Abstract

In Bioinformatics, Protein Secondary Structure Prediction (PSSP) has been considered as one of the main challenging tasks in this field. Today, secondary structure protein prediction approaches have been categorized into three groups (Neighbor-based, model-based, and meta predicator-based model). The main purpose of the model-based approaches is to detect the protein sequence-structure by utilizing machine learning techniques to train and learn a predictive model for that. In this model, different supervised learning approaches have been proposed such as neural networks, hidden Markov chain, and support vector machines have been proposed. In this paper, our proposed approach which is a Latent Deep Learning approach relies on detecting the first level features based on using Stacked Sparse Autoencoder. This approach allows us to detect new features out of the set of training data using the sparse autoencoder which will have used later as convolved filters in the Convolutional Neural Network (CNN) structure. The experimental results show that the highest accuracy of the prediction is 86.719% in the testing set of our approach when the backpropagation framework has been used to pre-trained techniques by relying on the unsupervised fashion where the whole network can be fine-tuned in a supervised learning fashion.

Highlights

  • Bioinformatics implicates the technology of using the computer aid based system for many reasons such as storage, retrieval, manipulation, and distribution of information

  • The Latent Deep Learning Approach (LDLA) that is proposed for secondary structure of protein prediction relies on using the first level of proteins features that already have been extracted to construct new convolutional filters that will have used in the convolutional layer in the Deep Conditional Neural Network structure (CNN) [7]

  • The Stacked Sparse Autoencoder Approach that is shown in Fig.2 is applied using soft-max classifier for secondary structure protein prediction, and compare the results with our Latent Deep Learning Approach using sot-max classifier

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Summary

INTRODUCTION

Bioinformatics implicates the technology of using the computer aid based system for many reasons such as storage, retrieval, manipulation, and distribution of information. This information can be predicted from linear sequence protein process method which is an unsolved and ubiquitous problem This approach invites research from many fields of study such as computer science, molecular biology, biochemistry, and physics. The disinfectant information of the Secondary structure use in many proteins folding prediction approaches which is used in many different area of bioinformatics application [4]. The stacked sparse autoencoder model is introduced and explained after defining the multi-hidden-layer sparse autoencoder model and the stacked Pre-training Method in the second section 2.

Our Approach Motivation
RELATED WORKS
PROPOSED SYSTEM
STACKED SPARSE AUTOENCODER APPROACH
DEEP LEARNING APPROACH USING LATEN CNN STRUCTURE
EXPERIMENTAL RESULTS
Evaluation Criteria
Stacked Sparse Autoencoder prediction Results
52 Training
Latent Deep Learning using Prediction Results
Latent Deep Learning Model Comparison with Other Approaches
CONCLUSION
Full Text
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