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        <title>Nova Reader - Subject</title>
        <link>https://www.novareader.co</link>
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        <copyright>Newgen KnowledgeWorks</copyright>
        <item>
            <title><![CDATA[CODY enables quantitatively spatiotemporal predictions on in vivo gut microbial variability induced by diet intervention]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1073/pnas.2019336118</link>
            <description><![CDATA[<p class="para" id="N65542">Quantitatively understanding and predicting spatiotemporal dynamics of microbiota is imperative for development of tailored microbiome-directed therapeutics treatments. However, the complexity of microbial variations, due to interactions with the host, other microbes, and environmental factors, makes it challenging to identify how microbiota colonize in the human gut. Here, we describe a novel multiscale framework for COmputing the DYnamics of the gut microbiota (CODY), which enables the quantification of spatiotemporal-specific variations of gut microbiome abundance profiles, without a prior knowledge of microbiome interactions. Importantly, the predictive power of CODY is demonstrated using cross-sectional data from two longitudinal metagenomics studies—the microbiota development during early infancy and during short-term diet intervention of obese adults.</p><p class="para" id="N65539">Microbial variations in the human gut are harbored in temporal and spatial heterogeneity, and quantitative prediction of spatiotemporal dynamic changes in the gut microbiota is imperative for development of tailored microbiome-directed therapeutics treatments, e.g. precision nutrition. Given the high-degree complexity of microbial variations, subject to the dynamic interactions among host, microbial, and environmental factors, identifying how microbiota colonize in the gut represents an important challenge. Here we present COmputing the DYnamics of microbiota (CODY), a multiscale framework that integrates species-level modeling of microbial dynamics and ecosystem-level interactions into a mathematical model that characterizes spatial-specific in vivo microbial residence in the colon as impacted by host physiology. The framework quantifies spatiotemporal resolution of microbial variations on species-level abundance profiles across site-specific colon regions and in feces, independent of a priori knowledge. We demonstrated the effectiveness of CODY using cross-sectional data from two longitudinal metagenomics studies—the microbiota development during early infancy and during short-term diet intervention of obese adults. For each cohort, CODY correctly predicts the microbial variations in response to diet intervention, as validated by available metagenomics and metabolomics data. Model simulations provide insight into the biogeographical heterogeneity among lumen, mucus, and feces, which provides insight into how host physical forces and spatial structure are shaping microbial structure and functionality.</p>]]></description>
            <pubDate><![CDATA[2021-03-22T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[The number of catalytic cycles in an enzyme’s lifetime and why it matters to metabolic engineering]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1073/pnas.2023348118</link>
            <description><![CDATA[<p class="para" id="N65542">The continuous replacement of enzymes and other proteins appropriates up to half the maintenance energy budget in microorganisms and plants. High enzyme replacement rates therefore cut the productivity of biosystems ranging from microbial fermentations to crops. However, yardsticks to assess what drives enzyme protein replacement and guidelines on how to reduce it are lacking. Accordingly, we compared enzymes’ life spans across kingdoms using a new yardstick (catalytic cycles until replacement [CCR]) and related CCR to enzyme reaction chemistry. We concluded that 1) many enzymes fail due to collateral damage from the reaction they catalyze, and 2) such damage and its attendant enzyme replacement costs are mitigable by engineering and are therefore promising targets for synthetic biology.</p><p class="para" id="N65539">Metabolic engineering uses enzymes as parts to build biosystems for specified tasks. Although a part’s working life and failure modes are key engineering performance indicators, this is not yet so in metabolic engineering because it is not known how long enzymes remain functional in vivo or whether cumulative deterioration (wear-out), sudden random failure, or other causes drive replacement. Consequently, enzymes cannot be engineered to extend life and cut the high energy costs of replacement. Guided by catalyst engineering, we adopted catalytic cycles until replacement (CCR) as a metric for enzyme functional life span in vivo. CCR is the number of catalytic cycles that an enzyme mediates in vivo before failure or replacement, i.e., metabolic flux rate/protein turnover rate. We used estimated fluxes and measured protein turnover rates to calculate CCRs for ∼100–200 enzymes each from <i>Lactococcus lactis</i>, yeast, and <i>Arabidopsis</i>. CCRs in these organisms had similar ranges (&lt;10<sup>3</sup> to &gt;10<sup>7</sup>) but different median values (3–4 × 10<sup>4</sup> in <i>L. lactis</i> and yeast versus 4 × 10<sup>5</sup> in <i>Arabidopsis</i>). In all organisms, enzymes whose substrates, products, or mechanisms can attack reactive amino acid residues had significantly lower median CCR values than other enzymes. Taken with literature on mechanism-based inactivation, the latter finding supports the proposal that 1) random active-site damage by reaction chemistry is an important cause of enzyme failure, and 2) reactive noncatalytic residues in the active-site region are likely contributors to damage susceptibility. Enzyme engineering to raise CCRs and lower replacement costs may thus be both beneficial and feasible.</p>]]></description>
            <pubDate><![CDATA[2021-03-22T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Intercellular communication induces glycolytic synchronization waves between individually oscillating cells]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1765999944735-d2dad4b4-ee6b-4cf4-91d5-75bcc3e1f817/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1073/pnas.2010075118</link>
            <description><![CDATA[<p class="para" id="N65542">Many organs have densely packed cells divided in subpopulations that display coherent and spatially differentiated behavior. Using yeast cells packed in a microfluidic device, constructed to mimic an organ structure with peripheral blood flow, we show that cells coupled via diffusion of metabolites can lead to spatially differentiated subpopulations with temporally synchronized behavior. A detailed mathematical model for each yeast cell simulated in its precise architectural location within the microfluidic system correctly predicts the cells’ behavior as a function of an external stress solution. Our results provide us with a mechanistic understanding of this system and indicate how a relatively simple mechanism can underlie a yet poorly understood cellular differentiation process.</p><p class="para" id="N65539">Many organs have internal structures with spatially differentiated and sometimes temporally synchronized groups of cells. The mechanisms leading to such differentiation and coordination are not well understood. Here we design a diffusion-limited microfluidic system to mimic a multicellular organ structure with peripheral blood flow and test whether a group of individually oscillating yeast cells could form subpopulations of spatially differentiated and temporally synchronized cells. Upon substrate addition, the dynamic response at single-cell level shows glycolytic oscillations, leading to wave fronts traveling through the monolayered population and to synchronized communities at well-defined positions in the cell chamber. A detailed mechanistic model with the architectural structure of the flow chamber incorporated successfully predicts the spatial-temporal experimental data, and allows for a molecular understanding of the observed phenomena. The intricate interplay of intracellular biochemical reaction networks leading to the oscillations, combined with intercellular communication via metabolic intermediates and fluid dynamics of the reaction chamber, is responsible for the generation of the subpopulations of synchronized cells. This mechanism, as analyzed from the model simulations, is experimentally tested using different concentrations of cyanide stress solutions. The results are reproducible and stable, despite cellular heterogeneity, and the spontaneous community development is reminiscent of a zoned cell differentiation often observed in multicellular organs.</p>]]></description>
            <pubDate><![CDATA[2021-02-01T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Emergence of diauxie as an optimal growth strategy under resource allocation constraints in cellular metabolism]]></title>
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            <link>https://www.novareader.co/book/isbn/10.1073/pnas.2013836118</link>
            <description><![CDATA[<p class="para" id="N65542">When several sugars are at its disposition, the bacterium <i>Escherichia coli</i> consumes them in a specific order—a behavior called diauxie. We developed a framework combining dynamic methods and models of metabolism and gene expression to show that diauxie and its associated lag in cell growth can be explained simply as an optimal behavior under constraints on the protein amount and renewal in a cell. We validate our model by reproducing experimental results and successfully predict a diauxic behavior on a growth medium containing two types of sugar, glucose and lactose. Finally, we claim that the regulation mechanism inducing diauxie (the <i>lac</i> operon) is a control system to implement growth optimality at the cellular level.</p><p class="para" id="N65539">Diauxie, or the sequential consumption of carbohydrates in bacteria such as <i>Escherichia coli</i>, has been hypothesized to be an evolutionary strategy which allows the organism to maximize its instantaneous specific growth—giving the bacterium a competitive advantage. Currently, the computational techniques used in industrial biotechnology fall short of explaining the intracellular dynamics underlying diauxic behavior. In particular, the understanding of the proteome dynamics in diauxie can be improved. We developed a robust iterative dynamic method based on expression- and thermodynamically enabled flux models to simulate the kinetic evolution of carbohydrate consumption and cellular growth. With minimal modeling assumptions, we couple kinetic uptakes, gene expression, and metabolic networks, at the genome scale, to produce dynamic simulations of cell cultures. The method successfully predicts the preferential uptake of glucose over lactose in <i>E. coli</i> cultures grown on a mixture of carbohydrates, a manifestation of diauxie. The simulated cellular states also show the reprogramming in the content of the proteome in response to fluctuations in the availability of carbon sources, and it captures the associated time lag during the diauxie phenotype. Our models suggest that the diauxic behavior of cells is the result of the evolutionary objective of maximization of the specific growth of the cell. We propose that genetic regulatory networks, such as the <i>lac</i> operon in <i>E. coli</i>, are the biological implementation of a robust control system to ensure optimal growth.</p>]]></description>
            <pubDate><![CDATA[2021-02-18T00:00]]></pubDate>
        </item><item>
            <title><![CDATA[Hormone seasonality in medical records suggests circannual endocrine circuits]]></title>
            <media:thumbnail url="https://storage.googleapis.com/nova-demo-unsecured-files/unsecured/content-1765903200048-fc36b148-7e3f-45ea-bfa4-22ce21bd1202/cover.png"></media:thumbnail>
            <link>https://www.novareader.co/book/isbn/10.1073/pnas.2003926118</link>
            <description><![CDATA[<p class="para" id="N65542">We provide a dataset of millions of hormone tests from medical records that shows seasonality with a winter−spring peak in hormones for reproduction, growth, metabolism, and stress adaptation. Together with a long history of studies on a winter−spring peak in human function and growth, the hormone seasonality indicates that, like other animals, humans may have a physiological peak season for basic biological functions. We further use the specific seasonal phases of the hormones to suggest a model for a circannual clock in humans and animals that can keep track of the seasons, similar in spirit to the circadian clock that keeps track of time of day.</p><p class="para" id="N65539">Hormones control the major biological functions of stress response, growth, metabolism, and reproduction. In animals, these hormones show pronounced seasonality, with different set-points for different seasons. In humans, the seasonality of these hormones remains unclear, due to a lack of datasets large enough to discern common patterns and cover all hormones. Here, we analyze an Israeli health record on 46 million person-years, including millions of hormone blood tests. We find clear seasonal patterns: The effector hormones peak in winter−spring, whereas most of their upstream regulating pituitary hormones peak only months later, in summer. This delay of months is unexpected because known delays in the hormone circuits last hours. We explain the precise delays and amplitudes by proposing and testing a mechanism for the circannual clock: The gland masses grow with a timescale of months due to trophic effects of the hormones, generating a feedback circuit with a natural frequency of about a year that can entrain to the seasons. Thus, humans may show coordinated seasonal set-points with a winter−spring peak in the growth, stress, metabolism, and reproduction axes.</p>]]></description>
            <pubDate><![CDATA[2021-02-02T00:00]]></pubDate>
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