基于组织病理学图像的深度学习辅助肺癌诊断

Chun-Cheng Peng, Jiawei Wu
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引用次数: 0

摘要

早期发现在提高患者生存率方面发挥着关键作用,因为肺癌继续构成重大的全球健康挑战,并且仍然是癌症相关死亡的主要原因之一。深度学习技术很有前途,因为它们可以帮助医生进行疾病诊断,特别是在医学成像方面。在这项研究中,我们使用了一个数据集,包括来自Kaggle的肺癌和结肠癌的组织病理学图像。数据包括肺和结肠组织的五种不同类别。为了对图像进行分类,我们使用了一种深度学习方法,该方法利用了预训练的神经网络AlexNet。通过替换最后一个全连接层对提出的模型进行微调后,我们使用SGDM优化器对参数进行了优化。结果表明,该方法的总体准确率达到99.46%。在所有考虑的类别中,肺良性组表现最好,准确率为100%。本研究的整体准确率超过了之前发表的3篇期刊论文和6篇会议论文,有效证明了深度学习在肺癌图像准确分类方面的卓越能力。总之,这项研究结果强调了深度学习在支持医疗专业人员诊断肺癌方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-Assisted Lung Cancer Diagnosis from Histopathology Images
Early detection plays a critical role in enhancing patient survival rates as lung cancer continues to pose a significant global health challenge and remains one of the primary contributors to cancer-related mortality. Deep learning techniques are promising as they assist doctors in disease diagnosis, especially in medical imaging. In this research, we employed a dataset comprising histopathology images of lung cancer and colon cancer from Kaggle. The data encompassed five distinct categories of the tissues of the lung and colon. To classify the images, we used a deep learning methodology that leveraged the pre-trained neural network known as AlexNet. After fine-tuning the proposed model by substituting the last fully-connected layer, we optimized the parameters using the SGDM optimizer. As a result, the overall accuracy of the method reached 99.46%. Across all considered categories, the lung benign group performed best with 100% in terms of accuracy. The overall accuracy of this research surpassed that of three previously published journal papers and six conference papers, effectively proving the remarkable capability of deep learning in accurately classifying lung cancer images. In conclusion, this research result underscores the potential of deep learning in supporting medical professionals to diagnose lung cancer.
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