28: scPrediXcan: Deep learning meets single-cell TWAS episode artwork

EPISODE · May 22, 2025 · 25 MIN

28: scPrediXcan: Deep learning meets single-cell TWAS

from Base by Base · host Gustavo Barra

Zhou Y et al., Cell Genomics - This paper introduces scPrediXcan, which combines a deep-learning model (ctPred) built on Enformer-derived features with single-cell RNA-seq to perform cell-type-specific TWAS via a linearized SNP predictor (ℓ-ctPred), improving gene discovery for T2D and SLE. Key terms: cell-type-specific expression, deep learning, TWAS, single-cell RNA-seq, GWAS. Study Highlights:The authors developed ctPred, a compact deep-learning model that uses Enformer epigenomic features to predict cell-type-specific pseudobulk expression. They linearized ctPred into ℓ-ctPred (SNP-based elastic net) so predictions can be used with GWAS summary statistics in S-PrediXcan. Applied to type 2 diabetes and systemic lupus erythematosus, scPrediXcan identifies more candidate causal genes, explains more GWAS loci, and provides cell-type-resolved insights compared with canonical TWAS approaches. Models and weights for 46 cell types are released via predictdb.org for community use. Conclusion:scPrediXcan leverages sequence-based deep learning and single-cell data to enable cell-type-level TWAS with higher power and broader gene coverage than canonical methods, offering improved mechanistic resolution for complex traits while noting limitations related to model biases and cis-focused inference. Music:Enjoy the music based on this article at the end of the episode. Article title:scPrediXcan integrates deep learning methods and single-cell data into a cell-type-specific transcriptome-wide association study framework First author:Zhou Y Journal:Cell Genomics DOI:10.1016/j.xgen.2025.100875 Reference:Zhou Y., Adeluwa T., Zhu L., Salazar-Magaña S., Sumner S., Kim H., Gona S., Nyasimi F., Kulkarni R., Powell J.E., Madduri R., Liu B., Chen M., Im H.K. scPrediXcan integrates deep learning methods and single-cell data into a cell-type-specific transcriptome-wide association study framework. Cell Genomics. 2025;5:100875. doi:10.1016/j.xgen.2025.100875 License:This episode is based on an open-access article published under the Creative Commons Attribution 4.0 International License (CC BY 4.0) – https://creativecommons.org/licenses/by/4.0/ Support:Base by Base – Stripe donations: https://donate.stripe.com/7sY4gz71B2sN3RWac5gEg00 Official website https://basebybase.com On PaperCast Base by Base you’ll discover the latest in genomics, functional genomics, structural genomics, and proteomics. Episode link: https://basebybase.com/episodes/scpredixcan-cell-type-twas QC:This episode was checked against the original article PDF and publication metadata for the episode release published on 2025-05-22. QC Scope:- article metadata and core scientific claims from the narration- excludes analogies, intro/outro, and music- transcript coverage: Audited the transcript for substantive scientific content: ctPred architecture, Enformer-derived features, ℓ-ctPred linearization, S-PrediXcan integration, disease results (T2D and SLE) with cell-type specificity, limitations (directionality, distal enhancers, ancestry), and public resources.- transcript topics: Cell-type-specific TWAS rationale vs bulk tissue TWAS; ctPred architecture and Enformer-derived epigenomic features; ℓ-ctPred linearization and S-PrediXcan integration; Comparison with PEN and scalability considerations; T2D results in islet cell types (gamma, stellate cells) and bulk vs pseudobulk; SLE results in immune cell types (T cells, monocytes; CFB, CXCR5) QC Summary:- factual score: 10/10- metadata score: 10/10- supported core claims: 8- claims flagged for review: 0- metadata checks passed: 4- metadata issues found: 0 Metadata Audited:- article_doi- article_title- article_journal- license Factual Items Audited:

Zhou Y et al., Cell Genomics - This paper introduces scPrediXcan, which combines a deep-learning model (ctPred) built on Enformer-derived features with single-cell RNA-seq to perform cell-type-specific TWAS via a linearized SNP predictor (ℓ-ctPred), improving gene discovery for T2D and SLE. Key terms: cell-type-specific expression, deep learning, TWAS, single-cell RNA-seq, GWAS. Study Highlights:The authors developed ctPred, a compact deep-learning model that uses Enformer epigenomic features to predict cell-type-specific pseudobulk expression. They linearized ctPred into ℓ-ctPred (SNP-based elastic net) so predictions can be used with GWAS summary statistics in S-PrediXcan. Applied to type 2 diabetes and systemic lupus erythematosus, scPrediXcan identifies more candidate causal genes, explains more GWAS loci, and provides cell-type-resolved insights compared with canonical TWAS approaches. Models and weights for 46 cell types are released via predictdb.org for community use. Conclusion:scPrediXcan leverages sequence-based deep learning and single-cell data to enable cell-type-level TWAS with higher power and broader gene coverage than canonical methods, offering improved mechanistic resolution for complex traits while noting limitations related to model biases and cis-focused inference. Music:Enjoy the music based on this article at the end of the episode. Article title:scPrediXcan integrates deep learning methods and single-cell data into a cell-type-specific transcriptome-wide association study framework First author:Zhou Y Journal:Cell Genomics DOI:10.1016/j.xgen.2025.100875 Reference:Zhou Y., Adeluwa T., Zhu L., Salazar-Magaña S., Sumner S., Kim H., Gona S., Nyasimi F., Kulkarni R., Powell J.E., Madduri R., Liu B., Chen M., Im H.K. scPrediXcan integrates deep learning methods and single-cell data into a cell-type-specific transcriptome-wide association study framework. Cell Genomics. 2025;5:100875. doi:10.1016/j.xgen.2025.100875 License:This episode is based on an open-access article published under the Creative Commons Attribution 4.0 International License (CC BY 4.0) – https://creativecommons.org/licenses/by/4.0/ Support:Base by Base – Stripe donations: https://donate.stripe.com/7sY4gz71B2sN3RWac5gEg00 Official website https://basebybase.com On PaperCast Base by Base you’ll discover the latest in genomics, functional genomics, structural genomics, and proteomics. Episode link: https://basebybase.com/episodes/scpredixcan-cell-type-twas QC:This episode was checked against the original article PDF and publication metadata for the episode release published on 2025-05-22. QC Scope:- article metadata and core scientific claims from the narration- excludes analogies, intro/outro, and music- transcript coverage: Audited the transcript for substantive scientific content: ctPred architecture, Enformer-derived features, ℓ-ctPred linearization, S-PrediXcan integration, disease results (T2D and SLE) with cell-type specificity, limitations (directionality, distal enhancers, ancestry), and public resources.- transcript topics: Cell-type-specific TWAS rationale vs bulk tissue TWAS; ctPred architecture and Enformer-derived epigenomic features; ℓ-ctPred linearization and S-PrediXcan integration; Comparison with PEN and scalability considerations; T2D results in islet cell types (gamma, stellate cells) and bulk vs pseudobulk; SLE results in immune cell types (T cells, monocytes; CFB, CXCR5) QC Summary:- factual score: 10/10- metadata score: 10/10- supported core claims: 8- claims flagged for review: 0- metadata checks passed: 4- metadata issues found: 0 Metadata Audited:- article_doi- article_title- article_journal- license Factual Items Audited:

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28: scPrediXcan: Deep learning meets single-cell TWAS

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Zhou Y et al., Cell Genomics - This paper introduces scPrediXcan, which combines a deep-learning model (ctPred) built on Enformer-derived features with single-cell RNA-seq to perform cell-type-specific TWAS via a linearized SNP predictor (ℓ-ctPred),...

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