论文标题
使用交叉域自学深度学习,强大的阿尔茨海默氏症的进步建模
Robust Alzheimer's Progression Modeling using Cross-Domain Self-Supervised Deep Learning
论文作者
论文摘要
在实践中开发成功的人工智能系统取决于强大的深度学习模型和大型高质量数据。但是,在许多现实世界中,例如临床疾病模型,获取和标记数据可能非常昂贵且耗时。自我监督的学习在提高小型数据制度的模型准确性和鲁棒性方面具有巨大的潜力。此外,许多临床成像和疾病建模应用在很大程度上取决于连续数量的回归。但是,尚未对这些医学成像回归任务的自我监督学习的适用性进行广泛研究。在这项研究中,我们为疾病预后建模开发了一种跨域自学学习方法,作为使用医学图像作为输入的回归问题。我们证明,自我监督的预训练可以改善阿尔茨海默氏病从大脑MRI进展的预测。我们还表明,在扩展(但未标记)脑MRI数据上进行审计的训练优于自然图像的预处理。我们进一步观察到,当天然图像和扩展的脑MRI数据都用于预处理时,实现了最高的性能。
Developing successful artificial intelligence systems in practice depends on both robust deep learning models and large, high-quality data. However, acquiring and labeling data can be prohibitively expensive and time-consuming in many real-world applications, such as clinical disease models. Self-supervised learning has demonstrated great potential in increasing model accuracy and robustness in small data regimes. In addition, many clinical imaging and disease modeling applications rely heavily on regression of continuous quantities. However, the applicability of self-supervised learning for these medical-imaging regression tasks has not been extensively studied. In this study, we develop a cross-domain self-supervised learning approach for disease prognostic modeling as a regression problem using medical images as input. We demonstrate that self-supervised pretraining can improve the prediction of Alzheimer's Disease progression from brain MRI. We also show that pretraining on extended (but not labeled) brain MRI data outperforms pretraining on natural images. We further observe that the highest performance is achieved when both natural images and extended brain-MRI data are used for pretraining.