Recent advancements in synthetic biology and machine learning offer opportunities for designing new disease treatments through cell reprogramming. The study introduces a transfer learning method to control cell behavior by leveraging transcriptomic data, demonstrating its effectiveness in reproducing known reprogramming protocols and providing insights into gene regulatory network dynamics.
The study focuses on developing computational strategies for controlling cell behavior through transfer learning of functional transcriptional networks. By applying this approach to extensive datasets, the authors showcase its flexibility and innovation in designing reprogramming transitions with high accuracy. The findings establish a proof-of-concept for using computational methods to design control strategies and gain insights into gene regulatory networks.
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by Thomas P. Wy... a las arxiv.org 03-12-2024
https://arxiv.org/pdf/2403.04837.pdfConsultas más profundas