Please refer to the readme in the github link https://github.com/zhenglinyi/DL-mo. for the specific usage instructions of the code. Abstract Background: A fused method using a combination of multi-omics data enables a comprehensive study of complex biological processes and highlights the interrelationship of relevant biomolecules and their functions. Driven by high throughput sequencing technologies, several promising deep learning methods have been proposed for fusing multi-omics data generated from a large number of samples. Results: In this study, 16 representative deep learning methods are comprehensively evaluated on simulated, single-cell, and cancer multi-omics datasets. For each of the datasets, two tasks are designed: classifica...
Deep learning is a subdiscipline of artificial intelligence that uses a machine learning technique c...
Analysing multiple types of omics data is a keystone methodology in biomedical research nowadays. Wi...
This research aims to review and evaluate the most relevant scientific studies about deep learning (...
In recent years, high-throughput sequencing technologies provide unprecedented opportunity to depict...
Cancer is a concerning disease for many people nowadays because of its high mortality rate and its h...
Curs 2020-2021ancer is a complex disease caused by the abnormal behavior and interaction of differen...
Cancers are genetically heterogeneous, and therefore the same anti-cancer drug may have varying degr...
International audienceHigh-dimensional multi-omics data are now standard in biology. They can greatl...
High-dimensional omics data contain intrinsic biomedical information that is crucial for personalise...
International audienceThe availability of patient cohorts with several types of omics data opens new...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Multi-omics, variously called integrated omics, pan-omics, and trans-omics, aims to combine two or m...
Multi-omics, variously called integrated omics, pan-omics, and trans-omics, aims to combine two or m...
Data analytics is routinely used to support biomedical research in all areas, with particular focus ...
Recent advances in high-throughput sequencing have accelerated the accumulation of omics data on the...
Deep learning is a subdiscipline of artificial intelligence that uses a machine learning technique c...
Analysing multiple types of omics data is a keystone methodology in biomedical research nowadays. Wi...
This research aims to review and evaluate the most relevant scientific studies about deep learning (...
In recent years, high-throughput sequencing technologies provide unprecedented opportunity to depict...
Cancer is a concerning disease for many people nowadays because of its high mortality rate and its h...
Curs 2020-2021ancer is a complex disease caused by the abnormal behavior and interaction of differen...
Cancers are genetically heterogeneous, and therefore the same anti-cancer drug may have varying degr...
International audienceHigh-dimensional multi-omics data are now standard in biology. They can greatl...
High-dimensional omics data contain intrinsic biomedical information that is crucial for personalise...
International audienceThe availability of patient cohorts with several types of omics data opens new...
© 2020 Richard LupatRapid advancement in genomic technologies has driven down the cost of sequencing...
Multi-omics, variously called integrated omics, pan-omics, and trans-omics, aims to combine two or m...
Multi-omics, variously called integrated omics, pan-omics, and trans-omics, aims to combine two or m...
Data analytics is routinely used to support biomedical research in all areas, with particular focus ...
Recent advances in high-throughput sequencing have accelerated the accumulation of omics data on the...
Deep learning is a subdiscipline of artificial intelligence that uses a machine learning technique c...
Analysing multiple types of omics data is a keystone methodology in biomedical research nowadays. Wi...
This research aims to review and evaluate the most relevant scientific studies about deep learning (...