DWUT-MLP: Classification of anticancer drug response using various feature selection and classification techniques

被引:6
作者
Singh, Davinder Paul [1 ]
Gupta, Abhishek [1 ]
Kaushik, Baijnath [1 ]
机构
[1] Shri Mata Vaishno Devi Univ, Sch Comp Sci & Engn, Katra 182320, Jammu & Kashmir, India
关键词
GDSC; CCLE; DWUT-MLP; Firefly; Whale optimization; Grey wolf optimization; CELL LINE ENCYCLOPEDIA; R PACKAGE; CANCER; SENSITIVITY; PREDICTION; FRAMEWORK; NETWORKS;
D O I
10.1016/j.chemolab.2022.104562
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Drug response classification constitutes a major challenge in personalized medicine. The suitable drug selection for cancer patients is substantial and the drug response prediction is generally based on the target information, genomic cohort and chemical structure. Hence, for classification process, feature selection approaches are highly essential, which is driven by prior knowledge of gene expression signatures, drug targets, and target pathways. Further, the classification is performed to assess the accurate drug response prediction. To the best of our knowledge, this is the first work to assess different optimization techniques for feature selection and performing drug response classification using different classifiers based on effective optimization algorithm using Cancer Cell Line Encyclopaedia- CCLE and Genomics of Drug Sensitivity in Cancer- GDSC dataset. For performing feature selection, Firefly, Whale and Grey wolf optimization algorithms are examined. Further, to perform classification, Adaboost, gradient boost and random forest classifiers are utilized. In addition to that, a newly developed classification approach, namely Discriminative Weight Updated Tuned Deep Multi-Layer Perceptron (DWUT-MLP) is used and compared with the other classifiers. The optimization algorithms with newly developed DWUT-MLP and other existing classification techniques are evaluated and results shows that the effective feature selection algorithm with suitable classification algorithm improves anticancer drug response prediction's accuracy. Thus, this research is substantial in general for choosing an appropriate feature selection approach, has the probability of improving the accuracy from the interpretable proposed classifier model for an indicative anticancer drug response prediction. From the comparative analysis, it shows that the proposed model performs nearly 10-15% better than existing frameworks in classifying the anticancer drug response.
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页数:16
相关论文
共 68 条
  • [1] Machine learning approaches to drug response prediction: challenges and recent progress
    Adam, George
    Rampasek, Ladislav
    Safikhani, Zhaleh
    Smirnov, Petr
    Haibe-Kains, Benjamin
    Goldenberg, Anna
    [J]. NPJ PRECISION ONCOLOGY, 2020, 4 (01)
  • [2] Can computers conceive the complexity of cancer to cure it? Using artificial intelligence technology in cancer modelling and drug discovery
    Adams, Rachael C.
    Rashidieh, Behnam
    [J]. MATHEMATICAL BIOSCIENCES AND ENGINEERING, 2020, 17 (06) : 6515 - 6530
  • [3] Network-based drug sensitivity prediction
    Ahmed, Khandakar Tanvir
    Park, Sunho
    Jiang, Qibing
    Yeu, Yunku
    Hwang, TaeHyun
    Zhang, Wei
    [J]. BMC MEDICAL GENOMICS, 2020, 13 (Suppl 11)
  • [4] Machine learning and feature selection for drug response prediction in precision oncology applications
    Ali M.
    Aittokallio T.
    [J]. Biophysical Reviews, 2019, 11 (1) : 31 - 39
  • [5] Ballester P.J., ARTIF INTELL, V2022
  • [6] Deep learning for drug response prediction in cancer
    Baptista, Delora
    Ferreira, Pedro G.
    Rocha, Miguel
    [J]. BRIEFINGS IN BIOINFORMATICS, 2021, 22 (01) : 360 - 379
  • [7] The Cancer Cell Line Encyclopedia - Using Preclinical Models to Predict Anticancer Drug Sensitivity
    Barretina, J.
    Caponigro, G.
    Stransky, N.
    Venkatesan, K.
    Margolin, A. A.
    Kim, S.
    Wilson, C. J.
    Lehar, J.
    Kryukov, G. V.
    Murray, L.
    Morrissey, M. P.
    Sellers, W. R.
    Schlegel, R.
    Garraway, L. A.
    [J]. EUROPEAN JOURNAL OF CANCER, 2012, 48 : S5 - S6
  • [8] The Cancer Cell Line Encyclopedia enables predictive modelling of anticancer drug sensitivity
    Barretina, Jordi
    Caponigro, Giordano
    Stransky, Nicolas
    Venkatesan, Kavitha
    Margolin, Adam A.
    Kim, Sungjoon
    Wilson, Christopher J.
    Lehar, Joseph
    Kryukov, Gregory V.
    Sonkin, Dmitriy
    Reddy, Anupama
    Liu, Manway
    Murray, Lauren
    Berger, Michael F.
    Monahan, John E.
    Morais, Paula
    Meltzer, Jodi
    Korejwa, Adam
    Jane-Valbuena, Judit
    Mapa, Felipa A.
    Thibault, Joseph
    Bric-Furlong, Eva
    Raman, Pichai
    Shipway, Aaron
    Engels, Ingo H.
    Cheng, Jill
    Yu, Guoying K.
    Yu, Jianjun
    Aspesi, Peter, Jr.
    de Silva, Melanie
    Jagtap, Kalpana
    Jones, Michael D.
    Wang, Li
    Hatton, Charles
    Palescandolo, Emanuele
    Gupta, Supriya
    Mahan, Scott
    Sougnez, Carrie
    Onofrio, Robert C.
    Liefeld, Ted
    MacConaill, Laura
    Winckler, Wendy
    Reich, Michael
    Li, Nanxin
    Mesirov, Jill P.
    Gabriel, Stacey B.
    Getz, Gad
    Ardlie, Kristin
    Chan, Vivien
    Myer, Vic E.
    [J]. NATURE, 2012, 483 (7391) : 603 - 607
  • [9] An Integrated Approach to Anti-Cancer Drug Sensitivity Prediction
    Berlow, Noah
    Haider, Saad
    Wan, Qian
    Geltzeiler, Mathew
    Davis, Lara E.
    Keller, Charles
    Pal, Ranadip
    [J]. IEEE-ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS, 2014, 11 (06) : 995 - 1008
  • [10] Cancer Drug Response Profile scan (CDRscan): A Deep Learning Model That Predicts Drug Effectiveness from Cancer Genomic Signature
    Chang, Yoosup
    Park, Hyejin
    Yang, Hyun-Jin
    Lee, Seungju
    Lee, Kwee-Yum
    Kim, Tae Soon
    Jung, Jongsun
    Shin, Jae-Min
    [J]. SCIENTIFIC REPORTS, 2018, 8