结合人工与深度神经特征进行黑色素瘤分类与癌变区域定位

Mohammad Saminoor Rahman, Md. Jubayer Hossain, Md.Kamrul Hasan Sujon, Md.Nafiul Kabir, S. Islam, Md. Tanzim Reza, Md. Ashraful Alam
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引用次数: 0

摘要

深度神经网络(dnn)被广泛应用于多种形式的癌症诊断中的自动医学图像解释,并支持医学专家进行快速数据处理。虽然自20世纪90年代以来,人工特征已经被用于诊断,但深度神经网络在这一领域是相当新的,并显示出非常有希望的结果。本研究的基本目标是通过获得更高准确性的显著结果,在早期阶段检测黑色素瘤。我们的目的是解决世界各地皮肤癌患者增加的问题,以及由于发现较晚而未在早期阶段开始诊断而导致死亡危险呈指数级增长的问题。我们建议对手工制作的特征进行研究,并将结果与深度学习方法合并,初始帮助是一个巨大的原始图像数据集。本研究中使用的深度神经网络模型具有多层,具有各种有效的过滤过程,称为批处理归一化和dropout,还添加了称为flatten和dense的层。在此过程中,分别使用Mean Shift, SIFT和Gabor对图像进行分类,预测早期黑色素瘤癌症,然后将输出与后期添加的Raw图像结果进行集成,以获得更好的准确性。通过早期的独立特征数据库集成模型和后期的完整集成模型,我们得到了我们的结果。因此,该神经网络在早期模型中提供了90%的准确率,在后期和完全集成时提供了86%和84%的准确率,高于其他传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration of Handcrafted and Deep Neural Features for Melanoma Classification and Localization of Cancerous Region
Deep neural networks (DNNs) are widely utilized to automate medical image interpretation in many forms of cancer diagnosis and to support medical specialists with fast data processing. Although man-made characteristics have been used to diagnose since the 1990s, DNN is fairly new in this field and has shown extremely promising results. The fundamental goal of this study is to detect melanoma cancer in its early stages by obtaining a remarkable outcome with greater accuracy. Our purpose is to address the problem of an increase in skin cancer patients throughout the world, as well as an exponential increase in the danger of mortality from not commencing the diagnosis at an early stage, as a result of late detection. We propose that the research works on handcrafted features and merges the result with deep learning approaches with the initial help with a huge dataset of raw images. The DNN model used in this research has multiple layers with various effective filtering processes called batch normalization and dropout also with added layers named flatten and dense. In this process, images are classified to predict melanoma cancer at an early stage with Mean Shift, SIFT, and Gabor separately then the output was ensembled with later added Raw images results to give better accuracy. With an early integration model for separate featured databases and with a late and full integration model for ensemble with various results from the early integrated model we got our results. As a result, this neural network has provided an accuracy of 90% in early models and in late and full integration 86% and 84% respectfully, which is higher than other conventional approaches.
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