Cargando…

A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning

Drug–target interactions (DTIs) are considered a crucial component of drug design and drug discovery. To date, many computational methods were developed for drug–target interactions, but they are insufficiently informative for accurately predicting DTIs due to the lack of experimentally verified neg...

Descripción completa

Detalles Bibliográficos
Autores principales: Huang, Yixian, Huang, Hsi-Yuan, Chen, Yigang, Lin, Yang-Chi-Dung, Yao, Lantian, Lin, Tianxiu, Leng, Junlin, Chang, Yuan, Zhang, Yuntian, Zhu, Zihao, Ma, Kun, Cheng, Yeong-Nan, Lee, Tzong-Yi, Huang, Hsien-Da
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10531393/
https://www.ncbi.nlm.nih.gov/pubmed/37762364
http://dx.doi.org/10.3390/ijms241814061
_version_ 1785111708010807296
author Huang, Yixian
Huang, Hsi-Yuan
Chen, Yigang
Lin, Yang-Chi-Dung
Yao, Lantian
Lin, Tianxiu
Leng, Junlin
Chang, Yuan
Zhang, Yuntian
Zhu, Zihao
Ma, Kun
Cheng, Yeong-Nan
Lee, Tzong-Yi
Huang, Hsien-Da
author_facet Huang, Yixian
Huang, Hsi-Yuan
Chen, Yigang
Lin, Yang-Chi-Dung
Yao, Lantian
Lin, Tianxiu
Leng, Junlin
Chang, Yuan
Zhang, Yuntian
Zhu, Zihao
Ma, Kun
Cheng, Yeong-Nan
Lee, Tzong-Yi
Huang, Hsien-Da
author_sort Huang, Yixian
collection PubMed
description Drug–target interactions (DTIs) are considered a crucial component of drug design and drug discovery. To date, many computational methods were developed for drug–target interactions, but they are insufficiently informative for accurately predicting DTIs due to the lack of experimentally verified negative datasets, inaccurate molecular feature representation, and ineffective DTI classifiers. Therefore, we address the limitations of randomly selecting negative DTI data from unknown drug–target pairs by establishing two experimentally validated datasets and propose a capsule network-based framework called CapBM-DTI to capture hierarchical relationships of drugs and targets, which adopts pre-trained bidirectional encoder representations from transformers (BERT) for contextual sequence feature extraction from target proteins through transfer learning and the message-passing neural network (MPNN) for the 2-D graph feature extraction of compounds to accurately and robustly identify drug–target interactions. We compared the performance of CapBM-DTI with state-of-the-art methods using four experimentally validated DTI datasets of different sizes, including human (Homo sapiens) and worm (Caenorhabditis elegans) species datasets, as well as three subsets (new compounds, new proteins, and new pairs). Our results demonstrate that the proposed model achieved robust performance and powerful generalization ability in all experiments. The case study on treating COVID-19 demonstrates the applicability of the model in virtual screening.
format Online
Article
Text
id pubmed-10531393
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-105313932023-09-28 A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning Huang, Yixian Huang, Hsi-Yuan Chen, Yigang Lin, Yang-Chi-Dung Yao, Lantian Lin, Tianxiu Leng, Junlin Chang, Yuan Zhang, Yuntian Zhu, Zihao Ma, Kun Cheng, Yeong-Nan Lee, Tzong-Yi Huang, Hsien-Da Int J Mol Sci Article Drug–target interactions (DTIs) are considered a crucial component of drug design and drug discovery. To date, many computational methods were developed for drug–target interactions, but they are insufficiently informative for accurately predicting DTIs due to the lack of experimentally verified negative datasets, inaccurate molecular feature representation, and ineffective DTI classifiers. Therefore, we address the limitations of randomly selecting negative DTI data from unknown drug–target pairs by establishing two experimentally validated datasets and propose a capsule network-based framework called CapBM-DTI to capture hierarchical relationships of drugs and targets, which adopts pre-trained bidirectional encoder representations from transformers (BERT) for contextual sequence feature extraction from target proteins through transfer learning and the message-passing neural network (MPNN) for the 2-D graph feature extraction of compounds to accurately and robustly identify drug–target interactions. We compared the performance of CapBM-DTI with state-of-the-art methods using four experimentally validated DTI datasets of different sizes, including human (Homo sapiens) and worm (Caenorhabditis elegans) species datasets, as well as three subsets (new compounds, new proteins, and new pairs). Our results demonstrate that the proposed model achieved robust performance and powerful generalization ability in all experiments. The case study on treating COVID-19 demonstrates the applicability of the model in virtual screening. MDPI 2023-09-14 /pmc/articles/PMC10531393/ /pubmed/37762364 http://dx.doi.org/10.3390/ijms241814061 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Huang, Yixian
Huang, Hsi-Yuan
Chen, Yigang
Lin, Yang-Chi-Dung
Yao, Lantian
Lin, Tianxiu
Leng, Junlin
Chang, Yuan
Zhang, Yuntian
Zhu, Zihao
Ma, Kun
Cheng, Yeong-Nan
Lee, Tzong-Yi
Huang, Hsien-Da
A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning
title A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning
title_full A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning
title_fullStr A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning
title_full_unstemmed A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning
title_short A Robust Drug–Target Interaction Prediction Framework with Capsule Network and Transfer Learning
title_sort robust drug–target interaction prediction framework with capsule network and transfer learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10531393/
https://www.ncbi.nlm.nih.gov/pubmed/37762364
http://dx.doi.org/10.3390/ijms241814061
work_keys_str_mv AT huangyixian arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT huanghsiyuan arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT chenyigang arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT linyangchidung arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT yaolantian arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT lintianxiu arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT lengjunlin arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT changyuan arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT zhangyuntian arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT zhuzihao arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT makun arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT chengyeongnan arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT leetzongyi arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT huanghsienda arobustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT huangyixian robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT huanghsiyuan robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT chenyigang robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT linyangchidung robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT yaolantian robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT lintianxiu robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT lengjunlin robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT changyuan robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT zhangyuntian robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT zhuzihao robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT makun robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT chengyeongnan robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT leetzongyi robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning
AT huanghsienda robustdrugtargetinteractionpredictionframeworkwithcapsulenetworkandtransferlearning