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Computer-assisted frameworks for classification of liver, breast and blood neoplasias via neural networks: A survey based on medical images

机译:通过神经网络对肝,乳腺和血液瘤形成进行分类的计算机辅助框架:基于医学图像的调查

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Computer Aided Diagnosis (CAD) systems can support physicians in classifying different kinds of breast cancer, liver cancer and blood tumours also revealed by images acquired via Computer Tomography, Magnetic Resonance, and Blood Smear systems. In this regard, this survey focuses on papers dealing with the description of existing CAD frameworks for the classification of the three mentioned diseases, by detailing existing CAD workflows based on the same steps for supporting the diagnosis of these tumours. In detail, after an appropriate acquisition of the images, the fundamental steps carried out by a CAD framework can be identified as image segmentation, feature extraction and classification. In particular, in this work, specific CAD frameworks are considered, where the task of feature extraction is performed by using both traditional handcrafted strategies and Convolutional Neural Networks-based innovative methodologies, whereas the final supervised pattern classification is based on neuralon-neural machine learning methods. The cited methodology is focused on sharing and reviewing an amount of specific works. Then, the performance of three selected case studies are carefully reported, designed with the aim of showing how final outcomes can vary according to different choices in each step of the adopted workflow. More in detail, these case studies concern with breast images acquired by Tomosynthesis and Magnetic Resonance, hepatocellular carcinoma images acquired by Computed Tomography and enhanced by a triphasic protocol with a contrast medium, peripheral blood smear images for cellular blood tumours and are used to compare their performance. (C) 2018 Elsevier B.V. All rights reserved.
机译:计算机辅助诊断(CAD)系统可以支持医生对不同种类的乳腺癌,肝癌和血液肿瘤进行分类,这些疾病也可以通过计算机断层扫描,磁共振和血涂片系统获取的图像来揭示。在这方面,本次调查的重点是基于支持这些肿瘤诊断的相同步骤,详细介绍了现有的CAD工作流程,详细介绍了现有的针对上述三种疾病分类的CAD框架。详细地,在适当地获取图像之后,由CAD框架执行的基本步骤可以被识别为图像分割,特征提取和分类。特别是在这项工作中,考虑了特定的CAD框架,其中特征提取的任务是使用传统的手工策略和基于卷积神经网络的创新方法来完成的,而最终的受监督模式分类是基于神经/非神经的机器学习方法。引用的方法论着重于共享和审查大量的具体作品。然后,精心报告了三个选定案例研究的执行情况,旨在显示最终结果如何根据所采用工作流程的每个步骤中的不同选择而变化。更详细地讲,这些案例研究涉及通过断层合成和磁共振获得的乳房图像,通过计算机断层扫描获得的并经三步方案与造影剂增强的肝细胞癌图像,用于细胞血液肿瘤的外周血涂片图像,并用于比较它们的图像。性能。 (C)2018 Elsevier B.V.保留所有权利。

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