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BIORXIV

Synth4bench: Synthetic Data Generation for Benchmarking Tumor-Only Somatic Variant Calling Algorithms

Biorxiv Preprint 2025-10-29 0.75 Methodology
Fragkouli, S.-C., Pechlivanis, N., Anastasiadou, A. et al.
Synth4bench introduces a novel synthetic data generation pipeline to create fully controlled ground-truth datasets for rigorously benchmarking tumor-only somatic variant callers. The study reveals significant performance discrepancies among five widely used tools, highlighting that variant calling accuracy is highly dependent on sequencing parameters and algorithmic choice, with no single caller being optimal for all scenarios.
Oncology Genomics Computational Biology
arXiv PDF
BIORXIV

Functional Connectivity-based Attractor Dynamics in Rest, Task, and Disease

Biorxiv Preprint 2025-10-24 0.90 Methodology
Englert, R., Kincses, B., Kotikalapudi, R. et al.
This paper introduces Functional Connectivity-based Attractor Neural Networks (fcANNs), a generative model that simulates macro-scale brain dynamics from static functional connectivity maps. The key innovation is demonstrating that these dynamics self-organize into approximately orthogonal attractor states, a theoretical principle shown here for the first time at this scale, providing a powerful and interpretable framework for modeling brain activity in rest, task, and disease.
Neurology Psychiatry Computational Neuroscience
Code: 10 impl (23035 stars)
arXiv PDF
BIORXIV

Integration of Unpaired and Heterogeneous Clinical Flow Cytometry Data

Biorxiv Preprint 2025-10-24 0.90 Original Research
Phuycharoen, M., Kaestele, V., Williams, T. et al.
The Unbiasing Variational Autoencoder (UVAE) is a novel semi-supervised deep learning framework designed to correct batch effects and integrate unpaired, heterogeneous clinical flow cytometry data. By learning a shared latent space that explicitly models and removes technical variance, UVAE enhances the biological signal in complex datasets, improving cell subpopulation identification and the predictive modeling of disease severity in COVID-19 patients.
Immunology Infectious Disease Computational Biology
Code: 10 impl (23084 stars)
arXiv PDF
BIORXIV

Inferring stability and persistence in the vaginal microbiome: A stochastic model of ecological dynamics

Biorxiv Preprint 2025-10-24 0.85 Original Research
Ponciano, J. M., Gomez, J. P., Ravel, J. et al.
This study introduces a multi-species stochastic population model to analyze high-frequency longitudinal vaginal microbiome data, moving beyond static community state descriptions. By integrating ecological theory, the model quantifies the forces of competition and environmental fluctuation, enabling the estimation of community stability and the prediction of persistence probabilities for key taxa like Lactobacillus. This provides a quantitative framework for assessing microbiome resilience with direct implications for developing and monitoring targeted therapies.
Gynecology Microbiology Infectious Disease
Code: 1 impl (5 stars)
arXiv PDF
PUBMED

Deep Learning for Medical Imaging: A Test Paper

Nature Medicine 2025-01-15 0.92 Original Research
Smith J, Doe A, Johnson B
Test summary showing deep learning application in radiology.
Radiology AI in Medicine
High Impact: 92/100 Rising Star: 2.3 cites/day Trending: 85 engagement Code: 8 impl (347 stars) 47 citations
arXiv

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