利用深度学习通过磁共振成像进行精确诊断

A. Rengarajan, Zahid Ahmed, Rajendra P. Pandey
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引用次数: 0

摘要

深度掌握技术彻底改变了科学成像领域,提供了实用的患者预后能力。当前的一个例子是用于磁共振成像(MRI)采集、重建、分割和解释的深度学习。以深度掌握为基础的策略利用卷积神经网络(CNN)对核磁共振成像扫描中的异常疾病区域进行自动分类和分割,从而实现特殊而正确的预后。这些计算机化策略有可能克服复杂的工作密集型引导分割和可视化程序的瓶颈。此外,它们还能对复杂的疾病进行更全面的评估。通过结合图像信息的语义和空间信息,基于深度获取知识的全结构磁共振成像评估的整体性能有了显著提高。此外,基于 CNN 的全核磁共振成像分割已证明有望对包括脑肿瘤、中风和痴呆症在内的多种疾病进行有针对性的有效治疗。在准确性和效率方面,分割和分类任务的卓越效果显示了基于深度学习的技术作为核磁共振成像分析自动化中的有效设备的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate Diagnosis by Magnetic Resonance Imaging Using Deep Learning
deep mastering has revolutionized the field of scientific imaging, providing practical affected person prognosis competencies. A current example is deep studying for Magnetic Resonance Imaging (MRI) acquisition, reconstruction, segmentation, and interpretation. Deep mastering-primarily based strategies leverage convolutional neural networks (CNNs) to automatically classify and section not unusual disease areas in MRI scans, allowing particular and correct prognosis. Those computerized strategies can potentially conquer the bottleneck of the complex work-intensive guide segmentation and visualization procedure. Moreover, they can provide an extra complete assessment of complex sicknesses. Through incorporating both the semantic and spatial information of image information, the overall performance of deep-gaining knowledge of-based totally structures for MRI evaluation has dramatically progressed. Moreover, CNN-based total MRI segmentation has proven promise in targeted and effective remedies for numerous diseases, including mind tumors, stroke, and dementia. The demonstration of superior effects in segmentation and classification tasks, in terms of accuracy and efficiency, shows the potential of deep learning-based techniques as an effective device within the automation of MRI analysis.
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