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Morphological Analysis Combined with a Machine Learning Approach to Detect Utrasound Median Sagittal Sections for the Nuchal Translucency Measurement

机译:形态学分析与机器学习方法相结合,以检测用于颈部半透明测量的超声中位矢状部分

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The screening of chromosomal defects, as trisomy 13, 18 and 21, can be obtained by the measurement of the nuchal translucency thickness scanning during the end of the first trimester of pregnancy. This contribution proposes an automatic methodology to detect mid-sagittal sections to identify the correct measurement of nuchal translucency. Wavelet analysis and neural network classifiers are the main strategies of the proposed methodology to detect the frontal components of the skull and the choroid plexus with the support of radial symmetry analysis. Real clinical ultrasound images were adopted to measure the performance and the robustness of the methodology, thus it can be highlighted an error of at most 0.3 mm in 97.4% of the cases.
机译:作为三术13,18和21的染色体缺陷的筛选可以通过测量妊娠期妊娠期末端的颈部半透明厚度扫描来获得。该贡献提出了一种自动方法来检测中矢状部分以识别Nuchal半透明的正确测量。小波分析和神经网络分类器是检测径向对称性分析的支持和脉络丛的颅骨和脉络膜丛的主要策略。采用真正的临床超声图像来测量方法的性能和鲁棒性,因此可以突出显示最多0.3毫米的误差为97.4%。

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