human temporal cortex, compared to mouse supragranular pyramidal neurons in temporal association area. The magnitude of these differences depended upon cortical depth and was largest in pyramidal neurons in deep L3. Additionally, pharmacologically blocking h-channels produced a larger change in membrane properties in human compared to mouse neurons. Finally, using biophysical modeling, we provided evidence that h-channels promote the transfer of theta frequencies from dendrite-to-soma in human L3 pyramidal neurons. Thus, h-channels contribute to between-species differences in a fundamental neuronal property.


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.


Cell Stem Cell | 2017

A Single-Cell Roadmap of Lineage Bifurcation in Human ESC Models of Embryonic Brain Development

Zizhen Yao; John K. Mich; Sherman Ku; Vilas Menon; Anne-Rachel Krostag; Refugio A. Martinez; Leon Furchtgott; Heather Mulholland; Susan Bort; Margaret A. Fuqua; Ben W. Gregor; Rebecca Hodge; Anu Jayabalu; Ryan C. May; Samuel Melton; Angelique Nelson; N. Kiet Ngo; Nadiya V. Shapovalova; Soraya I. Shehata; Michael Smith; Leah J. Tait; Carol L. Thompson; Elliot R. Thomsen; Chaoyang Ye; Ian A. Glass; Ajamete Kaykas; Shuyuan Yao; John Phillips; Joshua S. Grimley; Boaz P. Levi

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Ed Lein

Allen Institute for Brain Science

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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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Soraya I. Shehata

Allen Institute for Brain Science

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Zizhen Yao

Allen Institute for Brain Science

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Boaz P. Levi

Allen Institute for Brain Science

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