Inferring temporal dynamics from cross-sectional data using Langevin dynamics
Cross-sectional studies are widely prevalent since they are more feasible to conduct compared with longitudinal studies. However, cross-sectional data lack the temporal information required to study the evolution of the underlying dynamics. This temporal information is essential to develop predictiv...
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sg-ntu-dr.10356-1599902023-03-05T16:29:11Z Inferring temporal dynamics from cross-sectional data using Langevin dynamics Dutta, Pritha Quax, Rick Crielaard, Loes Badiali, Luca Sloot, Peter M. A. Interdisciplinary Graduate School (IGS) Engineering::Computer science and engineering Cross-Sectional Data Predictive Computational Models Cross-sectional studies are widely prevalent since they are more feasible to conduct compared with longitudinal studies. However, cross-sectional data lack the temporal information required to study the evolution of the underlying dynamics. This temporal information is essential to develop predictive computational models, which is the first step towards causal modelling. We propose a method for inferring computational models from cross-sectional data using Langevin dynamics. This method can be applied to any system where the data-points are influenced by equal forces and are in (local) equilibrium. The inferred model will be valid for the time span during which this set of forces remains unchanged. The result is a set of stochastic differential equations that capture the temporal dynamics, by assuming that groups of data-points are subject to the same free energy landscape and amount of noise. This is a 'baseline' method that initiates the development of computational models and can be iteratively enhanced through the inclusion of domain expert knowledge as demonstrated in our results. Our method shows significant predictive power when compared against two population-based longitudinal datasets. The proposed method can facilitate the use of cross-sectional datasets to obtain an initial estimate of the underlying dynamics of the respective systems. Nanyang Technological University Published version This work is supported by the NTU Research Scholarship, ZonMw (Netherlands Organization for HealthResearch and Development, project number: 531003015), Social HealthGames (NWO, the Dutch ScienceFoundation, project number: 645.003.002), Computational Modelling of Criminal Networks and Value Chains(Nationale Politie, project number: 2454972) and TO_AITION (EU Horizon 2020 programme, call: H2020-SC1-2018-2020, grant number: 848146). 2022-07-07T04:00:49Z 2022-07-07T04:00:49Z 2021 Journal Article Dutta, P., Quax, R., Crielaard, L., Badiali, L. & Sloot, P. M. A. (2021). Inferring temporal dynamics from cross-sectional data using Langevin dynamics. Royal Society Open Science, 8(11), 211374-. https://dx.doi.org/10.1098/rsos.211374 2054-5703 https://hdl.handle.net/10356/159990 10.1098/rsos.211374 34804581 2-s2.0-85122370962 11 8 211374 en Royal Society Open Science © 2021 The Authors. Published by the Royal Society under the terms of the CreativeCommons Attribution License http://creativecommons.org/licenses/by/4.0/, which permitsunrestricted use, provided the original author and source are credited. application/pdf |
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Engineering::Computer science and engineering Cross-Sectional Data Predictive Computational Models Dutta, Pritha Quax, Rick Crielaard, Loes Badiali, Luca Sloot, Peter M. A. Inferring temporal dynamics from cross-sectional data using Langevin dynamics |
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Cross-sectional studies are widely prevalent since they are more feasible to conduct compared with longitudinal studies. However, cross-sectional data lack the temporal information required to study the evolution of the underlying dynamics. This temporal information is essential to develop predictive computational models, which is the first step towards causal modelling. We propose a method for inferring computational models from cross-sectional data using Langevin dynamics. This method can be applied to any system where the data-points are influenced by equal forces and are in (local) equilibrium. The inferred model will be valid for the time span during which this set of forces remains unchanged. The result is a set of stochastic differential equations that capture the temporal dynamics, by assuming that groups of data-points are subject to the same free energy landscape and amount of noise. This is a 'baseline' method that initiates the development of computational models and can be iteratively enhanced through the inclusion of domain expert knowledge as demonstrated in our results. Our method shows significant predictive power when compared against two population-based longitudinal datasets. The proposed method can facilitate the use of cross-sectional datasets to obtain an initial estimate of the underlying dynamics of the respective systems. |
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Interdisciplinary Graduate School (IGS) |
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Interdisciplinary Graduate School (IGS) Dutta, Pritha Quax, Rick Crielaard, Loes Badiali, Luca Sloot, Peter M. A. |
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Article |
author |
Dutta, Pritha Quax, Rick Crielaard, Loes Badiali, Luca Sloot, Peter M. A. |
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Dutta, Pritha |
title |
Inferring temporal dynamics from cross-sectional data using Langevin dynamics |
title_short |
Inferring temporal dynamics from cross-sectional data using Langevin dynamics |
title_full |
Inferring temporal dynamics from cross-sectional data using Langevin dynamics |
title_fullStr |
Inferring temporal dynamics from cross-sectional data using Langevin dynamics |
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Inferring temporal dynamics from cross-sectional data using Langevin dynamics |
title_sort |
inferring temporal dynamics from cross-sectional data using langevin dynamics |
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2022 |
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https://hdl.handle.net/10356/159990 |
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1759856969480404992 |