R Nithya, C M Vidhyapathi
School of Electronics Engineering, Vellore Institute of Technology, Vellore, Tamil Nadu, 632014, India.
Sci Rep. 2025 Aug 2;15(1):28283. doi: 10.1038/s41598-025-13755-0.
Early detection of lung cancer, which remains one of the leading causes of death worldwide, is important for improved prognosis, and CT scanning is an important diagnostic modality. Lung cancer classification according to CT scan is challenging since the disease is characterized by very variable features. A hybrid deep architecture, ILN-TL-DM, is presented in this paper for precise classification of lung cancer from CT scan images. Initially, an Adaptive Gaussian filtering method is applied during pre-processing to eliminate noise and enhance the quality of the CT image. This is followed by an Improved Attention-based ResU-Net (P-ResU-Net) model being utilized during the segmentation process to accurately isolate the lung and tumor areas from the remaining image. During the process of feature extraction, various features are derived from the segmented images, such as Local Gabor Transitional Pattern (LGTrP), Pyramid of Histograms of Oriented Gradients (PHOG), deep features and improved entropy-based features, all intended to improve the representation of the tumor areas. Finally, classification exploits a hybrid deep learning architecture integrating an improved LeNet structure with Transfer Learning (ILN-TL) and a DeepMaxout (DM) structure. Both model outputs are finally merged with the help of a soft voting strategy, which results in the final classification result that separates cancerous and non-cancerous tissues. The strategy greatly enhances lung cancer detection's accuracy and strength, showcasing how combining sophisticated neural network structures with feature engineering and ensemble methods could be used to achieve better medical image classification. The ILN-TL-DM model consistently outperforms the conventional methods with greater accuracy (0.962), specificity (0.955) and NPV (0.964).
肺癌仍是全球主要死因之一,早期检测对于改善预后很重要,而CT扫描是一种重要的诊断方式。基于CT扫描对肺癌进行分类具有挑战性,因为该疾病具有非常多样的特征。本文提出了一种混合深度架构ILN-TL-DM,用于从CT扫描图像中精确分类肺癌。首先,在预处理过程中应用自适应高斯滤波方法来消除噪声并提高CT图像的质量。接下来,在分割过程中使用改进的基于注意力的ResU-Net(P-ResU-Net)模型,以从剩余图像中准确分离出肺部和肿瘤区域。在特征提取过程中,从分割后的图像中提取各种特征,如局部Gabor过渡模式(LGTrP)、方向梯度直方图金字塔(PHOG)、深度特征和改进的基于熵的特征,所有这些都是为了改善肿瘤区域的表示。最后,分类利用一种混合深度学习架构,该架构将改进的LeNet结构与迁移学习(ILN-TL)和DeepMaxout(DM)结构相结合。最终,两个模型的输出在软投票策略的帮助下合并,从而得到区分癌组织和非癌组织的最终分类结果。该策略极大地提高了肺癌检测的准确性和可靠性,展示了如何将复杂的神经网络结构与特征工程和集成方法相结合来实现更好的医学图像分类。ILN-TL-DM模型始终以更高的准确率(0.962)、特异性(0.955)和阴性预测值(0.964)优于传统方法。