101,229 research outputs found

    Systematic analysis of SARS-CoV-2 Omicron subvariants’ impact on B and T cell epitopes

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    Introduction: Epitopes are specific structures in antigens that are recognized by the immune system. They are widely used in the context of immunology-related applications, such as vaccine development, drug design, and diagnosis / treatment / prevention of disease. The SARS-CoV-2 virus has represented the main point of interest within the viral and genomic surveillance community in the last four years. Its ability to mutate and acquire new characteristics while it reorganizes into new variants has been analyzed from many perspectives. Understanding how epitopes are impacted by mutations that accumulate on the protein level cannot be underrated. Methods: With a focus on Omicron-named SARS-CoV-2 lineages, including the last WHO-designated Variants of Interest, we propose a workflow for data retrieval, integration, and analysis pipeline for conducting a database-wide study on the impact of lineages' characterizing mutations on all T cell and B cell linear epitopes collected in the Immune Epitope Database (IEDB) for SARS-CoV-2. Results: Our workflow allows us to showcase novel qualitative and quantitative results on 1) coverage of viral proteins by deposited epitopes; 2) distribution of epitopes that are mutated across Omicron variants; 3) distribution of Omicron characterizing mutations across epitopes. Results are discussed based on the type of epitope, the response frequency of the assays, and the sample size. Our proposed workflow can be reproduced at any point in time, given updated variant characterizations and epitopes from IEDB, thereby guaranteeing to observe a quantitative landscape of mutations' impact on demand. Conclusion: A big data-driven analysis such as the one provided here can inform the next genomic surveillance policies in combatting SARS-CoV-2 and future epidemic viruses

    Transformer-Based Biomedical Text Extraction

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    Unlike formal languages, natural languages are unstructured and more complex. Understanding and generating meaningful text are the goals of natural language processing (NLP). Deep learning recently had a significant impact on this field. Innovative and effective transformer-based models have achieved state-of-the-art results on a wide range of NLP tasks, including those working on specialized clinical and biomedical text. The most widely-adopted models (BERT and GPT) are here described along with their domain-specific versions and applications in the biomedical domain

    Maktabat Al Muthanna Baghdad Feb-May 1962

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    On the same date, Ali Al-Mansouri issued an official financial statement confirming that the Al-Khanji Foundation owed a total of 11.375.أصدر علي المنصوري بيانًا ماليًا رسميًا بتاريخ 25 نيسان 1962 يُفيد بأن مؤسسة الخانجي مدينة بمبلغ إجمالي قدره 11,375

    Analysis of co-occurring and mutually exclusive amino acid changes and detection of convergent and divergent evolution events in SARS-CoV-2

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    The inflation of SARS-CoV-2 lineages with a high number of accumulated mutations (such as the recent case of Omicron) has risen concerns about the evolutionary capacity of this virus. Here, we propose a computational study to examine non-synonymous mutations gathered within genomes of SARS-CoV-2 from the beginning of the pandemic until February 2022. We provide both qualitative and quantitative descriptions of such corpus, focusing on statistically significant co-occurring and mutually exclusive mutations within single genomes. Then, we examine in depth the distributions of mutations over defined lineages and compare those of frequently co-occurring mutation pairs. Based on this comparison, we study mutations’ convergence/divergence on the phylogenetic tree. As a result, we identify 1,818 co-occurring pairs of non-synonymous mutations showing at least one event of convergent evolution and 6,625 co-occurring pairs with at least one event of divergent evolution. Notable examples of both types are shown by means of a tree-based representation of lineages, visually capturing mutations’ behaviors. Our method confirms several well-known cases; moreover, the provided evidence suggests that our workflow can explain aspects of the future mutational evolution of SARS-CoV-2

    CoV2K model, a comprehensive representation of SARS-CoV-2 knowledge and data interplay

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    Since the outbreak of the COVID-19 pandemic, many research organizations have studied the genome of the SARS-CoV-2 virus; a body of public resources have been published for monitoring its evolution. While we experience an unprecedented richness of information in this domain, we also ascertained the presence of several information quality issues. We hereby propose CoV2K, an abstract model for explaining SARS-CoV-2-related concepts and interactions, focusing on viral mutations, their co-occurrence within variants, and their effects. CoV2K provides a clear and concise route map for understanding different connected types of information related to the virus; it thus drives a process of data and knowledge integration that aggregates information from several current resources, harmonizing their content and overcoming incompleteness and inconsistency issues. CoV2K is available for exploration as a graph that can be queried through a RESTful API addressing single entities or paths through their relationships. Practical use cases demonstrate its application to current knowledge inquiries

    Biological and Medical Ontologies: Human Phenotype Ontology (HPO)

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    The Human Phenotype Ontology, known as HPO, provides a standardized vocabulary of phenotypic abnormalities involved in human disease, including both clinical and pathological features, with definitions and synonyms. It is widely used in the field of human genomics and has been integrated into many databases and tools for the analysis of genetic diseases. The primary aim of the ontology is to provide the scientific community with a thorough and logical framework for delineating phenotypic anomalies associated with human diseases. Moreover, it facilitates computational inference and algorithms for integrated genomics and phenotypic analyses. The HPO is constantly updated, and it is a valuable resource for researchers and clinicians working in the field of human genetics and genomics

    Biological and Medical Ontologies: Disease Ontology (DO)

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    Human Disease Ontology (DO) is a standardized vocabulary for annotating and classifying diseases and their clinical features. It includes over 18,000 disease concepts (classes) and is organized hierarchically, with each concept representing a specific disease or condition. The DO is designed to facilitate the exchange and integration of disease-related information and to support the identification of relationships between diseases. It is widely used in the biomedical community for a variety of purposes, including disease classification, data integration, and knowledge representation

    Qilādat al-jawāhir fī dhikr al-Ghawth al-Rifāʻī wa-atbāʻih al-akābir

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    A book on Sufism on the Rifa'i way, in which the author collects virtues, conditions, dignity, sayings, behavior, method, and the realizations of the truth of Sheikh Ahmed Muhyi al-Din Abu al-Abbas al-Kabeer al-Rifa'i. Furthermore, the user talked about the widespread support he receives from his followers and the key aspects of his method

    OntoEffect: An OntoUML-Based Ontology to Explain SARS-CoV-2 Variants' Effects

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    The SARS-CoV-2 virus continuously accumulates genetic variation through mutations; mutations are the virus’ way to achieve viral adaptation. Although the huge amount of information accumulated on the virus during the COVID-19 pandemic, the knowledge that contributes to explaining and supporting the research related to SARS-CoV-2 characteristics and evolution is not currently organized, nor systematized. Here, we present OntoEffect, an ontology that captures and represents such information systematically. Specifically, we aim to represent the dimensions of the virus and its mutations, discussing their impacts on the virus itself, as well as on public health, prevention, and treatment protocols. Aiming to obtain ontological clarity in such a complex domain, OntoEffect was built using OntoUML, an ontology-driven conceptual modeling language, grounded on the Unified Foundational Ontology (UFO). In the highly specialized context of virology, we show the powerful ability of ontological models to provide clear and precise explanations of a domain and allow its shared understanding among stakeholders

    CoV2K: A Knowledge Base of SARS-CoV-2 Variant Impacts

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    In spite of the current relevance of the topic, there is no universally recognized knowledge base about SARS-CoV-2 variants; viral sequences deposited at recognized repositories are still very few, and the process of tracking new variants is not coordinated. CoV2K is a manually curated knowledge base providing an organized collection of information about SARS-CoV-2 variants, extracted from the scientific literature; it features a taxonomy of variant impacts, organized according to three main categories (protein stability, epidemiology, and immunology) and including levels for these effects (higher, lower, null) resulting from a coherent interpretation of research articles
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