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Approximated Gene Expression Trajectories (AGETs) for Gene Regulatory Network Inference on Cell Tracks

42 Pages Posted: 9 Feb 2024 Publication Status: Published

See all articles by Kay Spiess

Kay Spiess

University of Cambridge

Shannon E. Taylor

University of Oxford

Timothy Fulton

Queen Mary University of London

Kane Toh

University of Cambridge - Department of Genetics

Dillan Saunders

University of Cambridge - Department of Genetics

Seongwon Hwang

University of Cambridge

Yuxuan Wang

University of Cambridge

Brooks Paige

University College London

Benjamin Steventon

University of Cambridge - Department of Genetics

Berta Verd

University of Oxford

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Abstract

The study of pattern formation has greatly benefited from our ability to reverse-engineer gene reg- ulatory network (GRN) structure from spatio-temporal quantitative gene expression data. Traditional approaches omit tissue morphogenesis, and focus on systems where the timescales of pattern formation and morphogenesis can be separated. In such systems, pattern forms as an emergent property of the underlying GRN and mechanistic insight can be obtained from the GRNs alone. However, this is not the case in most animal patterning systems, where patterning and morphogenesis are co-occurring and tightly linked. To address the mechanisms driving pattern formation in such systems we need to adapt our GRN inference methodologies to explicitly accommodate cell movements and tissue shape changes. In this work we present a novel framework to reverse-engineer GRNs underlying pattern formation in tis- sues undergoing morphogenetic changes and cell rearrangements. By integrating quantitative data from live and fixed embryos, we approximate gene expression trajectories (AGETs) in single cells and use a subset to reverse-engineer candidate GRNs using a Markov Chain Monte Carlo approach. GRN fit is assessed by simulating on cell tracks (live-modelling) and comparing the output to quantitative data-sets. This framework generates candidate GRNs that recapitulate pattern formation at the level of the tissue and the single cell. To our knowledge, this inference methodology is the first to integrate cell movements and gene expression data, making it possible to reverse-engineer GRNs patterning tissues undergoing morphogenetic changes.

Suggested Citation

Spiess, Kay and Taylor, Shannon E. and Fulton, Timothy and Toh, Kane and Saunders, Dillan and Hwang, Seongwon and Wang, Yuxuan and Paige, Brooks and Steventon, Benjamin and Verd, Berta, Approximated Gene Expression Trajectories (AGETs) for Gene Regulatory Network Inference on Cell Tracks. Available at SSRN: https://ssrn.com/abstract=4721276 or http://dx.doi.org/10.2139/ssrn.4721276
This version of the paper has not been formally peer reviewed.

Kay Spiess

University of Cambridge ( email )

Trinity Ln
Cambridge, CB2 1TN
United Kingdom

Shannon E. Taylor

University of Oxford ( email )

Mansfield Road
Oxford, OX1 4AU
United Kingdom

Timothy Fulton

Queen Mary University of London ( email )

Mile End Road
London, E1 4NS
United Kingdom

Kane Toh

University of Cambridge - Department of Genetics ( email )

Trinity Ln
Cambridge, CB2 1TN
United Kingdom

Dillan Saunders

University of Cambridge - Department of Genetics ( email )

Trinity Ln
Cambridge, CB2 1TN
United Kingdom

Seongwon Hwang

University of Cambridge ( email )

Trinity Ln
Cambridge, CB2 1TN
United Kingdom

Yuxuan Wang

University of Cambridge ( email )

Trinity Ln
Cambridge, CB2 1TN
United Kingdom

Brooks Paige

University College London ( email )

Gower Street
London, WC1E 6BT
United Kingdom

Benjamin Steventon

University of Cambridge - Department of Genetics ( email )

Cambridge
United Kingdom

Berta Verd (Contact Author)

University of Oxford ( email )

Mansfield Road
Oxford, OX1 4AU
United Kingdom

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