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A novel approach for automatic detection of non-small cell lung carcinoma in CT images

机译:自动检测CT图像中非小细胞肺癌的新方法

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Lung cancer is a conceivably deadly disease brought on predominantly by ecological factors that transform genes that encodes basic cell regularities proteins. This paper investigates the early detection of lung cancer using computer aided diagnosis system which helps to improve the life term of the patient. The Existing multimodal sparse representation based classification of lung cancer related abnormalities can't deliver the ideal recognition rate because of the irregularity of feature selection. Moreover, the computational time is also high. To overcome these limitations, a novel cancer detection method namely Enhanced Image and Feature Selection based Detector (EIFSD) is developed with higher detection rate and minimal computation time. The proposed EIFSD performs well in real time as it combines optimal features from both the enhanced and original images. The experimental results validate that the proposed method improved the Image Enhancement Factor by 19% and detection overshoot by 93% compared with existing methods. Subsequently, the proposed strategy is more appropriate for the early estimation and determination of lung cancer really well. The outcomes plainly exhibit that the recognition performance fits well for early diagnosis of lung cancer and furthermore incorporates with the present medical analysis techniques.
机译:肺癌是一种致命的疾病,主要是由生态因素引起的,这些因素转化了编码基本细胞规律性蛋白的基因。本文研究了使用计算机辅助诊断系统对肺癌的早期发现,该系统有助于改善患者的生命周期。由于特征选择的不规则性,现有的基于多模式稀疏表示的肺癌相关异常分类无法提供理想的识别率。而且,计算时间也很高。为了克服这些限制,开发了一种新颖的癌症检测方法,即基于增强图像和特征选择的检测器(EIFSD),具有更高的检测率和最少的计算时间。提议的EIFSD结合了增强图像和原始图像的最佳功能,实时效果良好。实验结果证明,与现有方法相比,该方法将图像增强因子提高了19%,检测超调量提高了93%。随后,所提出的策略更适合于肺癌的早期估计和确定。结果清楚地表明,识别性能非常适合肺癌的早期诊断,并且与当前的医学分析技术相结合。

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