基于多维多输入多输出U-Net模型的老年痴呆症自动颅骨剥离

IF 1.1 4区 物理与天体物理 Q4 PHYSICS, ATOMIC, MOLECULAR & CHEMICAL
Priyanka Gautam, Manjeet Singh
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引用次数: 0

摘要

颅骨剥离是分析磁共振成像(MRI)扫描的基本步骤,在阿尔茨海默病(AD)等疾病的诊断中起着至关重要的作用。阿尔茨海默氏症是一种进行性神经系统疾病,目前尚无治愈方法。阿尔茨海默病的早期和精确诊断对于及时干预以帮助减缓其进展至关重要。虽然从MRI中手动分割大脑是准确的,但需要专业知识、经验和时间投入。因此,到目前为止,已经引入了许多自动脑分割算法。U-Net模型最近因其卓越的体积医学图像分割性能而获得了极大的关注。本研究提出了一种新的多维多输入多输出U-Net (MIMO-U-Net)模型,以提高脑提取的效率。该模型是多维的,因为它同时适用于2D和3D数据集。该体系结构使用了一种drop - out正则化技术,在不同的层之间具有不同的drop - out率。串联连接也用于将高级特征与上采样输出相结合。dropout正则化和串接有助于提高模型性能。结合Dice loss和categorical focal loss,提出了一种改进的loss函数。MIMO-U-Net使用t1加权ADNI脑MRI数据集进行训练和测试。结果表明,MIMO-U-Net通过提供更好的准确性和显著的定量和定性结果,超越了大多数现有技术。此外,MIMO-U-Net在执行过程中展示了大量的计算效率。评估指标,包括Dice系数,特异性和敏感性,分别以0.992,0.999和0.995的精确分数证实了模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automatic Skull Stripping Using Multidimensional Multi-input Multi-output U-Net Model for Alzheimer’s Disease

Automatic Skull Stripping Using Multidimensional Multi-input Multi-output U-Net Model for Alzheimer’s Disease

Skull stripping is a fundamental step in analyzing magnetic resonance imaging (MRI) scans, which play a crucial role in disease diagnosis such as Alzheimer’s disease (AD). Alzheimer’s is a progressive neurological disorder with no known cure. Early and precise diagnosis of AD is essential for timely intervention to help slow its progression. Although manual brain segmentation from MRI is accurate, it requires expert knowledge, experience, and time investment. Therefore, many automated brain segmentation algorithms have been introduced so far. The U-Net model has recently gained significant attention due to its exceptional volumetric medical image segmentation performance. This study presents a novel multidimensional multi-input multi-output U-Net (MIMO-U-Net) model for more efficient brain extraction. The model is multidimensional because it works with both 2D and 3D datasets. This architecture uses a dropout regularization technique with varying dropout rates across different layers. The concatenation connections are also used to combine high-level features with up-sampled output. The dropout regularization and concatenation help in enhancing the model performance. A refined loss function is also proposed by combining Dice loss and categorical focal loss. The MIMO-U-Net is trained and tested using a T1-weighted ADNI brain MRI dataset. The results indicate that MIMO-U-Net surpasses most existing techniques by offering better accuracy and notable quantitative and qualitative outcomes. In addition, the MIMO-U-Net showcases substantial computational efficiency during execution. Evaluation metrics, comprising the Dice coefficient, specificity, and sensitivity, corroborate the model’s performance with precise scores of 0.992, 0.999, and 0.995, respectively.

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来源期刊
Applied Magnetic Resonance
Applied Magnetic Resonance 物理-光谱学
CiteScore
1.90
自引率
10.00%
发文量
59
审稿时长
2.3 months
期刊介绍: Applied Magnetic Resonance provides an international forum for the application of magnetic resonance in physics, chemistry, biology, medicine, geochemistry, ecology, engineering, and related fields. The contents include articles with a strong emphasis on new applications, and on new experimental methods. Additional features include book reviews and Letters to the Editor.
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