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      Predicting cellular responses to complex perturbations in high‐throughput screens

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          Abstract

          Recent advances in multiplexed single‐cell transcriptomics experiments facilitate the high‐throughput study of drug and genetic perturbations. However, an exhaustive exploration of the combinatorial perturbation space is experimentally unfeasible. Therefore, computational methods are needed to predict, interpret, and prioritize perturbations. Here, we present the compositional perturbation autoencoder (CPA), which combines the interpretability of linear models with the flexibility of deep‐learning approaches for single‐cell response modeling. CPA learns to in silico predict transcriptional perturbation response at the single‐cell level for unseen dosages, cell types, time points, and species. Using newly generated single‐cell drug combination data, we validate that CPA can predict unseen drug combinations while outperforming baseline models. Additionally, the architecture's modularity enables incorporating the chemical representation of the drugs, allowing the prediction of cellular response to completely unseen drugs. Furthermore, CPA is also applicable to genetic combinatorial screens. We demonstrate this by imputing in silico 5,329 missing combinations (97.6% of all possibilities) in a single‐cell Perturb‐seq experiment with diverse genetic interactions. We envision CPA will facilitate efficient experimental design and hypothesis generation by enabling in silico response prediction at the single‐cell level and thus accelerate therapeutic applications using single‐cell technologies.

          Abstract

          The compositional perturbation autoencoder (CPA) is a deep learning model for predicting the transcriptomic responses of single cells to single or combinatorial treatments from drugs and genetic manipulations.

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          Most cited references64

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          Comprehensive Integration of Single-Cell Data

          Single-cell transcriptomics has transformed our ability to characterize cell states, but deep biological understanding requires more than a taxonomic listing of clusters. As new methods arise to measure distinct cellular modalities, a key analytical challenge is to integrate these datasets to better understand cellular identity and function. Here, we develop a strategy to "anchor" diverse datasets together, enabling us to integrate single-cell measurements not only across scRNA-seq technologies, but also across different modalities. After demonstrating improvement over existing methods for integrating scRNA-seq data, we anchor scRNA-seq experiments with scATAC-seq to explore chromatin differences in closely related interneuron subsets and project protein expression measurements onto a bone marrow atlas to characterize lymphocyte populations. Lastly, we harmonize in situ gene expression and scRNA-seq datasets, allowing transcriptome-wide imputation of spatial gene expression patterns. Our work presents a strategy for the assembly of harmonized references and transfer of information across datasets.
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            Slide-seq: A scalable technology for measuring genome-wide expression at high spatial resolution

            Spatial positions of cells in tissues strongly influence function, yet a high-throughput, genome-wide readout of gene expression with cellular resolution is lacking. We developed Slide-seq, a method for transferring RNA from tissue sections onto a surface covered in DNA-barcoded beads with known positions, allowing the locations of the RNA to be inferred by sequencing. Using Slide-seq, we localized cell types identified by single-cell RNA sequencing datasets within the cerebellum and hippocampus, characterized spatial gene expression patterns in the Purkinje layer of mouse cerebellum, and defined the temporal evolution of cell type–specific responses in a mouse model of traumatic brain injury. These studies highlight how Slide-seq provides a scalable method for obtaining spatially resolved gene expression data at resolutions comparable to the sizes of individual cells.
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              CUT&Tag for efficient epigenomic profiling of small samples and single cells

              Many chromatin features play critical roles in regulating gene expression. A complete understanding of gene regulation will require the mapping of specific chromatin features in small samples of cells at high resolution. Here we describe Cleavage Under Targets and Tagmentation (CUT&Tag), an enzyme-tethering strategy that provides efficient high-resolution sequencing libraries for profiling diverse chromatin components. In CUT&Tag, a chromatin protein is bound in situ by a specific antibody, which then tethers a protein A-Tn5 transposase fusion protein. Activation of the transposase efficiently generates fragment libraries with high resolution and exceptionally low background. All steps from live cells to sequencing-ready libraries can be performed in a single tube on the benchtop or a microwell in a high-throughput pipeline, and the entire procedure can be performed in one day. We demonstrate the utility of CUT&Tag by profiling histone modifications, RNA Polymerase II and transcription factors on low cell numbers and single cells.
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                Author and article information

                Contributors
                fabian.theis@helmholtz-munich.de
                Journal
                Mol Syst Biol
                Mol Syst Biol
                10.1002/(ISSN)1744-4292
                MSB
                msb
                Molecular Systems Biology
                John Wiley and Sons Inc. (Hoboken )
                1744-4292
                08 May 2023
                June 2023
                : 19
                : 6 ( doiID: 10.1002/msb.v19.6 )
                : e11517
                Affiliations
                [ 1 ] Helmholtz Center Munich – German Research Center for Environmental Health, Institute of Computational Biology Munich Germany
                [ 2 ] Wellcome Trust Sanger Institute, Wellcome Genome Campus, Hinxton Cambridgeshire UK
                [ 3 ] Meta AI Paris France
                [ 4 ] Swiss Data Science Center Zurich Switzerland
                [ 5 ] School of Life Sciences Weihenstephan Technical University of Munich Munich Germany
                [ 6 ] Department of Mathematics Technical University of Munich Munich Germany
                [ 7 ] Department of Genome Sciences University of Washington Seattle WA USA
                [ 8 ] Department of Bioengineering University of California Berkeley CA USA
                [ 9 ] Howard Hughes Medical Institute Seattle WA USA
                [ 10 ] Brotman Baty Institute for Precision Medicine Seattle WA USA
                [ 11 ] Allen Discovery Center for Cell Lineage Tracing Seattle WA USA
                [ 12 ] Department of Biomedical Engineering Columbia University New York NY USA
                [ 13 ] Department of Electrical Engineering and Computer Sciences University of California Berkeley CA USA
                [ 14 ] Department of Computer Science Technical University of Munich Munich Germany
                [ 15 ]Present address: Lamin Labs Munich Germany
                Author notes
                [*] [* ]Corresponding author. Tel: +49 8931872211; E‐mail: fabian.theis@ 123456helmholtz-munich.de
                [ † ]

                These authors contributed equally to this work

                Author information
                https://orcid.org/0000-0002-1057-6690
                https://orcid.org/0000-0002-9553-0121
                https://orcid.org/0000-0002-4823-9729
                https://orcid.org/0000-0002-0582-002X
                https://orcid.org/0000-0003-1635-8675
                https://orcid.org/0000-0003-4387-1511
                https://orcid.org/0000-0002-2419-1943
                Article
                MSB202211517
                10.15252/msb.202211517
                10258562
                37154091
                0dc02ee4-46be-4714-9d8c-17ce15c8123d
                © 2023 The Authors. Published under the terms of the CC BY 4.0 license.

                This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.

                History
                : 23 March 2023
                : 21 December 2022
                : 31 March 2023
                Page count
                Figures: 7, Tables: 2, Pages: 19, Words: 15768
                Funding
                Funded by: Bundesministerium für Bildung und Forschung (BMBF) , doi 10.13039/501100002347;
                Award ID: L031L0214A
                Award ID: 01IS18036A
                Award ID: 01IS18053A
                Funded by: Chan Zuckerberg Initiative (CZI) , doi 10.13039/100014989;
                Award ID: 2018‐182835
                Award ID: 2019‐207271
                Funded by: EC | Horizon 2020 Framework Programme (H2020)
                Award ID: 874656
                Funded by: Helmholtz Association , doi 10.13039/501100009318;
                Award ID: ZT‐I‐0007
                Award ID: ZT‐I‐PF‐5‐01
                Categories
                Article
                Articles
                Custom metadata
                2.0
                12 June 2023
                Converter:WILEY_ML3GV2_TO_JATSPMC version:6.2.9 mode:remove_FC converted:12.06.2023

                Quantitative & Systems biology
                generative modeling,high‐throughput screening,machine learning,perturbation prediction,single‐cell transcriptomics,computational biology,methods & resources

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