Multiple Sclerosis (MS) is a chronic neurological condition characterized by the development of lesions in the white matter of the brain. T2-fluid attenuated inversion recovery (FLAIR) brain magnetic resonance imaging (MRI) provides superior visualization and characterization of MS lesions, relative to other MRI modalities. Follow-up brain FLAIR MRI in MS provides helpful information for clinicians towards monitoring disease progression. In this study, we propose a novel modification to generative adversarial networks (GANs) to predict future lesion-specific FLAIR MRI for MS at fixed time intervals. We use supervised guided attention and dilated convolutions in the discriminator, which supports making an informed prediction of whether the generated images are real or not based on attention to the lesion area, which in turn has potential to help improve the generator to predict the lesion area of future examinations more accurately. We compared our method to several baselines and one state-of-art CF-SAGAN model [1]. In conclusion, our results indicate that the proposed method achieves higher accuracy and reduces the standard deviation of the prediction errors in the lesion area compared with other models with similar overall performance.
翻译:多发性硬化(MS)是一种慢性神经神经疾病,其特征是脑白质的损伤发展。 T2- 氟化减退性回转(FLAIR)脑磁共振成像(MRI)与其他MRI模式相比,对 MMS 损伤进行了更高级的视觉化和定性。MS 中的后续大脑FLAIR MRI为临床医生监测病情发展提供了有用的信息。在本研究中,我们提议对基因对抗网络(GANs)进行新的修改,以预测未来在固定时间间隔内对MS 进行特定变异性FLAIR MRI。我们使用导导引引的注意力和分变法,支持对生成的图像是否真实性或非真实性进行知情预测,这反过来有可能帮助改进发电机,以更准确地预测未来检查的损害领域。我们将我们的方法与若干基线和一个先进的CFAGAN模型[1]进行比较。我们的结果表明,拟议的方法实现了更高的精确性能,并减少了与其他模型相比,与其他模型的类似性差。