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Predicting the Evolution of White Matter Hyperintensities in Brain MRI Using Generative Adversarial Networks and Irregularity Map

机译:使用生成的对抗网络和不规则图预测大脑MRI中白色物质高强度的演变

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We propose a Generative Adversarial Network (GAN) model named Disease Evolution Predictor GAN (DEP-GAN) to predict the evolution (i.e., progression and regression) of White Matter Hyperintensities (WMH) in small vessel disease. In this study, the evolution of WMH is represented by the "Disease Evolution Map" (DEM) produced by subtracting irregularity map (IM) images from two time points: baseline and follow-up. DEP-GAN uses two discriminators (critics) to enforce anatomically realistic follow-up image and DEM. To simulate the non-deterministic and unknown parameters involved in WMH evolution, we propose modulating an array of random noises to the DEP-GAN's generator which forces the model to imitate a wider spectrum of alternatives in the results. Our study shows that the use of two critics and random noises modulation in the proposed DEP-GAN improves its performance predicting the evolution of WMH in small vessel disease. DEP-GAN is able to estimate WMH volume in the follow-up year with mean (std) estimation error of —1.91 (12.12) ml and predict WMH evolution with mean rate of 72.01% accuracy (i.e., 88.69% and 23.92% better than Wasserstein GAN).
机译:我们提出了一种名为疾病进化预测因子GAN(DEP-GAN)的生成对抗网络(GAN)模型,以预测小血管疾病中白色物质高信号(WMH)的进化(即进展和消退)。在这项研究中,WMH的进化由“疾病进化图”(DEM)代表,该疾病图是通过从两个时间点减去基线和随访时间减去不规则图(IM)图像而产生的。 DEP-GAN使用两个鉴别符(批评家)来实施解剖学逼真的随访图像和DEM。为了模拟WMH演进中涉及的不确定性和未知参数,我们建议对DEP-GAN的生成器进行调制,以调制随机噪声阵列,以迫使模型在结果中模仿更广泛的替代方案。我们的研究表明,在提出的DEP-GAN中使用两个批评者和随机噪声调制可改善其性能,从而预测WMH在小血管疾病中的演变。 DEP-GAN能够估计随访年份的WMH量,平均(std)估计误差为-1.91(12.12)ml,并以平均率72.01%的准确度预测WMH的演变(即,比平均准确率高88.69%和23.92%) Wasserstein GAN)。

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