Paper List
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Discovery of a Hematopoietic Manifold in scGPT Yields a Method for Extracting Performant Algorithms from Biological Foundation Model Internals
This work addresses the core challenge of extracting reusable, interpretable, and high-performance biological algorithms from the opaque internal repr...
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MS2MetGAN: Latent-space adversarial training for metabolite–spectrum matching in MS/MS database search
This paper addresses the critical bottleneck in metabolite identification: the generation of high-quality negative training samples that are structura...
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Toward Robust, Reproducible, and Widely Accessible Intracranial Language Brain-Computer Interfaces: A Comprehensive Review of Neural Mechanisms, Hardware, Algorithms, Evaluation, Clinical Pathways and Future Directions
This review addresses the core challenge of fragmented and heterogeneous evidence that hinders the clinical translation of intracranial language BCIs,...
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Less Is More in Chemotherapy of Breast Cancer
通过纳入细胞周期时滞和竞争项,解决了现有肿瘤-免疫模型的过度简化问题,以定量比较化疗方案。
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Fold-CP: A Context Parallelism Framework for Biomolecular Modeling
This paper addresses the critical bottleneck of GPU memory limitations that restrict AlphaFold 3-like models to processing only a few thousand residue...
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Open Biomedical Knowledge Graphs at Scale: Construction, Federation, and AI Agent Access with Samyama Graph Database
This paper addresses the core pain point of fragmented biomedical data by constructing and federating large-scale, open knowledge graphs to enable sea...
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Predictive Analytics for Foot Ulcers Using Time-Series Temperature and Pressure Data
This paper addresses the critical need for continuous, real-time monitoring of diabetic foot health by developing an unsupervised anomaly detection fr...
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Hypothesis-Based Particle Detection for Accurate Nanoparticle Counting and Digital Diagnostics
This paper addresses the core challenge of achieving accurate, interpretable, and training-free nanoparticle counting in digital diagnostic assays, wh...
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.