36 research outputs found

    Fragility of foot process morphology in kidney podocytes arises from chaotic spatial propagation of cytoskeletal instability

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    Kidney podocytes’ function depends on fingerlike projections (foot processes) that interdigitate with those from neighboring cells to form the glomerular filtration barrier. The integrity of the barrier depends on spatial control of dynamics of actin cytoskeleton in the foot processes. We determined how imbalances in regulation of actin cytoskeletal dynamics could result in pathological morphology. We obtained 3-D electron microscopy images of podocytes and used quantitative features to build dynamical models to investigate how regulation of actin dynamics within foot processes controls local morphology. We find that imbalances in regulation of actin bundling lead to chaotic spatial patterns that could impair the foot process morphology. Simulation results are consistent with experimental observations for cytoskeletal reconfiguration through dysregulated RhoA or Rac1, and they predict compensatory mechanisms for biochemical stability. We conclude that podocyte morphology, optimized for filtration, is intrinsically fragile, whereby local transient biochemical imbalances may lead to permanent morphological changes associated with pathophysiology

    Fragility of foot process morphology in kidney podocytes arises from chaotic spatial propagation of cytoskeletal instability.

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    Kidney podocytes' function depends on fingerlike projections (foot processes) that interdigitate with those from neighboring cells to form the glomerular filtration barrier. The integrity of the barrier depends on spatial control of dynamics of actin cytoskeleton in the foot processes. We determined how imbalances in regulation of actin cytoskeletal dynamics could result in pathological morphology. We obtained 3-D electron microscopy images of podocytes and used quantitative features to build dynamical models to investigate how regulation of actin dynamics within foot processes controls local morphology. We find that imbalances in regulation of actin bundling lead to chaotic spatial patterns that could impair the foot process morphology. Simulation results are consistent with experimental observations for cytoskeletal reconfiguration through dysregulated RhoA or Rac1, and they predict compensatory mechanisms for biochemical stability. We conclude that podocyte morphology, optimized for filtration, is intrinsically fragile, whereby local transient biochemical imbalances may lead to permanent morphological changes associated with pathophysiology

    Processed and Reconstructed SBEM Imaging Data for Podocytes

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    This data package contains the segmented binary images (Level 1) and the Gaussian-smoothened reconstructed volumes (Level 2) of individual rat kidney podocytes that were used to create our dynamical models. Images have 11 nm/pixel in-plane (XY)-resolution and 210 nm out-of-plane (Z)-resolution. Reconstructed volumes all use a single coordinate system. Technical details of segmentation and reconstruction are provided in the Supplementary Information file associated with the manuscript

    Spatial simulations of the response to perturbed bundling activity, β<sub>b</sub>, highlighting potential compensatory mechanisms for actin instability.

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    <p><b>A-C</b>. Progressive loss of FPs due to a continued decrease of β<sub>b</sub> imposed at time t = 0; snapshots at time (<b>A</b>) t = 0, <b>(B)</b> t = 500, and <b>(C)</b> t = 1500. <b>D-J.</b> Tests of combinations of transient perturbation in β<sub>b</sub> and α<sub>f</sub> to explore compensatory mechanisms. <b>(D)</b> Return to baseline β<sub>b</sub> at time t<sub>1</sub> = 500 results in <b>(E)</b> recovery of the majority of the remaining foot process bundle concentrations at t<sub>2</sub> = 1500. <b>(F)</b> Decrease of α<sub>b</sub> at time t<sub>1</sub> while holding β<sub>b</sub> constant results in <b>(G)</b> similar stabilization. Finally, <b>(I)</b> increase of α<sub>f</sub> while holding β<sub>b</sub> constant <b>(J)</b> produces similar spatial results. All three interventions prevent progressive effacement (compare C with E, G and J). <b>(H)</b> Timecourses for spatial average of bundle concentration in the FPs identified by arrows in snapshots E, G and J (at time 1500, gray arrowhead). Linestyle follows the same pattern as arrows. The same color scale is used for all the 3-D snapshots of bundle concentrations. Parametric perturbations are listed in <a href="http://www.ploscompbiol.org/article/info:doi/10.1371/journal.pcbi.1005433#pcbi.1005433.s002" target="_blank">S1 Table</a>.</p

    Analysis of bundle stability in the face of spatial differences in positive feedback (α<sub>f</sub>), using an ODE model composed of 2 FP compartments.

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    <p>One FP fractional compartment (FP<sub>2</sub>) is subject to a stimulus that increases actin polymerization by Δα<sub>f</sub>, whereas the remaining fraction (FP<sub>1</sub>) is subject to nominal polymerization conditions, α<sub>f</sub>. This stimulus may either be sustained (shown in A) or transient (shown in B-G). <b>(A)</b> A 3-D plot showing steady state bundles on the vertical axis as a function of Δα<sub>f</sub>/α<sub>f</sub> and FP<sub>2</sub> (log scale). For this sustained enhancement, the bundle intensity in FP<sub>1</sub> (blue mesh) and FP<sub>2</sub> (red mesh) depend on the intensity Δα<sub>f</sub> and the relative proportions of FP<sub>2</sub> to FP<sub>1</sub> (FP<sub>1</sub> + FP<sub>2</sub> = 1). As Δα<sub>f</sub> increases, FPs with stronger feedback form stronger bundles. If the fraction of FPs with enhanced feedback (FP<sub>2</sub>, red mesh) is small, the FPs with normal α<sub>f</sub> (FP<sub>1</sub>, blue mesh) are unperturbed, while the bundles in FP<sub>2</sub> are strengthened. Because there is a fixed total amount of actin, stronger bundling in FP<sub>2</sub> drains actin available for bundles in FP<sub>1</sub> until a threshold is reached at which collapse of actin bundles in FP<sub>1</sub> is observed. (<b>B)</b> Time course of a transient stimulus applied at t = 40. In C-E, the value of Δα<sub>f</sub> follows this time course, with varying intensities; equal volume fractions for FP<sub>1</sub> and FP<sub>2</sub> were used, with red curves corresponding to FP<sub>2</sub> and blue to FP<sub>1</sub>. (<b>C</b>) A small perturbation allows the system to return to the pre-stimulus steady state. (<b>D</b>) When the maximum Δα<sub>f</sub>/α<sub>f</sub> = 1 (i.e. FP<sub>2</sub> transiently reaches twice that of FP<sub>1</sub>), a new stable steady state is generated where bundles have collapsed in FP<sub>1</sub> and increased in FP<sub>2</sub>. (<b>E</b>) When the maximum Δα<sub>f</sub>/α<sub>f</sub> = 2 (i.e. FP<sub>2</sub> transiently reaches 3 times that of FP<sub>1</sub>) there is a transient increase in FP<sub>2</sub> bundles followed by collapse and enhanced bundles in FP<sub>1</sub>. The behavior displayed in C, D and E is the hallmark of a tristable system. See the text for an explanation. (<b>F</b>). The steady state values for concentration of bundles in fractions FP<sub>1</sub> (blue) and FP<sub>2</sub> (red) are shown as a function of stimulus intensity, consistent with C-E. (<b>G</b>) Different fractions of FP<sub>1</sub> and FP<sub>2</sub> will impact the steady state values (see also <a href="http://www.ploscompbiol.org/article/info:doi/10.1371/journal.pcbi.1005433#pcbi.1005433.s008" target="_blank">S6 Fig</a>).</p
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