Zhou Liang, Jain Achin, Dubey Arun Kumar, Singh Sunil K, Gupta Neha, Panwar Arvind, Kumar Sudhakar, Althaqafi Turki A, Arya Varsha, Alhalabi Wadee, Gupta Brij B
Jiading District Central Hospital, Shanghai University of Medicine and Health Sciences, Shanghai, 201318, China.
Department of Information Technology, Bharati Vidyapeeth's College of Engineering, New Delhi, India.
Sci Rep. 2025 Jun 3;15(1):19369. doi: 10.1038/s41598-025-02015-w.
Cancer is among the most dangerous diseases contributing to rising global mortality rates. Lung cancer, particularly adenocarcinoma, is one of the deadliest forms and severely impacts human life. Early diagnosis and appropriate treatment significantly increase patient survival rates. Computed Tomography (CT) is a preferred imaging modality for detecting lung cancer, as it offers detailed visualization of tumor structure and growth. With the advancement of deep learning, the automated identification of lung cancer from CT images has become increasingly effective. This study proposes a novel lung cancer detection framework using a Flower Pollination Algorithm (FPA)-based weighted ensemble of three high-performing pretrained Convolutional Neural Networks (CNNs): VGG16, ResNet101V2, and InceptionV3. Unlike traditional ensemble approaches that assign static or equal weights, the FPA adaptively optimizes the contribution of each CNN based on validation performance. This dynamic weighting significantly enhances diagnostic accuracy. The proposed FPA-based ensemble achieved an impressive accuracy of 98.2%, precision of 98.4%, recall of 98.6%, and an F1 score of 0.985 on the test dataset. In comparison, the best individual CNN (VGG16) achieved 94.6% accuracy, highlighting the superiority of the ensemble approach. These results confirm the model's effectiveness in accurate and reliable cancer diagnosis. The proposed study demonstrates the potential of deep learning and neural networks to transform cancer diagnosis, helping early detection and improving treatment outcomes.
癌症是导致全球死亡率上升的最危险疾病之一。肺癌,尤其是腺癌,是最致命的形式之一,严重影响人类生命。早期诊断和适当治疗可显著提高患者生存率。计算机断层扫描(CT)是检测肺癌的首选成像方式,因为它能提供肿瘤结构和生长的详细可视化。随着深度学习的发展,从CT图像中自动识别肺癌变得越来越有效。本研究提出了一种新颖的肺癌检测框架,该框架使用基于花授粉算法(FPA)的加权集成,集成了三个高性能预训练卷积神经网络(CNN):VGG16、ResNet101V2和InceptionV3。与传统的分配静态或相等权重的集成方法不同,FPA根据验证性能自适应地优化每个CNN的贡献。这种动态加权显著提高了诊断准确性。所提出的基于FPA的集成在测试数据集上实现了令人印象深刻的98.2%的准确率、98.4%的精确率、98.6%的召回率和0.985的F1分数。相比之下,最佳的单个CNN(VGG16)的准确率为94.6%,突出了集成方法的优越性。这些结果证实了该模型在准确可靠的癌症诊断中的有效性。所提出的研究证明了深度学习和神经网络在改变癌症诊断方面的潜力,有助于早期检测并改善治疗结果。