Deep learning ensemble approach with explainable AI for lung and colon cancer classification using advanced hyperparameter tuning.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
K Vanitha, Mahesh T R, S Sathea Sree, Suresh Guluwadi
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Abstract

Lung and colon cancers are leading contributors to cancer-related fatalities globally, distinguished by unique histopathological traits discernible through medical imaging. Effective classification of these cancers is critical for accurate diagnosis and treatment. This study addresses critical challenges in the diagnostic imaging of lung and colon cancers, which are among the leading causes of cancer-related deaths worldwide. Recognizing the limitations of existing diagnostic methods, which often suffer from overfitting and poor generalizability, our research introduces a novel deep learning framework that synergistically combines the Xception and MobileNet architectures. This innovative ensemble model aims to enhance feature extraction, improve model robustness, and reduce overfitting.Our methodology involves training the hybrid model on a comprehensive dataset of histopathological images, followed by validation against a balanced test set. The results demonstrate an impressive classification accuracy of 99.44%, with perfect precision and recall in identifying certain cancerous and non-cancerous tissues, marking a significant improvement over traditional approach.The practical implications of these findings are profound. By integrating Gradient-weighted Class Activation Mapping (Grad-CAM), the model offers enhanced interpretability, allowing clinicians to visualize the diagnostic reasoning process. This transparency is vital for clinical acceptance and enables more personalized, accurate treatment planning. Our study not only pushes the boundaries of medical imaging technology but also sets the stage for future research aimed at expanding these techniques to other types of cancer diagnostics.

利用先进的超参数调整,为肺癌和结肠癌分类提供具有可解释人工智能的深度学习集合方法。
肺癌和结肠癌是造成全球癌症相关死亡的主要原因,它们具有独特的组织病理学特征,可通过医学成像进行鉴别。对这些癌症进行有效分类对于准确诊断和治疗至关重要。肺癌和结肠癌是导致全球癌症相关死亡的主要原因之一,本研究探讨了肺癌和结肠癌影像诊断中的关键挑战。现有的诊断方法往往存在过度拟合和普适性差的问题,我们的研究认识到了这些方法的局限性,因此引入了一种新型深度学习框架,将 Xception 和 MobileNet 架构协同结合在一起。我们的方法包括在组织病理学图像的综合数据集上训练混合模型,然后根据平衡测试集进行验证。结果表明,分类准确率高达 99.44%,在识别某些癌变和非癌变组织方面具有完美的精确度和召回率,与传统方法相比有了显著提高。通过整合梯度加权类激活图谱(Grad-CAM),该模型提供了更强的可解释性,使临床医生能够直观地看到诊断推理过程。这种透明度对临床接受度至关重要,并能实现更个性化、更准确的治疗规划。我们的研究不仅推动了医学成像技术的发展,还为未来将这些技术扩展到其他类型癌症诊断的研究奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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