VHINFGM: Virus-Host Interaction prediction via Network Fusion and Graph Mining

Author(s):  
Qiang Zhu ◽  
Qinghui Dai ◽  
Bangchao Wang ◽  
Jinxing Liang ◽  
Junping Liu ◽  
...  
2020 ◽  
Vol 12 (1) ◽  
Author(s):  
Maha A. Thafar ◽  
Rawan S. Olayan ◽  
Haitham Ashoor ◽  
Somayah Albaradei ◽  
Vladimir B. Bajic ◽  
...  

Patterns ◽  
2021 ◽  
pp. 100242
Author(s):  
Hangyu Du ◽  
Feng Chen ◽  
Hongfu Liu ◽  
Pengyu Hong

2020 ◽  
Vol 21 (9) ◽  
pp. 3119 ◽  
Author(s):  
Jeroen Wagemans ◽  
Jessica Tsonos ◽  
Dominique Holtappels ◽  
Kiandro Fortuna ◽  
Jean-Pierre Hernalsteens ◽  
...  

The phAPEC6 genome encodes 551 predicted gene products, with the vast majority (83%) of unknown function. Of these, 62 have been identified as virion-associated proteins by mass spectrometry (ESI-MS/MS), including the major capsid protein (Gp225; present in 1620 copies), which shows a HK97 capsid protein-based fold. Cryo-electron microscopy experiments showed that the 350-kbp DNA molecule of Escherichia coli virus phAPEC6 is packaged in at least 15 concentric layers in the phage capsid. A capsid inner body rod is also present, measuring about 91 nm by 18 nm and oriented along the portal axis. In the phAPEC6 contractile tail, 25 hexameric stacked rings can be distinguished, built of the identified tail sheath protein (Gp277). Cryo-EM reconstruction reveals the base of the unique hairy fibers observed during an initial transmission electron microscopy (TEM) analysis. These very unusual filaments are ordered at three annular positions along the contractile sheath, as well as around the capsid, and may be involved in host interaction.


2019 ◽  
Vol 9 (1) ◽  
Author(s):  
Narjes Rohani ◽  
Changiz Eslahchi

Abstract Drug-Drug Interaction (DDI) prediction is one of the most critical issues in drug development and health. Proposing appropriate computational methods for predicting unknown DDI with high precision is challenging. We proposed "NDD: Neural network-based method for drug-drug interaction prediction" for predicting unknown DDIs using various information about drugs. Multiple drug similarities based on drug substructure, target, side effect, off-label side effect, pathway, transporter, and indication data are calculated. At first, NDD uses a heuristic similarity selection process and then integrates the selected similarities with a nonlinear similarity fusion method to achieve high-level features. Afterward, it uses a neural network for interaction prediction. The similarity selection and similarity integration parts of NDD have been proposed in previous studies of other problems. Our novelty is to combine these parts with new neural network architecture and apply these approaches in the context of DDI prediction. We compared NDD with six machine learning classifiers and six state-of-the-art graph-based methods on three benchmark datasets. NDD achieved superior performance in cross-validation with AUPR ranging from 0.830 to 0.947, AUC from 0.954 to 0.994 and F-measure from 0.772 to 0.902. Moreover, cumulative evidence in case studies on numerous drug pairs, further confirm the ability of NDD to predict unknown DDIs. The evaluations corroborate that NDD is an efficient method for predicting unknown DDIs. The data and implementation of NDD are available at https://github.com/nrohani/NDD.


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