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A population level atlas of Mus musculus craniofacial skeleton and automated image‐based shape analysis

机译:小家鼠颅面骨骼的种群水平图集和基于图像的自动形状分析

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摘要

Laboratory mice are staples for evo/devo and genetics studies. Inbred strains provide a uniform genetic background to manipulate and understand gene–environment interactions, while their crosses have been instrumental in studies of genetic architecture, integration and modularity, and mapping of complex biological traits. Recently, there have been multiple large‐scale studies of laboratory mice to further our understanding of the developmental basis, evolution, and genetic control of shape variation in the craniofacial skeleton (i.e. skull and mandible). These experiments typically use micro‐computed tomography (micro‐CT) to capture the craniofacial phenotype in 3D and rely on manually annotated anatomical landmarks to conduct statistical shape analysis. Although the common choice for imaging modality and phenotyping provides the potential for collaborative research for even larger studies with more statistical power, the investigator (or lab‐specific) nature of the data collection hampers these efforts. Investigators are rightly concerned that subtle differences in how anatomical landmarks were recorded will create systematic bias between studies that will eventually influence scientific findings. Even if researchers are willing to repeat landmark annotation on a combined dataset, different lab practices and software choices may create obstacles for standardization beyond the underlying imaging data. Here, we propose a freely available analysis system that could assist in the standardization of micro‐CT studies in the mouse. Our proposal uses best practices developed in biomedical imaging and takes advantage of existing open‐source software and imaging formats. Our first contribution is the creation of a synthetic template for the adult mouse craniofacial skeleton from 25 inbred strains and five F1 crosses that are widely used in biological research. The template contains a fully segmented cranium, left and right hemi‐mandibles, endocranial space, and the first few cervical vertebrae. We have been using this template in our lab to segment and isolate cranial structures in an automated fashion from a mixed population of mice, including craniofacial mutants, aged 4–12.5 weeks. As a secondary contribution, we demonstrate an application of nearly automated shape analysis, using symmetric diffeomorphic image registration. This approach, which we call diGPA, closely approximates the popular generalized Procrustes analysis (GPA) but negates the collection of anatomical landmarks. We achieve our goals by using the open‐source advanced normalization tools (ANT) image quantification library, as well as its associated R library (ANTsR) for statistical image analysis. Finally, we make a plea to investigators to commit to using open imaging standards and software in their labs to the extent possible to increase the potential for data exchange and improve the reproducibility of findings. Future work will incorporate more anatomical detail (such as individual cranial bones, turbinals, dentition, middle ear ossicles) and more diversity into the template.
机译:实验室小鼠是evo / devo和遗传学研究的必备品。近交菌株为操纵和理解基因与环境之间的相互作用提供了统一的遗传背景,而它们的杂交则在遗传结构,整合和模块性研究以及复杂生物学特性的定位研究中发挥了作用。最近,对实验室小鼠进行了多次大规模研究,以进一步了解颅面骨架(即颅骨和下颌骨)的形状变化的发育基础,进化和遗传控制。这些实验通常使用微型计算机断层扫描(micro-CT)来捕获3D模式下的颅面表型,并依靠人工注释的解剖标志物进行统计形状分析。尽管成像方式和表型的共同选择为具有更大统计能力的更大研究提供了进行合作研究的潜力,但数据收集的研究者(或实验室特定)性质阻碍了这些努力。研究人员正确地担心,解剖标志的记录方式之间的细微差异将在研究之间造成系统性偏差,最终会影响科学发现。即使研究人员愿意在组合的数据集上重复地标标注,但不同的实验室实践和软件选择可能会为基础成像数据之外的标准化工作带来障碍。在这里,我们提出了一个免费的分析系统,可以帮助对小鼠进行微型CT研究进行标准化。我们的提案使用了生物医学成像技术中开发的最佳实践,并利用了现有的开源软件和成像格式。我们的第一个贡献是创建了由25个自交系和5个F1杂交的成年小鼠颅面骨架合成模板,这些模板已广泛用于生物学研究。该模板包含一个完全分割的颅骨,左右下颌骨,颅内腔和头几个颈椎。我们一直在实验室中使用此模板,以自动方式从4至12.5周龄的混合小鼠群体(包括颅面突变体)中分离和分离颅骨结构。作为次要贡献,我们演示了使用对称衍射图像配准的几乎自动形状分析的应用。我们称之为diGPA的这种方法非常接近流行的广义Procrustes分析(GPA),但否定了解剖学界标的收集。通过使用开源高级归一化工具(ANT)图像量化库及其相关的R库(ANTsR)来进行统计图像分析,我们实现了目标。最后,我们呼吁研究人员致力于在他们的实验室中使用开放的成像标准和软件,以尽可能增加数据交换的潜力并提高研究结果的可重复性。未来的工作将在模板中包含更多的解剖学细节(例如单个颅骨,鼻甲,齿列,中耳小骨),以及更多的多样性。

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