Fri, 12 Jun 2020

14:00 - 15:00
Virtual

Live-modelling the temporal regulation of mesoderm specification

Dr Berta Verd
(University of Cambridge)
Abstract

Pattern formation emerges during development from the interplay between gene regulatory networks (GRNs) acting at the single cell level and cell movements driving tissue level morphogenetic changes. As a result, the timing of cell specification and the dynamics of morphogenesis must be tightly cross-regulated. In the developing zebrafish, mesoderm progenitors will spend varying amounts of time (from 5 to 10hrs) in the tailbud before entering the pre-somitic mesoderm (PSM) and initiating a stereotypical transcriptional trajectory towards a mesodermal fate. In contrast, when dissociated and placed in vitro, these progenitors differentiate synchronously in around 5 hours. We have used a data-driven mathematical modelling approach to reverse-engineer a GRN that is able to tune the timing of mesodermal differentiation as progenitors leave the tailbud’s signalling environment, which also explains our in vitro observations. This GRN recapitulates pattern formation at the tissue level when modelled on cell tracks obtained from live-imaging a developing PSM. Our “live-modelling” framework also allows us to simulate how perturbations to the GRN affect the emergence of pattern in zebrafish mutants. We are now extending this analysis to cichlid fishes in order to explore the regulation of developmental time in evolution.

 

Fri, 05 Jun 2020

14:00 - 15:00
Virtual

Teaching nonlinear dynamics to biologists

Professor Alan Garfinkel
(Samueli School of Engineering UCLA)
Abstract

There is a need for a new kind of maths course, to be taught, not to mathematics students, but to biologists with little or no maths background. There have been many recent calls for an upgrade to the mathematical background of biologists: undergraduate biology students need to understand the role of modeling and dynamics in understanding ecological systems, evolutionary dynamics, neuroscience, physiology, epidemiology, and the modeling that underlies the concept of climate change. They also need to understand the importance of feedback, both positive and negative, in creating dynamical systems in biology.

 Such a course is possible. The most important foundational development was the 20th century replacement of the vague and unhelpful concept of a differential equation by the rigorous geometric concept of a vector field, a function from a multidimensional state space to its tangent space, assigning “change vectors” to every point in state space. This twentieth-century concept is not just more rigorous, but in fact makes for superior pedagogy. We also discuss the key nonlinear behaviors that biological systems display, such as switch-like behavior, robust oscillations and even chaotic behavior.

 This talk will outline such a course. It would have a significant effect on the conduct of biological research and teaching, and bring the usefulness of mathematical modeling to a wide audience.

 

Fri, 22 May 2020

14:00 - 15:00

TBA

To be announced
(To be announced)
Fri, 15 May 2020

14:00 - 15:00

To be announced

To be announced
(To be announced)
Tue, 25 Feb 2020

12:45 - 14:00
C3

Automated quantitative myocardial perfusion MRI

Cian Scannell
(Kings College, London)
Abstract

Stress perfusion cardiac magnetic resonance (CMR) imaging has been shown to be highly accurate for the detection of coronary artery disease. However, a major limitation is that the accuracy of the visual assessment of the images is challenging and thus the accuracy of the diagnosis is highly dependent on the training and experience of the reader. Quantitative perfusion CMR, where myocardial blood flow values are inferred directly from the MR images, is an automated and user-independent alternative to the visual assessment.

This talk will focus on addressing the main technical challenges which have hampered the adoption of quantitative myocardial perfusion MRI in clinical practice. The talk will cover the problem of respiratory motion in the images and the use of dimension reduction techniques, such as robust principal component analysis, to mitigate this problem. I will then discuss our deep learning-based image processing pipeline that solves the necessary series of computer vision tasks required for the blood flow modelling and introduce the Bayesian inference framework in which the kinetic parameter values are inferred from the imaging data.

Hundreds of kids of all ages and their families, tables full of games, rooms full of creativity and glorious patterns. Sunday in Oxford Mathematics' Andrew Wiles Building and Saturday in Templars Square, Cowley. Yes, it was the 3rd Oxford Maths Festival 2020.

Transport of high-energy charged particles through spatially-intermittent turbulent magnetic fields
Chen, L Bott, A Tzeferacos, P Rigby, A Bell, A Bingham, R Graziani, C Katz, J Petrasso, R Gregori, G Miniati, F Astrophysical Journal volume 892 issue 2 (03 Apr 2020)
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