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Enhancing generalizability of model discovery across parameter space with multi-experiment equation learning for biological systems.

Publication ,  Journal Article
Ciocanel, M-V; Nardini, JT; Flores, KB; Rutter, EM; Sindi, SS; Volkening, A
Published in: PLoS computational biology
April 2026

Agent-based modeling (ABM) is a powerful tool for understanding self-organizing biological systems, but it is computationally intensive and often not analytically tractable. Equation learning (EQL) methods can derive continuum models from ABM data, but they typically require extensive simulations for each parameter set, raising concerns about generalizability. In this work, we extend EQL to Multi-experiment equation learning (ME-EQL) by introducing two methods: (i) one-at-a-time ME-EQL (OAT ME-EQL), which learns individual models for each parameter set and connects them via interpolation, and (ii) embedded structure ME-EQL (ES ME-EQL), which builds a unified model library across parameters. We demonstrate these methods by learning continuum models from a noisy birth-death mean-field model and from an on-lattice agent-based model of birth, death, and migration with spatial structure, often used to investigate cell biology experiments. We show that both methods significantly reduce the relative error in recovering parameters from agent-based simulations, with OAT ME-EQL offering better generalizability across parameter space. Our findings highlight the potential of equation learning from multiple experiments to enhance the generalizability and interpretability of learned models for complex biological systems.

Duke Scholars

Published In

PLoS computational biology

DOI

EISSN

1553-7358

ISSN

1553-734X

Publication Date

April 2026

Volume

22

Issue

4

Start / End Page

e1014161

Related Subject Headings

  • Systems Biology
  • Models, Biological
  • Machine Learning
  • Humans
  • Computer Simulation
  • Computational Biology
  • Bioinformatics
  • Algorithms
 

Citation

APA
Chicago
ICMJE
MLA
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Ciocanel, M.-V., Nardini, J. T., Flores, K. B., Rutter, E. M., Sindi, S. S., & Volkening, A. (2026). Enhancing generalizability of model discovery across parameter space with multi-experiment equation learning for biological systems. PLoS Computational Biology, 22(4), e1014161. https://doi.org/10.1371/journal.pcbi.1014161
Ciocanel, Maria-Veronica, John T. Nardini, Kevin B. Flores, Erica M. Rutter, Suzanne S. Sindi, and Alexandria Volkening. “Enhancing generalizability of model discovery across parameter space with multi-experiment equation learning for biological systems.PLoS Computational Biology 22, no. 4 (April 2026): e1014161. https://doi.org/10.1371/journal.pcbi.1014161.
Ciocanel M-V, Nardini JT, Flores KB, Rutter EM, Sindi SS, Volkening A. Enhancing generalizability of model discovery across parameter space with multi-experiment equation learning for biological systems. PLoS computational biology. 2026 Apr;22(4):e1014161.
Ciocanel, Maria-Veronica, et al. “Enhancing generalizability of model discovery across parameter space with multi-experiment equation learning for biological systems.PLoS Computational Biology, vol. 22, no. 4, Apr. 2026, p. e1014161. Epmc, doi:10.1371/journal.pcbi.1014161.
Ciocanel M-V, Nardini JT, Flores KB, Rutter EM, Sindi SS, Volkening A. Enhancing generalizability of model discovery across parameter space with multi-experiment equation learning for biological systems. PLoS computational biology. 2026 Apr;22(4):e1014161.

Published In

PLoS computational biology

DOI

EISSN

1553-7358

ISSN

1553-734X

Publication Date

April 2026

Volume

22

Issue

4

Start / End Page

e1014161

Related Subject Headings

  • Systems Biology
  • Models, Biological
  • Machine Learning
  • Humans
  • Computer Simulation
  • Computational Biology
  • Bioinformatics
  • Algorithms