Paper List
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An AI Implementation Science Study to Improve Trustworthy Data in a Large Healthcare System
This paper addresses the critical gap between theoretical AI research and real-world clinical implementation by providing a practical framework for as...
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The BEAT-CF Causal Model: A model for guiding the design of trials and observational analyses of cystic fibrosis exacerbations
This paper addresses the critical gap in cystic fibrosis exacerbation management by providing a formal causal framework that integrates expert knowled...
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Hierarchical Molecular Language Models (HMLMs)
This paper addresses the core challenge of accurately modeling context-dependent signaling, pathway cross-talk, and temporal dynamics across multiple ...
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Stability analysis of action potential generation using Markov models of voltage‑gated sodium channel isoforms
This work addresses the challenge of systematically characterizing how the high-dimensional parameter space of Markov models for different sodium chan...
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Approximate Bayesian Inference on Mechanisms of Network Growth and Evolution
This paper addresses the core challenge of inferring the relative contributions of multiple, simultaneous generative mechanisms in network formation w...
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EnzyCLIP: A Cross-Attention Dual Encoder Framework with Contrastive Learning for Predicting Enzyme Kinetic Constants
This paper addresses the core challenge of jointly predicting enzyme kinetic parameters (Kcat and Km) by modeling dynamic enzyme-substrate interaction...
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Tissue stress measurements with Bayesian Inversion Stress Microscopy
This paper addresses the core challenge of measuring absolute, tissue-scale mechanical stress without making assumptions about tissue rheology, which ...
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DeepFRI Demystified: Interpretability vs. Accuracy in AI Protein Function Prediction
This study addresses the critical gap between high predictive accuracy and biological interpretability in DeepFRI, revealing that the model often prio...
Equivariant Asynchronous Diffusion: An Adaptive Denoising Schedule for Accelerated Molecular Conformation Generation
Shanghai Academy of Artificial Intelligence for Science, SAIS | Artificial Intelligence Innovation and Incubation (AI3) Institute, Fudan University
30秒速读
IN SHORT: This paper addresses the core challenge of generating physically plausible 3D molecular structures by bridging the gap between autoregressive methods (which capture hierarchy but lack global context) and synchronous diffusion models (which offer global conditioning but ignore molecular causality).
核心创新
- Methodology Proposes Equivariant Asynchronous Diffusion (EAD), a novel framework that assigns independent noise levels to different atoms, enabling asynchronous denoising while maintaining SE(3)-equivariance through graph neural networks.
- Methodology Introduces a constrained independent sampling strategy during training (Algorithm 1) that reduces combinatorial complexity from O(T^M) to O((2C)^M), making asynchronous diffusion tractable.
- Methodology Develops a dynamic denoising schedule (Algorithm 2) that uses historical velocity states to adaptively prioritize which atoms to denoise, mimicking hierarchical molecular construction without imposing rigid causal chains.
主要结论
- EAD outperforms the synchronous denoising baseline EDM (using identical architecture and training iterations) across all metrics, achieving an 8% increase in molecular stability and a 3% improvement in validity.
- The framework demonstrates that traditional full-molecule diffusion models are special cases of EAD, and the method can be integrated into various diffusion architectures without retraining.
- Experimental validation shows EAD's ability to generate complete, valid molecules while effectively minimizing cumulative errors that plague autoregressive approaches.
摘要: Recent 3D molecular generation methods primarily use asynchronous auto-regressive or synchronous diffusion models. While auto-regressive models build molecules sequentially, they’re limited by a short horizon and a discrepancy between training and inference. Conversely, synchronous diffusion models denoise all atoms at once, offering a molecule-level horizon but failing to capture the causal relationships inherent in hierarchical molecular structures. We introduce Equivariant Asynchronous Diffusion (EAD) to overcome these limitations. EAD is a novel diffusion model that combines the strengths of both approaches: it uses an asynchronous denoising schedule to better capture molecular hierarchy while maintaining a molecule-level horizon. Since these relationships are often complex, we propose a dynamic scheduling mechanism to adaptively determine the denoising timestep. Experimental results show that EAD achieves state-of-the-art performance in 3D molecular generation.