基于BPNN和分水岭分割的有效且稳健的肺部肿瘤检测

C. Z. Basha, B. Lakshmi Pravallika, D. Vineela, S. Prathyusha
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引用次数: 12

摘要

肺癌是一种大规模侵袭性、迅速转移和广泛传播的疾病,是全世界男性和女性的主要杀手。令人遗憾的是,在过去几年中,男性肺癌的发病率稳步下降,而女性的发病率却惊人地上升。在计算机断层扫描(CT)上,肺癌表现为一个孤立的结节。提出了一种基于改进Haar小波变换、尺度不变特征变换(SIFT)、反传播神经网络(BPNN)和分水岭分割的肺癌自动检测系统。此外,本工作还涉及到对前一步SIFT提取的特征使用基于K均值聚类的视觉词包(BOVW)。然后,使用BPNN进行分类,BPNN是一种来自人工神经网络(ANN)领域的监督学习算法。最后,利用分水岭分割技术对癌变肺图像中的结节进行检测。与应用不同算法相比,验证结果的准确率为91%。
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An Effective and Robust Cancer Detection in the Lungs with BPNN and Watershed Segmentation
Lung cancer, a massively aggressive, quickly metastasizing and widespread disease, is the primary killer among both men and women worldwide. Regrettably, while the incidence of lung cancer decreased steadily in men over the past several years, it has increased alarmingly in women. In Computed Tomography (CT) lung cancer shows up as an isolated nodule. An Automatic Lung Cancer Detection System using improved Haar Wavelet Transform, Scale-Invariant Feature Transform (SIFT), Back Propagation Neural Network (BPNN), and Watershed Segmentation was proposed in this paper. Further, this work involves the usage of Bag of Visual Words (BOVW) based on K means Clustering to the extracted features from SIFT in the previous step. Later, classification is performed using BPNN which is a supervised learning algorithm from the field of Artificial Neural Networks (ANN). Finally, we detect the nodule in the cancerous lung image using watershed segmentation technique. The validation results have been proposed to be 91% accurate when compared to applying different algorithms.
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