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用于性别歧视的骨骼解剖结构的统计形状建模:它们的训练规模、两性差异和不对称性。

Statistical Shape Modeling of Skeletal Anatomy for Sex Discrimination: Their Training Size, Sexual Dimorphism, and Asymmetry.

作者信息

Audenaert E A, Pattyn C, Steenackers G, De Roeck J, Vandermeulen D, Claes P

机构信息

Department of Orthopedic Surgery and Traumatology, Ghent University Hospital, Ghent, Belgium.

Department of Trauma and Orthopedics, Addenbrooke's Hospital, Cambridge University Hospitals NHS Foundation Trust, Cambridge, United Kingdom.

出版信息

Front Bioeng Biotechnol. 2019 Nov 1;7:302. doi: 10.3389/fbioe.2019.00302. eCollection 2019.

Abstract

Statistical shape modeling provides a powerful tool for describing and analyzing human anatomy. By linearly combining the variance of the shape of a population of a given anatomical entity, statistical shape models (SSMs) identify its main modes of variation and may approximate the total variance of that population to a selected threshold, while reducing its dimensionality. Even though SSMs have been used for over two decades, they lack in characterization of their goodness of prediction, in particular when defining whether these models are actually representative for a given population. The current paper presents, to the authors' knowledge, the most extent lower limb anatomy shape model considering the pelvis, femur, patella, tibia, fibula, talus, and calcaneum to date. The present study includes the segmented training shapes ( = 542) obtained from 271 lower limb CT scans. The different models were evaluated in terms of accuracy, compactness, generalizability as well as specificity. The size of training samples needed in each model so that it can be considered population covering was estimated to approximate around 200 samples, based on the generalizability properties of the different models. Simultaneously differences in gender and patterns in left-right asymmetry were identified and characterized. Size was found to be the most pronounced sexual discriminator whereas intra-individual variations in asymmetry were most pronounced at the insertion site of muscles. For models aimed at population covering descriptive studies, the number of training samples required should amount a sizeable 200 samples. The geometric morphometric method for sex discrimination scored excellent, however, it did not largely outperformed traditional methods based on discrete measures.

摘要

统计形状建模为描述和分析人体解剖结构提供了一个强大的工具。通过线性组合给定解剖实体群体形状的方差,统计形状模型(SSMs)识别其主要变异模式,并可将该群体的总方差近似到选定阈值,同时降低其维度。尽管统计形状模型已经使用了二十多年,但它们在预测优度的表征方面存在不足,特别是在定义这些模型是否实际上代表给定群体时。据作者所知,本文提出了迄今为止考虑骨盆、股骨、髌骨、胫骨、腓骨、距骨和跟骨的最全面的下肢解剖形状模型。本研究包括从271例下肢CT扫描中获得的542个分割训练形状。对不同模型在准确性、紧凑性、通用性以及特异性方面进行了评估。基于不同模型的通用性属性,估计每个模型中需要的训练样本数量,以便可以认为其覆盖了总体,约为200个样本左右。同时,识别并表征了性别差异和左右不对称模式。发现尺寸是最明显的性别区分因素而个体内不对称变化在肌肉附着点最为明显。对于旨在进行覆盖总体描述性研究的模型,所需训练样本数量应为相当可观的200个样本。用于性别歧视的几何形态测量方法得分优异,然而,它在很大程度上并没有优于基于离散测量的传统方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1a88/6837998/9c5cb08fbcd0/fbioe-07-00302-g0001.jpg

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