The integration of multiblock high throughput data from multiple sources is one of the major challenges in several disciplines including metabolomics, computational biology, genomics, and clinical psychology. A main challenge in this line of research is to obtain interpretable results 1) that give an insight into the common and distinctive sources of variations associated to the multiple and heterogeneous data blocks and 2) that facilitate the identification of relevant variables. We present a novel variable selection method for performing data integration, providing easily interpretable results, and recovering underlying data structure such as common and distinctive components. The flexibility and applicability of this method are showcased...
Introduction Availability of large cohorts of samples with related metadata provides scientists with...
Due to the large accumulation of omics data sets in public repositories, innumerable studies have be...
Recent biotechnology advances allow the collection of multiple types of omics data sets, such as tra...
Background: Data integration is currently one of the main challenges in the biomedical sciences. Oft...
Variable selection is an important step in multivariate calibration in which the number of variables...
High-throughput technologies have been used to generate a large amount of omics data. In the past, s...
High-throughput technologies have been used to generate a large amount of omics data. In the past, s...
The joint study of multiple datasets has become a common technique for increasing statistical power ...
Research Doctorate - Doctor of Philosophy (PhD)Meta-analysis has become a popular method for identif...
The goal of data fusion in metabolomics is to combine data of various platforms measured on the same...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
International audienceRecent advances in NGS sequencing, microarrays and mass spectrometry for omics...
To explore structural differences and similarities in multivariate multiblock data (e.g., a number o...
In modern omics research, it is more rule than exception that multiple data sets are collected in a ...
(Background) High throughput data are complex and methods that reveal structure underlying the data ...
Introduction Availability of large cohorts of samples with related metadata provides scientists with...
Due to the large accumulation of omics data sets in public repositories, innumerable studies have be...
Recent biotechnology advances allow the collection of multiple types of omics data sets, such as tra...
Background: Data integration is currently one of the main challenges in the biomedical sciences. Oft...
Variable selection is an important step in multivariate calibration in which the number of variables...
High-throughput technologies have been used to generate a large amount of omics data. In the past, s...
High-throughput technologies have been used to generate a large amount of omics data. In the past, s...
The joint study of multiple datasets has become a common technique for increasing statistical power ...
Research Doctorate - Doctor of Philosophy (PhD)Meta-analysis has become a popular method for identif...
The goal of data fusion in metabolomics is to combine data of various platforms measured on the same...
International audienceRecent biotechnology advances allow for the collection of multiple types of om...
International audienceRecent advances in NGS sequencing, microarrays and mass spectrometry for omics...
To explore structural differences and similarities in multivariate multiblock data (e.g., a number o...
In modern omics research, it is more rule than exception that multiple data sets are collected in a ...
(Background) High throughput data are complex and methods that reveal structure underlying the data ...
Introduction Availability of large cohorts of samples with related metadata provides scientists with...
Due to the large accumulation of omics data sets in public repositories, innumerable studies have be...
Recent biotechnology advances allow the collection of multiple types of omics data sets, such as tra...