Computational Analysis of MK2 Protein for HT Carcinoma Cells using Pre-Processing and Characterization Techniques for Cell Death/ Survival

Shruti Jain

Abstract

This paper presents the computational analysis using pre-processing and different characterization of MK2 proteins for cell death/ survival for HT carcinoma cells. Initially data is collected which than pre processed by completing the missing data, removing various outliers, checking whether the data is normal or non- normal. Later various characterisation steps were applied which includes: classification, regression, clustering, association rules etc. Different data variables use different approaches of pre processing and characterisation. In this paper we have collected the different data of MK2 proteins where we have cleaned the data by using various clustering approaches, than regression analysis, correlation matrix and covariance matrixes are calculated. In last we have classified the data by using different machine learning approaches (k-NN, SVM and Neural network). For k-NN we have compared the results of different techniques like chebyshev, city block and Euclidean. For SVM we have used linear, polynomial, RBF and sigmoid function for both types (Type 1 and Type 2) and for neural network we have calculated training, test and validation perfection using different hidden, and output activation function. This paper shows best 10 network using MLP and RBF approach. 

Full Text:

PDF

References

. Bhusri S., Jain S., Virmani J. , “Classification of breast lesions using the difference of statistical features” Research Journal of Pharmaceutical , Biological and Chemical Sciences (RJPBCS) ,7 (4), 1365-1372: July- Aug 2016

. Sharma S., Jain S., Bhusri S., “Two Class Classification of Breast Lesions using Statistical and Transform Domain features”, Journal of Global Pharma Technology (JGPT), 9(7), pp 18-24, 2017.

. Rana S. , Jain S., Virmani J., “Classification of Focal Kidney lesions using Wavelet-Based Texture Descriptors”, International Journal of Pharma and Bio Sciences, 7(3) B, 646-652, July-Sep 2016.

. Dhiman A., Singh A., Dubey S., Jain S., “Design of Lead II ECG Waveform and Classification Performance for Morphological features using Different Classifiers on Lead II ”, Research Journal of Pharmaceutical, Biological and Chemical Sciences (RJPBCS),7(4), 1226- 1231: July-Aug 2016.

. Jain S., “Communication of signals and responses leading to cell survival / cell death using Engineered Regulatory Networks”. PhD Thesis, Jaypee University of Information Technology, Solan, Himachal Pradesh, India, 2012.

. Jain S, Chauhan D. S., “Mathematical Analysis of Receptors For Survival Proteins”, International Journal of Pharma and Bio Sciences (IJPBS),6(3), 164-176 : 2015.

. Jain S, Bhooshan S. V., Naik P. K., “Model of Mitogen Activated Protein Kinases for Cell Survival/Death and its Equivalent Bio-Circuit”, Current Research Journal of Biological Sciences (CRJBS), 2(1):59-71, 2010.

. Jain S, “Implementation of Fuzzy System using Operational Transconductance Amplifier for ERK pathway of EGF/ Insulin leading to Cell Survival/ Death”, J Pharm Biomed Sci, 2014, 4(8), 701-707.

. Jain S., Naik P.K., Bhooshan S.V., “Model of Protein Kinase B for Cell Survival/Death and its Equivalent Bio Circuit ”, November 19-20, 2011,pp 69-73, 2nd International Conference on Methods and Models in Science and Technology (ICM2ST-11), Jaipur, Rajasthan, India Organized by Institution of Engineers, Technocrats and Academician Network (IETAN).

. Jain S., Bhooshan S.V., Naik P.K., “Mathematical modeling deciphering balance between cell survival and cell death using insulin”, Network Biology, 1(1):46-58, 2011.

. Weiss, R.,“Cellular computation and communications using engineered genetic regulatory networks”. PhD Thesis, MIT, 2001.

. Suzanne G, Janes K. A., et al., A compendium of signals and responses triggered by prodeath and prosurvival cytokines Manuscript M500158-MCP200, 2005.

Refbacks

  • There are currently no refbacks.