Paper List
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MCP-AI: Protocol-Driven Intelligence Framework for Autonomous Reasoning in Healthcare
This paper addresses the critical gap in healthcare AI systems that lack contextual reasoning, long-term state management, and verifiable workflows by...
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Model Gateway: Model Management Platform for Model-Driven Drug Discovery
This paper addresses the critical bottleneck of fragmented, ad-hoc model management in pharmaceutical research by providing a centralized, scalable ML...
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Tree Thinking in the Genomic Era: Unifying Models Across Cells, Populations, and Species
This paper addresses the fragmentation of tree-based inference methods across biological scales by identifying shared algorithmic principles and stati...
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SSDLabeler: Realistic semi-synthetic data generation for multi-label artifact classification in EEG
This paper addresses the core challenge of training robust multi-label EEG artifact classifiers by overcoming the scarcity and limited diversity of ma...
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Decoding Selective Auditory Attention to Musical Elements in Ecologically Valid Music Listening
This paper addresses the core challenge of objectively quantifying listeners' selective attention to specific musical components (e.g., vocals, drums,...
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Physics-Guided Surrogate Modeling for Machine Learning–Driven DLD Design Optimization
This paper addresses the core bottleneck of translating microfluidic DLD devices from research prototypes to clinical applications by replacing weeks-...
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Mechanistic Interpretability of Antibody Language Models Using SAEs
This work addresses the core challenge of achieving both interpretability and controllable generation in domain-specific protein language models, spec...
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Fluctuating Environments Favor Extreme Dormancy Strategies and Penalize Intermediate Ones
This paper addresses the core challenge of determining how organisms should tune dormancy duration to match the temporal autocorrelation of their envi...
Contrastive Deep Learning for Variant Detection in Wastewater Genomic Sequencing
Georgia State University, Atlanta, Georgia, USA
30秒速读
IN SHORT: This paper addresses the core challenge of detecting viral variants in wastewater sequencing data without reference genomes or labeled annotations, overcoming issues of high noise, low coverage, and fragmented reads.
核心创新
- Methodology First comprehensive application of VQ-VAE with EMA quantization to wastewater genomic surveillance, achieving 99.52% token-level reconstruction accuracy with 19.73% codebook utilization.
- Methodology Integration of masked reconstruction pretraining (BERT-style) maintaining ~95% accuracy under 20% token corruption, enabling robust inference with missing/low-quality data.
- Methodology Contrastive fine-tuning with varying embedding dimensions showing +35% (64-dim) and +42% (128-dim) Silhouette score improvements, establishing representation capacity impact on variant discrimination.
主要结论
- VQ-VAE achieves 99.52% mean token-level accuracy and 56.33% exact sequence match rate on SARS-CoV-2 wastewater data with 100,000 reads.
- Contrastive fine-tuning improves clustering performance by +35% (0.31→0.42) with 64-dim embeddings and +42% (0.31→0.44) with 128-dim embeddings.
- The framework maintains efficient codebook utilization (19.73%, 101 of 512 codes active) while providing robust performance under data corruption.
摘要: Wastewater-based genomic surveillance has emerged as a powerful tool for population-level viral monitoring, offering comprehensive insights into circulating viral variants across entire communities. However, this approach faces significant computational challenges stemming from high sequencing noise, low viral coverage, fragmented reads, and the complete absence of labeled variant annotations. Traditional reference-based variant calling pipelines struggle with novel mutations and require extensive computational resources. We present a comprehensive framework for unsupervised viral variant detection using Vector-Quantized Variational Autoencoders (VQ-VAE) that learns discrete codebooks of genomic patterns from k-mer tokenized sequences without requiring reference genomes or variant labels. Our approach extends the base VQ-VAE architecture with masked reconstruction pretraining for robustness to missing data and contrastive learning for highly discriminative embeddings. Evaluated on SARS-CoV-2 wastewater sequencing data comprising approximately 100,000 reads, our VQ-VAE achieves 99.52% mean token-level accuracy and 56.33% exact sequence match rate while maintaining 19.73% codebook utilization (101 of 512 codes active), demonstrating efficient discrete representation learning. Contrastive fine-tuning with different projection dimensions yields substantial clustering improvements: 64-dimensional embeddings achieve +35% Silhouette score improvement (0.31→0.42), while 128-dimensional embeddings achieve +42% improvement (0.31→0.44), clearly demonstrating the impact of embedding dimensionality on variant discrimination capability. Our reference-free framework provides a scalable, interpretable approach to genomic surveillance with direct applications to public health monitoring.