GENER: A Parallel Layer Deep Learning Network To Detect Gene-Gene
Interactions From Gene Expression Data
- URL: http://arxiv.org/abs/2310.03611v2
- Date: Fri, 6 Oct 2023 11:53:50 GMT
- Title: GENER: A Parallel Layer Deep Learning Network To Detect Gene-Gene
Interactions From Gene Expression Data
- Authors: Ahmed Fakhry, Raneem Khafagy, Adriaan-Alexander Ludl
- Abstract summary: We introduce a parallel-layer deep learning network designed exclusively for the identification of gene-gene relationships using gene expression data.
Our model achieved an average AUROC score of 0.834 on the combined BioGRID&DREAM5 dataset, outperforming competing methods in predicting gene-gene interactions.
- Score: 0.7660368798066375
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Detecting and discovering new gene interactions based on known gene
expressions and gene interaction data presents a significant challenge. Various
statistical and deep learning methods have attempted to tackle this challenge
by leveraging the topological structure of gene interactions and gene
expression patterns to predict novel gene interactions. In contrast, some
approaches have focused exclusively on utilizing gene expression profiles. In
this context, we introduce GENER, a parallel-layer deep learning network
designed exclusively for the identification of gene-gene relationships using
gene expression data. We conducted two training experiments and compared the
performance of our network with that of existing statistical and deep learning
approaches. Notably, our model achieved an average AUROC score of 0.834 on the
combined BioGRID&DREAM5 dataset, outperforming competing methods in predicting
gene-gene interactions.
Related papers
- Weighted Diversified Sampling for Efficient Data-Driven Single-Cell Gene-Gene Interaction Discovery [56.622854875204645]
We present an innovative approach utilizing data-driven computational tools, leveraging an advanced Transformer model, to unearth gene-gene interactions.
A novel weighted diversified sampling algorithm computes the diversity score of each data sample in just two passes of the dataset.
arXiv Detail & Related papers (2024-10-21T03:35:23Z) - Predicting Genetic Mutation from Whole Slide Images via Biomedical-Linguistic Knowledge Enhanced Multi-label Classification [119.13058298388101]
We develop a Biological-knowledge enhanced PathGenomic multi-label Transformer to improve genetic mutation prediction performances.
BPGT first establishes a novel gene encoder that constructs gene priors by two carefully designed modules.
BPGT then designs a label decoder that finally performs genetic mutation prediction by two tailored modules.
arXiv Detail & Related papers (2024-06-05T06:42:27Z) - FGBERT: Function-Driven Pre-trained Gene Language Model for Metagenomics [35.47381119898764]
We introduce a protein-based gene representation as a context-aware and structure-relevant tokenizer.
MGM and TEM-CL constitute our novel metagenomic language model NAME, pre-trained on 100 million metagenomic sequences.
arXiv Detail & Related papers (2024-02-24T13:13:17Z) - Single-Cell Deep Clustering Method Assisted by Exogenous Gene
Information: A Novel Approach to Identifying Cell Types [50.55583697209676]
We develop an attention-enhanced graph autoencoder, which is designed to efficiently capture the topological features between cells.
During the clustering process, we integrated both sets of information and reconstructed the features of both cells and genes to generate a discriminative representation.
This research offers enhanced insights into the characteristics and distribution of cells, thereby laying the groundwork for early diagnosis and treatment of diseases.
arXiv Detail & Related papers (2023-11-28T09:14:55Z) - MuSe-GNN: Learning Unified Gene Representation From Multimodal
Biological Graph Data [22.938437500266847]
We introduce a novel model called Multimodal Similarity Learning Graph Neural Network.
It combines Multimodal Machine Learning and Deep Graph Neural Networks to learn gene representations from single-cell sequencing and spatial transcriptomic data.
Our model efficiently produces unified gene representations for the analysis of gene functions, tissue functions, diseases, and species evolution.
arXiv Detail & Related papers (2023-09-29T13:33:53Z) - Genetic InfoMax: Exploring Mutual Information Maximization in
High-Dimensional Imaging Genetics Studies [50.11449968854487]
Genome-wide association studies (GWAS) are used to identify relationships between genetic variations and specific traits.
Representation learning for imaging genetics is largely under-explored due to the unique challenges posed by GWAS.
We introduce a trans-modal learning framework Genetic InfoMax (GIM) to address the specific challenges of GWAS.
arXiv Detail & Related papers (2023-09-26T03:59:21Z) - DDeMON: Ontology-based function prediction by Deep Learning from Dynamic
Multiplex Networks [0.7349727826230864]
The goal of this work is to explore how the fusion of systems' level information with temporal dynamics of gene expression can be used to predict novel gene functions.
We propose DDeMON, an approach for scalable, systems-level inference of function annotation using time-dependent multiscale biological information.
arXiv Detail & Related papers (2023-02-08T06:53:02Z) - Machine Learning Methods for Cancer Classification Using Gene Expression
Data: A Review [77.34726150561087]
Cancer is the second major cause of death after cardiovascular diseases.
Gene expression can play a fundamental role in the early detection of cancer.
This study reviews recent progress in gene expression analysis for cancer classification using machine learning methods.
arXiv Detail & Related papers (2023-01-28T15:03:03Z) - Unsupervised ensemble-based phenotyping helps enhance the
discoverability of genes related to heart morphology [57.25098075813054]
We propose a new framework for gene discovery entitled Un Phenotype Ensembles.
It builds a redundant yet highly expressive representation by pooling a set of phenotypes learned in an unsupervised manner.
These phenotypes are then analyzed via (GWAS), retaining only highly confident and stable associations.
arXiv Detail & Related papers (2023-01-07T18:36:44Z) - Gene Function Prediction with Gene Interaction Networks: A Context Graph
Kernel Approach [24.234645183601998]
We propose to use a gene's context graph, i.e., the gene interaction network associated with the focal gene, to infer its functions.
In a kernel-based machine-learning framework, we design a context graph kernel to capture the information in context graphs.
arXiv Detail & Related papers (2022-04-22T02:54:01Z) - SimpleChrome: Encoding of Combinatorial Effects for Predicting Gene
Expression [8.326669256957352]
We present SimpleChrome, a deep learning model that learns the histone modification representations of genes.
The features learned from the model allow us to better understand the latent effects of cross-gene interactions and direct gene regulation on the target gene expression.
arXiv Detail & Related papers (2020-12-15T23:30:36Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.