학술논문

Mechanistic gene networks inferred from single-cell data with an outlier-insensitive method
Document Type
article
Source
Subject
Biochemistry and Cell Biology
Biological Sciences
Genetics
Bioengineering
1.1 Normal biological development and functioning
Underpinning research
Generic health relevance
Algorithms
Animals
Computational Biology
Drosophila melanogaster
Gene Regulatory Networks
Neural Networks
Computer
Mechanistic model inference
Least absolute deviation
Gene regulatory network
Dynamical systems
Neural networks
Mathematical Sciences
Bioinformatics
Biological sciences
Mathematical sciences
Language
Abstract
With advances in single-cell techniques, measuring gene dynamics at cellular resolution has become practicable. In contrast, the increased complexity of data has made it more challenging computationally to unravel underlying biological mechanisms. Thus, it is critical to develop novel computational methods capable of dealing with such complexity and of providing predictive deductions from such data. Many methods have been developed to address such challenges, each with its own advantages and limitations. We present an iterative regression algorithm for inferring a mechanistic gene network from single-cell data, especially suited to overcoming problems posed by measurement outliers. Using this regression, we infer a developmental model for the gene dynamics in Drosophila melanogaster blastoderm embryo. Our results show that the predictive power of the inferred model is higher than that of other models inferred with least squares and ridge regressions. As a baseline for how well a mechanistic model should be expected to perform, we find that model predictions of the gene dynamics are more accurate than predictions made with neural networks of varying architectures and complexity. This holds true even in the limit of small sample sizes. We compare predictions for various gene knockouts with published experimental results, finding substantial qualitative agreement. We also make predictions for gene dynamics under various gene network perturbations, impossible in non-mechanistic models.