EVALUATION OF U-Net AND ResNet ARCHITECTURES FOR BIOMEDICAL IMAGE SEGMENTATION

M. Çalişan, Veysel Gündüzalp, Nevzat Olgun
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Abstract

Medical professionals need methods that provide reliable information in diagnosing and monitoring neurological diseases. Among such methods, studies based on medical image analysis are essential among the active research topics in this field. Tumor segmentation is a popular area, especially with magnetic resonance imaging (MRI). Early diagnosis of tumours plays an essential role in the treatment process. This situation also increases the survival rate of the patients. Manually segmenting a tumour from MR images is a difficult and time-consuming task within the anatomical knowledge of medical professionals. This has necessitated the need for automatic segmentation methods. Convolutional neural networks (CNN), one of the deep learning methods that provide the most advanced results in the field of tumour segmentation, play an important role. This study, tumor segmentation was performed from brain and heart MR images using CNN-based U-Net and ResNet50 deep network architectures. In the segmentation process, their performance was tested using Dice, Sensitivity, PPV and Jaccard metrics. High performance levels were sequentially achieved using the U-Net network architecture on brain images, with success rates of approximately 98.47%, 98.1%, 98.85%, and 96.07%
评估用于生物医学图像分割的 U-Net 和 ResNet 架构
医学专家需要能为诊断和监测神经系统疾病提供可靠信息的方法。在这些方法中,基于医学图像分析的研究是这一领域活跃的研究课题中必不可少的。肿瘤分割是一个热门领域,尤其是磁共振成像(MRI)。肿瘤的早期诊断在治疗过程中起着至关重要的作用。这种情况也提高了患者的存活率。在医学专业人员的解剖知识范围内,从磁共振图像中手动分割肿瘤是一项既困难又耗时的任务。因此有必要采用自动分割方法。卷积神经网络(CNN)作为深度学习方法之一,在肿瘤分割领域取得了最先进的成果,发挥了重要作用。本研究使用基于 CNN 的 U-Net 和 ResNet50 深度网络架构对大脑和心脏 MR 图像进行了肿瘤分割。在分割过程中,使用 Dice、灵敏度、PPV 和 Jaccard 指标测试了它们的性能。使用 U-Net 网络架构在大脑图像上依次实现了较高的性能水平,成功率分别约为 98.47%、98.1%、98.85% 和 96.07%。
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