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Group-wise similarity registration of point sets using Student’s t-mixture model for statistical shape models

机译:使用学生的T-Mixture模型进行统计形状模型的Point Sets的群体相似性登记

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Highlights ? Group-wise similarity point set registration using Students t-mixture model. ? Automatic robustness to outliers. ? Automatic construction of statistical shape models. ? Improved registration accuracy and SSM quality compared to Gaussian mixture models. Graphical abstract Display Omitted Abstract A probabilistic group-wise similarity registration technique based on Student’s t-mixture model (TMM) and a multi-resolution extension of the same (mr-TMM) are proposed in this study, to robustly align shapes and establish valid correspondences, for the purpose of training statistical shape models (SSMs). Shape analysis across large cohorts requires automatic generation of the requisite training sets. Automated segmentation and landmarking of medical images often result in shapes with varying proportions of outliers and consequently require a robust method of alignment and correspondence estimation. Both TMM and mrTMM are validated by comparison with state-of-the-art registration algorithms based on Gaussian mixture models (GMMs), using both synthetic and clinical data. Four clinical data sets are used for validation: (a) 2D femoral heads ( K = 1000 samples generated from DXA images of healthy subjects); (b) control-hippocampi ( K = 50 samples generated from T1-weighted magnetic resonance (MR) images of healthy subjects); (c) MCI-hippocampi ( K = 28 samples generated from MR images of patients diagnosed with mild cognitive impairment); and (d) heart shapes comprising left and right ventricular endocardium and epicardium ( K = 30 samples generated from short-axis MR images of: 10 healthy subjects, 10 patients diagnosed with pulmonary hypertension and 10 diagnosed with hypertrophic cardiomyopathy). The proposed methods significantly outperformed the state-of-the-art in terms of registration accuracy in the experiments involving synthetic data, with mrTMM offering significant improvement over TMM. With the clinical data, both methods performed comparably to the state-of-the-art for the hippocampi and heart data sets, which contained few outliers. They outperformed the state-of-the-art for the femur data set, containing large proportions of outliers, in terms of alignment accuracy, and the quality of SSMs trained, quantified in terms of generalization, compactness and specificity.
机译:强调 ?使用学生T型混合模型进行组设计相似点设置注册。还对异常值的自动稳健性。还自动施工统计形状模型。还与高斯混合模型相比,改善了注册精度和SSM质量。图形摘要显示摘要摘要本研究提出了一种基于学生的T-混合物模型(TMM)的概率群体相似性登记技术和同一(MR-TMM)的多分辨率延伸,以强大对齐形状并建立有效对于培训统计形状模型(SSM)的目的,对应关系。跨大队列的形状分析需要自动生成必要的培训集。医学图像的自动分割和地标经常导致具有不同比例的异常值的形状,因此需要一种坚固的对准和对应估计方法。通过基于高斯混合模型(GMMS)的基于高斯混合模型(GMMS),通过合成和临床数据进行验证,通过与最先进的登记算法进行验证,验证TMM和MRTMM。四个临床数据集用于验证:(a)2d股骨头(k =从健康受试者的dxa图像产生的样本); (b)对照-HIPPOCAMPI(k = 50个从T1加权磁共振(MR)图像的健康受试者的图像); (c)MCI-HIPPOCAMPI(K = 28种从诊断患有轻度认知障碍的患者的图像产生的样品); (d)心脏形状,包括左和右心室内心和外膜(K = 30个样品,由短轴MR图像产生:10个健康受试者,10名患者被诊断出患有肺动脉高血压和患有肥厚性心肌病的10患者)。在涉及合成数据的实验中,所提出的方法在注册准确性方面显着优势,MRTMM提供了对TMM的显着改善。通过临床数据,这两种方法都与最先进的海马和心脏数据集进行的方法,其中包含几个异常值。它们优于股骨数据集的最先进,在对准精度方面包含大量的异常值,以及培训的SSMS质量,在泛化,紧凑性和特异性方面量化。

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