4,184 research outputs found

    Structuring the State’s Voice of Contention in Harmonious Society: How Party Newspapers Cover Social Protests in China

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    During the Chinese Communist Party’s (CCP) campaign of building a ‘harmonious society’, how do the official newspapers cover the instances of social contention on the ground? Answering this question will shed light not only on how the party press works but also on how the state and the society interact in today’s China. This thesis conceptualises this phenomenon with a multi-faceted and multi-levelled notion of ‘state-initiated contentious public sphere’ to capture the complexity of mediated relations between the state and social contention in the party press. Adopting a relational approach, this thesis analyses 1758 news reports of ‘mass incident’ in the People’s Daily and the Guangming Daily between 2004 and 2020, employing cluster analysis, qualitative comparative analysis, and social network analysis. The thesis finds significant differences in the patterns of contentious coverage in the party press at the level of event and province and an uneven distribution of attention to social contention across incidents and regions. For ‘reported regions’, the thesis distinguishes four types of coverage and presents how party press responds differently to social contention in different scenarios at the provincial level. For ‘identified incidents’, the thesis distinguishes a cumulative type of visibility based on the quantity of coverage from a relational visibility based on the structure emerging from coverage and explains how different news-making rationales determine whether instances receive similar amounts of coverage or occupy similar positions within coverage. Eventually, by demonstrating how the Chinese state strategically uses party press to respond to social contention and how social contention is journalistically placed in different positions in the state’s eyes, this thesis argues that what social contention leads to is the establishment of complex state-contention relations channelled through the party press

    The development of bioinformatics workflows to explore single-cell multi-omics data from T and B lymphocytes

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    The adaptive immune response is responsible for recognising, containing and eliminating viral infection, and protecting from further reinfection. This antigen-specific response is driven by T and B cells, which recognise antigenic epitopes via highly specific heterodimeric surface receptors, termed T-cell receptors (TCRs) and B cell receptors (BCRs). The theoretical diversity of the receptor repertoire that can be generated via homologous recombination of V, D and J genes is large enough (>1015 unique sequences) that virtually any antigen can be recognised. However, only a subset of these are generated within the human body, and how they succeed in specifically recognising any pathogen(s) and distinguishing these from self-proteins remains largely unresolved. The recent advances in applying single-cell genomics technologies to simultaneously measure the clonality, surface phenotype and transcriptomic signature of pathogen- specific immune cells have significantly improved understanding of these questions. Single-cell multi-omics permits the accurate identification of clonally expanded populations, their differentiation trajectories, the level of immune receptor repertoire diversity involved in the response and the phenotypic and molecular heterogeneity. This thesis aims to develop a bioinformatic workflow utilising single-cell multi-omics data to explore, quantify and predict the clonal and transcriptomic signatures of the human T-cell response during and following viral infection. In the first aim, a web application, VDJView, was developed to facilitate the simultaneous analysis and visualisation of clonal, transcriptomic and clinical metadata of T and B cell multi-omics data. The application permits non-bioinformaticians to perform quality control and common analyses of single-cell genomics data integrated with other metadata, thus permitting the identification of biologically and clinically relevant parameters. The second aim pertains to analysing the functional, molecular and immune receptor profiles of CD8+ T cells in the acute phase of primary hepatitis C virus (HCV) infection. This analysis identified a novel population of progenitors of exhausted T cells, and lineage tracing revealed distinct trajectories with multiple fates and evolutionary plasticity. Furthermore, it was observed that high-magnitude IFN-γ CD8+ T-cell response is associated with the increased probability of viral escape and chronic infection. Finally, in the third aim, a novel analysis is presented based on the topological characteristics of a network generated on pathogen-specific, paired-chain, CD8+ TCRs. This analysis revealed how some cross-reactivity between TCRs can be explained via the sequence similarity between TCRs and that this property is not uniformly distributed across all pathogen-specific TCR repertoires. Strong correlations between the topological properties of the network and the biological properties of the TCR sequences were identified and highlighted. The suite of workflows and methods presented in this thesis are designed to be adaptable to various T and B cell multi-omic datasets. The associated analyses contribute to understanding the role of T and B cells in the adaptive immune response to viral-infection and cancer

    Effects of municipal smoke-free ordinances on secondhand smoke exposure in the Republic of Korea

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    ObjectiveTo reduce premature deaths due to secondhand smoke (SHS) exposure among non-smokers, the Republic of Korea (ROK) adopted changes to the National Health Promotion Act, which allowed local governments to enact municipal ordinances to strengthen their authority to designate smoke-free areas and levy penalty fines. In this study, we examined national trends in SHS exposure after the introduction of these municipal ordinances at the city level in 2010.MethodsWe used interrupted time series analysis to assess whether the trends of SHS exposure in the workplace and at home, and the primary cigarette smoking rate changed following the policy adjustment in the national legislation in ROK. Population-standardized data for selected variables were retrieved from a nationally representative survey dataset and used to study the policy action’s effectiveness.ResultsFollowing the change in the legislation, SHS exposure in the workplace reversed course from an increasing (18% per year) trend prior to the introduction of these smoke-free ordinances to a decreasing (−10% per year) trend after adoption and enforcement of these laws (β2 = 0.18, p-value = 0.07; β3 = −0.10, p-value = 0.02). SHS exposure at home (β2 = 0.10, p-value = 0.09; β3 = −0.03, p-value = 0.14) and the primary cigarette smoking rate (β2 = 0.03, p-value = 0.10; β3 = 0.008, p-value = 0.15) showed no significant changes in the sampled period. Although analyses stratified by sex showed that the allowance of municipal ordinances resulted in reduced SHS exposure in the workplace for both males and females, they did not affect the primary cigarette smoking rate as much, especially among females.ConclusionStrengthening the role of local governments by giving them the authority to enact and enforce penalties on SHS exposure violation helped ROK to reduce SHS exposure in the workplace. However, smoking behaviors and related activities seemed to shift to less restrictive areas such as on the streets and in apartment hallways, negating some of the effects due to these ordinances. Future studies should investigate how smoke-free policies beyond public places can further reduce the SHS exposure in ROK

    Engineering Systems of Anti-Repressors for Next-Generation Transcriptional Programming

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    The ability to control gene expression in more precise, complex, and robust ways is becoming increasingly relevant in biotechnology and medicine. Synthetic biology has sought to accomplish such higher-order gene regulation through the engineering of synthetic gene circuits, whereby a gene’s expression can be controlled via environmental, temporal, or cellular cues. A typical approach to gene regulation is through transcriptional control, using allosteric transcription factors (TFs). TFs are regulatory proteins that interact with operator DNA elements located in proximity to gene promoters to either compromise or activate transcription. For many TFs, including the ones discussed here, this interaction is modulated by binding to a small molecule ligand for which the TF evolved natural specificity and a related metabolism. This modulation can occur with two main phenotypes: a TF shows the repressor (X+) phenotype if its binding to the ligand causes it to dissociate from the DNA, allowing transcription, while a TF shows the anti-repressor (XA) phenotype if its binding to the ligand causes it to associate to the DNA, preventing transcription. While both functional phenotypes are vital components of regulatory gene networks, anti-repressors are quite rare in nature compared to repressors and thus must be engineered. We first developed a generalized workflow for engineering systems of anti-repressors from bacterial TFs in a family of transcription factors related to the ubiquitous lactose repressor (LacI), the LacI/GalR family. Using this workflow, which is based on a re-routing of the TF’s allosteric network, we engineered anti-repressors in the fructose repressor (anti-FruR – responsive to fructose-1,6-phosphate) and ribose repressor (anti-RbsR – responsive to D-ribose) scaffolds, to complement XA TFs engineered previously in the LacI scaffold (anti-LacI – responsive to IPTG). Engineered TFs were then conferred with alternate DNA binding. To demonstrate their utility in synthetic gene circuits, systems of engineered TFs were then deployed to construct transcriptional programs, achieving all of the NOT-oriented Boolean logical operations – NOT, NOR, NAND, and XNOR – in addition to BUFFER and AND. Notably, our gene circuits built using anti-repressors are far simpler in design and, therefore, exert decreased burden on the chassis cells compared to the state-of-the-art as anti-repressors represent compressed logical operations (gates). Further, we extended this workflow to engineer ligand specificity in addition to regulatory phenotype. Performing the engineering workflow with a fourth member of the LacI/GalR family, the galactose isorepressor (GalS – naturally responsive to D-fucose), we engineered IPTG-responsive repressor and anti-repressor GalS mutants in addition to a D-fucose responsive anti-GalS TF. These engineered TFs were then used to create BANDPASS and BANDSTOP biological signal processing filters, themselves compressed compared to the state-of-the-art, and open-loop control systems. These provided facile methods for dynamic turning ‘ON’ and ‘OFF’ of genes in continuous growth in real time. This presents a general advance in gene regulation, moving beyond simple inducible promoters. We then demonstrated the capabilities of our engineered TFs to function in combinatorial logic using a layered logic approach, which currently stands as the state-of-the art. Using our anti-repressors in layered logic had the advantage of reducing cellular metabolic burden, as we were able to create the fundamental NOT/NOR operations with fewer genetic parts. Additionally, we created more TFs to use in layered logic approaches to prevent cellular cross-talk and minimize the number of TFs necessary to create these gene circuits. Here we demonstrated the successful deployment of our XA-built NOR gate system to create the BUFFER, NOT, NOR, OR, AND, and NAND gates. The work presented here describes a workflow for engineering (i) allosteric phenotype, (ii) ligand selectivity, and (iii) DNA specificity in allosteric transcription factors. The products of the workflow themselves serve as vital tools for the construction of next-generation synthetic gene circuits and genetic regulatory devices. Further, from the products of the workflow presented here, certain design heuristics can be gleaned, which should better facilitate the design of allosteric TFs in the future, moving toward a semi-rational engineering approach. Additionally, the work presented here outlines a transcriptional programming structure and metrology which can be broadly adapted and scaled for future applications and expansion. Consequently, this thesis presents a means for advanced control of gene expression, with promise to have long-reaching implications in the future.Ph.D

    Reshaping Higher Education for a Post-COVID-19 World: Lessons Learned and Moving Forward

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    Semi-automated learning strategies for large-scale segmentation of histology and other big bioimaging stacks and volumes

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    Labelled high-resolution datasets are becoming increasingly common and necessary in different areas of biomedical imaging. Examples include: serial histology and ex-vivo MRI for atlas building, OCT for studying the human brain, and micro X-ray for tissue engineering. Labelling such datasets, typically, requires manual delineation of a very detailed set of regions of interest on a large number of sections or slices. This process is tedious, time-consuming, not reproducible and rather inefficient due to the high similarity of adjacent sections. In this thesis, I explore the potential of a semi-automated slice level segmentation framework and a suggestive region level framework which aim to speed up the segmentation process of big bioimaging datasets. The thesis includes two well validated, published, and widely used novel methods and one algorithm which did not yield an improvement compared to the current state-of the-art. The slice-wise method, SmartInterpol, consists of a probabilistic model for semi-automated segmentation of stacks of 2D images, in which the user manually labels a sparse set of sections (e.g., one every n sections), and lets the algorithm complete the segmentation for other sections automatically. The proposed model integrates in a principled manner two families of segmentation techniques that have been very successful in brain imaging: multi-atlas segmentation and convolutional neural networks. Labelling every structure on a sparse set of slices is not necessarily optimal, therefore I also introduce a region level active learning framework which requires the labeller to annotate one region of interest on one slice at the time. The framework exploits partial annotations, weak supervision, and realistic estimates of class and section-specific annotation effort in order to greatly reduce the time it takes to produce accurate segmentations for large histological datasets. Although both frameworks have been created targeting histological datasets, they have been successfully applied to other big bioimaging datasets, reducing labelling effort by up to 60−70% without compromising accuracy

    Economic and Social Consequences of the COVID-19 Pandemic in Energy Sector

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    The purpose of the Special Issue was to collect the results of research and experience on the consequences of the COVID-19 pandemic for the energy sector and the energy market, broadly understood, that were visible after a year. In particular, the impact of COVID-19 on the energy sector in the EU, including Poland, and the US was examined. The topics concerned various issues, e.g., the situation of energy companies, including those listed on the stock exchange, mining companies, and those dealing with renewable energy. The topics related to the development of electromobility, managerial competences, energy expenditure of local government units, sustainable development of energy, and energy poverty during a pandemic were also discussed

    Procedural Constraint-based Generation for Game Development

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