Calibration of stochastic, agent-based neuron growth models with approximate Bayesian computation
DOI10.1007/s00285-024-02144-2MaRDI QIDQ6622628
Roman Bauer, Tobias Duswald, Barbara I. Wohlmuth, Thomas Thorne, Lukas Breitwieser
Publication date: 22 October 2024
Published in: Journal of Mathematical Biology (Search for Journal in Brave)
Parametric tolerance and confidence regions (62F25) Bayesian inference (62F15) Neural biology (92C20) Biomechanics (92C10) General biology and biomathematics (92B05) Computational methods for problems pertaining to biology (92-08) Software, source code, etc. for problems pertaining to biology (92-04) Systems biology, networks (92C42) Mathematical modeling or simulation for problems pertaining to biology (92-10)
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