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Preprints

MCLand: A Python program for drawing emerging shapes of Waddington’s epigenetic landscape by Monte Carlo simulations

Chong KH, Zhang X, Lin Z, Zheng J.
Preprint from
bioRxiv
17 January 2024
PPR
PPR790527
Abstract
Waddington’s epigenetic landscape is a powerful metaphor for illustrating the process of cell differentiation. Recently, it has been used to model cancer progression and stem cell reprogramming. User-friendly software for landscape quantification and visualization is needed to allow more modeling researchers to benefit from this theory.

Results

We present MCLand, a Python program for plotting Waddington’s epigenetic landscape with a user-friendly graphical user interface. It models gene regulatory network (GRN) in ordinary differential equations (ODEs), and uses a Monte Carlo method to estimate the probability distribution of cell states from simulated time-course trajectories to quantify the landscape. Monte Carlo method has been tested on a few GRN models with biologically meaningful results. MCLand shows better intermediate details of kinetic path in Waddington’s landscape compared to the state-of-the-art software Netland.

Availability and implementation

The source code and user manual of MCLand can be downloaded from https://mcland-ntu.github.io/MCLand/index.html .