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Prediction of tumor location in prostate cancer tissue using a machine learning system on gene expression data

机译:基因表达数据中的机器学习系统预测前列腺癌组织中的肿瘤位置

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Finding the tumor location in the prostate is an essential pathological step for prostate cancer diagnosis and treatment. The location of the tumor – the laterality – can be unilateral (the tumor is affecting one side of the prostate), or bilateral on both sides. Nevertheless, the tumor can be overestimated or underestimated by standard screening methods. In this work, a combination of efficient machine learning methods for feature selection and classification are proposed to analyze gene activity and select them as relevant biomarkers for different laterality samples. A data set that consists of 450 samples was used in this study. The samples were divided into three laterality classes (left, right, bilateral). The aim of this work is to understand the genomic activity in each class and find relevant genes as indicators for each class with nearly 99% accuracy. The system identified groups of differentially expressed genes (RTN1, HLA-DMB, MRI1) that are able to differentiate samples among the three classes. The proposed method was able to detect sets of genes that can identify different laterality classes. The resulting genes are found to be strongly correlated with disease progression. HLA-DMB and EIF4G2, which are detected in the set of genes can detect the left laterality, were reported earlier to be in the same pathway called Allograft rejection SuperPath.
机译:寻找前列腺肿瘤位置是前列腺癌诊断和治疗的基本病理步骤。肿瘤的位置 - 横向 - 可以是单侧的(肿瘤影响前列腺的一侧),或两侧的双侧。然而,通过标准筛选方法可以高估或低估肿瘤。在这项工作中,提出了用于特征选择和分类的有效机器学习方法的组合来分析基因活性,并选择它们作为不同横向样本的相关生物标志物。在本研究中使用包含450个样本的数据集。将样品分为三个横向等级(左,右,双侧)。这项工作的目的是了解每种阶级的基因组活动,并找到与每个班级的指标中的相关基因,精度近99%。系统鉴定了能够区分三类中的样本的差异表达基因(RTN1,HLA-DMB,MRI1)的组。所提出的方法能够检测可以识别不同横向等级的基因组。发现所得基因与疾病进展强烈相关。在该组基因中检测到的HLA-DMB和EIF4G2可以检测到左侧左侧,以前报道称为同种异体移植拒收超低路径的相同途径。

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