Stein’s method meets computational statistics: a review of some recent developments
Anastasiou, A Barp, A Briol, F Ebner, B Gaunt, R Ghaderinezhad, F Gorham, J Gretton, A Ley, C Liu, Q Mackey, L Oates, C Reinert, G Swan, Y Statistical Science volume 38 issue 1 120-139 (28 Oct 2022)
A novel asymptotic formulation for partial slip half-plane frictional contact problems
Moore, M Hills, D Theoretical and Applied Fracture Mechanics volume 121 (25 Jun 2022)
Spurious solutions for high-order curl problems
Hu, K Zhang, Q Han, J Wang, L Zhang, Z IMA Journal of Numerical Analysis volume 43 issue 3 1422-1449 (03 Jun 2023)
From Twistor-Particle Models to Massive Amplitudes
Albonico, G Geyer, Y Mason, L SYMMETRY INTEGRABILITY AND GEOMETRY-METHODS AND APPLICATIONS volume 18 (19 Jun 2022)
Rheology of growing axons
Oliveri, H de Rooij, R Kuhl, E Goriely, A Physical Review Research volume 4 (12 Aug 2022)
Fri, 18 Nov 2022

14:00 - 15:00
L3

Beyond DNA damage

Prof Hooshang Nikjoo
(Department of Physiology Anatomy & Genetics, University of Oxford )
Fri, 11 Nov 2022

14:00 - 15:00
L3

Identifying cell-to-cell variability using mathematical and statistical modelling

Dr Alex Browning
(Dept of Mathematics, University of Oxford)
Abstract

Cell-to-cell variability is often a primary source of variability in experimental data. Yet, it is common for mathematical analysis of biological systems to neglect biological variability by assuming that model parameters remain fixed between measurements. In this two-part talk, I present new mathematical and statistical tools to identify cell-to-cell variability from experimental data, based on mathematical models with random parameters. First, I identify variability in the internalisation of material by cells using approximate Bayesian computation and noisy flow cytometry measurements from several million cells. Second, I develop a computationally efficient method for inference and identifiability analysis of random parameter models based on an approximate moment-matched solution constructed through a multivariate Taylor expansion. Overall, I show how analysis of random parameter models can provide more precise parameter estimates and more accurate predictions with minimal additional computational cost compared to traditional modelling approaches.

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