Periodic Reporting for period 4 - DECODE (Decoding Context-Dependent Genetic Networks in vivo)
Berichtszeitraum: 2024-01-01 bis 2025-06-30
We generated and improved transgenic in vivo CRISPR libraries for Drosophila to knockout genes in the whole fly or in selected tissues by gene editing. Subset screens targeting signaling pathway components in intestinal stem cells revealed pathway cross-talks and identified candidates that we are currently following up. We developed a new method to directly detect CRISPR mutations and transcriptional responses in the same cell, enabling us to track mutations across different lineages and understand gene programs involved in cell type formation. Combinatorial genetic perturbations coupled to single cell RNA-seq contributed to our understanding how genetic interactions impact different cell types along the gut and to study genotype-phenotype interactions in vivo. For Arabidopsis we developed and established an inducible CRISPR-Cas mediated gene knockout system and generated a library of knock-out mutant transgenic lines. We optimized perturbation and single-cell sequencing strategies, which was more difficult than foreseen originally. We were able to generate sets of experimental data focusing on perturbation of specific signaling pathways. The generation and experimental analysis of perturbation lines was continuously expanded and combinatorial index sequencing on Arabidopsis roots was established.
To exploit generated data, we developed a scalable and robust data management infrastructure including workflows for data processing and downstream biological analyses. We implemented an automated pipeline to visualize preliminary analyses. Our data management strategy demonstrated its utility in our daily work, facilitating data sharing and fostering collaborative work across the groups. In parallel, we developed, benchmarked and improved foundational single-cell data analysis tools. We established a scalable workflow to process and analyze sci-RNAseq data. As a core objective is to quantify phenotypic changes across molecular layers and model systems, we further developed computational methods beyond state-of-the-art to analyze high-throughput, multidimensional phenotype perturbation data and to integrate multi-omics single-cell profiles, with temporal and spatial context. We developed a novel computational framework enabling the analysis of multi-condition datasets without or prior to categorizing cells into discrete cell types. We implemented it into a software package, LEMUR, which now enables us to systematically disentangle shared and unique perturbation effects while accounting for complex, hierarchical or gradual cell type composition in in vivo samples. Currently, we made advances in the development of computational methods to better link CRISPR perturbations with single-cell transcriptomic readouts, including the development of technologies for direct mutation sequencing and strategies to assay editing outcomes alongside gene expression.
Overall, the project progressed very well, the results achieved so far have been published, and we are continuing to work on the large-scale screening approaches and the systematic analysis of context-specific genetic networks.