Non Intrusive and Extremely Early Detection of Lung Cancer Using TCPP

K. Kancherla, R. Chilkapatti, S. Mukkamala, J. Cousins, C. Dorian
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引用次数: 11

Abstract

In this paper, we introduce a method of functionally classifying lung cancer cells from normal cells by using Tetrakis Carboxy Phenyl Porphine (TCPP) and well-known computational intelligent techniques. Tetrakis Carboxy Phenyl Porphine (TCPP) is a porphyrin that is able to label cancer cells due to the increased numbers of low density lipoproteins coating the surface of cancer cells and the porous nature of the cancer cell membrane. Lung cancer is the leading cancer killer in the world. Novel early detection technologies are needed to maximize the chance for a potentially curable stage of lung cancer. When identified early (radiographic stage 1), non small cell lung carcinoma is routinely resected with survival rates of 40 to 85%. Unfortunately, most lung cancers present at an advanced stage resulting in a dismal overall 5 year survival of 15%. We study the performance of kernel methods in the context of classification accuracy on Biomoda cultured lung sputum dataset. We use a Library for Support Vector Machines (LIBSVM) for model selection. Through a variety of comparative experiments, it is found that SVMs perform the best for detecting lung cancer. Results show that all 79 features we use give the best accuracy to identify lung cancer cells. Our results, thus, demonstrate the potential of using learning machines in detecting and classifying lung cancer cells from normal cells.
TCPP在肺癌非侵入性极早期检测中的应用
本文介绍了一种利用四羧基苯基卟啉(Tetrakis Carboxy Phenyl Porphine, TCPP)和知名的计算智能技术对肺癌细胞和正常细胞进行功能分类的方法。四羧基苯基卟啉(TCPP)是一种能够标记癌细胞的卟啉,这是由于覆盖在癌细胞表面的低密度脂蛋白数量增加以及癌细胞膜的多孔性。肺癌是世界上主要的癌症杀手。需要新的早期检测技术来最大限度地提高潜在可治愈阶段肺癌的机会。当发现早期(影像学1期),非小细胞肺癌常规切除,存活率为40 - 85%。不幸的是,大多数肺癌出现在晚期,导致总体5年生存率为15%。在生物菌培养肺痰数据集上,研究了核方法在分类精度方面的性能。我们使用支持向量机库(LIBSVM)进行模型选择。通过各种对比实验,发现支持向量机对肺癌的检测效果最好。结果表明,我们使用的所有79个特征都能最准确地识别肺癌细胞。因此,我们的研究结果证明了使用学习机在检测和分类肺癌细胞和正常细胞方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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