数据驱动的区域生长模型在塑造大脑折叠模式中的作用。

ArXiv Pub Date : 2024-09-04
Jixin Hou, Zhengwang Wu, Xianyan Chen, Li Wang, Dajiang Zhu, Tianming Liu, Gang Li, Xianqiao Wang
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引用次数: 0

摘要

发育中哺乳动物大脑的表面形态对于了解大脑功能和功能障碍至关重要。计算建模为了解大脑早期折叠的内在机制提供了宝贵的见解。最近的研究结果表明,脑组织生长存在明显的区域差异,而这些差异在大脑皮层发育中的作用仍不清楚。在这项研究中,我们利用计算模拟前所未有地探索了区域皮质生长如何影响大脑折叠模式。我们首先利用机器学习(ML)辅助符号回归,基于735名年龄从月经后29周到24个月的儿科受试者的1000多例核磁共振扫描中获得的产前和婴儿大脑纵向真实表面扩张和皮质厚度数据,为典型皮质区域建立了生长模型。这些模型随后被整合到计算软件中,利用解剖学上逼真的几何模型模拟大脑皮层的发育。我们使用多种指标(如平均曲率、沟深度和回旋指数)对由此产生的褶皱模式进行了全面量化。我们的研究结果表明,与传统的均匀生长模型相比,区域生长模型产生的复杂大脑褶皱模式在数量和质量上都更接近实际大脑结构。生长幅度在塑造折叠模式中起主导作用,而生长轨迹的影响较小。此外,与单区域模型相比,多区域模型能更好地捕捉大脑折叠的复杂性。我们的研究结果凸显了将区域生长异质性纳入大脑折叠模拟的必要性和重要性,这可以加强对大脑皮层畸形和神经发育疾病(如脑瘫和自闭症)的早期诊断和治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Role of Data-driven Regional Growth Model in Shaping Brain Folding Patterns.

The surface morphology of the developing mammalian brain is crucial for understanding brain function and dysfunction. Computational modeling offers valuable insights into the underlying mechanisms for early brain folding. Recent findings indicate significant regional variations in brain tissue growth, while the role of these variations in cortical development remains unclear. In this study, we unprecedently explored how regional cortical growth affects brain folding patterns using computational simulation. We first developed growth models for typical cortical regions using machine learning (ML)-assisted symbolic regression, based on longitudinal real surface expansion and cortical thickness data from prenatal and infant brains derived from over 1,000 MRI scans of 735 pediatric subjects with ages ranging from 29 post-menstrual weeks to 24 months. These models were subsequently integrated into computational software to simulate cortical development with anatomically realistic geometric models. We comprehensively quantified the resulting folding patterns using multiple metrics such as mean curvature, sulcal depth, and gyrification index. Our results demonstrate that regional growth models generate complex brain folding patterns that more closely match actual brains structures, both quantitatively and qualitatively, compared to conventional uniform growth models. Growth magnitude plays a dominant role in shaping folding patterns, while growth trajectory has a minor influence. Moreover, multi-region models better capture the intricacies of brain folding than single-region models. Our results underscore the necessity and importance of incorporating regional growth heterogeneity into brain folding simulations, which could enhance early diagnosis and treatment of cortical malformations and neurodevelopmental disorders such as cerebral palsy and autism.

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