新生儿和婴儿大脑中基于深度学习的白质纤维估算的跨年龄和跨站点域转移影响

ArXiv Pub Date : 2024-08-25
Rizhong Lin, Ali Gholipour, Jean-Philippe Thiran, Davood Karimi, Hamza Kebiri, Meritxell Bach Cuadra
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引用次数: 0

摘要

深度学习模型在从有限的弥散磁共振成像数据中估计组织微观结构方面显示出巨大的前景。然而,当测试和训练数据来自不同的扫描仪和协议,或者当模型应用于具有固有差异的数据(如在不同年龄段扫描的婴儿和儿童发育中的大脑)时,这些模型面临着领域转换的挑战。已经提出了几种技术来应对其中的一些挑战,如成人大脑的数据协调或领域适应。然而,这些技术在估算快速发育的婴儿大脑中的纤维方向分布函数方面仍有待探索。在这项工作中,我们利用矩量法和微调策略,广泛研究了 201 名新生儿和 165 名婴儿两个不同组群内部和之间的年龄效应和域偏移。我们的研究结果表明,与新生儿相比,婴儿微观结构发展变化的减少直接影响了深度学习模型的跨年龄性能。我们还证明,少量目标领域样本可以显著缓解领域偏移问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CROSS-AGE AND CROSS-SITE DOMAIN SHIFT IMPACTS ON DEEP LEARNING-BASED WHITE MATTER FIBER ESTIMATION IN NEWBORN AND BABY BRAINS.

Deep learning models have shown great promise in estimating tissue microstructure from limited diffusion magnetic resonance imaging data. However, these models face domain shift challenges when test and train data are from different scanners and protocols, or when the models are applied to data with inherent variations such as the developing brains of infants and children scanned at various ages. Several techniques have been proposed to address some of these challenges, such as data harmonization or domain adaptation in the adult brain. However, those techniques remain unexplored for the estimation of fiber orientation distribution functions in the rapidly developing brains of infants. In this work, we extensively investigate the age effect and domain shift within and across two different cohorts of 201 newborns and 165 babies using the Method of Moments and fine-tuning strategies. Our results show that reduced variations in the microstructural development of babies in comparison to newborns directly impact the deep learning models' cross-age performance. We also demonstrate that a small number of target domain samples can significantly mitigate domain shift problems.

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