Author
Listed:
- Juliana Auzier Seixas Feio
- Ewerton Cristhian Lima de Oliveira
- Claudomiro de Souza de Sales Junior
- Kauê Santana da Costa
- Anderson Henrique Lima e Lima
Abstract
Cell-penetrating peptides comprise a group of molecules that can naturally cross the lipid bilayer membrane that protects cells, sharing physicochemical and structural properties, and having several pharmaceutical applications, particularly in drug delivery. Investigations of molecular descriptors have provided not only an improvement in the performance of classifiers but also less computational complexity and an enhanced understanding of membrane permeability. Furthermore, the employment of new technologies, such as the construction of deep learning models using overfitting treatment, promotes advantages in tackling this problem. In this study, the descriptors nitrogen, oxygen, and hydrophobicity on the Eisenberg scale were investigated, using the proposed ConvBoost-CPP composed of an improved convolutional neural network with overfitting treatment and an XGBoost model with adjusted hyperparameters. The results revealed favorable to the use of ConvBoost-CPP, having as input nitrogen, oxygen, and hydrophobicity together with ten other descriptors previously investigated in this research line, showing an increase in accuracy from 88% to 91.2% in cross-validation and 82.6% to 91.3% in independent test.
Suggested Citation
Juliana Auzier Seixas Feio & Ewerton Cristhian Lima de Oliveira & Claudomiro de Souza de Sales Junior & Kauê Santana da Costa & Anderson Henrique Lima e Lima, 2024.
"Investigating molecular descriptors in cell-penetrating peptides prediction with deep learning: Employing N, O, and hydrophobicity according to the Eisenberg scale,"
PLOS ONE, Public Library of Science, vol. 19(6), pages 1-19, June.
Handle:
RePEc:plo:pone00:0305253
DOI: 10.1371/journal.pone.0305253
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