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使用具有定向梯度基因组特征直方图的神经网络集成进行肺癌预测。

Lung cancer prediction using neural network ensemble with histogram of oriented gradient genomic features.

作者信息

Adetiba Emmanuel, Olugbara Oludayo O

机构信息

ICT and Society Research Group, Durban University of Technology, P.O. Box 1334, Durban 4000, South Africa.

出版信息

ScientificWorldJournal. 2015;2015:786013. doi: 10.1155/2015/786013. Epub 2015 Feb 23.

Abstract

This paper reports an experimental comparison of artificial neural network (ANN) and support vector machine (SVM) ensembles and their "nonensemble" variants for lung cancer prediction. These machine learning classifiers were trained to predict lung cancer using samples of patient nucleotides with mutations in the epidermal growth factor receptor, Kirsten rat sarcoma viral oncogene, and tumor suppressor p53 genomes collected as biomarkers from the IGDB.NSCLC corpus. The Voss DNA encoding was used to map the nucleotide sequences of mutated and normal genomes to obtain the equivalent numerical genomic sequences for training the selected classifiers. The histogram of oriented gradient (HOG) and local binary pattern (LBP) state-of-the-art feature extraction schemes were applied to extract representative genomic features from the encoded sequences of nucleotides. The ANN ensemble and HOG best fit the training dataset of this study with an accuracy of 95.90% and mean square error of 0.0159. The result of the ANN ensemble and HOG genomic features is promising for automated screening and early detection of lung cancer. This will hopefully assist pathologists in administering targeted molecular therapy and offering counsel to early stage lung cancer patients and persons in at risk populations.

摘要

本文报告了人工神经网络(ANN)和支持向量机(SVM)集成模型及其“非集成”变体在肺癌预测方面的实验比较。这些机器学习分类器使用从IGDB.NSCLC语料库中收集的作为生物标志物的患者核苷酸样本进行训练,这些样本在表皮生长因子受体、 Kirsten大鼠肉瘤病毒癌基因和肿瘤抑制基因p53基因组中存在突变,以预测肺癌。使用沃斯DNA编码将突变和正常基因组的核苷酸序列进行映射,以获得等效的数字基因组序列,用于训练所选分类器。应用定向梯度直方图(HOG)和局部二值模式(LBP)等先进的特征提取方案,从编码的核苷酸序列中提取代表性的基因组特征。ANN集成模型和HOG与本研究的训练数据集拟合度最佳,准确率为95.90%,均方误差为0.0159。ANN集成模型和HOG基因组特征的结果对于肺癌的自动筛查和早期检测很有前景。这有望帮助病理学家实施靶向分子治疗,并为早期肺癌患者和高危人群提供咨询。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b443/4352926/5eecc8a5ef70/TSWJ2015-786013.001.jpg

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