任意分割模型(SAM)分割超声图像的能力。

IF 5.7 4区 生物学 Q1 BIOLOGY
Fang Chen, Lingyu Chen, Haojie Han, Sainan Zhang, Daoqiang Zhang, Hongen Liao
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引用次数: 1

摘要

准确的超声图像分割对疾病筛查、诊断和预后评估具有重要意义。然而,美国图像通常有阴影伪影和模糊的边界,影响美国分割。最近,来自元人工智能的任何模型分段(SAM)在广泛的应用中显示出显着的潜力。本文的目的是对SAM分割美国图像的能力进行初步评估,特别是在阴影伪影和模糊边界的情况下。我们在三个不同组织的美国数据集上评估了SAM的性能,包括多结构心脏组织、甲状腺结节和胎儿头部。结果表明,SAM在组织结构清晰的US图像上表现良好,但在阴影伪影和模糊边界的情况下表现有限。因此,创建一个考虑美国图像特征的改进的SAM对于自动准确地分割美国图像具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The ability of Segmenting Anything Model (SAM) to segment ultrasound images.

Accurate ultrasound (US) image segmentation is important for disease screening, diagnosis, and prognosis assessment. However, US images typically have shadow artifacts and ambiguous boundaries that affect US segmentation. Recently, Segmenting Anything Model (SAM) from Meta AI has demonstrated remarkable potential in a wide range of applications. The purpose of this paper was to conduct an initial evaluation of the ability for SAM to segment US images, particularly in the event of shadow artifacts and ambiguous boundaries. We evaluated SAM's performance on three US datasets of different tissues, including multi-structure cardiac tissue, thyroid nodules, and the fetal head. Results indicated that SAM generally performs well with US images with clear tissue structures, but it has limited performance in the event of shadow artifacts and ambiguous boundaries. Thus, creating an improved SAM that considers the characteristics of US images is significant for automatic and accurate US segmentation.

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来源期刊
CiteScore
13.60
自引率
1.80%
发文量
47
审稿时长
>12 weeks
期刊介绍: BioScience Trends (Print ISSN 1881-7815, Online ISSN 1881-7823) is an international peer-reviewed journal. BioScience Trends devotes to publishing the latest and most exciting advances in scientific research. Articles cover fields of life science such as biochemistry, molecular biology, clinical research, public health, medical care system, and social science in order to encourage cooperation and exchange among scientists and clinical researchers.
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