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Using the K-Nearest Neighbor Algorithm for the Classification of Lymph Node Metastasis in Gastric Cancer

机译:使用K最近邻算法对胃癌淋巴结转移进行分类

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摘要

Accurate tumor, node, and metastasis (TNM) staging, especially N staging in gastric cancer or the metastasis on lymph node diagnosis, is a popular issue in clinical medical image analysis in which gemstone spectral imaging (GSI) can provide more information to doctors than conventional computed tomography (CT) does. In this paper, we apply machine learning methods on the GSI analysis of lymph node metastasis in gastric cancer. First, we use some feature selection or metric learning methods to reduce data dimension and feature space. We then employ the K-nearest neighbor classifier to distinguish lymph node metastasis from nonlymph node metastasis. The experiment involved 38 lymph node samples in gastric cancer, showing an overall accuracy of 96.33%. Compared with that of traditional diagnostic methods, such as helical CT (sensitivity 75.2% and specificity 41.8%) and multidetector computed tomography (82.09%), the diagnostic accuracy of lymph node metastasis is high. GSI-CT can then be the optimal choice for the preoperative diagnosis of patients with gastric cancer in the N staging.
机译:准确的肿瘤,淋巴结转移(TNM)分期,尤其是胃癌中的N分期或淋巴结诊断的转移,是临床医学图像分析中的一个普遍问题,其中宝石光谱成像(GSI)可以为医生提供比传统计算机断层扫描(CT)确实如此。在本文中,我们将机器学习方法应用于胃癌淋巴结转移的GSI分析中。首先,我们使用一些特征选择或度量学习方法来减少数据维度和特征空间。然后,我们采用K近邻分类器来区分淋巴结转移与非淋巴结转移。该实验涉及38例胃癌淋巴结样本,总体准确率为96.33%。与传统的螺旋CT(敏感性为75.2%,特异性为41.8%)和多探测器计算机断层扫描(82.09%)等传统诊断方法相比,淋巴结转移的诊断准确性较高。然后,GSI-CT可以成为N期胃癌患者术前诊断的最佳选择。

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