Symmetry refers to properties that remain invariant upon mathematical transformations. The principles of symmetry have guided numerous important discoveries in physics and chemistry but not in biology and medicine. Here, we aim to explore the presence of symmetry relationships at the gene expression level as a mean to distinguish between healthy and disease states. We deployed Learning-Based Invariant Feature Engineering - LIFE, a hybrid machine learning approach implemented with two symmetric invariant feature functions (IFFs) to identify Invariant Feature Genes (IFGs), which are gene pairs whose IFF single-value outputs remain invariant across individual samples in a given biological phenotype. Our multiclass classification results across the transcriptomes of 25 normal organs, 25 cancer types, and blood samples obtained from 4 different types of neurodegenerative diseases revealed the presence of unique phenotype-specific IFGs. We constructed networks using these IFGs (IF-Nets) and intriguingly, we demonstrated that the hubs could serve as information encoders, capable of reconstructing sample-wise expression values in relation to their counterpart genes. More importantly, we found that hubs of cancer IF-Nets were enriched with both approved and clinical trial drugs, highlighting "symmetry breaking" as a novel approach for treating diseases.
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http://dx.doi.org/10.1101/2025.01.27.634930 | DOI Listing |
mBio
March 2025
Department of Molecular Biology, University of Wyoming, Laramie, Wyoming, USA.
Cell surface proteins determine how cells interact with their biotic and abiotic environments. In social myxobacteria, a C-terminal protein sorting tag called MYXO-CTERM is universally found within the Myxococcota phylum, where their genomes typically contain dozens of proteins with this motif. MYXO-CTERM harbors a tripartite architecture: a short signature motif containing an invariant cysteine, followed by a transmembrane helix and a short arginine-rich C-terminal region localized in the cytoplasm.
View Article and Find Full Text PDFPattern Recognit
June 2025
Department of Biomedical Engineering, University of Virginia, Charlottesville, VA 22908, USA.
We present a new method for face recognition from digital images acquired under varying illumination conditions. The method is based on mathematical modeling of local gradient distributions using the Radon Cumulative Distribution Transform (R-CDT) [1]. We demonstrate that lighting variations cause certain types of deformations of local image gradient distributions which, when expressed in R-CDT domain, can be modeled as a subspace.
View Article and Find Full Text PDFNeural Netw
May 2025
Information Engineering University, Zhengzhou, Henan, 450001, China.
This paper proposes a new continual learning method with Bayesian Compression for Shared and Private Latent Representations (BCSPLR), which learns a compact model structure while preserving the accuracy. In Shared and Private Latent Representations (SPLR), task-invariant and task-specific latent representations are efficiently learned to avoid catastrophic forgetting, whereas SPLR produces point estimates of parameters and manually tunes multiple hyperparameters. To overcome these problems, a principle framework is used to develop Bayesian Compression for SPLR, which can learn task-specific latent features with significant changes and task-invariant latent representations with small changes in the continual learning scenarios.
View Article and Find Full Text PDFBMC Med Imaging
March 2025
School of Computer Science and Artificial Intelligence, Zhengzhou University, 100 Science Avenue, Zhengzhou, Henan, 450001, China.
Deep learning methods have been migrated to rectal cancer staging as a classification process based on magnetic resonance images (MRIs). Typical approaches suffer from the imperceptible variation of images from different stage. The data augmentation also introduces scale invariance and rotation consistency problems after converting MRIs to 2D visible images.
View Article and Find Full Text PDFChaos
March 2025
Centre for Audio, Acoustics and Vibration, Faculty of Engineering and IT, University of Technology Sydney, Sydney 2007, Australia.
Networks and graphs have emerged as powerful tools to model and analyze nonlinear dynamical systems. By constructing an adjacency matrix from recurrence networks, it is possible to capture critical structural and geometric information about the underlying dynamics of a time series. However, randomization of data often raises concerns about the potential loss of deterministic relationships.
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