基于Haar级联分类器和增强定位算法的二维超声图像胎儿头候选自动定位

Tessya Rismonita, Devi T. Avalokita, A. Handayani, A. W. Setiawan
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引用次数: 0

摘要

胎儿头围(HC)是胎儿生物特征之一,常用于确定胎龄和监测胎儿在子宫内的生长。现在,从超声图像中测量头围是由医生或超声医师通过在胎儿头部周围画一条线或形成一个椭圆来手工完成的。但是,手动注释容易出现人为错误,并且容易出现观察者内部和观察者之间的变量。本研究采用Haar级联分类器(HCC)实现胎儿头候选物的自动定位,并通过增强定位算法(ELA)进一步优化。采用Jaccard指数(JI)、Dice Similarity Coefficient (DSC)、Overlapped Area Ratio (OAR)对703张妊娠中期超声图像和141张妊娠晚期超声图像进行HCC合并ELA的评价。定位结果显示HCC + ELA在妊娠中期平均JI为90.5%,DSC为94.58%,OAR为97.77%,晚期平均JI为88.17%,DSC为93.33%,OAR为96.97%。基于这三个评价参数,我们分析了影响定位算法准确性的因素,以及定位结果与椭圆拟合结果的对应关系,作为确定胎儿头围的最终过程。
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Automatic Fetal Head Candidate Localization from 2D Ultrasound Images using Haar Cascade Classifier and Enhanced Localization Algorithm
Fetal head circumference (HC) is one of the fetal biometrics that is often used to determine gestational age and monitor the fetal growth in the womb. Nowadays, head circumference measurement from ultrasound images is performed manually by a doctor or sonographer by drawing a line or forming an ellipse to surround the fetal head. However, manual annotations are prone to human error and intra-observer as well as inter-observer variabilities. In this research, an automatic fetal head candidate localization was implemented using Haar Cascade Classifier (HCC) and further optimized by Enhanced Localization Algorithm (ELA). The combination of HCC and ELA was evaluated on 703 ultrasound images of the second trimester and 141 ultrasound images of the third trimester using the Jaccard Index (JI), Dice Similarity Coefficient (DSC), and Overlapped Area Ratio (OAR). The localization results showed that the HCC + ELA produced an average JI of 90.5%, DSC of 94.58%, OAR of 97.77% for the second trimester and an average JI of 88.17%, DSC of 93.33%, OAR of 96.97% for the third trimester. Based on the three evaluation parameters, we analyzed the factors affecting the accuracy of the localization algorithm and the correspondence of the localization results with the ellipse fitting outcome as the final process to determine the fetal head circumference.
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