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1.
Clin Immunol ; 266: 110333, 2024 Sep.
Article in English | MEDLINE | ID: mdl-39089348

ABSTRACT

Understanding the molecular mechanisms underpinning diverse vaccination responses is critical for developing efficient vaccines. Molecular subtyping can offer insights into heterogeneous nature of responses and aid in vaccine design. We analyzed multi-omic data from 62 haemagglutinin seasonal influenza vaccine recipients (2019-2020), including transcriptomics, proteomics, glycomics, and metabolomics data collected pre-vaccination. We performed a subtyping analysis on the integrated data revealing five subtypes with distinct molecular signatures. These subtypes differed in the expression of pre-existing adaptive or innate immunity signatures, which were linked to significant variation in baseline immunoglobulin A (IgA) and hemagglutination inhibition (HAI) titer levels. It is worth noting that these differences persisted through day 28 post-vaccination, indicating the effect of initial immune state on vaccination response. These findings highlight the significance of interpersonal variation in baseline immune status as a crucial factor in determining the effectiveness of seasonal vaccines. Ultimately, incorporating molecular profiling could enable personalized vaccine optimization.


Subject(s)
Antibodies, Viral , Influenza Vaccines , Influenza, Human , Multiomics , Vaccination , Humans , Adaptive Immunity/immunology , Antibodies, Viral/immunology , Antibodies, Viral/blood , Antibody Formation/immunology , Hemagglutination Inhibition Tests , Immunity, Innate/immunology , Immunoglobulin A/immunology , Immunoglobulin A/blood , Influenza Vaccines/administration & dosage , Influenza Vaccines/immunology , Influenza, Human/immunology , Influenza, Human/prevention & control , Proteomics/methods , Seasons
2.
Am J Hum Genet ; 108(12): 2301-2318, 2021 12 02.
Article in English | MEDLINE | ID: mdl-34762822

ABSTRACT

Identifying whether a given genetic mutation results in a gene product with increased (gain-of-function; GOF) or diminished (loss-of-function; LOF) activity is an important step toward understanding disease mechanisms because they may result in markedly different clinical phenotypes. Here, we generated an extensive database of documented germline GOF and LOF pathogenic variants by employing natural language processing (NLP) on the available abstracts in the Human Gene Mutation Database. We then investigated various gene- and protein-level features of GOF and LOF variants and applied machine learning and statistical analyses to identify discriminative features. We found that GOF variants were enriched in essential genes, for autosomal-dominant inheritance, and in protein binding and interaction domains, whereas LOF variants were enriched in singleton genes, for protein-truncating variants, and in protein core regions. We developed a user-friendly web-based interface that enables the extraction of selected subsets from the GOF/LOF database by a broad set of annotated features and downloading of up-to-date versions. These results improve our understanding of how variants affect gene/protein function and may ultimately guide future treatment options.


Subject(s)
Databases, Genetic , Gain of Function Mutation , Loss of Function Mutation , Proteins/genetics , Cloud Computing , Genetic Predisposition to Disease , Genome, Human , Germ-Line Mutation , Humans , Internet-Based Intervention , Machine Learning
3.
Hum Genet ; 139(6-7): 769-776, 2020 Jun.
Article in English | MEDLINE | ID: mdl-32405658

ABSTRACT

Over the last decade next generation sequencing (NGS) has been extensively used to identify new pathogenic mutations and genes causing rare genetic diseases. The efficient analyses of NGS data is not trivial and requires a technically and biologically rigorous pipeline that addresses data quality control, accurate variant filtration to minimize false positives and false negatives, and prioritization of the remaining genes based on disease genomics and physiological knowledge. This review provides a pipeline including all these steps, describes popular software for each step of the analysis, and proposes a general framework for the identification of causal mutations and genes in individual patients of rare genetic diseases.


Subject(s)
Computational Biology/methods , Genes/genetics , Genetic Diseases, Inborn/etiology , Genome, Human , Mutation , Precision Medicine , Rare Diseases/etiology , Genetic Diseases, Inborn/pathology , High-Throughput Nucleotide Sequencing , Humans , Rare Diseases/pathology , Software
4.
Nucleic Acids Res ; 43(19): 9474-88, 2015 Oct 30.
Article in English | MEDLINE | ID: mdl-26304547

ABSTRACT

To address many challenges in RNA structure/function prediction, the characterization of RNA's modular architectural units is required. Using the RNA-As-Graphs (RAG) database, we have previously explored the existence of secondary structure (2D) submotifs within larger RNA structures. Here we present RAG-3D-a dataset of RNA tertiary (3D) structures and substructures plus a web-based search tool-designed to exploit graph representations of RNAs for the goal of searching for similar 3D structural fragments. The objects in RAG-3D consist of 3D structures translated into 3D graphs, cataloged based on the connectivity between their secondary structure elements. Each graph is additionally described in terms of its subgraph building blocks. The RAG-3D search tool then compares a query RNA 3D structure to those in the database to obtain structurally similar structures and substructures. This comparison reveals conserved 3D RNA features and thus may suggest functional connections. Though RNA search programs based on similarity in sequence, 2D, and/or 3D structural elements are available, our graph-based search tool may be advantageous for illuminating similarities that are not obvious; using motifs rather than sequence space also reduces search times considerably. Ultimately, such substructuring could be useful for RNA 3D structure prediction, structure/function inference and inverse folding.


Subject(s)
Models, Molecular , RNA/chemistry , Software , Algorithms , Databases, Nucleic Acid , Internet , Nucleic Acid Conformation , RNA, Ribosomal, 23S/chemistry , RNA, Small Cytoplasmic/chemistry , Signal Recognition Particle/chemistry
5.
Genome Med ; 12(1): 9, 2020 01 15.
Article in English | MEDLINE | ID: mdl-31941532

ABSTRACT

BACKGROUND: Congenital heart disease (CHD) affects ~ 1% of live births and is the most common birth defect. Although the genetic contribution to the CHD has been long suspected, it has only been well established recently. De novo variants are estimated to contribute to approximately 8% of sporadic CHD. METHODS: CHD is genetically heterogeneous, making pathway enrichment analysis an effective approach to explore and statistically validate CHD-associated genes. In this study, we performed novel gene and pathway enrichment analyses of high-impact de novo variants in the recently published whole-exome sequencing (WES) data generated from a cohort of CHD 2645 parent-offspring trios to identify new CHD-causing candidate genes and mutations. We performed rigorous variant- and gene-level filtrations to identify potentially damaging variants, followed by enrichment analyses and gene prioritization. RESULTS: Our analyses revealed 23 novel genes that are likely to cause CHD, including HSP90AA1, ROCK2, IQGAP1, and CHD4, and sharing biological functions, pathways, molecular interactions, and properties with known CHD-causing genes. CONCLUSIONS: Ultimately, these findings suggest novel genes that are likely to be contributing to CHD pathogenesis.


Subject(s)
Genetic Predisposition to Disease , Heart Defects, Congenital/genetics , Polymorphism, Single Nucleotide , Exome , Gene Regulatory Networks , HSP90 Heat-Shock Proteins/genetics , HSP90 Heat-Shock Proteins/metabolism , Humans , Mi-2 Nucleosome Remodeling and Deacetylase Complex/genetics , Mi-2 Nucleosome Remodeling and Deacetylase Complex/metabolism , Pedigree , Protein Interaction Maps , ras GTPase-Activating Proteins/genetics , ras GTPase-Activating Proteins/metabolism , rho-Associated Kinases/genetics , rho-Associated Kinases/metabolism
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