基于小波变换的EIIP癌症识别

S. Chakraborty, V. Gupta
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引用次数: 11

摘要

目前,研究人员面临的挑战是在不涉及生物学实验的情况下准确分类癌症疾病,以便尽早治疗。随着基因组信号处理(GSP)领域的最新进展,研究人员将数字信号处理(DSP)技术应用于原始基因组数据中,以提取DNA片段中的隐藏特征和周期性。在本文中,我们将电子离子相互作用电位(EIIP)方法与数字信号和离散小波变换(DWT)功率谱方法结合在我们的算法中,以预测蛋白质编码区存在的异常。该技术还减少了信号中的噪声,并压缩了大样本数据。这个关键区域对分析癌细胞和非癌细胞起着重要作用。本研究的目的是发现可用于疾病分类的基因家族或基因产物,从而实现基于分子的诊断和预后。在本工作中,使用支持生物信息学工具箱的MATLAB R2012a实现算法。采用NCBI数据库、PubMed、Uniprot、HMR195和BG570数据库中正常和异常的同源人染色体DNA序列对算法进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DWT Based Cancer Identification Using EIIP
Nowadays, the challenges facing by researchers is to classify the cancer disease accurately without involving biological experiments so that early treatment is possible. With the recent advances in Genomic signal processing (GSP) domain, researchers have been applying digital signal processing (DSP) techniques in raw genomic data for extracting the hidden features and periodicities within the fragments of DNA. In this paper, we have incorporated Electron ion interaction potential (EIIP) method for mapping of DNA sequence into digital signal and Discrete wavelet transform (DWT) power spectrum methods in our algorithm to predict the abnormalities present in the protein coding region. This technique also reduces the noise present in the signal as well as compressed the large sample data. This crucial region plays an important role for analyzing cancerous and non-cancerous cell. The aim of this research paper is to discover families of genes or gene products that can be used to classify disease, thereby leading to molecular-based diagnosis and prognosis. In this work, algorithm is implemented using MATLAB R2012a which supports bioinformatics toolbox. The proposed algorithm is tested for several normal and abnormal DNA sequences of Homosapien chromosomes available in National center of Biotechnology Information (NCBI) database, PubMed, Uniprot, HMR195 and BG570 database.
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