Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural Network

In the detection of genome variation, the research on the internal correlation of reference genome is deepening; the detection of variation in genome sequence has become the focus of research, and it has also become an effective path to find new genes and new functional proteins. The targeted sequen...

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Main Authors: Zhike Zuo, Chao Tang, Yu Xu, Ying Wang, Yongzhong Wu, Jun Qi, Xiaolong Shi
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2021/1716182
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spelling doaj-53bc4e956ce84c97aaf295e9513a9eef2021-07-19T01:04:32ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52732021-01-01202110.1155/2021/1716182Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural NetworkZhike Zuo0Chao Tang1Yu Xu2Ying Wang3Yongzhong Wu4Jun Qi5Xiaolong Shi6Chongqing Key Laboratory of Spatial Data Mining and Big Data Integration for Ecology and EnvironmentRadiation & Cancer Biology LaboratoryRadiation & Cancer Biology LaboratoryRadiation & Cancer Biology LaboratoryRadiation & Cancer Biology LaboratoryRadiation & Cancer Biology LaboratoryRadiation & Cancer Biology LaboratoryIn the detection of genome variation, the research on the internal correlation of reference genome is deepening; the detection of variation in genome sequence has become the focus of research, and it has also become an effective path to find new genes and new functional proteins. The targeted sequencing sequence is used to sequence the exon region of a specific gene in cancer gene detection, and the sequencing depth is relatively large. Traditional alignment algorithms will lose some sequences, which will lead to inaccurate mutation detection. This paper proposes a mutation detection algorithm based on feedback fast learning neural network position index. By establishing a position index relationship for ACGT in the DNA sequence, the subsequence is decomposed into the position relationship of different subsequences corresponding to the main sequence. The positional relationship of the subsequence in the main sequence is determined by the positional relationship. Analyzing SNP and InDel mutations, even structural mutations, through the position correlation of sequences has the advantages of high precision and easy implementation by personal computers. The feedback fast learning neural network is used to verify whether there is a linear relationship between two or more positions. Experimental results show that the mutation points detected by position index are more than those detected by Bcftools, Freebye, Vanscan2, and Gatk.http://dx.doi.org/10.1155/2021/1716182
collection DOAJ
language English
format Article
sources DOAJ
author Zhike Zuo
Chao Tang
Yu Xu
Ying Wang
Yongzhong Wu
Jun Qi
Xiaolong Shi
spellingShingle Zhike Zuo
Chao Tang
Yu Xu
Ying Wang
Yongzhong Wu
Jun Qi
Xiaolong Shi
Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural Network
Computational Intelligence and Neuroscience
author_facet Zhike Zuo
Chao Tang
Yu Xu
Ying Wang
Yongzhong Wu
Jun Qi
Xiaolong Shi
author_sort Zhike Zuo
title Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural Network
title_short Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural Network
title_full Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural Network
title_fullStr Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural Network
title_full_unstemmed Gene Position Index Mutation Detection Algorithm Based on Feedback Fast Learning Neural Network
title_sort gene position index mutation detection algorithm based on feedback fast learning neural network
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5273
publishDate 2021-01-01
description In the detection of genome variation, the research on the internal correlation of reference genome is deepening; the detection of variation in genome sequence has become the focus of research, and it has also become an effective path to find new genes and new functional proteins. The targeted sequencing sequence is used to sequence the exon region of a specific gene in cancer gene detection, and the sequencing depth is relatively large. Traditional alignment algorithms will lose some sequences, which will lead to inaccurate mutation detection. This paper proposes a mutation detection algorithm based on feedback fast learning neural network position index. By establishing a position index relationship for ACGT in the DNA sequence, the subsequence is decomposed into the position relationship of different subsequences corresponding to the main sequence. The positional relationship of the subsequence in the main sequence is determined by the positional relationship. Analyzing SNP and InDel mutations, even structural mutations, through the position correlation of sequences has the advantages of high precision and easy implementation by personal computers. The feedback fast learning neural network is used to verify whether there is a linear relationship between two or more positions. Experimental results show that the mutation points detected by position index are more than those detected by Bcftools, Freebye, Vanscan2, and Gatk.
url http://dx.doi.org/10.1155/2021/1716182
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AT yingwang genepositionindexmutationdetectionalgorithmbasedonfeedbackfastlearningneuralnetwork
AT yongzhongwu genepositionindexmutationdetectionalgorithmbasedonfeedbackfastlearningneuralnetwork
AT junqi genepositionindexmutationdetectionalgorithmbasedonfeedbackfastlearningneuralnetwork
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