Bypassing Pre-processing Method in Alzheimer’s Disease Diagnosing using Deep Learning Instance Segmentation

Tiew Yuan You, Mohd Ibrahim Shapiai, Fong Jia Xian, Nur Amirah Abd Hamid, RA Ghani, Noor Akhmad Setiawan
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Abstract

Alzheimer’s disease (AD) is a progressive neurodegenerative disorder that will cause the memory loss of patient and will progressively lead to loss of bodily function that will eventually lead to death. Therefore, diagnosing AD accurately is critical to provide the patients with suitable treatment to delay the progression of AD as well to facilitate the treatment interventions. Recent studies are more dependent on the Deep Learning Semantic Segmentation method to perform the Alzheimer's Disease diagnosis. However, semantic segmentation will segment every single pixel in the images which will affect the precision of the small targets like hippocampal region in MRI images, even though the overall loss is low enough. Therefore, a Deep Learning Instance Segmentation is introduced into the Alzheimer’s disease diagnosis field without using any pre-processing method. In this research, the Mask R-CNN will be used to localize the hippocampal region to do the segmentation, and then classified it as AD or NC. The dataset UTM_ADNI_RAW will be used in this study. The proposed method applied on UTM_ADNI_RAW shows the high accuracy of 92.67%. These results show that the proposed method to segment the hippocampal region without requiring pre-processing techniques has a good accuracy in classifying AD and NC subjects. In conclusion, the proposed Mask R-CNN generated a good result on segmenting the hippocampal region without requiring any pre-processing techniques.
利用深度学习实例分割绕过阿尔茨海默病诊断中的预处理方法
阿尔茨海默病(AD)是一种进行性神经退行性疾病,会导致患者记忆力减退,并逐渐丧失身体功能,最终导致死亡。因此,准确诊断 AD 对于为患者提供合适的治疗方法以延缓 AD 的进展以及促进治疗干预至关重要。最近的研究更多地依赖深度学习语义分割方法来进行阿尔茨海默病诊断。然而,语义分割会对图像中的每个像素进行分割,这将影响核磁共振图像中海马区等小目标的精确度,即使整体损失足够低。因此,在不使用任何预处理方法的情况下,将深度学习实例分割引入阿尔茨海默病诊断领域。本研究将使用 Mask R-CNN 对海马区进行定位分割,然后将其分为 AD 或 NC。本研究将使用数据集 UTM_ADNI_RAW。所提出的方法在UTM_ADNI_RAW上的应用显示了高达92.67%的准确率。这些结果表明,所提出的无需预处理技术的海马区分割方法在对 AD 和 NC 受试者进行分类时具有良好的准确性。总之,所提出的 Mask R-CNN 无需任何预处理技术就能产生良好的海马区分割结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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