As a powerful technique in medical imaging, image synthesis is widely used in applications such as denoising, super resolution and modality transformation etc. Recently, the revival of deep neural networks made immense progress in the field of medical imaging. Although many deep leaning based models have been proposed to improve the image synthesis accuracy, the evaluation of the model uncertainty, which is highly important for medical applications, has been a missing part. In this work, we propose to use Bayesian conditional generative adversarial network (GAN) with concrete dropout to improve image synthesis accuracy. Meanwhile, an uncertainty calibration approach is involved in the whole pipeline to make the uncertainty generated by Bayesian network interpretable. The method is validated with the T1w to T2w MR image translation with a brain tumor dataset of 102 subjects. Compared with the conventional Bayesian neural network with Monte Carlo dropout, results of the proposed method reach a significant lower RMSE with a p-value of 0.0186. Improvement of the calibration of the generated uncertainty by the uncertainty recalibration method is also illustrated.
翻译:作为医学成像的强大技术,图像合成广泛用于各种应用,如脱落、超分辨率和模式转换等。最近,深神经网络的恢复在医学成像领域取得了巨大进展。虽然提出了许多基于深度精细的模型以提高图像合成准确性,但模型不确定性评价对医疗应用非常重要,是缺少的一个部分。在这项工作中,我们提议使用有混凝土丢弃的巴伊西亚有条件的基因对抗网络(GAN)来提高图像合成精度。与此同时,在整个管道中采用了不确定性校准方法,使巴伊西亚网络产生的不确定性可以解释。该方法与T1w至T2w MR图像转换,并配有102个主题的脑肿瘤数据集。与传统的Bayesian神经网络相比,拟议方法的结果达到相当低的RMSE,其P值为0.0186。还说明了改进不确定性校正方法产生的不确定性的校准。