Scalable inference of cell differentiation networks in gene therapy clonal tracking studies of haematopoiesis

Author:

Del Core Luca12ORCID,Pellin Danilo3ORCID,Wit Ernst C14ORCID,Grzegorczyk Marco A1ORCID

Affiliation:

1. University of Groningen – Bernoulli Institute , 9747AG Groningen, The Netherlands

2. University of Nottingham – School of Mathematical Sciences , Nottingham NG72RD, United Kingdom

3. Harvard Medical School , Boston, MA 02115, United States

4. Università della Svizzera italiana – Institute of Computing , 6962 Lugano, Switzerland

Abstract

Abstract Motivation Investigating cell differentiation under a genetic disorder offers the potential for improving current gene therapy strategies. Clonal tracking provides a basis for mathematical modelling of population stem cell dynamics that sustain the blood cell formation, a process known as haematopoiesis. However, many clonal tracking protocols rely on a subset of cell types for the characterization of the stem cell output, and the data generated are subject to measurement errors and noise. Results We propose a stochastic framework to infer dynamic models of cell differentiation from clonal tracking data. A state-space formulation combines a stochastic quasi-reaction network, describing cell differentiation, with a Gaussian measurement model accounting for data errors and noise. We developed an inference algorithm based on an extended Kalman filter, a nonlinear optimization, and a Rauch-Tung-Striebel smoother. Simulations show that our proposed method outperforms the state-of-the-art and scales to complex structures of cell differentiations in terms of nodes size and network depth. The application of our method to five in vivo gene therapy studies reveals different dynamics of cell differentiation. Our tool can provide statistical support to biologists and clinicians to better understand cell differentiation and haematopoietic reconstitution after a gene therapy treatment. The equations of the state-space model can be modified to infer other dynamics besides cell differentiation. Availability and implementation The stochastic framework is implemented in the R package Karen which is available for download at https://cran.r-project.org/package=Karen. The code that supports the findings of this study is openly available at https://github.com/delcore-luca/CellDifferentiationNetworks.

Funder

European Cooperation in Science and Technology

Fondazione Leonardo

Swiss National Science Foundation

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

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