Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.

Through regulation of the extracellular fluid volume, the kidneys provide important long-term regulation of blood pressure. At the level of the individual functional unit (the nephron), pressure and flow control involves two different mechanisms that both produce oscillations. The nephrons are arran...

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Main Authors: Dmitry D Postnov, Donald J Marsh, Dmitry E Postnov, Thomas H Braunstein, Niels-Henrik Holstein-Rathlou, Erik A Martens, Olga Sosnovtseva
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2016-07-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC4957782?pdf=render
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spelling doaj-64f3e7f9180647ee95eb2932408ff70f2020-11-25T01:13:12ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582016-07-01127e100492210.1371/journal.pcbi.1004922Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.Dmitry D PostnovDonald J MarshDmitry E PostnovThomas H BraunsteinNiels-Henrik Holstein-RathlouErik A MartensOlga SosnovtsevaThrough regulation of the extracellular fluid volume, the kidneys provide important long-term regulation of blood pressure. At the level of the individual functional unit (the nephron), pressure and flow control involves two different mechanisms that both produce oscillations. The nephrons are arranged in a complex branching structure that delivers blood to each nephron and, at the same time, provides a basis for an interaction between adjacent nephrons. The functional consequences of this interaction are not understood, and at present it is not possible to address this question experimentally. We provide experimental data and a new modeling approach to clarify this problem. To resolve details of microvascular structure, we collected 3D data from more than 150 afferent arterioles in an optically cleared rat kidney. Using these results together with published micro-computed tomography (μCT) data we develop an algorithm for generating the renal arterial network. We then introduce a mathematical model describing blood flow dynamics and nephron to nephron interaction in the network. The model includes an implementation of electrical signal propagation along a vascular wall. Simulation results show that the renal arterial architecture plays an important role in maintaining adequate pressure levels and the self-sustained dynamics of nephrons.http://europepmc.org/articles/PMC4957782?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Dmitry D Postnov
Donald J Marsh
Dmitry E Postnov
Thomas H Braunstein
Niels-Henrik Holstein-Rathlou
Erik A Martens
Olga Sosnovtseva
spellingShingle Dmitry D Postnov
Donald J Marsh
Dmitry E Postnov
Thomas H Braunstein
Niels-Henrik Holstein-Rathlou
Erik A Martens
Olga Sosnovtseva
Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.
PLoS Computational Biology
author_facet Dmitry D Postnov
Donald J Marsh
Dmitry E Postnov
Thomas H Braunstein
Niels-Henrik Holstein-Rathlou
Erik A Martens
Olga Sosnovtseva
author_sort Dmitry D Postnov
title Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.
title_short Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.
title_full Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.
title_fullStr Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.
title_full_unstemmed Modeling of Kidney Hemodynamics: Probability-Based Topology of an Arterial Network.
title_sort modeling of kidney hemodynamics: probability-based topology of an arterial network.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2016-07-01
description Through regulation of the extracellular fluid volume, the kidneys provide important long-term regulation of blood pressure. At the level of the individual functional unit (the nephron), pressure and flow control involves two different mechanisms that both produce oscillations. The nephrons are arranged in a complex branching structure that delivers blood to each nephron and, at the same time, provides a basis for an interaction between adjacent nephrons. The functional consequences of this interaction are not understood, and at present it is not possible to address this question experimentally. We provide experimental data and a new modeling approach to clarify this problem. To resolve details of microvascular structure, we collected 3D data from more than 150 afferent arterioles in an optically cleared rat kidney. Using these results together with published micro-computed tomography (μCT) data we develop an algorithm for generating the renal arterial network. We then introduce a mathematical model describing blood flow dynamics and nephron to nephron interaction in the network. The model includes an implementation of electrical signal propagation along a vascular wall. Simulation results show that the renal arterial architecture plays an important role in maintaining adequate pressure levels and the self-sustained dynamics of nephrons.
url http://europepmc.org/articles/PMC4957782?pdf=render
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