Magnetic resonance imaging (MRI) noninvasively provides critical information about how human brain structures develop across stages of life. Developmental scientists are particularly interested in the first few years of neurodevelopment. Despite the success of MRI collection and analysis for adults, it is a challenge for researchers to collect high-quality multimodal MRIs from developing infants mainly because of their irregular sleep pattern, limited attention, inability to follow instructions to stay still, and a lack of analysis approaches. These challenges often lead to a significant reduction of usable data. To address this issue, researchers have explored various solutions to replace corrupted scans through synthesizing realistic MRIs. Among them, the convolution neural network (CNN) based generative adversarial network has demonstrated promising results and achieves state-of-the-art performance. However, adversarial training is unstable and may need careful tuning of regularization terms to stabilize the training. In this study, we introduced a novel MRI synthesis framework - Pyramid Transformer Net (PTNet). PTNet consists of transformer layers, skip-connections, and multi-scale pyramid representation. Compared with the most widely used CNN-based conditional GAN models (namely pix2pix and pix2pixHD), our model PTNet shows superior performance in terms of synthesis accuracy and model size. Notably, PTNet does not require any type of adversarial training and can be easily trained using the simple mean squared error loss.
翻译:发育科学家对最初几年的神经发育特别感兴趣。尽管MRI对成年人的收集和分析工作取得了成功,但对于研究人员来说,从婴儿发育中收集高质量的多式联运MMSI是一个挑战,主要因为婴儿的睡眠模式不正常、注意力有限、无法遵守要求保持静止状态的指示以及缺乏分析方法。这些挑战往往导致可使用的数据大量减少。为解决这一问题,研究人员探索了各种解决办法,通过合成现实的MMSI,取代腐败扫描。其中,基于进化神经对抗网络(CNN)的遗传神经神经网络(CNN)已经展示出令人乐观的成果并取得了最新业绩。然而,对抗性培训不稳定,可能需要仔细调整规范条款以稳定培训。在这项研究中,我们引入了新的MRI合成框架 - Pyramid Symarder Refer Net(PTNet ) - 任何基于变压层、跳接和多尺度的金字塔的模型(PTNetNetNet ) 包括基于最广泛使用的CNAN2型号网络型模范式的模型和高超级的GHDMIS标准化模型。