分段Anything模型与U-Net在超声与乳腺x线影像中乳腺肿瘤检测中的比较分析

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Mohsen Ahmadi, Masoumeh Farhadi Nia, Sara Asgarian, Kasra Danesh, Elyas Irankhah, Ahmad Gholizadeh Lonbar, Abbas Sharifi
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引用次数: 0

摘要

在这项研究中,主要目的是开发一种能够识别和描绘乳腺超声(BUS)和乳房x线摄影图像中肿瘤区域的算法。该技术采用两种先进的深度学习架构,即U-Net和预训练的SAM,用于肿瘤分割。U-Net模型是专门为医学图像分割而设计的,并利用其深度卷积神经网络框架从输入图像中提取有意义的特征。另一方面,预训练的SAM架构结合了一种捕获空间依赖关系并生成分割结果的机制。评估是在不同的数据集上进行的,这些数据集包含了BUS和乳腺x线摄影图像中标注的肿瘤区域,包括良性和恶性肿瘤。该数据集能够全面评估该算法在不同肿瘤类型中的性能。结果表明,U-Net模型在BUS和乳房x线摄影图像中准确识别和分割肿瘤区域方面优于预训练的SAM架构。U-Net在不规则形状、边界不清、肿瘤异质性高的病例中表现优异。相比之下,预训练的SAM架构在准确识别肿瘤区域方面存在局限性,特别是对于恶性肿瘤和边界弱或形状复杂的物体。这些发现强调了为医学图像分割选择合适的深度学习架构的重要性。U-Net模型显示了其作为肿瘤检测的鲁棒性和准确性工具的潜力,而预训练的SAM架构表明需要进一步改进以提高分割性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Comparative Analysis of Segment Anything Model and U-Net for Breast Tumor Detection in Ultrasound and Mammography Images

Comparative Analysis of Segment Anything Model and U-Net for Breast Tumor Detection in Ultrasound and Mammography Images

In this study, the main objective is to develop an algorithm capable of identifying and delineating tumor regions in breast ultrasound (BUS) and mammographic images. The technique employs two advanced deep learning architectures, namely U-Net and pretrained SAM, for tumor segmentation. The U-Net model is specifically designed for medical image segmentation and leverages its deep convolutional neural network framework to extract meaningful features from input images. On the other hand, the pretrained SAM architecture incorporates a mechanism to capture spatial dependencies and generate segmentation results. Evaluation is conducted on a diverse dataset containing annotated tumor regions in BUS and mammographic images, covering both benign and malignant tumors. This dataset enables a comprehensive assessment of the algorithm's performance across different tumor types. Results demonstrate that the U-Net model outperforms the pretrained SAM architecture in accurately identifying and segmenting tumor regions in both BUS and mammographic images. The U-Net exhibits superior performance in challenging cases involving irregular shapes, indistinct boundaries, and high tumor heterogeneity. In contrast, the pretrained SAM architecture exhibits limitations in accurately identifying tumor areas, particularly for malignant tumors and objects with weak boundaries or complex shapes. These findings highlight the importance of selecting appropriate deep learning architectures tailored for medical image segmentation. The U-Net model showcases its potential as a robust and accurate tool for tumor detection, while the pretrained SAM architecture suggests the need for further improvements to enhance segmentation performance.

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来源期刊
Computational Intelligence
Computational Intelligence 工程技术-计算机:人工智能
CiteScore
6.90
自引率
3.60%
发文量
65
审稿时长
>12 weeks
期刊介绍: This leading international journal promotes and stimulates research in the field of artificial intelligence (AI). Covering a wide range of issues - from the tools and languages of AI to its philosophical implications - Computational Intelligence provides a vigorous forum for the publication of both experimental and theoretical research, as well as surveys and impact studies. The journal is designed to meet the needs of a wide range of AI workers in academic and industrial research.
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