Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients that suffer of complex diseases. Therefore, it is important to have reliable tools able to predict if the activity of a drug could unfavorably change when combined with others. State-of-the-art methods face this problem as a link prediction task on a multilayer graph describing drug-drug interactions (DDI) and protein-protein interactions (PPI), since it has been demonstrated to be the most effective representation. Graph Convolutional Networks (GCN) are the method most commonly chosen in recent research for this problem. We propose to improve the performance of GCN on this link prediction task through the addition of a novel relation-wise Graph...
Polypharmacy refers to the administration of multiple drugs on a daily basis. It has demonstrated ef...
Predicting the effects of Polypharmacy is a difficult task, and a great amount of money is spent ann...
Traditional drug development in wet labs has long been a costly, cumbersome and error-prone process....
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
We apply a heterogeneous graph convolution network (GCN) combined with a multi-layer perceptron (MLP...
Many people - especially during their elderly - consume multiple drugs for the treatment of complex ...
Many people - especially during their elderly - consume multiple drugs for the treatment of complex ...
Abstract: The prediction of polypharmacy side effects is crucial to reduce the mortality and morbid...
Drug Side-Effects (DSEs) have a high impact on public health, care system costs, and drug discovery ...
Drug Side-Effects (DSEs) have a high impact on public health, care system costs, and drug discovery ...
Polypharmacy, defined as the use of multiple drugs together, is a standard treatment method, especia...
Polypharmacy refers to the administration of multiple drugs on a daily basis. It has demonstrated ef...
Polypharmacy refers to the administration of multiple drugs on a daily basis. It has demonstrated ef...
Predicting the effects of Polypharmacy is a difficult task, and a great amount of money is spent ann...
Traditional drug development in wet labs has long been a costly, cumbersome and error-prone process....
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
Polypharmacy is the combined use of multiple drugs, widely adopted in medicine to treat patients tha...
We apply a heterogeneous graph convolution network (GCN) combined with a multi-layer perceptron (MLP...
Many people - especially during their elderly - consume multiple drugs for the treatment of complex ...
Many people - especially during their elderly - consume multiple drugs for the treatment of complex ...
Abstract: The prediction of polypharmacy side effects is crucial to reduce the mortality and morbid...
Drug Side-Effects (DSEs) have a high impact on public health, care system costs, and drug discovery ...
Drug Side-Effects (DSEs) have a high impact on public health, care system costs, and drug discovery ...
Polypharmacy, defined as the use of multiple drugs together, is a standard treatment method, especia...
Polypharmacy refers to the administration of multiple drugs on a daily basis. It has demonstrated ef...
Polypharmacy refers to the administration of multiple drugs on a daily basis. It has demonstrated ef...
Predicting the effects of Polypharmacy is a difficult task, and a great amount of money is spent ann...
Traditional drug development in wet labs has long been a costly, cumbersome and error-prone process....