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首页> 外文期刊>International Journal of Computer Trends and Technology >Distance complexity analysis of DNA Nucleotide Sequence with Normal and Cancer Liver Cells Using Data Mining Techniques
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Distance complexity analysis of DNA Nucleotide Sequence with Normal and Cancer Liver Cells Using Data Mining Techniques

机译:使用数据挖掘技术分析正常和癌细胞肝中DNA核苷酸序列的距离复杂性

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The proposed work focuses on Hidden Markov Model (HMM), has increased on the Pattern recognition domain primarily because of its strong mathematical basis and the ability to adapt to unknown of nucleotide sequence of normal and cancer affected liver cells as are pictorially represented by finite state machine. The proposed methodology will focused and analyzed about performance of DNA gene liver cancer database and normal liver cell data set from ncbi DNA data set. After analyzing the cancer cells, there is a need to determine the distance between normal and cancer affected cells. Each amino acid can have character variables and also assigned numeric number and its corresponding pair combination of sequence are represented in a graph. The proposed HMM system is validated with two different nucleotide values for analyse the performance and get the simulated output using viterbi and forward algorithms implemented in Mat Lab Tool.
机译:拟议的工作侧重于隐马尔可夫模型(HMM),主要由于其强大的数学基础以及适应正常和受癌症影响的肝细胞核苷酸序列未知的能力(以图形方式表示为有限状态),已在模式识别域上有所增加机。拟议的方法将集中和分析有关DNA基因肝癌数据库和ncbi DNA数据集正常肝细胞数据集的性能。在分析癌细胞之后,需要确定正常细胞与受癌细胞影响的细胞之间的距离。每个氨基酸可以具有字符变量,还可以分配数字,其相应的序列对组合在图中表示。所提出的HMM系统通过两个不同的核苷酸值进行验证,以使用Mat Lab Tool中实现的viterbi和正向算法分析性能并获得模拟输出。

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