De novo design... uses active learning to refine a Seq2Seq-VAE, generating potential SIK3 inhibitors without extensive data.
De novo design... uses active learning to refine a Seq2Seq-VAE, generating potential SIK3 inhibitors without extensive data.
Models interacting particle dynamics by entangling velocities via coupled bias forces, improving trajectory simulation for systems with evolving interactions.
Models interacting particle dynamics by entangling velocities via coupled bias forces, improving trajectory simulation for systems with evolving interactions.
Million-scale data links degenerate seqs to gene expr in human cells. Reveals TF occupancy, coop regulation, & generalizable seq rules.
Million-scale data links degenerate seqs to gene expr in human cells. Reveals TF occupancy, coop regulation, & generalizable seq rules.
Integrates physics with ML to model biomolecular systems, addressing the "closure problem" for kinetics, rare events, and free-energy estimation.
Integrates physics with ML to model biomolecular systems, addressing the "closure problem" for kinetics, rare events, and free-energy estimation.
Predicts DDIs using knowledge graphs & EHRs via teacher/student model, generalizing to new drugs with interpretable mechanisms.
Predicts DDIs using knowledge graphs & EHRs via teacher/student model, generalizing to new drugs with interpretable mechanisms.
Combines epigenetic and phenotypic data via multimodal learning to estimate biological age in cancer patients.
Combines epigenetic and phenotypic data via multimodal learning to estimate biological age in cancer patients.
Develops a diffusion model to shrink proteins by learning to delete sequence letters, creating shorter, functional variants resembling natural proteins.
Develops a diffusion model to shrink proteins by learning to delete sequence letters, creating shorter, functional variants resembling natural proteins.
aDNA damage-based ML age prediction fails. Context/decay models may improve it.
aDNA damage-based ML age prediction fails. Context/decay models may improve it.
Lightweight LLMs annotated spatial transcriptomics data by integrating rule-based heuristics and multi-role reasoning within an agentic framework.
Lightweight LLMs annotated spatial transcriptomics data by integrating rule-based heuristics and multi-role reasoning within an agentic framework.
Domain microscopy seg. w/ SAM2 fine-tuning & informed post-processing.
Domain microscopy seg. w/ SAM2 fine-tuning & informed post-processing.
ML refines ancestry prediction via marker selection, boosting intra-continental accuracy.
ML refines ancestry prediction via marker selection, boosting intra-continental accuracy.
Data-augmented DL enables zero-shot PTM prediction, improving site ID & localization in proteomics.
Data-augmented DL enables zero-shot PTM prediction, improving site ID & localization in proteomics.
Spat. transcriptomics: context, boundaries, neighbs, & genes.
Spat. transcriptomics: context, boundaries, neighbs, & genes.
Multimodal LLM integrates metabolite graphs, images, and language for interactive analysis/prediction.
Multimodal LLM integrates metabolite graphs, images, and language for interactive analysis/prediction.
LLMs integrate omics via Q\&A pairs, emulating self-supervised learning.
LLMs integrate omics via Q\&A pairs, emulating self-supervised learning.
DNA to 2D via wavelets. Enables light, interpretable deep learning using CV.
DNA to 2D via wavelets. Enables light, interpretable deep learning using CV.
CONCERT: Predicts niche-aware perturbation responses in spatial transcriptomics using spatial kernels within a generative model.
CONCERT: Predicts niche-aware perturbation responses in spatial transcriptomics using spatial kernels within a generative model.
HEIMDALL:
...evaluates tokenization strategies in single-cell foundation models by modularizing components for fine-grained control and analysis.
HEIMDALL:
...evaluates tokenization strategies in single-cell foundation models by modularizing components for fine-grained control and analysis.
Identifies universal aging signatures in cell data by disentangling aging-related gene expression from other biological variations.
Identifies universal aging signatures in cell data by disentangling aging-related gene expression from other biological variations.
Leverages molecular dynamics simulations and deep learning to enhance property prediction by considering molecular dynamics.
Leverages molecular dynamics simulations and deep learning to enhance property prediction by considering molecular dynamics.
Hierarchical GNNs boost molecule property prediction generalization by integrating multi-level chem knowledge.
Hierarchical GNNs boost molecule property prediction generalization by integrating multi-level chem knowledge.
Autophagy gene data informs a classifier (Auto-RS) for individualized osteosarcoma risk, capturing metastatic trajectories and revealing drug vulnerabilities.
Autophagy gene data informs a classifier (Auto-RS) for individualized osteosarcoma risk, capturing metastatic trajectories and revealing drug vulnerabilities.
Models predict chromatin accessibility across species but struggle with quantitative differences in orthologous regions, highlighting limitations.
Models predict chromatin accessibility across species but struggle with quantitative differences in orthologous regions, highlighting limitations.
Inferred cell cycle positions enhance gene regulatory network inference, especially in early progenitor cells, by improving on temporal ordering.
Inferred cell cycle positions enhance gene regulatory network inference, especially in early progenitor cells, by improving on temporal ordering.