Search Results - "Chhibbar, Prabal"

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    From bench to bedside via bytes: Multi-omic immunoprofiling and integration using machine learning and network approaches by Xiao, Hanxi, Rosen, Aaron, Chhibbar, Prabal, Moise, Lenny, Das, Jishnu

    Published in Human vaccines & immunotherapeutics (15-12-2023)
    “…A significant surge in research endeavors leverages the vast potential of high-throughput omic technology platforms for broad profiling of biological responses…”
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    Journal Article
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    Correlates of COVID-19 mRNA vaccine humoral immune responses in men living with HIV-1 by Tuttle, Dylan J., Castanha, Priscila M. S., Nasser, Amro, Wilkins, Maris S., Cuff, Deirdre E., Chhibbar, Prabal, Sluis-Cremer, Nicolas P., Das, Jishnu, Mailliard, Robbie B., Rinaldo, Charles R., Marques, Ernesto T. A.

    Published in The Journal of immunology (1950) (01-05-2023)
    “…It is important that people with HIV-1 (PWH) receive an FDA-approved vaccine for COVID-19. Because PWH are known to elicit less effective immune responses to…”
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    Journal Article
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    Temporal dynamics and genomic programming of plasma cell fates by Manakkat Vijay, Godhev Kumar, Zhou, Ming, Thakkar, Kairavee, Rothrauff, Abigail, Chawla, Amanpreet Singh, Chen, Dianyu, Lau, Louis Chi-Wai, Gerges, Peter Habib, Chetal, Kashish, Chhibbar, Prabal, Fan, Jingyu, Das, Jishnu, Joglekar, Alok, Borghesi, Lisa, Salomonis, Nathan, Xu, Heping, Singh, Harinder

    Published in Nature immunology (01-06-2024)
    “…Affinity-matured plasma cells (PCs) of varying lifespans are generated through a germinal center (GC) response. The developmental dynamics and genomic programs…”
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    Generating protein sequences from antibiotic resistance genes data using Generative Adversarial Networks by Chhibbar, Prabal, Joshi, Arpit

    Published 28-04-2019
    “…We introduce a method to generate synthetic protein sequences which are predicted to be resistant to certain antibiotics. We did this using 6,023 genes that…”
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