Fuzzy information granulation towards benign and malignant lung nodules classification

Fatemeh Amini , Roya Amjadifard , Azadeh Mansouri
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Abstract

Lung cancer is the second common cancer with the highest death rate in the world. Cancer diagnosis in the early stages is a critical factor for increasing the treatment speed. This paper proposes a new machine learning method based on a fuzzy approach to detect benign and malignant lung nodules to early-diagnose lung cancer by investigating the computed tomography (CT) images. First, the lung nodule images are pre-processed via the Gabor wavelet transform. Then, some of the texture features are extracted from the transformed domain based on the statistical characteristics and histogram of the local patterns of images. Finally, based on the fuzzy information granulation (FIG) method, which is widely recognized as being able to distinguish between similar textures, a FIG-based classifier is introduced to classify the benign and malignant lung nodules. The clinical data set used for this research are a combination of 150 CT scans of LIDC and SPIE-APPM data sets. Also the LIDC data set is analyzed alone. The results show that the proposed method can be an innovative alternative to classify the benign and malignant nodules in the CT images.

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肺结节良恶性分类的模糊信息粒化
肺癌是世界上死亡率最高的第二大常见癌症。癌症的早期诊断是提高治疗速度的关键因素。本文提出了一种新的基于模糊方法的机器学习方法,通过研究计算机断层扫描(CT)图像来检测肺结节的良性和恶性,从而早期诊断肺癌。首先,通过 Gabor 小波变换对肺结节图像进行预处理。然后,根据图像局部模式的统计特征和直方图,从变换域中提取一些纹理特征。最后,基于模糊信息粒化(FIG)方法,引入基于 FIG 的分类器对肺部结节进行良性和恶性分类。本研究使用的临床数据集是 LIDC 和 SPIE-APPM 数据集 150 张 CT 扫描图像的组合。此外,还单独分析了 LIDC 数据集。结果表明,所提出的方法可以作为一种创新的替代方法来对 CT 图像中的良性和恶性结节进行分类。
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CiteScore
5.90
自引率
0.00%
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0
审稿时长
10 weeks
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