A Novel Deep Neural Network Technique for Drug–Target Interaction
Metadatos
Mostrar el registro completo del ítemEditorial
MDPI
Materia
Drug-target interaction DTI prediction Deep learning Convolutional neural network
Fecha
2022-03-11Referencia bibliográfica
de Souza, J.G.; Fernandes, M.A.C.; de Melo Barbosa, R. A Novel Deep Neural Network Technique for Drug–Target Interaction. Pharmaceutics 2021, 14, 625. [https://doi.org/10.3390/pharmaceutics14030625]
Patrocinador
Coordenacao de Aperfeicoamento de Pessoal de Nivel Superior (CAPES) 001; High-Performance Computing Center at UFRN (NPAD/UFRN)Resumen
Drug discovery (DD) is a time-consuming and expensive process. Thus, the industry
employs strategies such as drug repositioning and drug repurposing, which allows the application of
already approved drugs to treat a di erent disease, as occurred in the first months of 2020, during the
COVID-19 pandemic. The prediction of drug–target interactions is an essential part of the DD process
because it can accelerate it and reduce the required costs. DTI prediction performed in silico have used
approaches based on molecular docking simulations, including similarity-based and network- and
graph-based ones. This paper presents MPS2IT-DTI, a DTI prediction model obtained from research
conducted in the following steps: the definition of a new method for encoding molecule and protein
sequences onto images; the definition of a deep-learning approach based on a convolutional neural
network in order to create a new method for DTI prediction. Training results conducted with the
Davis and KIBA datasets show that MPS2IT-DTI is viable compared to other state-of-the-art (SOTA)
approaches in terms of performance and complexity of the neural network model. With the Davis
dataset, we obtained 0.876 for the concordance index and 0.276 for the MSE; with the KIBA dataset,
we obtained 0.836 and 0.226 for the concordance index and the MSE, respectively. Moreover, the
MPS2IT-DTI model represents molecule and protein sequences as images, instead of treating them as
an NLP task, and as such, does not employ an embedding layer, which is present in other models.