Development of Convolutional Neural Networkbased models for bone metastasis classification in nuclear medicine

Nikolaos I. Papandrianos, E. Papageorgiou, Athanasios Anagnostis, Konstantinos Papageorgiou, Anna Feleki, D. Bochtis
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引用次数: 2

Abstract

Focusing on prostate cancer patients, this research paper addresses the problem of bone metastasis diagnosis, investigating the capabilities of convolutional neural networks (CNN) and transfer learning. Considering the wide applicability of CNNs in medical image classification, VGG16 and DenseNet, as being two efficient types of deep neural networks, are exploited for images recognition, being used to properly classify an image by extracting its insightful features. The purpose of this study is to explore the capabilities of transfer learning in VGG16 and DenseNet application process, which will be able to classify bone scintigraphy images in patients suffering from prostate cancer. Efficient VGG16 and DenseNet architectures were built based on a CNN exploration process for bone metastasis diagnosis and then were employed to identify the metastasis from the bone scintigraphy image data. The classification task is a three-class problem, which classifies images as normal, malignant, and healthy images with degenerative changes. The results revealed that both methods are sufficiently accurate to differentiate the metastatic bone from degenerative changes as well as from normal tissue.
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基于卷积神经网络的核医学骨转移分类模型的建立
本研究以前列腺癌患者为研究对象,探讨了卷积神经网络(CNN)和迁移学习的能力,解决了骨转移诊断问题。考虑到cnn在医学图像分类中的广泛适用性,VGG16和DenseNet作为两种高效的深度神经网络,被用于图像识别,通过提取图像的深刻特征来对图像进行正确的分类。本研究的目的是探索迁移学习在VGG16和DenseNet应用过程中的能力,从而能够对前列腺癌患者的骨显像图像进行分类。基于CNN探索过程构建高效的VGG16和DenseNet架构,用于骨转移诊断,然后利用骨显像数据识别转移。分类任务是一个三类问题,将图像分为正常、恶性和具有退行性变化的健康图像。结果表明,这两种方法都足够准确地区分转移性骨与退行性变化以及正常组织。
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