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Enhancing identifiability in plant growth models: a comprehensive framework for precision and reliability

03.09.24 | Nanjing Agricultural University The Academy of Science

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In the evolving landscape of plant growth modeling, there is a distinguished presence of mechanistic models aimed at capturing the intricate dynamics of plant development through parameter estimation from experimental data. However, these models face challenges in ensuring the uniqueness of parameter solutions, a problem addressed by structural and practical identifiability analyses. Despite a generally consistent definition of structural identifiability in the literature, practical identifiability lacks a unified quantification approach, leading to diverse, sometimes inconsistent indices. This research gap underscores the need for a standardized methodology to assess practical identifiability.

In February 2024, Plant Phenomics published a research article entitled by “ Practical Identifiability of Plant Growth Models: A Unifying Framework and Its Specification for Three Local Indices ”. This study advances the field of plant growth modeling by establishing a unified framework for identifiability analysis, which adeptly incorporates various definitions tailored to specific application contexts.

In this study, by focusing on three principal methods—collinearity indices, profile likelihood, and average relative error, researchers uncover their limitations in local applications and propose a novel risk index based on profile likelihood confidence intervals to enhance practical identifiability analysis. Through meticulous case studies on a discrete-time individual plant growth model (LNAS) and a continuous-time plant population epidemics model, researchers demonstrate the utility of the approach. Findings also reveal significant insights into the identifiability challenges within these models. For instance, in the LNAS model, designed to predict biomass allocation in sugar beets, researchers highlight compensation effects among parameters, particularly between the extinction coefficient and radiation use efficiency, which obscure their unique identification.

Further, the analysis extends to exploring the dynamics of yield over time, underscoring the near-indistinguishability of output despite varied parameter values. This phenomenon underscores the practical identifiability issues arising from parameter interactions. Similarly, in the plant population epidemics model, researchers identify key parameters that, due to their interdependence, present challenges in achieving reliable estimations. The innovative risk index and the use of profile likelihood-based confidence intervals offer a refined lens for assessing identifiability, suggesting a shift from binary indicators to a more nuanced quantification of risk.

Overall, this research not only elucidates the intricacies of identifiability analysis but also provides practical guidance for modelers, paving the way for the systematic inclusion of identifiability checks in modeling studies to ensure the credibility of model predictions.

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References

Authors

Jean Velluet, Antonin Della Noce*, and Véronique Letort*

Affiliations

MICS Laboratory, CentraleSupelec, Paris-Saclay University, Gif-sur-Yvette, France.

About Véronique Letort

Associate Professor, Université Paris-Saclay, Gif-sur-Yvette, France.

Plant Phenomics

10.34133/plantphenomics.0133

Experimental study

Not applicable

Practical Identifiability of Plant Growth Models: A Unifying Framework and Its Specification for Three Local Indices

9-Feb-2024

The authors declare that they have no competing interests.

Keywords

Article Information

Contact Information

Ping Wang
Nanjing Agricultural University The Academy of Science
pingwang@njau.edu.cn

Source

How to Cite This Article

APA:
Nanjing Agricultural University The Academy of Science. (2024, March 9). Enhancing identifiability in plant growth models: a comprehensive framework for precision and reliability. Brightsurf News. https://www.brightsurf.com/news/1WR3Y3WL/enhancing-identifiability-in-plant-growth-models-a-comprehensive-framework-for-precision-and-reliability.html
MLA:
"Enhancing identifiability in plant growth models: a comprehensive framework for precision and reliability." Brightsurf News, Mar. 9 2024, https://www.brightsurf.com/news/1WR3Y3WL/enhancing-identifiability-in-plant-growth-models-a-comprehensive-framework-for-precision-and-reliability.html.