关于有效扩展乳腺肿瘤超声分割模型的训练数据集。

IF 7 2区 医学 Q1 BIOLOGY
Caicai Zhang , Mei Mei , Zhuolin Mei , Bin Wu , Shasha Chen , Minfeng Lu , Chenglang Lu
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引用次数: 0

摘要

乳腺肿瘤超声图像的自动分割可为医生提供客观有效的病灶和感兴趣区参考。数据集优化和模型结构优化对于获得最佳图像分割性能至关重要,而在模型训练数据集不足的情况下,仅通过模型结构增强来满足临床需求可能具有挑战性。虽然大量研究都集中在增强深度学习模型的架构以提高肿瘤分割性能上,但致力于数据集增强的研究相对较少。目前的数据增强技术,如旋转和转换,往往不能充分提高模型的准确性。用于生成合成图像的深度学习方法(如 GANs)主要用于生成视觉上自然的图像。然而,这些生成图像的标签准确性仍然需要人工验证,而且图像缺乏多样性。因此,它们并不适合作为图像分割模型的增强训练数据集。本研究引入了一种新颖的数据集增强方法,通过将肿瘤区域嵌入正常图像来生成合成图像。我们探索了两种合成方法:一种使用相同背景,另一种使用不同背景。通过实验验证,我们证明了合成数据集在提高图像分割模型性能方面的效率。值得注意的是,利用不同背景的合成方法比相同背景的方法有更好的改进。我们的研究结果为医学图像分析,尤其是肿瘤分割,提供了一种实用有效的数据集增强策略,能显著提高分割模型的准确性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On efficient expanding training datasets of breast tumor ultrasound segmentation model
Automatic segmentation of breast tumor ultrasound images can provide doctors with objective and efficient references for lesions and regions of interest. Both dataset optimization and model structure optimization are crucial for achieving optimal image segmentation performance, and it can be challenging to satisfy the clinical needs solely through model structure enhancements in the context of insufficient breast tumor ultrasound datasets for model training. While significant research has focused on enhancing the architecture of deep learning models to improve tumor segmentation performance, there is a relative paucity of work dedicated to dataset augmentation. Current data augmentation techniques, such as rotation and transformation, often yield insufficient improvements in model accuracy. The deep learning methods used for generating synthetic images, such as GANs is primarily applied to produce visually natural-looking images. Nevertheless, the accuracy of the labels for these generated images still requires manual verification, and the images exhibit a lack of diversity. Therefore, they are not suitable for the training datasets augmentation of image segmentation models. This study introduces a novel dataset augmentation approach that generates synthetic images by embedding tumor regions into normal images. We explore two synthetic methods: one using identical backgrounds and another with varying backgrounds. Through experimental validation, we demonstrate the efficiency of the synthetic datasets in enhancing the performance of image segmentation models. Notably, the synthetic method utilizing different backgrounds exhibits superior improvement compared to the identical background approach. Our findings contribute to medical image analysis, particularly in tumor segmentation, by providing a practical and effective dataset augmentation strategy that can significantly improve the accuracy and reliability of segmentation models.
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来源期刊
Computers in biology and medicine
Computers in biology and medicine 工程技术-工程:生物医学
CiteScore
11.70
自引率
10.40%
发文量
1086
审稿时长
74 days
期刊介绍: Computers in Biology and Medicine is an international forum for sharing groundbreaking advancements in the use of computers in bioscience and medicine. This journal serves as a medium for communicating essential research, instruction, ideas, and information regarding the rapidly evolving field of computer applications in these domains. By encouraging the exchange of knowledge, we aim to facilitate progress and innovation in the utilization of computers in biology and medicine.
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