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Lung Cancer Analysis and Diagnosis by Coalition of Photo Metric and Quality Metric Parameters

机译:光度和质量度量参数的联合对肺癌的分析和诊断

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Lung cancer still seems to be a very common cause of death among the people all over the world. This paper proposes a method which is a coalition of two statistical methods Photo Metric and Quality Metric enacted for lung cancer analysis and diagnosis. Suggested methodology is established on the basis of identified statistical and mathematical parameters exploring the light variation and quality features of the lung image to carry out the evaluation for cancerous and non-cancerous types. The distinguishing Photo Metric parameters are Brightness, Luminance, Contrast and LC index, whereas the Quality Metric parameters are VIF, MSE, VSNR and PSNR. These eight identified parameters are applied one by one on the cancerous and noncancerous lung images using image processing technique using MATLAB to get an individual parameter statistical range through number of iterations in real time. If the test image falls in the particular calculated statistical range for cancerous lung images, then the test image is infected or else normal. But practically some of the values of the statistical range for cancerous and noncancerous lungs overlaps due to which the final decision is taken by an image classifier. The ANN is used as an image classifier to sort out this problem resulting in an efficient lung cancer diagnosis. The microscopic lung images are used to implement the proposed methodology. The performance analysis of each identified parameter is the heart of this paper. The authentication of the proposed methods is tested successfully using Standard Diagnostic Test.
机译:肺癌似乎仍然是全世界人民中非常普遍的死亡原因。本文提出了一种方法,该方法是针对肺癌分析和诊断制定的两种统计方法“照片度量”和“质量度量”的联合。在确定的统计和数学参数的基础上建立建议的方法,探索肺图像的光变化和质量特征,以进行癌性和非癌性类型的评估。显着的“照片指标”参数是“亮度”,“亮度”,“对比度”和“ LC指数”,而“质量指标”参数是“ VIF”,“ MSE”,“ VSNR”和“ PSNR”。使用MATLAB的图像处理技术,将这八个已确定的参数逐一应用于癌性和非癌性肺部图像,以通过实时迭代次数获得单个参数的统计范围。如果测试图像落入针对肺癌肺图像的特定计算统计范围内,则测试图像被感染或正常。但是实际上,癌性肺和非癌性肺的统计范围的某些值是重叠的,因此图像分类器可以做出最终决定。 ANN用作图像分类器以解决此问题,从而实现了有效的肺癌诊断。显微肺图像用于实施所提出的方法。每个识别出的参数的性能分析是本文的重点。使用标准诊断测试成功测试了所提出方法的身份。

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