Recent advancements in experimental high-throughput technologies have expanded the availability and quantity of molecular data in biology. Given the importance of interactions in biological processes, such as the interactions between proteins or the bonds within a chemical compound, this data is often represented in the form of a biological network. The rise of this data has created a need for new computational tools to analyze networks. One major trend in the field is to use deep learning for this goal and, more specifically, to use methods that work with networks, the so-called graph neural networks (GNNs). In this article, we describe biological networks and review the principles and underlying algorithms of GNNs. We then discuss domains...
The functional characterization of all genes and their gene products is the main challenge of the po...
Enormous amounts of biological data have been generated and stored in various public and private dat...
Current understanding of how diseases are associated with each other is mainly based on the similari...
Graph Neural Networks (GNNs) have known an important and fast development in the last decade, with m...
Graph Neural Networks (GNNs) have known an important and fast development in the last decade, with m...
Graph Neural Networks (GNNs) have known an important and fast development in the last decade, with m...
Graph neural networks (GNNs), as a branch of deep learning in non-Euclidean space, perform particula...
The function of most biological systems is realized by the interaction of proteins with other biolog...
Lives on earth are regulated by a complex system of interactions. Modelling these interactions throu...
Life on earth is regulated by a complex system of interactions. Network Medicine models biological o...
Biological entities are involved in intricate and complex interactions, in which uncovering the bio...
Tese de Mestrado, Bioinformática e Biologia Computacional, 2023, Universidade de Lisboa, Faculdade d...
Motivation: Deciphering the relationship between human genes/proteins and abnormal phenotypes is of ...
The ultimate aim of postgenomic biomedical research is to understand mechanisms of cellular systems ...
Molecular biology has entered an era of systematic and automated experimentation. High-throughput te...
The functional characterization of all genes and their gene products is the main challenge of the po...
Enormous amounts of biological data have been generated and stored in various public and private dat...
Current understanding of how diseases are associated with each other is mainly based on the similari...
Graph Neural Networks (GNNs) have known an important and fast development in the last decade, with m...
Graph Neural Networks (GNNs) have known an important and fast development in the last decade, with m...
Graph Neural Networks (GNNs) have known an important and fast development in the last decade, with m...
Graph neural networks (GNNs), as a branch of deep learning in non-Euclidean space, perform particula...
The function of most biological systems is realized by the interaction of proteins with other biolog...
Lives on earth are regulated by a complex system of interactions. Modelling these interactions throu...
Life on earth is regulated by a complex system of interactions. Network Medicine models biological o...
Biological entities are involved in intricate and complex interactions, in which uncovering the bio...
Tese de Mestrado, Bioinformática e Biologia Computacional, 2023, Universidade de Lisboa, Faculdade d...
Motivation: Deciphering the relationship between human genes/proteins and abnormal phenotypes is of ...
The ultimate aim of postgenomic biomedical research is to understand mechanisms of cellular systems ...
Molecular biology has entered an era of systematic and automated experimentation. High-throughput te...
The functional characterization of all genes and their gene products is the main challenge of the po...
Enormous amounts of biological data have been generated and stored in various public and private dat...
Current understanding of how diseases are associated with each other is mainly based on the similari...