Modern biomedical research aims at drawing biological conclusions from large, highly complex biological datasets. It has become common practice to make extensive use of high-throughput technologies that produce big amounts of heterogeneous data. In addition to the ever-improving accuracy, methods are getting faster and cheaper, resulting in a steadily increasing need for scalable data management and easily accessible means of analysis. We present qPortal, a platform providing users with an intuitive way to manage and analyze quantitative biological data. The backend leverages a variety of concepts and technologies, such as relational databases, data stores, data models and means of data transfer, as well as front-end solutions to give users...
Motivation: The rapid accumulation of both sequence and phenotype data generated by high-throughput ...
, non-standardized individual files and, thus, data interchange among researchers, or any attempt of...
As the scale of biological data generation has increased, the bottleneck of research has shifted fro...
Modern biomedical research aims at drawing biological conclusions from large, highly complex biologi...
The advent of high throughput technologies not only brought huge amounts of biological data but also...
High-throughput data production technologies, particularly 'next-generation' DNA sequencing, have us...
International audienceBased on the generic data model of the Quantitative Kidney DataBase, QKDB (htt...
New high throughput experimental techniques have turned the life sciences into a data-intensive fiel...
[[abstract]]Interest on biotechnology has increased dramatically. With the completion of sequencing ...
Biological, clinical, and pharmacological research now often involves analyses of genomes, transcrip...
Abstract Information integration and workflow technologies for data analysis have always been major ...
Information integration and workflow technologies for data analysis have always been major fields of...
Life science research has traditionally been a data-centric research field. Advancements in high- th...
The FAIR (Findable, Accessible, Interoperable, Reusable) data principles [1] are powerful guidelines...
Motivation: The rapid accumulation of both sequence and phenotype data generated by high-throughput ...
, non-standardized individual files and, thus, data interchange among researchers, or any attempt of...
As the scale of biological data generation has increased, the bottleneck of research has shifted fro...
Modern biomedical research aims at drawing biological conclusions from large, highly complex biologi...
The advent of high throughput technologies not only brought huge amounts of biological data but also...
High-throughput data production technologies, particularly 'next-generation' DNA sequencing, have us...
International audienceBased on the generic data model of the Quantitative Kidney DataBase, QKDB (htt...
New high throughput experimental techniques have turned the life sciences into a data-intensive fiel...
[[abstract]]Interest on biotechnology has increased dramatically. With the completion of sequencing ...
Biological, clinical, and pharmacological research now often involves analyses of genomes, transcrip...
Abstract Information integration and workflow technologies for data analysis have always been major ...
Information integration and workflow technologies for data analysis have always been major fields of...
Life science research has traditionally been a data-centric research field. Advancements in high- th...
The FAIR (Findable, Accessible, Interoperable, Reusable) data principles [1] are powerful guidelines...
Motivation: The rapid accumulation of both sequence and phenotype data generated by high-throughput ...
, non-standardized individual files and, thus, data interchange among researchers, or any attempt of...
As the scale of biological data generation has increased, the bottleneck of research has shifted fro...