Pathan Sameena, Ali Tanweer, P G Sudheesh, P Vasanth Kumar, Rao Divya
Department of Information and Communication Technology, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal 576104, India.
Department of Electronics and Communication Engineering, Manipal Institute of Technology, Manipal Academy of Higher Education, Manipal 576104, India.
APL Bioeng. 2024 Jun 11;8(2):026121. doi: 10.1063/5.0208520. eCollection 2024 Jun.
Lung cancer, the treacherous malignancy affecting the respiratory system of a human body, has a devastating impact on the health and well-being of an individual. Due to the lack of automated and noninvasive diagnostic tools, healthcare professionals look forward toward biopsy as a gold standard for diagnosis. However, biopsy could be traumatizing and expensive process. Additionally, the limited availability of dataset and inaccuracy in diagnosis is a major drawback experienced by researchers. The objective of the proposed research is to develop an automated diagnostic tool for screening of lung cancer using optimized hyperparameters such that convolutional neural network (CNN) model generalizes well for universally obtained computerized tomography (CT) slices of lung pathologies. The aforementioned objective is achieved in the following ways: (i) Initially, a preprocessing methodology specific to lung CT scans is formulated to avoid the loss of information due to random image smoothing, and (ii) a sine cosine algorithm optimization algorithm (SCA) is integrated in the CNN model, to optimally select the tuning parameters of CNN. The error rate is used as an objective function, and the SCA algorithm tries to minimize. The proposed method successfully achieved an average classification accuracy of 99% in classification of lung scans in normal, benign, and malignant classes. Further, the generalization ability of the proposed model is tested on unseen dataset, thereby achieving promising results. The quantitative results prove the efficacy of the system to be used by radiologists in a clinical scenario.
肺癌,这种侵袭人体呼吸系统的危险恶性肿瘤,对个人的健康和幸福有着毁灭性的影响。由于缺乏自动化和非侵入性的诊断工具,医疗保健专业人员将活检视为诊断的金标准。然而,活检可能是一个有创伤且昂贵的过程。此外,数据集的有限可用性和诊断的不准确性是研究人员面临的一个主要缺点。本研究的目的是开发一种自动化诊断工具,利用优化的超参数筛选肺癌,使卷积神经网络(CNN)模型能够很好地推广到普遍获得的肺部病变计算机断层扫描(CT)切片上。上述目标通过以下方式实现:(i)首先,制定一种特定于肺部CT扫描的预处理方法,以避免由于随机图像平滑而导致的信息丢失;(ii)将正弦余弦算法优化算法(SCA)集成到CNN模型中,以优化选择CNN的调谐参数。错误率用作目标函数,SCA算法试图将其最小化。所提出的方法在正常、良性和恶性类别的肺部扫描分类中成功实现了99%的平均分类准确率。此外,在所未见的数据集上测试了所提出模型的泛化能力,从而取得了有希望的结果。定量结果证明了该系统在临床场景中供放射科医生使用的有效性。