Small lesions in magnetic resonance imaging (MRI) images are crucial for clinical diagnosis of many kinds of diseases. However, the MRI quality can be easily degraded by various noise, which can greatly affect the accuracy of diagnosis of small lesion. Although some methods for denoising MR images have been proposed, task-specific denoising methods for improving the diagnosis confidence of small lesions are lacking. In this work, we propose a voxel-wise hybrid residual MLP-CNN model to denoise three-dimensional (3D) MR images with small lesions. We combine basic deep learning architecture, MLP and CNN, to obtain an appropriate inherent bias for the image denoising and integrate each output layers in MLP and CNN by adding residual connections to leverage long-range information. We evaluate the proposed method on 720 T2-FLAIR brain images with small lesions at different noise levels. The results show the superiority of our method in both quantitative and visual evaluations on testing dataset compared to state-of-the-art methods. Moreover, two experienced radiologists agreed that at moderate and high noise levels, our method outperforms other methods in terms of recovery of small lesions and overall image denoising quality. The implementation of our method is available at https://github.com/laowangbobo/Residual_MLP_CNN_Mixer.
翻译:磁共振成像(MRI)图像中的小损害是临床诊断多种疾病的关键。然而,磁共振成像(MRI)图像中的小项,其质量很容易因各种噪音而退化,这可以极大地影响小项病变诊断的准确性。虽然已经提出一些取消MR图像的方法,但缺乏提高小项病变诊断信心的任务特有分解方法。在这项工作中,我们建议采用一种自愿-方法,即混合的MLP-CNN模型,将三维(3D)MR图像与小项病变相结合。我们把基本的深层学习结构(MLP和CNN)结合起来,以获得对MLP和CNN中每个输出层进行分红和整合的适当固有偏见,增加剩余连接,以利用远程信息。我们评估了720 T2-FLFAIR脑图像中小项病变的诊断性方法,在不同噪音级别上显示我们测试数据集的定量和视觉评价方法优于现状方法。此外,两位经验丰富的放射学家同意,在中和高度噪音级别上,我们所采用的方法超越了MLPPRI/MLUT系统的整体质量方法。