
AJUNTAMENT D'ALCOI
Website

Generalitat Valenciana
Website

Ayuntamiento de Valencia
Website

Cicloplast
Website

Ayuntamiento de Onil
Website

Anarpla
Website

Ayuntamiento de Mislata
Website

nlWA, North London Waste Authority
Website

Ayuntamiento de Salinas
Website

Zicla
Website

Fondazione Ecosistemi
Website

PEFC
Website

ALQUIENVAS
Website

DIPUTACI� DE VAL�NCIA
Website

AYUNTAMIENTO DE REQUENA
Website

UNIVERSIDAD DE ZARAGOZA
Website

OBSERVATORIO CONTRATACIÓN PÚBLICA
Website

AYUNTAMIENTO DE PAIPORTA
Website

AYUNTAMIENTO DE CUENCA
Website

BERL� S.A.
Website

CM PLASTIK
Website

TRANSFORMADORES INDUSTRIALES ECOL�GICOS

INDUSTRIAS AGAPITO
Website

RUBI KANGURO
Website
If you want to support our LIFE project as a STAKEHOLDER, please contact with us: life-future-project@aimplas.es
In this section, you can access to the latest technical information related to the FUTURE project topic.
Identification of RNA pseudouridine sites using deep learning approaches
Pseudouridine(?) is widely popular among various RNA modifications which have been confirmed to occur in rRNA, mRNA, tRNA, and nuclear/nucleolar RNA. Hence, identifying them has vital significance in academic research, drug development and gene therapies. Several laboratory techniques for ? identification have been introduced over the years. Although these techniques produce satisfactory results, they are costly, time-consuming and requires skilled experience. As the lengths of RNA sequences are getting longer day by day, an efficient method for identifying pseudouridine sites using computational approaches is very important. In this paper, we proposed a multi-channel convolution neural network using binary encoding. We employed k-fold cross-validation and grid search to tune the hyperparameters. We evaluated its performance in the independent datasets and found promising results. The results proved that our method can be used to identify pseudouridine sites for associated purposes. We have also implemented an easily accessible web server at http://103.99.176.239/ipseumulticnn/.

» Author: Abu Zahid Bin Aziz, Md. Al Mehedi Hasan, Jungpil Shin
» Reference: https://doi.org/10.1371/journal.pone.0247511
» Publication Date: 23/02/2021
C/ Gustave Eiffel, 4
(València Parc Tecnològic) - 46980
PATERNA (Valencia) - SPAIN
(+34) 96 136 60 40
Project Management department - Sustainability and Industrial Recovery
life-future-project@aimplas.es
