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Optimal experimental design for mathematical models of haematopoiesis
Author(s) -
Luis Martinez Lomeli,
Abdon Iniguez,
Prasanthi Tata,
Nilamani Jena,
Zhongying Liu,
Richard Van Etten,
Arthur D. Lander,
Babak Shahbaba,
John Lowengrub,
Vladimir N. Minin
Publication year - 2021
Publication title -
journal of the royal society interface
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.655
H-Index - 139
eISSN - 1742-5689
pISSN - 1742-5662
DOI - 10.1098/rsif.2020.0729
Subject(s) - haematopoiesis , computer science , bayesian probability , feed forward , obstacle , systems biology , perturbation (astronomy) , biological system , biology , artificial intelligence , stem cell , bioinformatics , control engineering , engineering , genetics , physics , quantum mechanics , law , political science
The haematopoietic system has a highly regulated and complex structure in which cells are organized to successfully create and maintain new blood cells. It is known that feedback regulation is crucial to tightly control this system, but the specific mechanisms by which control is exerted are not completely understood. In this work, we aim to uncover the underlying mechanisms in haematopoiesis by conducting perturbation experiments, where animal subjects are exposed to an external agent in order to observe the system response and evolution. We have developed a novel Bayesian hierarchical framework for optimal design of perturbation experiments and proper analysis of the data collected. We use a deterministic model that accounts for feedback and feedforward regulation on cell division rates and self-renewal probabilities. A significant obstacle is that the experimental data are not longitudinal, rather each data point corresponds to a different animal. We overcome this difficulty by modelling the unobserved cellular levels as latent variables. We then use principles of Bayesian experimental design to optimally distribute time points at which the haematopoietic cells are quantified. We evaluate our approach using synthetic and real experimental data and show that an optimal design can lead to better estimates of model parameters.

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