磁共振成像
生物发光成像
基因剔除小鼠
核磁共振
生物医学工程
生物
医学
放射科
物理
内科学
基因
转染
生物化学
荧光素酶
受体
作者
Aryan Arbabi,T. Leigh Spencer Noakes,Dulcie A. Vousden,Jun Dazai,Shoshana Spring,Owen Botelho,Tina Keshavarzian,Mark A. Mattingly,Jacob Ellegood,Lauryl M. J. Nutter,Ralph Wissmann,John G. Sled,Jason P. Lerch,R. Mark Henkelman,Brian J. Nieman
出处
期刊:NeuroImage
[Elsevier]
日期:2022-03-01
卷期号:252: 119008-119008
被引量:18
标识
DOI:10.1016/j.neuroimage.2022.119008
摘要
Multiple-mouse magnetic resonance imaging (MRI) increases scan throughput by imaging several mice simultaneously in the same magnet bore, enabling multiple images to be obtained in the same time as a single scan. This increase in throughput enables larger studies than otherwise feasible and is particularly advantageous in longitudinal study designs where frequent imaging time points result in high demand for MRI resources. Cryogenically-cooled radiofrequency probes (CryoProbes) have been demonstrated to have significant signal-to-noise ratio benefits over comparable room temperature coils for in vivo mouse imaging. In this work, we demonstrate implementation of a multiple-mouse MRI system using CryoProbes, achieved by mounting four such coils in a 30-cm, 7-Tesla magnet bore. The approach is demonstrated for longitudinal quantification of brain structure from infancy to early adulthood in a mouse model of Sanfilippo syndrome (mucopolysaccharidosis type III), generated by knockout of the Hgsnat gene. We find that Hgsnat−/− mice have regionally increased growth rates compared to Hgsnat+/+ mice in a number of brain regions, notably including the ventricles, amygdala and superior colliculus. A strong sex dependence was also noted, with the lateral ventricle volume growing at an accelerated rate in males, but several structures in the brain parenchyma growing faster in females. This approach is broadly applicable to other mouse models of human disease and the increased throughput may be particularly beneficial in studying mouse models of neurodevelopmental disorders.
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