Dynamic mode decomposition for analysis and prediction of metabolic oscillations from time-lapse imaging of cellular autofluorescence

被引:0
作者
Wustner, Daniel [1 ]
Gundestrup, Henrik Helge [1 ]
Thaysen, Katja [1 ]
机构
[1] Univ Southern Denmark, Dept Biochem & Mol Biol, Campusvej 55, DK-5230 Odense M, Denmark
关键词
GLYCOLYTIC OSCILLATIONS; YEAST MODEL; LIFE-SPAN; MITOCHONDRIAL; MECHANISMS; PROTEIN; TRANSPORT; HOMOLOG; REVEALS; WAVES;
D O I
10.1038/s41598-025-07255-4
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Oscillations are a common phenomenon in cell biology. They are based on non-linear coupling of biochemical reactions and can show rich dynamic behavior as found in, for example, glycolysis of yeast cells. Here, we show that dynamic mode decomposition (DMD), a numerical algorithm for linear approximation of non-linear dynamics, can be combined with time-delay embedding (TDE) to dissect damped and sustained glycolytic oscillations in simulations and experiments in a fully data-driven manner. Together with an assessment of spurious eigenvalues via residual DMD, this provides a unique spectrum for each scenario, allowing for high-fidelity time-series and image reconstruction. By machine-learning-based clustering of identified DMD modes, we are able to classify NADH oscillations, thereby discovering subtle phenotypes and accounting for cell-to-cell heterogeneity in metabolic activity. This is demonstrated for varying glucose influx and for yeast cells lacking the sterol transporters Ncr1 and Npc2, a model for Niemann Pick type C disease in humans. DMD with TDE can also discern other types of oscillations, as demonstrated for simulated calcium traces, and its forecasting ability is on par with that of Long Short-Term Memory (LSTM) neural networks. Our results demonstrate the potential of DMD for analysis of oscillatory dynamics at the single-cell level.
引用
收藏
页数:19
相关论文
共 91 条
[11]   Extracting spatial-temporal coherent patterns in large-scale neural recordings using dynamic mode decomposition [J].
Brunton, Bingni W. ;
Johnson, Lise A. ;
Ojemann, Jeffrey G. ;
Kutz, J. Nathan .
JOURNAL OF NEUROSCIENCE METHODS, 2016, 258 :1-15
[12]  
Brunton S. L., 2019, Data-Driven Science and Engineering: Machine Learning, Dynamical Systems, and Control, DOI 10.1017/9781108380690
[13]   Chaos as an intermittently forced linear system [J].
Brunton, Steven L. ;
Brunton, Bingni W. ;
Proctor, Joshua L. ;
Kaiser, Eurika ;
Kutz, J. Nathan .
NATURE COMMUNICATIONS, 2017, 8
[14]   The free-energy cost of accurate biochemical oscillations [J].
Cao, Yuansheng ;
Wang, Hongli ;
Ouyang, Qi ;
Tu, Yuhai .
NATURE PHYSICS, 2015, 11 (09) :772-+
[15]  
Colbrook MJ, 2023, Arxiv, DOI arXiv:2312.00137
[16]   Rigorous data-driven computation of spectral properties of Koopman operators for dynamical systems [J].
Colbrook, Matthew J. ;
Townsend, Alex .
COMMUNICATIONS ON PURE AND APPLIED MATHEMATICS, 2024, 77 (01) :221-283
[17]   Residual dynamic mode decomposition: robust and verified Koopmanism [J].
Colbrook, Matthew J. J. ;
Ayton, Lorna J. J. ;
Szoke, Mate .
JOURNAL OF FLUID MECHANICS, 2023, 955
[18]   Dynamical quorum sensing: Population density encoded in cellular dynamics [J].
De Monte, Silvia ;
d'Ovidio, Francesco ;
Dano, Sune ;
Sorensen, Preben Graae .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2007, 104 (47) :18377-18381
[19]  
Demo Nicola, 2018, Journal of Open Source Software, V3, P530, DOI 10.21105/joss.00530
[20]   Generalized Theorems for Nonlinear State Space Reconstruction [J].
Deyle, Ethan R. ;
Sugihara, George .
PLOS ONE, 2011, 6 (03)