dc.contributor.author | OĞUL, HASAN | |
dc.contributor.author | Haberal, Ismail | |
dc.date.accessioned | 2022-02-18T10:52:03Z | |
dc.date.available | 2022-02-18T10:52:03Z | |
dc.date.issued | 2019 | |
dc.identifier.citation | Haberal I., OĞUL H., "Prediction of Protein Metal Binding Sites Using Deep Neural Networks", MOLECULAR INFORMATICS, cilt.38, sa.7, 2019 | |
dc.identifier.issn | 1868-1743 | |
dc.identifier.other | vv_1032021 | |
dc.identifier.other | av_c2f8a038-8239-46da-ba7f-6e71d3579b93 | |
dc.identifier.uri | http://hdl.handle.net/20.500.12627/180063 | |
dc.identifier.uri | https://doi.org/10.1002/minf.201800169 | |
dc.description.abstract | Metals have crucial roles for many physiological, pathological and diagnostic processes. Metal binding proteins or metalloproteins are important for metabolism functions. The proteins that reach the three-dimensional structure by folding show which vital function is fulfilled. The prediction of metal-binding in proteins will be considered as a step-in function assignment for new proteins, which helps to obtain functional proteins in genomic studies, is critical to protein function annotation and drug discovery. Computational predictions made by using machine learning methods from the data obtained from amino acid sequences are widely used in the protein metal-binding and various bioinformatics fields. In this work, we present three different deep learning architectures for prediction of metal-binding of Histidines (HIS) and Cysteines (CYS) amino acids. These architectures are as follows: 2D Convolutional Neural Network, Long-Short Term Memory and Recurrent Neural Network. Their comparison is carried out on the three different sets of attributes derived from a public dataset of protein sequences. These three sets of features extracted from the protein sequence were obtained using the PAM scoring matrix, protein composition server, and binary representation methods. The results show that a better performance for prediction of protein metal- binding sites is obtained through Convolutional Neural Network architecture. | |
dc.language.iso | eng | |
dc.subject | Pharmacology (medical) | |
dc.subject | KİMYA, TIP | |
dc.subject | Kimya | |
dc.subject | Temel Bilimler (SCI) | |
dc.subject | Tıp | |
dc.subject | Biochemistry (medical) | |
dc.subject | Pharmacy | |
dc.subject | Drug Guides | |
dc.subject | Physical Sciences | |
dc.subject | Life Sciences | |
dc.subject | Health Sciences | |
dc.subject | Computers in Earth Sciences | |
dc.subject | Computer Graphics and Computer-Aided Design | |
dc.subject | General Computer Science | |
dc.subject | Chemistry (miscellaneous) | |
dc.subject | Computer Science (miscellaneous) | |
dc.subject | General Chemistry | |
dc.subject | Computer Science Applications | |
dc.subject | BİLGİSAYAR BİLİMİ, İNTERDİSİPLİNER UYGULAMALAR | |
dc.subject | Bilgisayar Bilimi | |
dc.subject | Mühendislik, Bilişim ve Teknoloji (ENG) | |
dc.subject | MATEMATİKSEL VE BİLGİSAYAR BİYOLOJİSİ | |
dc.subject | Biyoloji ve Biyokimya | |
dc.subject | Yaşam Bilimleri (LIFE) | |
dc.subject | FARMAKOLOJİ VE ECZACILIK | |
dc.subject | Farmakoloji ve Toksikoloji | |
dc.subject | Sağlık Bilimleri | |
dc.subject | Temel Tıp Bilimleri | |
dc.subject | Biyokimya | |
dc.subject | Eczacılık | |
dc.subject | Temel Eczacılık Bilimleri | |
dc.subject | Bilgisayar Bilimleri | |
dc.subject | Bilgisayar Grafiği | |
dc.subject | Yaşam Bilimleri | |
dc.subject | Biyoinformatik | |
dc.subject | Temel Bilimler | |
dc.subject | Mühendislik ve Teknoloji | |
dc.subject | Pharmacology | |
dc.subject | General Pharmacology, Toxicology and Pharmaceutics | |
dc.subject | Pharmacology, Toxicology and Pharmaceutics (miscellaneous) | |
dc.title | Prediction of Protein Metal Binding Sites Using Deep Neural Networks | |
dc.type | Makale | |
dc.relation.journal | MOLECULAR INFORMATICS | |
dc.contributor.department | İstanbul Üniversitesi , , | |
dc.identifier.volume | 38 | |
dc.identifier.issue | 7 | |
dc.contributor.firstauthorID | 3387397 | |