A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths

Depicting developmental processes as movements in free energy genetic landscapes is an illustrative tool. However, exploring such landscapes to obtain quantitative or even qualitative predictions is hampered by the lack of free energy functions corresponding to the biochemical Michaelis–Menten or Hi...

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Main Authors: Victor Olariu, Erica Manesso, Carsten Peterson
Format: Article
Language:English
Published: The Royal Society 2017-01-01
Series:Royal Society Open Science
Subjects:
Online Access:https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.160765
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spelling doaj-bc95fa1e0d144e638176462c7f99f6842020-11-25T03:41:24ZengThe Royal SocietyRoyal Society Open Science2054-57032017-01-014610.1098/rsos.160765160765A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming pathsVictor OlariuErica ManessoCarsten PetersonDepicting developmental processes as movements in free energy genetic landscapes is an illustrative tool. However, exploring such landscapes to obtain quantitative or even qualitative predictions is hampered by the lack of free energy functions corresponding to the biochemical Michaelis–Menten or Hill rate equations for the dynamics. Being armed with energy landscapes defined by a network and its interactions would open up the possibility of swiftly identifying cell states and computing optimal paths, including those of cell reprogramming, thereby avoiding exhaustive trial-and-error simulations with rate equations for different parameter sets. It turns out that sigmoidal rate equations do have approximate free energy associations. With this replacement of rate equations, we develop a deterministic method for estimating the free energy surfaces of systems of interacting genes at different noise levels or temperatures. Once such free energy landscape estimates have been established, we adapt a shortest path algorithm to determine optimal routes in the landscapes. We explore the method on three circuits for haematopoiesis and embryonic stem cell development for commitment and reprogramming scenarios and illustrate how the method can be used to determine sequential steps for onsets of external factors, essential for efficient reprogramming.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.160765energy landscapedeterministic modelsstem cell commitmentreprogramming
collection DOAJ
language English
format Article
sources DOAJ
author Victor Olariu
Erica Manesso
Carsten Peterson
spellingShingle Victor Olariu
Erica Manesso
Carsten Peterson
A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths
Royal Society Open Science
energy landscape
deterministic models
stem cell commitment
reprogramming
author_facet Victor Olariu
Erica Manesso
Carsten Peterson
author_sort Victor Olariu
title A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths
title_short A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths
title_full A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths
title_fullStr A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths
title_full_unstemmed A deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths
title_sort deterministic method for estimating free energy genetic network landscapes with applications to cell commitment and reprogramming paths
publisher The Royal Society
series Royal Society Open Science
issn 2054-5703
publishDate 2017-01-01
description Depicting developmental processes as movements in free energy genetic landscapes is an illustrative tool. However, exploring such landscapes to obtain quantitative or even qualitative predictions is hampered by the lack of free energy functions corresponding to the biochemical Michaelis–Menten or Hill rate equations for the dynamics. Being armed with energy landscapes defined by a network and its interactions would open up the possibility of swiftly identifying cell states and computing optimal paths, including those of cell reprogramming, thereby avoiding exhaustive trial-and-error simulations with rate equations for different parameter sets. It turns out that sigmoidal rate equations do have approximate free energy associations. With this replacement of rate equations, we develop a deterministic method for estimating the free energy surfaces of systems of interacting genes at different noise levels or temperatures. Once such free energy landscape estimates have been established, we adapt a shortest path algorithm to determine optimal routes in the landscapes. We explore the method on three circuits for haematopoiesis and embryonic stem cell development for commitment and reprogramming scenarios and illustrate how the method can be used to determine sequential steps for onsets of external factors, essential for efficient reprogramming.
topic energy landscape
deterministic models
stem cell commitment
reprogramming
url https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.160765
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