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The estimation of unknown parameters is a key step in the development of mechanistic dynamical models for biological processes. While quantitative measurements are typically used for model calibration, in many applications, only semiquantitative or qualitative observations are available, posing unique challenges for parameter estimation. Specialized approaches have been developed to integrate such data, offering trade-offs in bias, flexibility, and computational efficiency. Most of these approaches involve a recording function that maps the quantitative model onto nonabsolute data; however, this introduces additional degrees of freedom that can contribute to non-identifiability. Reliable calibration therefore requires structural and practical identifiability analysis, alongside robust uncertainty quantification. In this work, we provide an overview of available methods, critically examine them with respect to identifiability and uncertainty considerations, identify methodological gaps, outline strategies to improve computational efficiency, and advocate for the development of standardized benchmarking frameworks to support informed method selection and best practices. • Tailored integration methods are needed for calibrating ODE models with nonabsolute data. • Flexible recording functions support diverse data but often reduce identifiability. • Structural identifiability analysis methods are unavailable for current flexible nonabsolute data integration methods. • Likelihood-based data integration methods are crucial for practical identifiability analysis and uncertainty quantification. • Standardized benchmarks are needed for method comparison and wider adoption.
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Dorešić et al. (Tue,) studied this question.
synapsesocial.com/papers/6a0df8d6e119ff9c3ed6bc15 — DOI: https://doi.org/10.1016/j.coisb.2025.100558
Domagoj Dorešić
University of Bonn
Dilan Pathirana
University of Bonn
Daniel Weindl
University of Bonn
Current Opinion in Systems Biology
University of Bonn
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