Deep learning has achieved notable performance in the denoising task of low-quality medical images and the detection task of lesions, respectively. However, existing low-quality medical image denoising approaches are disconnected from the detection task of lesions. Intuitively, the quality of denoised images will influence the lesion detection accuracy that in turn can be used to affect the denoising performance. To this end, we propose a play-and-plug medical image denoising framework, namely Lesion-Inspired Denoising Network (LIDnet), to collaboratively improve both denoising performance and detection accuracy of denoised medical images. Specifically, we propose to insert the feedback of downstream detection task into existing denoising framework by jointly learning a multi-loss objective. Instead of using perceptual loss calculated on the entire feature map, a novel region-of-interest (ROI) perceptual loss induced by the lesion detection task is proposed to further connect these two tasks. To achieve better optimization for overall framework, we propose a customized collaborative training strategy for LIDnet. On consideration of clinical usability and imaging characteristics, three low-dose CT images datasets are used to evaluate the effectiveness of the proposed LIDnet. Experiments show that, by equipping with LIDnet, both of the denoising and lesion detection performance of baseline methods can be significantly improved.


翻译:深度学习在降低医疗图像质量和检测损伤的任务方面分别取得了显著的成绩,但是,现有的低质量医疗图像去除功能的方法与检测损伤的任务脱钩不相干。自然,脱名图像的质量会影响损害检测的准确性,而这种准确性反过来又会影响脱色性能。为此,我们提议了一个播放和插插插出的医疗图像脱网框架,即Lesion-Imission Denoising Network(LIDnet),以合作方式改进脱色性功能和检测脱色医疗图像的准确性。具体地说,我们提议通过共同学习多重损失目标,将下游检测任务的反馈纳入现有的脱色框架。除了在整个地貌图上计算到的感知性损失外,还提议了一个新的利益区域(ROI) 感知性损失来进一步连接这两项任务。为了更好地优化总体框架,我们提议为LIDnet提出一个定制的合作培训战略。关于临床可容性和成图像特性的考虑,三个低剂量的检测任务,即低剂量测试LID图像的改进后,将显示使用两种性测试方法。

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