2023
DOI: 10.1101/2023.11.12.566777
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TranSiGen: Deep representation learning of chemical-induced transcriptional profile

Xiaochu Tong,
Ning Qu,
Xiangtai Kong
et al.

Abstract: With the advancement of high-throughput RNA sequencing technologies, the use of chemical-induced transcriptional profiling has greatly increased in biomedical research. However, the usefulness of transcriptomics data is limited by inherent random noise and technical artefacts that may cause systematical biases. These limitations make it challenging to identify the true signal of perturbation and extract knowledge from the data. In this study, we propose a deep generative model called Transcriptional Signatures… Show more

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