深度学习技术在脑肿瘤诊断中的应用综述

Aswathy Santhosh, T. Saranya, S. Sundar, S. Natarajan
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引用次数: 1

摘要

深度学习技术通过加强预测准确性,导致正确的起草和诊断,为医学图像分析的进步做出了显著贡献。使用深度学习技术的自动医疗诊断可以帮助医生、放射科医生和临床专家早期发现和诊断疾病。检测病变存在的传统方法更耗时和劳动密集。在本文中,我们重点回顾了用于早期识别脑肿瘤诊断的各种基于深度学习的技术。这些诊断任务包括特征提取、分割、分级、分类和预测。这项工作对与脑肿瘤图像相关的每项任务进行了最新的创新进行了详细的审查。我们总结和分析了近年来的重要贡献,并调查了它们在实验中使用的广泛优势,局限性和数据集规范。最后,我们为该领域的从业者解决了正在进行的挑战和未来的研究主张。
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 Techniques for Brain Tumor Diagnosis: A Review
Deep Learning techniques have remarkably contributed to the advancement of medical image analysis by strengthening prediction accuracy, lead to proper drafting and diagnosis. Automated medical diagnosis using deep learning techniques help doctors, radiologists and clinical experts in the early detection and diagnosis of diseases. The conventional method for detecting the presence of lesions is more time consuming and labour-intensive. In this paper, we focus on reviewing various deep learning-based techniques used in the early identification of the diagnosis of brain tumors. These diagnosis tasks include feature extraction, segmentation, grading, classification, and prediction. This work carried out a detailed review of state-of-the-art innovations performed on each task related to brain tumor images. We summarized and analysed significant contributions over recent years and investigated their extensive advantages, limitations and dataset specification used in the experiments. Eventually, we addressed the ongoing challenges and future research propositions for practitioners in the domain.
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