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Integrating massive RNA-seq data to elucidate transcriptome dynamics in Drosophila melanogaster

Authors :
Sheng Hu Qian
Meng-Wei Shi
Dan-Yang Wang
Justin M Fear
Lu Chen
Yi-Xuan Tu
Hong-Shan Liu
Yuan Zhang
Shuai-Jie Zhang
Shan-Shan Yu
Brian Oliver
Zhen-Xia Chen
Source :
Briefings in Bioinformatics.
Publication Year :
2023
Publisher :
Oxford University Press (OUP), 2023.

Abstract

The volume of ribonucleic acid (RNA)-seq data has increased exponentially, providing numerous new insights into various biological processes. However, due to significant practical challenges, such as data heterogeneity, it is still difficult to ensure the quality of these data when integrated. Although some quality control methods have been developed, sample consistency is rarely considered and these methods are susceptible to artificial factors. Here, we developed MassiveQC, an unsupervised machine learning-based approach, to automatically download and filter large-scale high-throughput data. In addition to the read quality used in other tools, MassiveQC also uses the alignment and expression quality as model features. Meanwhile, it is user-friendly since the cutoff is generated from self-reporting and is applicable to multimodal data. To explore its value, we applied MassiveQC to Drosophila RNA-seq data and generated a comprehensive transcriptome atlas across 28 tissues from embryogenesis to adulthood. We systematically characterized fly gene expression dynamics and found that genes with high expression dynamics were likely to be evolutionarily young and expressed at late developmental stages, exhibiting high nonsynonymous substitution rates and low phenotypic severity, and they were involved in simple regulatory programs. We also discovered that human and Drosophila had strong positive correlations in gene expression in orthologous organs, revealing the great potential of the Drosophila system for studying human development and disease.

Details

ISSN :
14774054 and 14675463
Database :
OpenAIRE
Journal :
Briefings in Bioinformatics
Accession number :
edsair.doi...........f1c3b14b5505a899b94fdb52fb09bb7e