IT:基于PET/MR图像的阿尔茨海默病预测的可解释变压器模型

IF 4.7 2区 医学 Q1 NEUROIMAGING
Zhaomin Yao , Weiming Xie , Jiaming Chen , Ying Zhan , Xiaodan Wu , Yingxin Dai , Yusong Pei , Zhiguo Wang , Guoxu Zhang
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引用次数: 0

摘要

阿尔茨海默病(AD)由于其进行性神经退行性影响,特别是在全球人口老龄化的背景下,代表了一个重大挑战。这突出表明,迫切需要开发先进的诊断工具,以便及早发现和精确监测这种疾病。在这一领域,PET/MR成像作为一种强有力的双模态方法脱颖而出,它将传感器数据转换为详细的感知映射,从而丰富了我们对脑病理生理学的掌握。为了充分利用PET/MR成像在诊断AD方面的优势,我们引入了一种名为“IT”的新型深度学习框架,该框架的灵感来自Transformer架构。这种创新的模型熟练地捕获了成像数据中的局部和全局特征,并通过先进的特征工程技术对这些特征进行了细化,以实现协同集成。我们的模型的效率通过稳健的实验验证得到了强调,其中它在一系列评估基准上提供了卓越的性能,同时保持了对计算资源的低需求。此外,我们提取的特征与既定的医学理论在特征分布和使用效率方面产生共鸣,增强了我们研究结果的临床相关性。这些见解大大增强了AD诊断工具的可用性,并有助于通过最先进的成像模式解读大脑功能的更广泛叙述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IT: An interpretable transformer model for Alzheimer's disease prediction based on PET/MR images
Alzheimer's disease (AD) represents a significant challenge due to its progressive neurodegenerative impact, particularly within an aging global demographic. This underscores the critical need for developing sophisticated diagnostic tools for its early detection and precise monitoring. Within this realm, PET/MR imaging stands out as a potent dual-modality approach that transforms sensor data into detailed perceptual mappings, thereby enriching our grasp of brain pathophysiology. To capitalize on the strengths of PET/MR imaging in diagnosing AD, we have introduced a novel deep learning framework named "IT", which is inspired by the Transformer architecture. This innovative model adeptly captures both local and global characteristics within the imaging data, refining these features through advanced feature engineering techniques to achieve a synergistic integration. The efficiency of our model is underscored by robust experimental validation, wherein it delivers superior performance on a host of evaluative benchmarks, all while maintaining low demands on computational resources. Furthermore, the features we extracted resonate with established medical theories regarding feature distribution and usage efficiency, enhancing the clinical relevance of our findings. These insights significantly bolster the arsenal of tools available for AD diagnostics and contribute to the broader narrative of deciphering brain functionality through state-of-the-art imaging modalities.
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来源期刊
NeuroImage
NeuroImage 医学-核医学
CiteScore
11.30
自引率
10.50%
发文量
809
审稿时长
63 days
期刊介绍: NeuroImage, a Journal of Brain Function provides a vehicle for communicating important advances in acquiring, analyzing, and modelling neuroimaging data and in applying these techniques to the study of structure-function and brain-behavior relationships. Though the emphasis is on the macroscopic level of human brain organization, meso-and microscopic neuroimaging across all species will be considered if informative for understanding the aforementioned relationships.
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