piSAAC: Extended notion of SAAC feature selection novel method for
discrimination of Enzymes model using different machine learning algorithm
- URL: http://arxiv.org/abs/2101.03126v1
- Date: Wed, 16 Dec 2020 03:45:21 GMT
- Title: piSAAC: Extended notion of SAAC feature selection novel method for
discrimination of Enzymes model using different machine learning algorithm
- Authors: Zaheer Ullah Khan, Dechang Pi, Izhar Ahmed Khan, Asif Nawaz, Jamil
Ahmad, Mushtaq Hussain
- Abstract summary: Novel split amino acid composition model named piSAAC is proposed.
Protein sequence is discretized in equal and balanced terminus to fully evaluate the intrinsic correlation properties of the sequence.
- Score: 13.921567068182132
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Enzymes and proteins are live driven biochemicals, which has a dramatic
impact over the environment, in which it is active. So, therefore, it is highly
looked-for to build such a robust and highly accurate automatic and
computational model to accurately predict enzymes nature. In this study, a
novel split amino acid composition model named piSAAC is proposed. In this
model, protein sequence is discretized in equal and balanced terminus to fully
evaluate the intrinsic correlation properties of the sequence. Several
state-of-the-art algorithms have been employed to evaluate the proposed model.
A 10-folds cross-validation evaluation is used for finding out the authenticity
and robust-ness of the model using different statistical measures e.g.
Accuracy, sensitivity, specificity, F-measure and area un-der ROC curve. The
experimental results show that, probabilistic neural network algorithm with
piSAAC feature extraction yields an accuracy of 98.01%, sensitivity of 97.12%,
specificity of 95.87%, f-measure of 0.9812and AUC 0.95812, over dataset S1,
accuracy of 97.85%, sensitivity of 97.54%, specificity of 96.24%, f-measure of
0.9774 and AUC 0.9803 over dataset S2. Evident from these excellent empirical
results, the proposed model would be a very useful tool for academic research
and drug designing related application areas.
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