Department of Electronics and Communication, Rajalakshmi Instittue of Technology, Chennai, India.
Department of EIE, Saveetha Engineering College, India.
Asian Pac J Cancer Prev. 2022 Mar 1;23(3):905-910. doi: 10.31557/APJCP.2022.23.3.905.
Lung cancer is one of the unsafe diseases for human which reduces the patient life time. Generally, most of the lung cancers are identified after it has been spread into the lung parts and moreover it is difficult to find the lung cancer at the early stage. It requires radiologist and special doctors to find the tumoral tissue of the lung cancer. For this reason, the recommended work helps to segment the tumoral tissue of CT lung image in an effective way.
The research work uses hybrid segmentation technique to separate the lung cancer cells to diagnose the lung tumour. It is a technique which combines active contour along with Fuzzy c means to diagnose the tumoral tissue. Further the segmented portion was trained by Convolutional Neural Network (CNN) in order to classify the segmented region as normal or abnormal.
The evaluation of the proposed method was done by analyzing the results of test image with the ground truth image. Finally, the results of the implemented technique provided good accuracy, Peak signal to noise ratio (PSNR), Mean Square Error (MSE) value. In future the other techniques can be utilized to improve the details before segmentation. The proposed work provides 96.67 % accuracy.
Hybrid segmentation technique involves several steps like preprocessing, binarization, thresholding, segmentation and feature extraction using GLCM.
肺癌是危害人类健康的高危疾病之一,会降低患者的生存时间。通常,大多数肺癌在扩散到肺部后才被发现,而且早期很难发现肺癌。需要放射科医生和专门的医生来找到肺癌的肿瘤组织。出于这个原因,推荐的工作有助于有效地对 CT 肺部图像中的肿瘤组织进行分割。
本研究工作使用混合分割技术将肺癌细胞分离出来以诊断肺部肿瘤。这是一种结合主动轮廓和模糊 C 均值的技术,用于诊断肿瘤组织。然后,将分割部分通过卷积神经网络(CNN)进行训练,以将分割区域分类为正常或异常。
通过分析测试图像与地面实况图像的结果,对所提出的方法进行了评估。最后,所实现技术的结果提供了良好的准确性、峰值信噪比(PSNR)和均方误差(MSE)值。未来可以利用其他技术在分割前提高细节。所提出的工作提供了 96.67%的准确率。
混合分割技术涉及预处理、二值化、阈值处理、分割和使用 GLCM 进行特征提取等多个步骤。