A big data approach with artificial neural network and molecular similarity for chemical data mining and endocrine disruption prediction

被引:2
|
作者
Paulose, Renjith [1 ]
Jegatheesan, Kalirajan [2 ]
Balakrishnan, Gopal Samy [3 ]
机构
[1] Bharathiar Univ, Res & Dev Ctr, Coimbatore 641046, Tamil Nadu, India
[2] Thiagarajar Coll Autonomous, Ctr Res & PG Studies Bot & Biotechnol, Madurai, Tamil Nadu, India
[3] Liatris Biosci LLP, Dept Biotechnol, Kottayam, Kerala, India
关键词
Artificial neural network; big data; chemical absorption; distribution; metabolism; and excretion-toxicity screening; endocrine receptor disruption; Hadoop; machine learning; DRUG DISCOVERY; FINGERPRINTS;
D O I
10.4103/ijp.IJP_304_17
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
CONTEXT: Chemical toxicity prediction at early stage drug discovery phase has been researched for years, and newest methods are always investigated. Research data comprising chemical physicochemical properties, toxicity, assay, and activity details create massive data which are becoming difficult to manage. Identifying the desired featured chemical with the desired biological activity from millions of chemicals is a challenging task. AIMS: In this study, we investigate and explore big data technologies and machine learning approaches to do an efficient chemical data mining for endocrine receptor disruption prediction and virtual compound screening. The power of artificial neural network (ANN) in predicting chemicals' activity toward androgen receptor (AR) and estrogen receptor (ER) and thereby classifying into human endocrine disruptor or nondisruptor is investigated. SUBJECTS AND METHODS: Molecules are collected along with their Inhibitory Concentration (IC50) values toward AR and ER. Training and test datasets are created with active and inactive classes of molecules. Molecular fingerprints of Electro Topological State (E-State) are generated for describing every compound. ANN machine learning model is created using Apache Spark and implemented in Hadoop big data environment. Test chemical's structural similarity toward active class of training compounds is estimated and combined with ANN model for improving prediction accuracy. RESULTS: AR and ER predictive models applied on corresponding test datasets gave 86.31% and 89.57% accuracies, respectively, in correctly classifying molecules as disruptor or nondisruptor. Molecular fragments and functional groups are ranked based on their importance in forming ANN model and influence toward the AR and ER disruption behavior. Training molecules that are specific to the test molecules' endocrine disruption prediction are retrieved based on the structural similarity values. CONCLUSIONS: The current study demonstrates a new approach of chemical endocrine receptor disruption prediction combining ANN machine learning method and molecular similarity in a big data environment. This method of predictive modeling can be further tested with more receptors and hormones and predictive power can be examined.
引用
收藏
页码:169 / 176
页数:8
相关论文
共 50 条
  • [31] Optimal artificial neural network-based data mining technique for stress prediction in working employees
    Anitha, S.
    Vanitha, M.
    SOFT COMPUTING, 2021, 25 (17) : 11523 - 11534
  • [32] Optimal artificial neural network-based data mining technique for stress prediction in working employees
    S. Anitha
    M. Vanitha
    Soft Computing, 2021, 25 : 11523 - 11534
  • [33] Data center cooling prediction using artificial neural network
    Shrivastava, Saurabh K.
    VanGilder, James W.
    Sammakia, Baligat G.
    IPACK 2007: PROCEEDINGS OF THE ASME INTERPACK CONFERENCE 2007, VOL 1, 2007, : 765 - 771
  • [34] Study on Data Mining of Jet Field Based on Artificial Neural Network
    Cao Xiaomeng
    Gu Zhenghua
    Hu Ya'an
    Liu Wang
    Xu Xiaodong
    ADVANCES IN HYDRAULIC PHYSICAL MODELING AND FIELD INVESTMENT AND INVESTIGATION, 2010, : 222 - 230
  • [35] Data mining method of BP artificial neural network and its application
    Chen, Shouyu
    Zhou, Meichun
    Diqiu Kexue Zhongguo Dizhi Daxue Xuebao/Earth Science - Journal of China University of Geoscinces, 1998, 23 (02): : 183 - 187
  • [36] Modifying genetic programming for artificial neural network development for data mining
    Rivero, Daniel
    Dorado, Julian
    Rabunal, Juan R.
    Pazos, Alejandro
    SOFT COMPUTING, 2009, 13 (03) : 291 - 305
  • [37] Modifying genetic programming for artificial neural network development for data mining
    Daniel Rivero
    Julián Dorado
    Juan R. Rabuñal
    Alejandro Pazos
    Soft Computing, 2009, 13 : 291 - 305
  • [38] Data Mining Techniques in Artificial Neural Network for UWB Antenna Design
    Xiao, Li-Ye
    Shao, Wei
    Yao, Zhi-Xin
    Gao, Shanshan
    RADIOENGINEERING, 2018, 27 (01) : 70 - 78
  • [39] INVESTIGATION OF DATA MINING USING PRUNED ARTIFICIAL NEURAL NETWORK TREE
    Kalaiarasi, S. M. A.
    Sainarayanan, G.
    Chekima, Ali
    Teo, Jason
    JOURNAL OF ENGINEERING SCIENCE AND TECHNOLOGY, 2008, 3 (03) : 243 - 255
  • [40] A MapReduce-based approach to social network big data mining
    Qi, Fuli
    JOURNAL OF COMPUTATIONAL METHODS IN SCIENCES AND ENGINEERING, 2023, 23 (05) : 2535 - 2547