从像素到诊断:深度学习对医学图像处理的影响——综述

Maad Mijwil, None Abdel-Hameed Al-Mistarehi, None Mostafa Abotaleb, None El-Sayed M. El-kenawy, None Abdelhameed Ibrahim, None Abdelaziz A. Abdelhamid, None Marwa M. Eid
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引用次数: 7

摘要

在医疗保健中,医学图像处理被认为是诊断病理状况中最重要的程序之一。磁共振成像(MRI),计算机断层扫描(CT),超声和x射线可视化已被使用。卫生机构正在寻求使用人工智能技术来开发医学图像处理,减轻医生和卫生保健工作者的负担。深度学习在医疗保健领域占有重要地位,支持专家分析和处理医学图像。本文将全面介绍深度学习在分割、分类、疾病诊断、图像生成、图像变换和图像增强等领域的意义。本研究旨在概述深度学习在疾病早期检测、肿瘤定位行为研究、恶性疾病预测以及确定患者合适治疗方案等方面的意义。本文的结论是,深度学习在改善医疗保健方面具有重要意义,可以使医护人员更快、更准确地做出诊断,并通过为患者提供适当的治疗策略来改善患者的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Pixels to Diagnoses: Deep Learning's Impact on Medical Image Processing-A Survey
In healthcare, medical image processing is considered one of the most significant procedures used in diagnosing pathological conditions. Magnetic resonance imaging (MRI), computed tomography (CT), ultrasound, and X-ray visualization have been used. Health institutions are seeking to use artificial intelligence techniques to develop medical image processing and reduce the burden on physicians and healthcare workers. Deep learning has occupied an important place in the healthcare field, supporting specialists in analysing and processing medical images. This article will present a comprehensive survey on the significance of deep learning in the areas of segmentation, classification, disease diagnosis, image generation, image transformation, and image enhancement. This survey seeks to provide an overview of the significance of deep learning in the early detection of diseases, studying tumor localization behaviors, predicting malignant diseases, and determining the suitable treatment for a patient. This article concluded that deep learning is of great significance in improving healthcare, enabling healthcare workers to make diagnoses quickly and more accurately, and improving patient outcomes by providing them with appropriate treatment strategies.
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