This paper discusses the need for interconnecting computational cancer models from different sources and scales within clinically relevant scenarios to increase the accuracy of the models and speed up their clinical adaptation, validation, and eventual translation. We briefly review current interoperability efforts drawing upon our experiences with the development of in silico models for predictive oncology within a number of European Commission Virtual Physiological Human initiative projects on cancer. A clinically relevant scenario, addressing brain tumor modeling that illustrates the need for coupling models from different sources and levels of complexity, is described. General approaches to enabling interoperability using XML-based mark...
Integrative cancer biology research relies on a variety of data-driven computational modeling and si...
To improve and focus preclinical testing, we combine tumor models based on a decellularized tissue m...
This perspective article gathers the latest developments in mathematical and computational oncology ...
This paper discusses the need for interconnecting computational cancer models from different sources...
This paper discusses the need for interconnecting computational cancer models from different sources...
In silico models of cancer progression are numerous and diverse. Integration of different cancer mod...
The papers in this special section focus on the use of multiscale modeling in the field of cancer re...
Patient-derived xenografts (PDXs) have emerged as an important platform to elucidate new treatments ...
Gene expression profiling provides tremendous information to help unravel the complexity of cancer. ...
Abstract: Integrative cancer biology research relies on a variety of data-driven computational model...
This paper describes the initial groundwork carried out as part of the European Commission funded Tr...
There is a sense of promise that accelerating growth of knowledge about the molecular basis for the ...
Patient-derived xenografts (PDXs) have emerged as an important platform to elucidate new treatments ...
Cancer cell lines, patient derived xenografts and genetically engineered mouse models provide valuab...
Cancer is a heterogeneous and complex disease and one of the leading causes of death worldwide. The ...
Integrative cancer biology research relies on a variety of data-driven computational modeling and si...
To improve and focus preclinical testing, we combine tumor models based on a decellularized tissue m...
This perspective article gathers the latest developments in mathematical and computational oncology ...
This paper discusses the need for interconnecting computational cancer models from different sources...
This paper discusses the need for interconnecting computational cancer models from different sources...
In silico models of cancer progression are numerous and diverse. Integration of different cancer mod...
The papers in this special section focus on the use of multiscale modeling in the field of cancer re...
Patient-derived xenografts (PDXs) have emerged as an important platform to elucidate new treatments ...
Gene expression profiling provides tremendous information to help unravel the complexity of cancer. ...
Abstract: Integrative cancer biology research relies on a variety of data-driven computational model...
This paper describes the initial groundwork carried out as part of the European Commission funded Tr...
There is a sense of promise that accelerating growth of knowledge about the molecular basis for the ...
Patient-derived xenografts (PDXs) have emerged as an important platform to elucidate new treatments ...
Cancer cell lines, patient derived xenografts and genetically engineered mouse models provide valuab...
Cancer is a heterogeneous and complex disease and one of the leading causes of death worldwide. The ...
Integrative cancer biology research relies on a variety of data-driven computational modeling and si...
To improve and focus preclinical testing, we combine tumor models based on a decellularized tissue m...
This perspective article gathers the latest developments in mathematical and computational oncology ...