用于精确脑肿瘤分析的深度学习架构

Y. M. Babu, D. V. Sai kishore, Y. M. Blessy, V. S. Prabhu, C. Uthayakumar, S. Renukadevi
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引用次数: 0

摘要

机器学习涉及使用计算机构建和开发学习算法。手写识别、生物识别、股票市场分析和医疗诊断是其中的一些用途。算法分为有监督(从训练样本中学习)和无监督(从随机样本中学习)(模型与观察值拟合)。深度学习涉及使用复杂的模型,以便从大量数据(如观察或图像)中获取知识。它可能是有监督(图像分类)或无监督(非监督)(图像压缩)。已经建立了各种基于深度学习的研究计划,以提高脑癌分类的诊断准确性。本文涵盖了几种脑图像分类系统中使用的脑成像数据集,并描述了评估系统性能的常用指标。还有关于各种深度学习算法的信息,例如肿瘤类别和样本的数量。
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 Architectures for Accurate Brain Tumour Analysis
Machine learning is concerned with using computers to construct and develop learning algorithms. Handwriting recognition, biometric recognition, stock market analysis, and medical diagnosis are some of the uses. The algorithms are divided into supervised (learning from training examples) and unsupervised (learning from random samples) (a model is fit to observations). Deep learning involves the use of intricate models in order to acquire knowledge from a substantial amount of data, such as observations or images. It might be supervised (image classification) or unsupervised (non-supervised) (image compression). A variety of deep learning-based research initiatives have been established to increase the diagnostic accuracy of brain cancer classification. This paper covers the brain imaging datasets utilized in several brain image classification systems and describes the generally used metrics for assessing the systems' performance. There is also information on various deep-learning algorithms, such as the number of tumor classes and samples.
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