高保真预测大脑微环境中的扩散。

IF 3.2 3区 生物学 Q2 BIOPHYSICS Biophysical journal Pub Date : 2024-11-19 Epub Date: 2024-10-10 DOI:10.1016/j.bpj.2024.10.005
Nels Schimek, Thomas R Wood, David A C Beck, Michael McKenna, Ali Toghani, Elizabeth Nance
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引用次数: 0

摘要

多粒子跟踪(MPT)是一种显微镜技术,能够同时跟踪生物样本中成百上千的纳米粒子,已被广泛用于描述生物微环境的特征,包括脑细胞外空间(ECS)。机器学习技术已被应用于 MPT 数据集,以预测纳米粒子轨迹的扩散模式以及更复杂的生物变量,如生物年龄。在本研究中,我们开发了一个机器学习管道,利用监督分类和特征重要性计算来预测和研究大脑 ECS 因损伤而发生的变化。我们首先在来自活体脑 ECS 的三个相关但不同的 MPT 数据集上验证了该管道--年龄差异、区域差异和 ECS 结构的酶降解。我们预测三个年龄的准确率为 86%,预测三个区域的准确率为 90%,预测健康组织与酶处理组织的准确率为 69%。由于不同组间的损伤通常采用传统的统计方法进行比较,因此我们首先使用线性混合效应模型来比较健康对照条件与两种不同的氧葡萄糖剥夺[1]暴露时间诱发的损伤之间的特征。然后,我们利用机器学习,使用 MPT 特征来预测损伤状态。我们的研究表明,该管道能预测健康对照组、0.5 小时氧葡萄糖剥夺处理组和 1.5 小时氧葡萄糖剥夺处理组之间的损伤状态,在大脑皮层的准确率为 59%,在纹状体的准确率为 66%,并能识别轨迹特征之间的非线性关系,而这些关系在传统的线性模型中并不明显。我们的工作表明,将机器学习应用于 MPT 数据在多种实验条件下都是有效的,而且可以发现纳米粒子扩散的独特生物相关特征。
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High-fidelity predictions of diffusion in the brain microenvironment.

Multiple-particle tracking (MPT) is a microscopy technique capable of simultaneously tracking hundreds to thousands of nanoparticles in a biological sample and has been used extensively to characterize biological microenvironments, including the brain extracellular space (ECS). Machine learning techniques have been applied to MPT data sets to predict the diffusion mode of nanoparticle trajectories as well as more complex biological variables, such as biological age. In this study, we develop a machine learning pipeline to predict and investigate changes to the brain ECS due to injury using supervised classification and feature importance calculations. We first validate the pipeline on three related but distinct MPT data sets from the living brain ECS-age differences, region differences, and enzymatic degradation of ECS structure. We predict three ages with 86% accuracy, three regions with 90% accuracy, and healthy versus enzyme-treated tissue with 69% accuracy. Since injury across groups is normally compared with traditional statistical approaches, we first used linear mixed effects models to compare features between healthy control conditions and injury induced by two different oxygen glucose deprivation exposure times. We then used machine learning to predict injury state using MPT features. We show that the pipeline predicts between the healthy control, 0.5 h OGD treatment, and 1.5 h OGD treatment with 59% accuracy in the cortex and 66% in the striatum, and identifies nonlinear relationships between trajectory features that were not evident from traditional linear models. Our work demonstrates that machine learning applied to MPT data is effective across multiple experimental conditions and can find unique biologically relevant features of nanoparticle diffusion.

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来源期刊
Biophysical journal
Biophysical journal 生物-生物物理
CiteScore
6.10
自引率
5.90%
发文量
3090
审稿时长
2 months
期刊介绍: BJ publishes original articles, letters, and perspectives on important problems in modern biophysics. The papers should be written so as to be of interest to a broad community of biophysicists. BJ welcomes experimental studies that employ quantitative physical approaches for the study of biological systems, including or spanning scales from molecule to whole organism. Experimental studies of a purely descriptive or phenomenological nature, with no theoretical or mechanistic underpinning, are not appropriate for publication in BJ. Theoretical studies should offer new insights into the understanding ofexperimental results or suggest new experimentally testable hypotheses. Articles reporting significant methodological or technological advances, which have potential to open new areas of biophysical investigation, are also suitable for publication in BJ. Papers describing improvements in accuracy or speed of existing methods or extra detail within methods described previously are not suitable for BJ.
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