62 research outputs found
Uncertainty on radiation doses estimated by biological and retrospective physical methods
Biological and physical retrospective dosimetry are recognised as key techniques to provide individual estimates of dose following unplanned exposures to ionising radiation. Whilst there has been a relatively large amount of recent development in the biological and physical procedures, development of statistical analysis techniques has failed to keep pace. The aim of this paper is to review the current state of the art in uncertainty analysis techniques across the âEURADOS Working Group 10â
Retrospective dosimetryâ members, to give concrete examples of implementation of the techniques recommended in the international standards, and to further promote the use of Monte Carlo techniques to support characterisation of uncertainties. It is concluded that sufficient techniques are available and in use by most laboratories for acute, whole body exposures to highly penetrating radiation, but further work will be required to ensure that statistical analysis is always wholly sufficient for the more complex exposure scenarios
An Integrated Qualitative and Quantitative Biochemical Model Learning Framework Using Evolutionary Strategy and Simulated Annealing
The authors would like to thank the support on this research by the CRISP Project (Combinatorial Responses In Stress Pathways) funded by the BBSRC (BB/F00513X/1) under the Systems Approaches to Biological Research (SABR) Initiative.Peer reviewedPublisher PD
Training Signaling Pathway Maps to Biochemical Data with Constrained Fuzzy Logic: Quantitative Analysis of Liver Cell Responses to Inflammatory Stimuli
Predictive understanding of cell signaling network operation based on general prior knowledge but consistent with empirical data in a specific environmental context is a current challenge in computational biology. Recent work has demonstrated that Boolean logic can be used to create context-specific network models by training proteomic pathway maps to dedicated biochemical data; however, the Boolean formalism is restricted to characterizing protein species as either fully active or inactive. To advance beyond this limitation, we propose a novel form of fuzzy logic sufficiently flexible to model quantitative data but also sufficiently simple to efficiently construct models by training pathway maps on dedicated experimental measurements. Our new approach, termed constrained fuzzy logic (cFL), converts a prior knowledge network (obtained from literature or interactome databases) into a computable model that describes graded values of protein activation across multiple pathways. We train a cFL-converted network to experimental data describing hepatocytic protein activation by inflammatory cytokines and demonstrate the application of the resultant trained models for three important purposes: (a) generating experimentally testable biological hypotheses concerning pathway crosstalk, (b) establishing capability for quantitative prediction of protein activity, and (c) prediction and understanding of the cytokine release phenotypic response. Our methodology systematically and quantitatively trains a protein pathway map summarizing curated literature to context-specific biochemical data. This process generates a computable model yielding successful prediction of new test data and offering biological insight into complex datasets that are difficult to fully analyze by intuition alone.National Institutes of Health (U.S.) (NIH grant P50-GM68762)National Institutes of Health (U.S.) (Grant U54-CA112967)United States. Dept. of Defense (Institute for Collaborative Biotechnologies
Identifying Drug Effects via Pathway Alterations using an Integer Linear Programming Optimization Formulation on Phosphoproteomic Data
Understanding the mechanisms of cell function and drug action is a major endeavor in
the pharmaceutical industry. Drug effects are governed by the intrinsic properties of the
drug (i.e., selectivity and potency) and the specific signaling transduction network of the
host (i.e., normal vs. diseased cells). Here, we describe an unbiased, phosphoproteomicbased
approach to identify drug effects by monitoring drug-induced topology alterations.
With the proposed method, drug effects are investigated under several conditions on a
cell-type specific signaling network. First, starting with a generic pathway made of
logical gates, we build a cell-type specific map by constraining it to fit 13 key
phopshoprotein signals under 55 experimental cases. Fitting is performed via a
formulation as an Integer Linear Program (ILP) and solution by standard ILP solvers; a
procedure that drastically outperforms previous fitting schemes. Then, knowing the cell
topology, we monitor the same key phopshoprotein signals under the presence of drug
and cytokines and we re-optimize the specific map to reveal the drug-induced topology
alterations. To prove our case, we make a pathway map for the hepatocytic cell line
HepG2 and we evaluate the effects of 4 drugs: 3 selective inhibitors for the Epidermal
Growth Factor Receptor (EGFR) and a non selective drug. We confirm effects easily
predictable from the drugsâ main target (i.e. EGFR inhibitors blocks the EGFR pathway)
but we also uncover unanticipated effects due to either drug promiscuity or the cellâs
specific topology. An interesting finding is that the selective EGFR inhibitor Gefitinib is
able to inhibit signaling downstream the Interleukin-1alpha (IL-1α) pathway; an effect
that cannot be extracted from binding affinity based approaches. Our method represents
an unbiased approach to identify drug effects on a small to medium size pathways and
is scalable to larger topologies with any type of signaling perturbations (small molecules,
3
RNAi etc). The method is a step towards a better picture of drug effects in pathways,
the cornerstone in identifying the mechanisms of drug efficacy and toxicity
Lifetime study in mice after acute low-dose ionizing radiation: a multifactorial study with special focus on cataract risk
Because of the increasing application of ionizing radiation in medicine, quantitative data on effects of low-dose radiation are needed to optimize radiation protection, particularly with respect to cataract development. Using mice as mammalian animal model, we applied a single dose of 0, 0.063, 0.125 and 0.5Â Gy at 10Â weeks of age, determined lens opacities for up to 2Â years and compared it with overall survival, cytogenetic alterations and cancer development. The highest dose was significantly associated with increased body weight and reduced survival rate. Chromosomal aberrations in bone marrow cells showed a dose-dependent increase 12Â months after irradiation. Pathological screening indicated a dose-dependent risk for several types of tumors. Scheimpflug imaging of the lens revealed a significant dose-dependent effect of 1% of lens opacity. Comparison of different biological end points demonstrated long-term effects of low-dose irradiation for several biological end points
Sonic Skills in the Staging of Music History
Ob als Oper, Musical, dramatische Montage oder historisches Pastiche: Performative ZugĂ€nge zur Musikgeschichtsschreibung bringen Geschichte auf die BĂŒhne. Dazu stellen sie Verbindungen zwischen Vergangenheit und Gegenwart her und arbeiten mit KlĂ€ngen, historischem Material oder etablierten Bildern von KĂŒnstler*innen. Die BeitrĂ€ger*innen des Bandes fragen danach, wie Musikgeschichte auf der BĂŒhne erzĂ€hlt, komponiert, inszeniert und verkörpert wird: Was zeichnet diese intermediale Form der Musikhistoriographie aus? Wie verhĂ€lt sie sich zur Geschichtsschreibung in anderen Medien? Und welche narrativen Strategien und Praktiken, welche Geschichtsbilder prĂ€gen Musikgeschichten auf der BĂŒhne
Analysis of clonogenic growth in vitro.
The clonogenic assay measures the capacity of single cells to form colonies in vitro. It is widely used to identify and quantify self-renewing mammalian cells derived from in vitro cultures as well as from ex vivo tissue preparations of different origins. Varying research questions and the heterogeneous growth requirements of individual cell model systems led to the development of several assay principles and formats that differ with regard to their conceptual setup, 2D or 3D culture conditions, optional cytotoxic treatments and subsequent mathematical analysis. The protocol presented here is based on the initial clonogenic assay protocol as developed by Puck and Marcus more than 60 years ago. It updates and extends the 2006 Nature Protocols article by Franken et al. It discusses different strategies and principles to analyze clonogenic growth in vitro and presents the clonogenic assay in a modular protocol framework enabling a diversity of formats and measures to optimize determination of clonogenic growth parameters. We put particular focus on the phenomenon of cellular cooperation and consideration of how this can affect the mathematical analysis of survival data. This protocol is applicable to any mammalian cell model system from which single-cell suspensions can be prepared and which contains at least a small fraction of cells with self-renewing capacity in vitro. Depending on the cell system used, the entire procedure takes ~2â10 weeks, with a total hands-on time of <20 h per biological replicate
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