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A study on Down syndrome detection based on Artificial Neural Network in Ultra sonogram images

机译:超声图像中基于人工神经网络的唐氏综合症检测研究

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Down syndrome is a genetic disorder in which disrupts infants, physical and cognitive development. Down syndrome is characterized by the absence of nasal bone during the late first trimester of pregnancy. Presently Down syndrome is identified by visually examining the ultra sonogram image of foetus of 11 to 13 weeks of gestation for the presence of nasal bone. The visually identification by the change in the contrast of nasal bone region of ultra sonogram is a very difficult task. So the image processing based features extraction by considering various parameters have been extremely important. This paper provides comprehensive survey on various medical imaging techniques that can be effectively used for detecting the syndrome in the early stage of pregnancy. Our proposed survey consider different methods based on the various parameters extracted using a series of operations such as Region Of Interest (ROI), Nasal Bone (NB) segmentation using morphological, Otsu thresholding and logical operations from the ultra sonogram images, both in spatial domain as well as transform domain using Discrete Cosine Transform (DCT) and wavelet transforms. The extracted data is normalized and used to train classifiers like Back Propagation Neural Network (BPNN). This paper illustrates overview of various states of methods available in the Down syndrome detection and comparison analysis of each method is discussed.
机译:唐氏综合症是一种遗传疾病,会扰乱婴儿,身体和认知的发育。唐氏综合症的特征是在怀孕的头三个月末没有鼻骨。目前,唐氏综合症是通过肉眼检查妊娠11到13周的胎儿超声图像是否存在鼻骨来确定的。通过超声检查的鼻骨区域对比度的变化进行视觉识别是一项非常困难的任务。因此,考虑各种参数的基于图像处理的特征提取非常重要。本文对可有效用于检测妊娠早期综合征的各种医学成像技术进行了全面的调查。我们建议的调查基于在空间域中使用一系列操作提取的各种参数来考虑不同的方法,这些参数包括感兴趣区域(ROI),鼻骨(NB)分割,使用形态学,Otsu阈值处理和从超声图像进行逻辑运算以及使用离散余弦变换(DCT)和小波变换的变换域。提取的数据被标准化,并用于训练诸如反向传播神经网络(BPNN)之类的分类器。本文阐述了唐氏综合症检测中可用方法的各种状态的概述,并讨论了每种方法的比较分析。

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