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Near-infrared raman spectroscopy for detection of gastric cancer peritoneal dissemination in vivo

机译:近红外拉曼光谱法在体内检测胃癌腹膜扩散

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The nude mice injected with human gastric cancer cells (SGC-7901) in their peritoneums were chosen as the animal models of gastric cancer peritoneal dissemination in this research. The Raman spectra at 785nm excitation of both these nude mice which were in different tumor planting periods and the normal counterpart were taken in vivo in the imitate laparotomy. 205 spectra were collected. The spectra of different tissue types were compared and classified by Support Vector Machine (SVM) algorithm. Significant differences were showed between normal and malignant tissues. The gastric cancer nodules had lower Raman intensities at 870, 1330, 1450, and 1660cm-1, but higher at 1007, 1050, 1093 and 1209cm-1, compared with normal tissues. Additionally, the spectra of malignant tissues had two peaks around 1330 cm-1 (1297cm-1 and 1331cm-1), while the spectra of normal tissues had only one peak (1297cm-1). The differences were attributed to the intensities of the stretching bands of the nucleic acid, protein and water. These features could be used to diagnose gastric cancer. The Support Vector Machine (SVM) algorithm was used to classify these spectra. For normal and malignant tissues, the sensitivity, specificity and accuracy were 95.73%, 70.73% and 90.73%, respectively, while for different tumor planting periods, they were 98.82%, 98.73% and 98.78%. The experimental results show that Raman spectra differ significantly between cancerous and normal gastric tissues, which provides the experimental basis for the diagnosis of gastric cancer by Raman spectroscopy technology. And SVM algorithm can give the well generalized classification performance for the samples, which expands the application of mathematical algorithms in the classification
机译:本研究选择裸鼠腹膜注射人胃癌细胞(SGC-7901)作为胃癌腹膜扩散的动物模型。在模拟的剖腹手术中在体内拍摄了处于不同肿瘤种植时期的这两只裸鼠和正常对应小鼠在785nm激发下的拉曼光谱。收集了205个光谱。通过支持向量机(SVM)算法对不同组织类型的光谱进行比较和分类。正常组织和恶性组织之间显示出显着差异。与正常组织相比,胃癌结节在870、1330、1450和1660cm-1处具有较低的拉曼强度,但在1007、1050、1093和1209cm-1处具有较高的拉曼强度。另外,恶性组织的光谱在1330cm-1(1297cm-1和1331cm-1)附近具有两个峰,而正常组织的光谱仅具有一个峰(1297cm-1)。差异归因于核酸,蛋白质和水的拉伸带强度。这些特征可以用于诊断胃癌。支持向量机(SVM)算法用于对这些光谱进行分类。对于正常和恶性组织,其敏感性,特异性和准确性分别为95.73%,70.73%和90.73%,而对于不同的肿瘤种植期,其敏感性分别为98.82%,98.73%和98.78%。实验结果表明,胃癌组织与正常胃组织之间的拉曼光谱存在明显差异,这为利用拉曼光谱技术诊断胃癌提供了实验依据。支持向量机算法可以为样本提供良好的广义分类性能,扩展了数学算法在分类中的应用

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