[Medical image segmentation data augmentation method based on channel weight and data-efficient features].

Xing Wu, Chenjie Tao, Zhi Li, Jian Zhang, Qun Sun, Xianhua Han, Yanwei Chen
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Abstract

In computer-aided medical diagnosis, obtaining labeled medical image data is expensive, while there is a high demand for model interpretability. However, most deep learning models currently require a large amount of data and lack interpretability. To address these challenges, this paper proposes a novel data augmentation method for medical image segmentation. The uniqueness and advantages of this method lie in the utilization of gradient-weighted class activation mapping to extract data efficient features, which are then fused with the original image. Subsequently, a new channel weight feature extractor is constructed to learn the weights between different channels. This approach achieves non-destructive data augmentation effects, enhancing the model's performance, data efficiency, and interpretability. Applying the method of this paper to the Hyper-Kvasir dataset, the intersection over union (IoU) and Dice of the U-net were improved, respectively; and on the ISIC-Archive dataset, the IoU and Dice of the DeepLabV3+ were also improved respectively. Furthermore, even when the training data is reduced to 70 %, the proposed method can still achieve performance that is 95 % of that achieved with the entire dataset, indicating its good data efficiency. Moreover, the data-efficient features used in the method have interpretable information built-in, which enhances the interpretability of the model. The method has excellent universality, is plug-and-play, applicable to various segmentation methods, and does not require modification of the network structure, thus it is easy to integrate into existing medical image segmentation method, enhancing the convenience of future research and applications.

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[基于通道权重和数据高效特征的医学图像分割数据增强方法]。
在计算机辅助医疗诊断中,获取标注医学图像数据的成本很高,同时对模型的可解释性也有很高的要求。然而,目前大多数深度学习模型都需要大量数据,并且缺乏可解释性。为了应对这些挑战,本文提出了一种用于医学图像分割的新型数据增强方法。该方法的独特之处和优势在于利用梯度加权类激活映射来提取数据高效特征,然后将其与原始图像融合。随后,构建一个新的通道权重特征提取器来学习不同通道之间的权重。这种方法实现了非破坏性的数据增强效果,提高了模型的性能、数据效率和可解释性。将本文的方法应用于 Hyper-Kvasir 数据集,U-net 的 intersection over union (IoU) 和 Dice 分别得到了改善;在 ISIC-Archive 数据集上,DeepLabV3+ 的 IoU 和 Dice 也分别得到了改善。此外,即使在训练数据减少到 70% 的情况下,所提出的方法仍能达到整个数据集 95% 的性能,表明其具有良好的数据效率。此外,该方法中使用的数据高效特征内置了可解释信息,增强了模型的可解释性。该方法具有很好的通用性,即插即用,适用于各种分割方法,且不需要修改网络结构,因此很容易集成到现有的医学图像分割方法中,为今后的研究和应用提供了更多便利。
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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
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