Image Analysis Using Machine Learning: Anatomical Landmarks Detection in Fetal Ultrasound Images

B. Rahmatullah, A. Papageorghiou, J. A. Noble
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引用次数: 15

Abstract

Accurate and robust image analysis software is crucial for assessing the quality of ultrasound images of fetal biometry. In this work, we present the result of our automated image analysis method based on a machine learning algorithm in detecting important anatomical landmarks employed in manual scoring of ultrasound images of the fetal abdomen. Experimental results on 2384 images are promising and the clinical validation using 300 images demonstrates a high level agreement between the automated method and experts.
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使用机器学习的图像分析:胎儿超声图像的解剖标志检测
准确和强大的图像分析软件是评估胎儿生物测量超声图像质量的关键。在这项工作中,我们展示了基于机器学习算法的自动图像分析方法的结果,该方法用于检测胎儿腹部超声图像手动评分中的重要解剖标志。2384张图像的实验结果令人满意,300张图像的临床验证表明自动化方法与专家的高度一致。
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