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1.
Science ; 384(6698): eadi5199, 2024 May 24.
Article in English | MEDLINE | ID: mdl-38781369

ABSTRACT

Single-cell genomics is a powerful tool for studying heterogeneous tissues such as the brain. Yet little is understood about how genetic variants influence cell-level gene expression. Addressing this, we uniformly processed single-nuclei, multiomics datasets into a resource comprising >2.8 million nuclei from the prefrontal cortex across 388 individuals. For 28 cell types, we assessed population-level variation in expression and chromatin across gene families and drug targets. We identified >550,000 cell type-specific regulatory elements and >1.4 million single-cell expression quantitative trait loci, which we used to build cell-type regulatory and cell-to-cell communication networks. These networks manifest cellular changes in aging and neuropsychiatric disorders. We further constructed an integrative model accurately imputing single-cell expression and simulating perturbations; the model prioritized ~250 disease-risk genes and drug targets with associated cell types.


Subject(s)
Brain , Gene Regulatory Networks , Mental Disorders , Single-Cell Analysis , Humans , Aging/genetics , Brain/metabolism , Cell Communication/genetics , Chromatin/metabolism , Chromatin/genetics , Genomics , Mental Disorders/genetics , Prefrontal Cortex/metabolism , Prefrontal Cortex/physiology , Quantitative Trait Loci
2.
bioRxiv ; 2024 Mar 30.
Article in English | MEDLINE | ID: mdl-38562822

ABSTRACT

Single-cell genomics is a powerful tool for studying heterogeneous tissues such as the brain. Yet, little is understood about how genetic variants influence cell-level gene expression. Addressing this, we uniformly processed single-nuclei, multi-omics datasets into a resource comprising >2.8M nuclei from the prefrontal cortex across 388 individuals. For 28 cell types, we assessed population-level variation in expression and chromatin across gene families and drug targets. We identified >550K cell-type-specific regulatory elements and >1.4M single-cell expression-quantitative-trait loci, which we used to build cell-type regulatory and cell-to-cell communication networks. These networks manifest cellular changes in aging and neuropsychiatric disorders. We further constructed an integrative model accurately imputing single-cell expression and simulating perturbations; the model prioritized ~250 disease-risk genes and drug targets with associated cell types.

3.
Cell ; 186(7): 1493-1511.e40, 2023 03 30.
Article in English | MEDLINE | ID: mdl-37001506

ABSTRACT

Understanding how genetic variants impact molecular phenotypes is a key goal of functional genomics, currently hindered by reliance on a single haploid reference genome. Here, we present the EN-TEx resource of 1,635 open-access datasets from four donors (∼30 tissues × âˆ¼15 assays). The datasets are mapped to matched, diploid genomes with long-read phasing and structural variants, instantiating a catalog of >1 million allele-specific loci. These loci exhibit coordinated activity along haplotypes and are less conserved than corresponding, non-allele-specific ones. Surprisingly, a deep-learning transformer model can predict the allele-specific activity based only on local nucleotide-sequence context, highlighting the importance of transcription-factor-binding motifs particularly sensitive to variants. Furthermore, combining EN-TEx with existing genome annotations reveals strong associations between allele-specific and GWAS loci. It also enables models for transferring known eQTLs to difficult-to-profile tissues (e.g., from skin to heart). Overall, EN-TEx provides rich data and generalizable models for more accurate personal functional genomics.


Subject(s)
Epigenome , Quantitative Trait Loci , Genome-Wide Association Study , Genomics , Phenotype , Polymorphism, Single Nucleotide
4.
Nat Commun ; 11(1): 3696, 2020 07 29.
Article in English | MEDLINE | ID: mdl-32728046

ABSTRACT

ENCODE comprises thousands of functional genomics datasets, and the encyclopedia covers hundreds of cell types, providing a universal annotation for genome interpretation. However, for particular applications, it may be advantageous to use a customized annotation. Here, we develop such a custom annotation by leveraging advanced assays, such as eCLIP, Hi-C, and whole-genome STARR-seq on a number of data-rich ENCODE cell types. A key aspect of this annotation is comprehensive and experimentally derived networks of both transcription factors and RNA-binding proteins (TFs and RBPs). Cancer, a disease of system-wide dysregulation, is an ideal application for such a network-based annotation. Specifically, for cancer-associated cell types, we put regulators into hierarchies and measure their network change (rewiring) during oncogenesis. We also extensively survey TF-RBP crosstalk, highlighting how SUB1, a previously uncharacterized RBP, drives aberrant tumor expression and amplifies the effect of MYC, a well-known oncogenic TF. Furthermore, we show how our annotation allows us to place oncogenic transformations in the context of a broad cell space; here, many normal-to-tumor transitions move towards a stem-like state, while oncogene knockdowns show an opposing trend. Finally, we organize the resource into a coherent workflow to prioritize key elements and variants, in addition to regulators. We showcase the application of this prioritization to somatic burdening, cancer differential expression and GWAS. Targeted validations of the prioritized regulators, elements and variants using siRNA knockdowns, CRISPR-based editing, and luciferase assays demonstrate the value of the ENCODE resource.


Subject(s)
Databases, Genetic , Genomics , Neoplasms/genetics , Cell Line, Tumor , Cell Transformation, Neoplastic/genetics , Gene Regulatory Networks , Humans , Mutation/genetics , Reproducibility of Results , Transcription Factors/metabolism
5.
Cell Syst ; 8(4): 352-357.e3, 2019 04 24.
Article in English | MEDLINE | ID: mdl-30956140

ABSTRACT

Small RNA sequencing has been widely adopted to study the diversity of extracellular RNAs (exRNAs) in biofluids; however, the analysis of exRNA samples can be challenging: they are vulnerable to contamination and artifacts from different isolation techniques, present in lower concentrations than cellular RNA, and occasionally of exogenous origin. To address these challenges, we present exceRpt, the exRNA-processing toolkit of the NIH Extracellular RNA Communication Consortium (ERCC). exceRpt is structured as a cascade of filters and quantifications prioritized based on one's confidence in a given set of annotated RNAs. It generates quality control reports and abundance estimates for RNA biotypes. It is also capable of characterizing mappings to exogenous genomes, which, in turn, can be used to generate phylogenetic trees. exceRpt has been used to uniformly process all ∼3,500 exRNA-seq datasets in the public exRNA Atlas and is available from genboree.org and github.gersteinlab.org/exceRpt.


Subject(s)
Cell-Free Nucleic Acids/chemistry , RNA-Seq/methods , Software , Animals , Cell-Free Nucleic Acids/genetics , Cell-Free Nucleic Acids/metabolism , Humans , Mice , RNA-Seq/standards
6.
Cell ; 177(2): 463-477.e15, 2019 04 04.
Article in English | MEDLINE | ID: mdl-30951672

ABSTRACT

To develop a map of cell-cell communication mediated by extracellular RNA (exRNA), the NIH Extracellular RNA Communication Consortium created the exRNA Atlas resource (https://exrna-atlas.org). The Atlas version 4P1 hosts 5,309 exRNA-seq and exRNA qPCR profiles from 19 studies and a suite of analysis and visualization tools. To analyze variation between profiles, we apply computational deconvolution. The analysis leads to a model with six exRNA cargo types (CT1, CT2, CT3A, CT3B, CT3C, CT4), each detectable in multiple biofluids (serum, plasma, CSF, saliva, urine). Five of the cargo types associate with known vesicular and non-vesicular (lipoprotein and ribonucleoprotein) exRNA carriers. To validate utility of this model, we re-analyze an exercise response study by deconvolution to identify physiologically relevant response pathways that were not detected previously. To enable wide application of this model, as part of the exRNA Atlas resource, we provide tools for deconvolution and analysis of user-provided case-control studies.


Subject(s)
Cell Communication/physiology , RNA/metabolism , Adult , Body Fluids/chemistry , Cell-Free Nucleic Acids/metabolism , Circulating MicroRNA/metabolism , Extracellular Vesicles/metabolism , Female , Humans , Male , Reproducibility of Results , Sequence Analysis, RNA/methods , Software
7.
Nat Commun ; 10(1): 1784, 2019 04 16.
Article in English | MEDLINE | ID: mdl-30992455

ABSTRACT

The incomplete identification of structural variants (SVs) from whole-genome sequencing data limits studies of human genetic diversity and disease association. Here, we apply a suite of long-read, short-read, strand-specific sequencing technologies, optical mapping, and variant discovery algorithms to comprehensively analyze three trios to define the full spectrum of human genetic variation in a haplotype-resolved manner. We identify 818,054 indel variants (<50 bp) and 27,622 SVs (≥50 bp) per genome. We also discover 156 inversions per genome and 58 of the inversions intersect with the critical regions of recurrent microdeletion and microduplication syndromes. Taken together, our SV callsets represent a three to sevenfold increase in SV detection compared to most standard high-throughput sequencing studies, including those from the 1000 Genomes Project. The methods and the dataset presented serve as a gold standard for the scientific community allowing us to make recommendations for maximizing structural variation sensitivity for future genome sequencing studies.


Subject(s)
Genome, Human/genetics , Genomic Structural Variation , Genomics/methods , Haplotypes/genetics , Algorithms , Chromosome Mapping/methods , Databases, Genetic , High-Throughput Nucleotide Sequencing/methods , Humans , INDEL Mutation , Whole Genome Sequencing/methods
8.
Science ; 361(6409)2018 09 28.
Article in English | MEDLINE | ID: mdl-30139913

ABSTRACT

To assess the impact of genetic variation in regulatory loci on human health, we constructed a high-resolution map of allelic imbalances in DNA methylation, histone marks, and gene transcription in 71 epigenomes from 36 distinct cell and tissue types from 13 donors. Deep whole-genome bisulfite sequencing of 49 methylomes revealed sequence-dependent CpG methylation imbalances at thousands of heterozygous regulatory loci. Such loci are enriched for stochastic switching, which is defined as random transitions between fully methylated and unmethylated states of DNA. The methylation imbalances at thousands of loci are explainable by different relative frequencies of the methylated and unmethylated states for the two alleles. Further analyses provided a unifying model that links sequence-dependent allelic imbalances of the epigenome, stochastic switching at gene regulatory loci, and disease-associated genetic variation.


Subject(s)
Allelic Imbalance , DNA Methylation , Disease/genetics , Epigenesis, Genetic , Genome, Human , Polymorphism, Single Nucleotide , Alleles , Binding Sites , CpG Islands , Gene Regulatory Networks , Genetic Loci , Genome-Wide Association Study , Humans , Sequence Analysis, DNA , Sulfites/chemistry , Transcription Factors/metabolism
9.
Genome Biol ; 19(1): 38, 2018 03 20.
Article in English | MEDLINE | ID: mdl-29559002

ABSTRACT

Comprehensive and accurate identification of structural variations (SVs) from next generation sequencing data remains a major challenge. We develop FusorSV, which uses a data mining approach to assess performance and merge callsets from an ensemble of SV-calling algorithms. It includes a fusion model built using analysis of 27 deep-coverage human genomes from the 1000 Genomes Project. We identify 843 novel SV calls that were not reported by the 1000 Genomes Project for these 27 samples. Experimental validation of a subset of these calls yields a validation rate of 86.7%. FusorSV is available at https://github.com/TheJacksonLaboratory/SVE .


Subject(s)
Algorithms , Genome, Human , Genomic Structural Variation , High-Throughput Nucleotide Sequencing , Humans , Sequence Analysis, DNA , Software
10.
Bioinformatics ; 34(1): 1-8, 2018 01 01.
Article in English | MEDLINE | ID: mdl-28961734

ABSTRACT

Motivation: Analysis of RNA sequencing (RNA-Seq) data in human saliva is challenging. Lack of standardization and unification of the bioinformatic procedures undermines saliva's diagnostic potential. Thus, it motivated us to perform this study. Results: We applied principal pipelines for bioinformatic analysis of small RNA-Seq data of saliva of 98 healthy Korean volunteers including either direct or indirect mapping of the reads to the human genome using Bowtie1. Analysis of alignments to exogenous genomes by another pipeline revealed that almost all of the reads map to bacterial genomes. Thus, salivary exRNA has fundamental properties that warrant the design of unique additional steps while performing the bioinformatic analysis. Our pipelines can serve as potential guidelines for processing of RNA-Seq data of human saliva. Availability and implementation: Processing and analysis results of the experimental data generated by the exceRpt (v4.6.3) small RNA-seq pipeline (github.gersteinlab.org/exceRpt) are available from exRNA atlas (exrna-atlas.org). Alignment to exogenous genomes and their quantification results were used in this paper for the analyses of small RNAs of exogenous origin. Contact: dtww@ucla.edu.


Subject(s)
Computational Biology/methods , Sequence Analysis, RNA/methods , Software , High-Throughput Nucleotide Sequencing/methods , Humans , RNA , Saliva/chemistry
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