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Degenerative Adversarial NeuroImage Nets: Generating Images that Mimic Disease Progression

机译:退行性对抗性神经视网膜:产生模仿疾病进展的图像

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Simulating images representative of neurodegenerative diseases is important for predicting patient outcomes and for validation of computational models of disease progression. This capability is valuable for secondary prevention clinical trials where outcomes and screening criteria involve neuroimaging. Traditional computational methods are limited by imposing a parametric model for atrophy and are extremely resource-demanding. Recent advances in deep learning have yielded data-driven models for longitudinal studies (e.g., face ageing) that are capable of generating synthetic images in real-time. Similar solutions can be used to model trajectories of atrophy in the brain, although new challenges need to be addressed to ensure accurate disease progression modelling. Here we propose Degenerative Adversarial Neurolmage Net (DaniNet)—a new deep learning approach that learns to emulate the effect of neurodegeneration on MRI by simulating atrophy as a function of ages, and disease progression. DaniNet uses an underlying set of Support Vector Regressors (SVRs) trained to capture the patterns of regional intensity changes that accompany disease progression. DaniNet produces whole output images, consisting of 2D-MRI slices that are constrained to match regional predictions from the SVRs. DaniNet is also able to maintain the unique brain morphology of individuals. Adversarial training ensures realistic brain images and smooth temporal progression. We train our model using 9652 T1-weighted (longitudinal) MRI extracted from the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset. We perform quantitative and qualitative evaluations on a separate test set of 1283 images (also from ADNI) demonstrating the ability of DaniNet to produce accurate and convincing synthetic images that emulate disease progression.
机译:模拟图像代表神经退行性疾病是用于预测患者的治疗效果和病情恶化的计算模型的有效性非常重要。这种能力对于二级预防的临床试验,其中结果和筛选标准包括影像学价值。传统的计算方法被强加了萎缩的参数模型的限制,是非常需要资源。在深学习的最新进展已经产生了数据驱动模型为纵向研究(例如,面部老化),其能够在实时生成合成图像。类似的解决方案,可用于模拟在大脑萎缩的轨迹,虽然新的挑战,需要加以解决,以确保准确的疾病进展建模。在这里我们建议退行性对抗性Neurolmage网(DaniNet)-a新的深度学习的办法,学会通过模拟萎缩作为年龄的函数,和疾病进展模仿神经退行性病变的MRI检查的效果。 DaniNet使用的底层组训练捕获的伴随疾病进展的区域的强度变化模式支持向量回归量(SVRS)的。 DaniNet产生整个输出图像,包括被限制为匹配来自SVRS区域预测2D-MRI切片。 DaniNet也能保持个人独特的大脑形态。对抗性训练,确保逼真的大脑图像,平滑的时间进程。我们使用训练我们的模型9652 T1加权(纵向)从MRI阿尔茨海默氏病神经影像学倡议(ADNI)数据集提取。我们执行在一个单独的试验组1283幅的图像(也来自ADNI),证明DaniNet的产生精确和令人信服的合成影像的是模仿的疾病进展的能力的定量和定性的评价。

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