International initiatives such as the Molecular Taxonomy of Breast Cancer International Consortium are collecting multiple data sets at different genome-scales with the aim to identify novel cancer bio-markers and predict patient survival. To analyze such data, several machine learning, bioinformatics, and statistical methods have been applied, among them neural networks such as autoencoders. Although these models provide a good statistical learning framework to analyze multi-omic and/or clinical data, there is a distinct lack of work on how to integrate diverse patient data and identify the optimal design best suited to the available data.In this paper, we investigate several autoencoder architectures that integrate a variety of cancer pat...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Personalized treatment methods for a complex disease such as cancer benefit from using multiple data...
This work presents four computational studies for the prediction of cancer genes and pathways and th...
International initiatives such as the Molecular Taxonomy of Breast Cancer International Consortium a...
International initiatives such as the Molecular Taxonomy of Breast Cancer International Consortium a...
International audienceThe availability of patient cohorts with several types of omics data opens new...
Breast cancer is the most common cause of cancer death in women. Today, post-transcriptional protein...
Abstract Background High-throughput methodologies such as microarrays and next-generation sequencing...
Abstract Background Multiple studies have shown the utility of transcriptome-wide RNA-seq profiles a...
Artificial intelligence-based unsupervised deep learning (DL) is widely used to mine multimodal big ...
A heterogeneous disease like cancer is activated through multiple pathways and different perturbatio...
Cancer subtyping (or cancer subtypes identification) based on multi-omics data has played an importa...
Cancer is a complex and multifaceted disease, and a vast amount of time and effort has been spent on...
Breast cancer is the most common cause of cancer death in women. Today, post-transcriptional protein...
In recent years, high-throughput sequencing technologies provide unprecedented opportunity to depict...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Personalized treatment methods for a complex disease such as cancer benefit from using multiple data...
This work presents four computational studies for the prediction of cancer genes and pathways and th...
International initiatives such as the Molecular Taxonomy of Breast Cancer International Consortium a...
International initiatives such as the Molecular Taxonomy of Breast Cancer International Consortium a...
International audienceThe availability of patient cohorts with several types of omics data opens new...
Breast cancer is the most common cause of cancer death in women. Today, post-transcriptional protein...
Abstract Background High-throughput methodologies such as microarrays and next-generation sequencing...
Abstract Background Multiple studies have shown the utility of transcriptome-wide RNA-seq profiles a...
Artificial intelligence-based unsupervised deep learning (DL) is widely used to mine multimodal big ...
A heterogeneous disease like cancer is activated through multiple pathways and different perturbatio...
Cancer subtyping (or cancer subtypes identification) based on multi-omics data has played an importa...
Cancer is a complex and multifaceted disease, and a vast amount of time and effort has been spent on...
Breast cancer is the most common cause of cancer death in women. Today, post-transcriptional protein...
In recent years, high-throughput sequencing technologies provide unprecedented opportunity to depict...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Personalized treatment methods for a complex disease such as cancer benefit from using multiple data...
This work presents four computational studies for the prediction of cancer genes and pathways and th...