基于嵌入正则化的阴道镜图像分类

Tomé Albuquerque, J. S. Cardoso
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引用次数: 0

摘要

宫颈癌是全球第四大最常见的女性癌症,每年约有528,000例新病例。人工智能领域的重大进展,特别是在神经网络和深度学习方面,帮助医生更准确地诊断宫颈癌。在本文中,我们用广泛使用的VGG16架构解决了一个分类问题。除了分类误差之外,我们的模型在权重调整过程中考虑了正则化部分,作为阴道镜图像的先验知识。这种使用二维高斯核的嵌入式正则化方法使模型能够了解医学图像的哪些部分对分类任务更重要。实验结果表明,与文献中的标准迁移学习和多模态子宫颈癌分类方法相比,该方法有一定的改进。
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Embedded Regularization For Classification Of Colposcopic Images
Cervical cancer ranks as the fourth most common cancer among females worldwide with roughly 528,000 new cases yearly. Significant progress in the realm of artificial intelligence particularly in neural networks and deep learning help physicians to diagnose cervical cancer more accurately. In this paper, we address a classification problem with the widely used VGG16 architecture. In addition to classification error, our model considers a regularization part during tuning of the weights, acting as prior knowledge of the colposcopic image. This embedded regularization approach, using a 2D Gaussian kernel, has enabled the model to learn which sections of the medical images are more crucial for the classification task. The experimental results show an improvement compared with standard transfer learning and multimodal approaches of cervical cancer classification in literature.
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