2023
DOI: 10.21203/rs.3.rs-3676579/v1
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Unagi: Deep Generative Model for Deciphering Cellular Dynamics and In-Silico Drug Discovery in Complex Diseases

Yumin Zheng,
Jonas Schupp,
Taylor Adams
et al.

Abstract: Human diseases are characterized by intricate cellular dynamics. Single-cell sequencing provides critical insights, yet a persistent gap remains in computational tools for detailed disease progression analysis and targeted in-silico drug interventions. We introduce UNAGI, a deep generative neural network tailored to analyze time-series single-cell transcriptomic data. This innovative tool captures the complex cellular dynamics underlying disease progression, enhancing drug perturbation modeling and discovery. … Show more

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