Accurate diagnosis of Alzheimer's disease (AD) is both challenging and time consuming. With a systematic approach for early detection and diagnosis of AD, steps can be taken towards the treatment and prevention of the disease. This study explores the practical application of deep learning models for diagnosis of AD. Due to computational complexity, large training times and limited availability of labelled dataset, a 3D full brain CNN (convolutional neural network) is not commonly used, and researchers often prefer 2D CNN variants. In this study, full brain 3D version of well-known 2D CNNs were designed, trained and tested for diagnosis of various stages of AD. Deep learning approach shows good performance in differentiating various stages of AD for more than 1500 full brain volumes. Along with classification, the deep learning model is capable of extracting features which are key in differentiating the various categories. The extracted features align with meaningful anatomical landmarks, that are currently considered important in identification of AD by experts. An ensemble of all the algorithm was also tested and the performance of the ensemble algorithm was superior to any individual algorithm, further improving diagnosis ability. The 3D versions of the trained CNNs and their ensemble have the potential to be incorporated in software packages that can be used by physicians/radiologists to assist them in better diagnosis of AD.
翻译:对阿尔茨海默氏病(AD)的准确诊断既具有挑战性,又耗时费时。在早期发现和诊断AD的系统方法下,可以采取治疗和预防该疾病的步骤。本研究探索了诊断AD的深学习模式的实际应用。由于计算的复杂性、大量的培训时间和贴标签数据集的有限可用性,没有经常使用3D全脑CNN(革命神经网络),研究人员往往更喜欢2DCNN变体。在这项研究中,设计、培训和测试了众所周知的2DCNN的全部脑3D版本,用于诊断AD的各个阶段。深层次的学习方法显示,在将AD的不同阶段区别于1500多个完整的大脑数量方面表现良好。除了分类之外,深层次的学习模式能够提取出不同类别的关键特征。提取的特征与有意义的解剖标志相一致,目前专家认为这对于识别AD非常重要。所有算法的组合也经过测试,共同算法的表现优于任何个人算法,进一步提高了ADD的诊断能力。3D型的模型可以将其用于更好的诊断软件中。3D型的软件,可以将其用于更好的诊断软件。