ACP-MHCNN: an accurate multi-headed deep-convolutional neural network to predict anticancer peptides

被引:54
作者
Ahmed, Sajid [1 ]
Muhammod, Rafsanjani [1 ]
Khan, Zahid Hossain [1 ]
Adilina, Sheikh [1 ]
Sharma, Alok [2 ,3 ]
Shatabda, Swakkhar [1 ]
Dehzangi, Abdollah [4 ,5 ]
机构
[1] United Int Univ, Dept Comp Sci & Engn, Dhaka, Bangladesh
[2] RIKEN Ctr Integrat Med Sci, Lab Med Sci Math, Yokohama, Kanagawa 2300045, Japan
[3] Griffith Univ, Inst Integrated & Intelligent Syst, Brisbane, Qld 4111, Australia
[4] Rutgers State Univ, Dept Comp Sci, Camden, NJ 08102 USA
[5] Rutgers State Univ, Ctr Computat & Integrat Biol, Camden, NJ 08102 USA
关键词
PROTEIN INTERACTIONS; ARCHITECTURES; IACP;
D O I
10.1038/s41598-021-02703-3
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Although advancing the therapeutic alternatives for treating deadly cancers has gained much attention globally, still the primary methods such as chemotherapy have significant downsides and low specificity. Most recently, Anticancer peptides (ACPs) have emerged as a potential alternative to therapeutic alternatives with much fewer negative side-effects. However, the identification of ACPs through wet-lab experiments is expensive and time-consuming. Hence, computational methods have emerged as viable alternatives. During the past few years, several computational ACP identification techniques using hand-engineered features have been proposed to solve this problem. In this study, we propose a new multi headed deep convolutional neural network model called ACP-MHCNN, for extracting and combining discriminative features from different information sources in an interactive way. Our model extracts sequence, physicochemical, and evolutionary based features for ACP identification using different numerical peptide representations while restraining parameter overhead. It is evident through rigorous experiments using cross-validation and independent-dataset that ACP-MHCNN outperforms other models for anticancer peptide identification by a substantial margin on our employed benchmarks. ACP-MHCNN outperforms state-of-the-art model by 6.3%, 8.6%, 3.7%, 4.0%, and 0.20 in terms of accuracy, sensitivity, specificity, precision, and MCC respectively. ACP-MHCNN and its relevant codes and datasets are publicly available at: https://github.com/mrzResearchArena/Anticancer-.Peptides-.CNN. ACP-MHCNN is also publicly available as an online predictor at: https://anticancer.pythonanywhere.com/.
引用
收藏
页数:15
相关论文
共 61 条
  • [1] AGRAWAL P, 2021, BRIEF BIOINFORM, V22, P153
  • [2] iACP-GAEnsC: Evolutionary genetic algorithm based ensemble classification of anticancer peptides by utilizing hybrid feature space
    Akbar, Shahid
    Hayat, Maqsood
    Iqbal, Muhammad
    Jan, Mian Ahmad
    [J]. ARTIFICIAL INTELLIGENCE IN MEDICINE, 2017, 79 : 62 - 70
  • [3] Predicting the sequence specificities of DNA- and RNA-binding proteins by deep learning
    Alipanahi, Babak
    Delong, Andrew
    Weirauch, Matthew T.
    Frey, Brendan J.
    [J]. NATURE BIOTECHNOLOGY, 2015, 33 (08) : 831 - +
  • [4] iPromoter-BnCNN: a novel branched CNN-based predictor for identifying and classifying sigma promoters
    Amin, Ruhul
    Rahman, Chowdhury Rafeed
    Ahmed, Sajid
    Sifat, Md Habibur Rahman
    Liton, Md Nazmul Khan
    Rahman, Md Moshiur
    Khan, Md Zahid Hossain
    Shatabda, Swakkhar
    [J]. BIOINFORMATICS, 2020, 36 (19) : 4869 - 4875
  • [5] [Anonymous], 2015, P 9 INT WORKSH SEM E
  • [6] Athiwaratkun B., 2018, ARXIV PREPRINT ARXIV
  • [7] An evolutionary analysis identifies a conserved pentapeptide stretch containing the two essential lysine residues for rice L-myo-inositol 1-phosphate synthase catalytic activity
    Basak, Papri
    Maitra-Majee, Susmita
    Das, Jayanta Kumar
    Mukherjee, Abhishek
    Dastidar, Shubhra Ghosh
    Choudhury, Pabitra Pal
    Majumder, Arun Lahiri
    [J]. PLOS ONE, 2017, 12 (09):
  • [8] Machine intelligence in peptide therapeutics: A next-generation tool for rapid disease screening
    Basith, Shaherin
    Manavalan, Balachandran
    Shin, Tae Hwan
    Lee, Gwang
    [J]. MEDICINAL RESEARCH REVIEWS, 2020, 40 (04) : 1276 - 1314
  • [9] Boohaker RJ, 2012, CURR MED CHEM, V19, P3794
  • [10] ProteinBERT: a universal deep-learning model of protein sequence and function
    Brandes, Nadav
    Ofer, Dan
    Peleg, Yam
    Rappoport, Nadav
    Linial, Michal
    [J]. BIOINFORMATICS, 2022, 38 (08) : 2102 - 2110