TY - JOUR
T1 - Physically-inspired gaussian process models for post-transcriptional regulation in Drosophila
AU - López-Lopera, Andrés F.
AU - Durrande, Nicolas
AU - Álvarez, Mauricio A.
N1 - Funding Information:
This work was funded by the project “Probabilistic spatiotemporal models based on partial differential equations for the description of the regulatory dynamics for the Bicoid protein in the Drosophila Melanogaster body segmentation” (by Colciencias, Colombia and ECOS-NORD, France) with grant number C15M02. MAA has been partially financed by the EPSRC Research Projects EP/N014162/1 and EP/R034303/1.
Publisher Copyright:
© 2004-2012 IEEE.
PY - 2021/3/1
Y1 - 2021/3/1
N2 - The regulatory process of Drosophila is thoroughly studied for understanding a great variety of biological principles. While pattern-forming gene networks are analyzed in the transcription step, post-transcriptional events (e.g., translation, protein processing) play an important role in establishing protein expression patterns and levels. Since the post-transcriptional regulation of Drosophila depends on spatiotemporal interactions between mRNAs and gap proteins, proper physically-inspired stochastic models are required to study the link between both quantities. Previous research attempts have shown that using Gaussian processes (GPs) and differential equations lead to promising predictions when analyzing regulatory networks. Here, we aim at further investigating two types of physically-inspired GP models based on a reaction-diffusion equation where the main difference lies in where the prior is placed. While one of them has been studied previously using protein data only, the other is novel and yields a simple approach requiring only the differentiation of kernel functions. In contrast to other stochastic frameworks, discretizing the spatial space is not required here. Both GP models are tested under different conditions depending on the availability of gap gene mRNA expression data. Finally, their performances are assessed on a high-resolution dataset describing the blastoderm stage of the early embryo of Drosophila melanogaster.
AB - The regulatory process of Drosophila is thoroughly studied for understanding a great variety of biological principles. While pattern-forming gene networks are analyzed in the transcription step, post-transcriptional events (e.g., translation, protein processing) play an important role in establishing protein expression patterns and levels. Since the post-transcriptional regulation of Drosophila depends on spatiotemporal interactions between mRNAs and gap proteins, proper physically-inspired stochastic models are required to study the link between both quantities. Previous research attempts have shown that using Gaussian processes (GPs) and differential equations lead to promising predictions when analyzing regulatory networks. Here, we aim at further investigating two types of physically-inspired GP models based on a reaction-diffusion equation where the main difference lies in where the prior is placed. While one of them has been studied previously using protein data only, the other is novel and yields a simple approach requiring only the differentiation of kernel functions. In contrast to other stochastic frameworks, discretizing the spatial space is not required here. Both GP models are tested under different conditions depending on the availability of gap gene mRNA expression data. Finally, their performances are assessed on a high-resolution dataset describing the blastoderm stage of the early embryo of Drosophila melanogaster.
KW - Animals
KW - Computational Biology
KW - Drosophila/genetics
KW - Gene Regulatory Networks/genetics
KW - Models, Genetic
KW - Normal Distribution
KW - RNA Processing, Post-Transcriptional/genetics
KW - RNA, Messenger/genetics
KW - Stochastic Processes
KW - Transcriptome/genetics
U2 - 10.1109/TCBB.2019.2918774
DO - 10.1109/TCBB.2019.2918774
M3 - Article
C2 - 31144643
AN - SCOPUS:85067042144
SN - 1545-5963
VL - 18
SP - 656
EP - 666
JO - IEEE/ACM Transactions on Computational Biology and Bioinformatics
JF - IEEE/ACM Transactions on Computational Biology and Bioinformatics
IS - 2
M1 - 8723187
ER -