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Defending Against Child Death: Deep learning-based diagnosis method for abnormal identification of fetus ultrasound Images

机译:防止儿童死亡:基于深度学习的胎儿超声图像异常识别诊断方法

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One of the most important industries which protect human from various diseases is the medical industry. Child death is a crucial concern that needs to concentrate on "save the children." Abnormality of a child can be obtained by diagnosing the prenatal by ultrasound system within a specific period for providing better treatment to do "save the children.". This article aimed to diagnose the (prenatal) ultrasound-images by design and implement a novel framework named Defending Against Child Death (DACD). The existing method is a semiautomatic method where it used convolutional neural network (CNN) algorithm for classifying ultrasound images. Real-time medical industry requires a fully automatic method for classifying the ultrasound images to save the human. Hence this article, includes deep learning by implementing five convolutional neural network architectures in an order where it learns, estimate, and confirms the fetus parameters. All the layers in the convolutional neural network extract and classify the different number of features in the ultrasound images automatically and provide a result. The increased number of hidden layers in the CNN can extract even the hidden features of the images. The extracted features are classified automatically and improve the accuracy of disease detection. To segment the fetus abdomen, U-Net architecture is included in the CNN with Hough transformation. The experiment is carried out using the CNN toolbox in MATLAB and the outcomes are verified. The performance of the DACD is assessed by comparing the results with the earlier researches. From the experimental results, it is obtained that the accuracy of DACD is 99.7%, which is higher than the results obtained from the existing machine learning approach.
机译:保护人类免受各种疾病的最重要产业之一是医疗行业。儿童死亡是一个关注的关注,需要集中精力“拯救孩子”。通过在特定时期内通过超声系统诊断产前,可以获得孩子的异常,以便提供更好的待遇,以“拯救孩子”。本文旨在通过设计诊断(产前)超声图像,并实施名为守卫儿童死亡(DACD)的小说框架。现有方法是一种半自动方法,它使用了用于对超声图像进行分类的卷积神经网络(CNN)算法。实时医疗行业需要一个全自动的方法来对超声图像进行分类以保存人类。因此,本文包括在其学习,估计和确认胎儿参数的顺序中实现五个卷积神经网络架构的深度学习。卷积神经网络中的所有层都会自动提取并在超声图像中分类不同数量的功能并提供结果。 CNN中的隐藏层数量增加可以提取甚至图像的隐藏特征。提取的特征自动分类并提高疾病检测的准确性。为了分段胎儿腹部,U-Net架构包含在具有霍夫变换的CNN中。实验使用Matlab中的CNN工具箱进行,验证结果。通过将结果与前面的研究比较来评估DACD的性能。从实验结果中,获得DACD的精度为99.7%,高于从现有机器学习方法获得的结果。

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