IHDNA:使用MRI数据集检测阿尔茨海默氏症的相同混合深度神经网络

Adwitiya Pratap Singh, Nisarg Upadhyay, V. G. Shankar, B. Devi
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引用次数: 2

摘要

在最近的研究中已经确定,AD(阿尔茨海默病,一种神经退行性疾病)及其早期阶段可以通过神经成像生物标志物检测到。对于预防,以往的研究主要集中在体积不对称和脑萎缩。由于阿尔茨海默病无法治愈,只能减缓其进展,因此在其早期阶段识别AD已被证明是必要的。在此基础上,本研究旨在利用暹罗启发的相同混合神经网络的判别能力来完成多阶段之间的分类任务。提出的方法使用自制的管道进行预处理,并从核磁共振成像中去除可能干扰模型的其他不需要的组件。将所有MRI图像注册到MNI空间并重新采样切片有助于规范化整个数据集。本研究使用基于特征的方法来处理低维特征而不是高维体素数据,可以减少计算成本和时间。我们使用了VGG-16样式的带有图像净权重的网络来实现自动特征提取。研究使用的是来自ADNI数据集ADNI2和ADNI3的t1加权mri。与普通深度神经网络相比,我们提出的相同混合神经网络具有更好的精度和f1分数。
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IHDNA: Identical Hybrid Deep Neural Networks for Alzheimer's Detection using MRI Dataset
It has been ascertained in recent studies that AD (Alzheimer's disease, a neurodegenerative disorder) and its earlier stages can be detected by neuroimaging biomarkers. To the prevention, previous studies have focused on volumetric asymmetry and brain atrophy. The identification of AD in its early stages has proven to be imperative, as Alzheimer's disease cannot be cured and can only slow its progression. Developing on that idea, this study aims to use the discriminative powers of a Siamese-inspired identical hybrid neural network for the task of classification between multiple stages. The proposed method uses a homemade pipeline for preprocessing and removing other unwanted components from the MRIs that might disturb the model. Registering all the MRI images to MNI space and resampling the slices helped in normalizing the whole dataset. This study uses feature-based methods to work with low-dimensional characteristics rather than high-dimensional voxel data can lessen computing cost and time spent. We used VGG-16 style net with image-net weights for the purpose of automatic feature extraction. T1-weighted MRIs were used for the research, which were accessed from the ADNI datasets ADNI2 and ADNI3. When compared to a normal DNN, our proposed identical hybrid neural network achieved better precision and F1-score.
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