
Explaining predictive factors in patient pathways using …
Nov 10, 2022 · This paper introduces an end-to-end methodology to predict a pathway-related outcome and identifying predictive factors using autoencoders. A formal description of …
Generating Protein Structures for Pathway Discovery Using Deep …
Oct 10, 2024 · To obtain a latent space useful for sampling new points between two ensembles and predicting transition pathways, our approach uses an autoencoder to map protein …
PathME: pathway based multi-modal sparse autoencoders for …
We suggested a multi-modal sparse denoising autoencoder architecture that allows for an effective and interpretable combination of multi-omics data and pathway information. Our …
scNET: learning context-specific gene and cell embeddings by ...
Mar 17, 2025 · Protein–protein interaction (PPI) networks effectively capture the functional context of genes, including pathway and complex activation as well as signal transduction.
Interpretable Autoencoders Trained on Single Cell Sequencing …
Dec 28, 2021 · Autoencoders have been used to model single-cell mRNA-sequencing data with the purpose of denoising, visualization, data simulation, and dimensionality reduction. We, and …
Biologically informed variational autoencoders allow predictive ...
Jun 16, 2023 · In this work, we demonstrate that OntoVAE can be applied in the context of predictive modeling and show its ability to predict the effects of genetic or drug-induced …
DEEPAligner: Deep encoding of pathways to align
Feb 1, 2018 · Pathways encode strong methylation signatures that distinguish biologically distinct subtypes. A novel signature-based alignment method called Deep Encoded Epigenetic …
Pathway Activity Autoencoders for Enhanced Omics Analysis and …
We propose a novel configurable prior-knowledge-based deep auto-encoding framework called PAAE and its generative variant PAVAE, for analyzing cancer RNA-seq data. Our method …
VEGA is an interpretable generative model for inferring …
Sep 28, 2021 · To provide further biological insights, we introduce a novel sparse Variational Autoencoder architecture, VEGA (VAE Enhanced by Gene Annotations), whose decoder …
Explaining predictive factors in patient pathways using …
Nov 10, 2022 · This paper introduces an end-to-end methodology to predict a pathway-related outcome and identifying predictive factors using autoencoders. A formal description of …