Presently, the field of analyzing
differentially expressed genes
(DEGs) of RNA-seq data is still in its infancy, with new approaches
constantly being proposed. Taking advantage of deep neural networks
to explore gene expression information on RNA-seq data can provide
a novel possibility in the biomedical field. In this study, a novel
approach based on a deep learning algorithm and cloud model was developed,
named Deep-Cloud. Its main advantage is not only using a convolutional
neural network and long short-term memory to extract original data
features and estimate gene expression of RNA-seq data but also combining
the statistical method of the cloud model to quantify the uncertainty
and carry out in-depth analysis of the DEGs between the disease groups
and the control groups. Compared with traditional analysis software
of DEGs, the Deep-cloud model further improves the sensitivity and
accuracy of obtaining DEGs from RNA-seq data. Overall, the proposed
new approach Deep-cloud paves a new pathway for mining RNA-seq data
in the biomedical field.