Exploring Molecular Descriptors and Fingerprints to Predict mTOR Kinase Inhibitors using Machine Learning Techniques

被引:7
|
作者
Kumari, Chetna [1 ]
Abulaish, Muhammad [2 ]
Subbarao, Naidu [3 ]
机构
[1] Jamia Millia Islamia, Dept Comp Sci, New Delhi 110025, Delhi, India
[2] South Asian Univ, Dept Comp Sci, New Delhi 110021, Delhi, India
[3] Jawaharlal Nehru Univ, Sch Computat & Integrat Biol, New Delhi 110067, Delhi, India
关键词
Inhibitors; Compounds; Proteins; Predictive models; Cancer; Biological system modeling; Machine learning; Drug discovery; kinase; mTOR; autophagy; molecular descriptor; fingerprints; machine learning; deep learning; MAMMALIAN TARGET; RANDOM FOREST; AUTOPHAGY; RAPAMYCIN; POTENT; DISCOVERY; BIOLOGY; AZD8055; GROWTH;
D O I
10.1109/TCBB.2020.2964203
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Mammalian Target of Rapamycin (mTOR) is a Ser/Thr protein kinase, and its role is integral to the autophagy pathway in cancer. Targeting mTOR for therapeutic interventions in cancer through autophagy pathway is challenging due to the dual roles of autophagy in tumor progression. The architecture of mTOR reveals two complexes - mTORC1 and mTORC2, each having multiple protein subunits. mTOR kinase inhibitors target the structurally and functionally similar catalytic subunits of both mTORC1 and mTORC2. In this paper, we have explored two different categories of molecular features - descriptors and fingerprints for developing predictive models using machine learning techniques. Random Forest variable importance measures and autoencoders are used to identify molecular descriptors and fingerprints, respectively. We have built various predictive models using identified features and their combination for predicting mTOR kinase inhibitors. Finally, the best model based on the Mathew correlation co-efficient value over the validation dataset is selected for screening kinase SARfari bioactivity dataset. In this study, we have identified twenty best performing descriptors for predicting mTOR kinase inhibitors. To the best of our knowledge, it is the first study on integrating traditional machine learning and deep learning-based approaches for feature extraction to predict mTOR kinase inhibitors.
引用
收藏
页码:1902 / 1913
页数:12
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