Paper List
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STAR-GO: Improving Protein Function Prediction by Learning to Hierarchically Integrate Ontology-Informed Semantic Embeddings
This paper addresses the core challenge of generalizing protein function prediction to unseen or newly introduced Gene Ontology (GO) terms by overcomi...
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Incorporating indel channels into average-case analysis of seed-chain-extend
This paper addresses the core pain point of bridging the theoretical gap for the widely used seed-chain-extend heuristic by providing the first rigoro...
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Competition, stability, and functionality in excitatory-inhibitory neural circuits
This paper addresses the core challenge of extending interpretable energy-based frameworks to biologically realistic asymmetric neural networks, where...
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Enhancing Clinical Note Generation with ICD-10, Clinical Ontology Knowledge Graphs, and Chain-of-Thought Prompting Using GPT-4
This paper addresses the core challenge of generating accurate and clinically relevant patient notes from sparse inputs (ICD codes and basic demograph...
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Learning From Limited Data and Feedback for Cell Culture Process Monitoring: A Comparative Study
This paper addresses the core challenge of developing accurate real-time bioprocess monitoring soft sensors under severe data constraints: limited his...
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Cell-cell communication inference and analysis: biological mechanisms, computational approaches, and future opportunities
This review addresses the critical need for a systematic framework to navigate the rapidly expanding landscape of computational methods for inferring ...
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Generating a Contact Matrix for Aged Care Settings in Australia: an agent-based model study
This study addresses the critical gap in understanding heterogeneous contact patterns within aged care facilities, where existing population-level con...
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Emergent Spatiotemporal Dynamics in Large-Scale Brain Networks with Next Generation Neural Mass Models
This work addresses the core challenge of understanding how complex, brain-wide spatiotemporal patterns emerge from the interaction of biophysically d...
A Standardized Framework for Evaluating Gene Expression Generative Models
University of Cambridge | Wellcome Sanger Institute | Sapienza University of Rome | ISTI-CNR
30秒速读
IN SHORT: This paper addresses the critical lack of standardized evaluation protocols for single-cell gene expression generative models, where inconsistent metric implementations and computation spaces make cross-study comparisons impossible.
核心创新
- Methodology Introduces GGE, the first unified Python framework with explicit computation space parameterization (raw, PCA, DEG-restricted) for standardized evaluation of generative models.
- Methodology Proposes perturbation-effect correlation metric that measures direction and magnitude of perturbation responses rather than raw expression correlation, focusing evaluation on biologically relevant signals.
- Methodology Demonstrates that Wasserstein distance values vary by nearly an order of magnitude (17.2 to 104.3) depending solely on computation space, quantifying the standardization problem.
主要结论
- Metric values vary substantially with implementation choices: W₂ distance ranges from 17.2 (PCA-25) to 104.3 (raw space) on identical data, highlighting critical need for standardization.
- DEG selection strategy affects correlation metrics: top-20 DEG selection yields Pearson correlation of 0.614±0.066 vs strict threshold selection (lfc>1, p<0.01) yielding 0.506±0.217 on Norman dataset.
- Perturbation-effect correlation in DEG space provides biologically meaningful evaluation, focusing on genes that actually respond to perturbations rather than steady-state background expression.
摘要: The rapid development of generative models for single-cell gene expression data has created an urgent need for standardised evaluation frameworks. Current evaluation practices suffer from inconsistent metric implementations, incomparable hyperparameter choices, and a lack of biologically-grounded metrics. We present Generated Genetic Expression Evaluator (GGE), an open-source Python framework that addresses these challenges by providing a comprehensive suite of distributional metrics with explicit computation space options and biologically-motivated evaluation through differentially expressed gene (DEG)-focused analysis and perturbation-effect correlation, enabling standardized reporting and reproducible benchmarking. Through extensive analysis of the single-cell generative modeling literature, we identify that no standardized evaluation protocol exists. Methods report incomparable metrics computed in different spaces with different hyperparameters. We demonstrate that metric values vary substantially depending on implementation choices, highlighting the critical need for standardization. GGE enables fair comparison across generative approaches and accelerates progress in perturbation response prediction, cellular identity modeling, and counterfactual inference.