Paper List
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STAR-GO: Improving Protein Function Prediction by Learning to Hierarchically Integrate Ontology-Informed Semantic Embeddings
This paper addresses the core challenge of generalizing protein function prediction to unseen or newly introduced Gene Ontology (GO) terms by overcomi...
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Incorporating indel channels into average-case analysis of seed-chain-extend
This paper addresses the core pain point of bridging the theoretical gap for the widely used seed-chain-extend heuristic by providing the first rigoro...
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Competition, stability, and functionality in excitatory-inhibitory neural circuits
This paper addresses the core challenge of extending interpretable energy-based frameworks to biologically realistic asymmetric neural networks, where...
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Enhancing Clinical Note Generation with ICD-10, Clinical Ontology Knowledge Graphs, and Chain-of-Thought Prompting Using GPT-4
This paper addresses the core challenge of generating accurate and clinically relevant patient notes from sparse inputs (ICD codes and basic demograph...
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Learning From Limited Data and Feedback for Cell Culture Process Monitoring: A Comparative Study
This paper addresses the core challenge of developing accurate real-time bioprocess monitoring soft sensors under severe data constraints: limited his...
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Cell-cell communication inference and analysis: biological mechanisms, computational approaches, and future opportunities
This review addresses the critical need for a systematic framework to navigate the rapidly expanding landscape of computational methods for inferring ...
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Generating a Contact Matrix for Aged Care Settings in Australia: an agent-based model study
This study addresses the critical gap in understanding heterogeneous contact patterns within aged care facilities, where existing population-level con...
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Emergent Spatiotemporal Dynamics in Large-Scale Brain Networks with Next Generation Neural Mass Models
This work addresses the core challenge of understanding how complex, brain-wide spatiotemporal patterns emerge from the interaction of biophysically d...
SNPgen: Phenotype-Supervised Genotype Representation and Synthetic Data Generation via Latent Diffusion
DEIB, Politecnico di Milano | Health Data Science Centre, Human Technopole | Genomics Research Centre, Human Technopole | MOX - Department of Mathematics, Politecnico di Milano | Department of Public Health and Primary Care, University of Cambridge
30秒速读
IN SHORT: This paper addresses the core challenge of generating privacy-preserving synthetic genotype data that maintains both statistical fidelity and downstream predictive utility for supervised tasks like polygenic risk scoring.
核心创新
- Methodology Introduces a two-stage conditional latent diffusion framework combining GWAS-guided variant selection (1,024–2,048 SNPs) with VAE compression and phenotype-conditioned generation via classifier-free guidance.
- Methodology Implements phenotype-supervised generation rather than unconditional sampling, producing synthetic genotypes directly usable for downstream disease prediction tasks without additional phenotype mechanisms.
- Biology Demonstrates that GWAS-guided selection of trait-associated SNPs preserves predictive performance comparable to genome-wide methods while using 2–6× fewer variants, offering a favorable computational trade-off.
主要结论
- Models trained on synthetic data matched real-data predictive performance across four complex diseases (CAD, BC, T1D, T2D) in TSTR protocols, with synthetic XGBoost achieving AUCs of 0.587±0.019 for T2D and 0.594±0.011 for CAD, closely matching real-data performance.
- Privacy analysis showed zero identical matches, near-random membership inference (AUC ≈ 0.50), preserved LD structure, and high allele frequency correlation (r≥0.95) with source data, confirming strong privacy guarantees.
- In controlled simulations with known causal effects, synthetic data showed strong agreement with real-data effect estimates (Pearson r=0.835), exceeding VAE-reconstructed data (r=0.726), demonstrating faithful recovery of genetic association structures.
摘要: Motivation: Polygenic risk scores and other genomic analyses require large individual-level genotype datasets, yet strict data access restrictions impede sharing. Synthetic genotype generation offers a privacy-preserving alternative, but most existing methods operate unconditionally—producing samples without phenotype alignment—or rely on unsupervised compression, creating a gap between statistical fidelity and downstream task utility. Results: We present SNPgen, a two-stage conditional latent diffusion framework for generating phenotype-supervised synthetic genotypes. SNPgen combines GWAS-guided variant selection (1,024–2,048 trait-associated SNPs) with a variational autoencoder for genotype compression and a latent diffusion model conditioned on binary disease labels via classifier-free guidance. Evaluated on 458,724 UK Biobank individuals across four complex diseases (coronary artery disease, breast cancer, type 1 and type 2 diabetes), models trained on synthetic data matched real-data predictive performance in a train-on-synthetic, test-on-real protocol, approaching genome-wide PRS methods that use 2–6× more variants. Privacy analysis confirmed zero identical matches, near-random membership inference (AUC ≈ 0.50), preserved linkage disequilibrium structure, and high allele frequency correlation (r≥0.95) with source data. A controlled simulation with known causal effects verified faithful recovery of the imposed genetic association structure. Availability and implementation: Code available at https://github.com/ht-diva/SNPgen. Contact: andrea.lampis@polimi.it Supplementary information: Supplementary data are available in the Appendix.