606 research outputs found
Kansen voor vrouwelijk talent : over carrières en barrières van vrouwen bij Wageningen UR
Dit rapport inventariseert de situatie van de doorstroming van vrouwelijke wetenschappers aan Wageningen UR. Zo blijkt er binnen Wageningen University een dik glazen plafond te bestaan, te meten aan de doorstroom van de ene functieschaal naar de volgende. In dit rapport beschrijven we een aantal oorzaken van dit probleem. Tenslotte geven we adviezen voor wat bestuurders en leidinggevenden kunnen doen
Mathematical modeling of escape of HIV from cytotoxic T lymphocyte responses
Human immunodeficiency virus (HIV-1 or simply HIV) induces a persistent
infection, which in the absence of treatment leads to AIDS and death in almost
all infected individuals. HIV infection elicits a vigorous immune response
starting about 2-3 weeks post infection that can lower the amount of virus in
the body, but which cannot eradicate the virus. How HIV establishes a chronic
infection in the face of a strong immune response remains poorly understood. It
has been shown that HIV is able to rapidly change its proteins via mutation to
evade recognition by virus-specific cytotoxic T lymphocytes (CTLs). Typically,
an HIV-infected patient will generate 4-12 CTL responses specific for parts of
viral proteins called epitopes. Such CTL responses lead to strong selective
pressure to change the viral sequences encoding these epitopes so as to avoid
CTL recognition. Here we review experimental data on HIV evolution in response
to CTL pressure, mathematical models developed to explain this evolution, and
highlight problems associated with the data and previous modeling efforts. We
show that estimates of the strength of the epitope-specific CTL response depend
on the method used to fit models to experimental data and on the assumptions
made regarding how mutants are generated during infection. We illustrate that
allowing CTL responses to decay over time may improve the fit to experimental
data and provides higher estimates of the killing efficacy of HIV-specific
CTLs. We also propose a novel method for simultaneously estimating the killing
efficacy of multiple CTL populations specific for different epitopes of HIV
using stochastic simulations. Lastly, we show that current estimates of the
efficacy at which HIV-specific CTLs clear virus-infected cells can be improved
by more frequent sampling of viral sequences and by combining data on sequence
evolution with experimentally measured CTL dynamics
Spatially resolved sampling for untargeted metabolomics: a new tool for salivomics
Saliva is a complex bodily fluid composed of metabolites secreted by major and minor glands, as well as by-products of host oral cells, oral bacteria, gingival crevicular fluid, and exogenous compounds. Major salivary glands include the paired parotid, submandibular, and sublingual glands. The secreted fluids of the salivary glands vary in composition, flow rate, site of release, and clearance suggesting that different types of saliva fulfill different functions and therefore can provide unique biological information. Consequently, for the comprehension of the functionality of the salivary components, spatially resolved investigations are warranted. To understand and comprehensively map the highly heterogeneous environment of the oral cavity, advanced spatial sampling techniques for metabolomics analysis are needed. Here, we present a systematic evaluation of collection devices for spatially resolved sampling aimed at untargeted metabolomics and propose a comprehensive and reproducible collection and analysis protocol for the spatially resolved analysis of the human oral metabolome.Proteomic
Drug Discovery Maps, a Machine Learning Model That Visualizes and Predicts Kinome-Inhibitor Interaction Landscapes
The interpretation of high-dimensional structure-activity data sets in drug discovery to predict ligand-protein interaction landscapes is a challenging task. Here we present Drug Discovery Maps (DDM), a machine learning model that maps the activity profile of compounds across an entire protein family, as illustrated here for the kinase family. DDM is based on the t-distributed stochastic neighbor embedding (t-SNE) algorithm to generate a visualization of molecular and biological similarity. DDM maps chemical and target space and predicts the activities of novel kinase inhibitors across the kinome. The model was validated using independent data sets and in a prospective experimental setting, where DDM predicted new inhibitors for FMS-like tyrosine kinase 3 (FLT3), a therapeutic target for the treatment of acute myeloid leukemia. Compounds were resynthesized, yielding highly potent, cellularly active FLT3 inhibitors. Biochemical assays confirmed most of the predicted off-targets. DDM is further unique in that it is completely open-source and available as a ready-to-use executable to facilitate broad and easy adoption
Drug Discovery Maps, a Machine Learning Model That Visualizes and Predicts Kinome-Inhibitor Interaction Landscapes
The interpretation of high-dimensional structure-activity data sets in drug discovery to predict ligand-protein interaction landscapes is a challenging task. Here we present Drug Discovery Maps (DDM), a machine learning model that maps the activity profile of compounds across an entire protein family, as illustrated here for the kinase family. DDM is based on the t-distributed stochastic neighbor embedding (t-SNE) algorithm to generate a visualization of molecular and biological similarity. DDM maps chemical and target space and predicts the activities of novel kinase inhibitors across the kinome. The model was validated using independent data sets and in a prospective experimental setting, where DDM predicted new inhibitors for FMS-like tyrosine kinase 3 (FLT3), a therapeutic target for the treatment of acute myeloid leukemia. Compounds were resynthesized, yielding highly potent, cellularly active FLT3 inhibitors. Biochemical assays confirmed most of the predicted off-targets. DDM is further unique in that it is completely open-source and available as a ready-to-use executable to facilitate broad and easy adoption
Drug Discovery Maps, a Machine Learning Model That Visualizes and Predicts Kinome-Inhibitor Interaction Landscapes
The interpretation of high-dimensional structure-activity data sets in drug discovery to predict ligand-protein interaction landscapes is a challenging task. Here we present Drug Discovery Maps (DDM), a machine learning model that maps the activity profile of compounds across an entire protein family, as illustrated here for the kinase family. DDM is based on the t-distributed stochastic neighbor embedding (t-SNE) algorithm to generate a visualization of molecular and biological similarity. DDM maps chemical and target space and predicts the activities of novel kinase inhibitors across the kinome. The model was validated using independent data sets and in a prospective experimental setting, where DDM predicted new inhibitors for FMS-like tyrosine kinase 3 (FLT3), a therapeutic target for the treatment of acute myeloid leukemia. Compounds were resynthesized, yielding highly potent, cellularly active FLT3 inhibitors. Biochemical assays confirmed most of the predicted off-targets. DDM is further unique in that it is completely open-source and available as a ready-to-use executable to facilitate broad and easy adoption
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