MNDIS-NNLGGNMar 7, 2024

Cell reprogramming design by transfer learning of functional transcriptional networks

arXiv:2403.04837v18 citationsh-index: 48PNAS
Originality Highly original
AI Analysis

This work addresses the challenge of incomplete cellular knowledge and combinatorial explosion in designing disease treatments through cell reprogramming, offering a proof-of-concept for computational control strategies.

The authors tackled the problem of rationally designing cell reprogramming interventions by developing a transfer learning approach that models transcriptional network dynamics, achieving an AUROC of 0.91 in reproducing known protocols and demonstrating it on datasets with over 9,000 microarrays and 10,000 sequencing runs.

Recent developments in synthetic biology, next-generation sequencing, and machine learning provide an unprecedented opportunity to rationally design new disease treatments based on measured responses to gene perturbations and drugs to reprogram cells. The main challenges to seizing this opportunity are the incomplete knowledge of the cellular network and the combinatorial explosion of possible interventions, both of which are insurmountable by experiments. To address these challenges, we develop a transfer learning approach to control cell behavior that is pre-trained on transcriptomic data associated with human cell fates, thereby generating a model of the network dynamics that can be transferred to specific reprogramming goals. The approach combines transcriptional responses to gene perturbations to minimize the difference between a given pair of initial and target transcriptional states. We demonstrate our approach's versatility by applying it to a microarray dataset comprising >9,000 microarrays across 54 cell types and 227 unique perturbations, and an RNASeq dataset consisting of >10,000 sequencing runs across 36 cell types and 138 perturbations. Our approach reproduces known reprogramming protocols with an AUROC of 0.91 while innovating over existing methods by pre-training an adaptable model that can be tailored to specific reprogramming transitions. We show that the number of gene perturbations required to steer from one fate to another increases with decreasing developmental relatedness and that fewer genes are needed to progress along developmental paths than to regress. These findings establish a proof-of-concept for our approach to computationally design control strategies and provide insights into how gene regulatory networks govern phenotype.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes