Paper List
-
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...
-
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...
-
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 ...
-
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...
-
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...
-
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...
-
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 ...
-
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...
Empowering Chemical Structures with Biological Insights for Scalable Phenotypic Virtual Screening
Hunan University | Jiangnan University | University of Tsukuba | Hong Kong Baptist University | Xiamen University
30秒速读
IN SHORT: This paper addresses the core challenge of bridging the gap between scalable chemical structure screening and biologically informative but resource-intensive phenotypic profiling in drug discovery.
核心创新
- Methodology Introduces DECODE framework that uses geometric disentanglement to separate measurement-invariant biological signals from modality-specific experimental noise
- Methodology Implements contrastive learning with orthogonal constraints to align heterogeneous biological modalities into a unified biological consensus space
- Methodology Develops three adaptive inference protocols including zero-shot retrieval, dynamic adaptation, and generative integration for virtual screening
主要结论
- DECODE achieves over 20% relative improvement in zero-shot MOA prediction compared to chemical baselines, demonstrating effective biological signal extraction from structures alone
- The framework yields a 6-fold increase in hit rates for novel anti-cancer agents during external validation (AUC: 0.737 vs 0.694 for chemical baseline)
- DECODE's disentanglement mechanism improves F1-score by 15.8% over expert MLP baselines on sparsely labeled CDRP dataset, showing robustness against experimental noise
摘要: Motivation: The scalable identification of bioactive compounds is essential for contemporary drug discovery. This process faces a key trade-off: structural screening offers scalability but lacks biological context, whereas high-content phenotypic profiling provides deep biological insights but is resource-intensive. The primary challenge is to extract robust biological signals from noisy data and encode them into representations that do not require biological data at inference. Results: This study presents DECODE (DEcomposing Cellular Observations of Drug Effects), a framework that bridges this gap by empowering chemical representations with intrinsic biological semantics to enable structure-based in silico biological profiling. DECODE leverages limited paired transcriptomic and morphological data as supervisory signals during training, enabling the extraction of a measurement-invariant biological fingerprint from chemical structures and explicit filtering of experimental noise. Our evaluations demonstrate that DECODE retrieves functionally similar drugs in zero-shot settings with over 20% relative improvement over chemical baselines in mechanism-of-action (MOA) prediction. Furthermore, the framework achieves a 6-fold increase in hit rates for novel anti-cancer agents during external validation. Availability and implementation: The codes and datasets of DECODE are available at https://github.com/lian-xiao/DECODE.