Department of Electronics and communication Engineering, K. Ramakrishnan College of Technology, (Affiliated to Anna University Chennai), Trichy, India.
Department of Electronics and Communication Engineering, K. Ramakrishnan College of Technology, Trichy, India.
Stat Med. 2024 Feb 28;43(5):1019-1047. doi: 10.1002/sim.9995. Epub 2023 Dec 28.
Birth defects and their associated deaths, high health and financial costs of maternal care and associated morbidity are major contributors to infant mortality. If permitted by law, prenatal diagnosis allows for intrauterine care, more complicated hospital deliveries, and termination of pregnancy. During pregnancy, a set of measurements is commonly used to monitor the fetal health, including fetal head circumference, crown-rump length, abdominal circumference, and femur length. Because of the intricate interactions between the biological tissues and the US waves mother and fetus, analyzing fetal US images from a specialized perspective is difficult. Artifacts include acoustic shadows, speckle noise, motion blur, and missing borders. The fetus moves quickly, body structures close, and the weeks of pregnancy vary greatly. In this work, we propose a fetal growth analysis through US image of head circumference biometry using optimal segmentation and hybrid classifier. First, we introduce a hybrid whale with oppositional fruit fly optimization (WOFF) algorithm for optimal segmentation of segment fetal head which improves the detection accuracy. Next, an improved U-Net design is utilized for the hidden feature (head circumference biometry) extraction which extracts features from the segmented extraction. Then, we design a modified Boosting arithmetic optimization (MBAO) algorithm for feature optimization to selects optimal best features among multiple features for the reduction of data dimensionality issues. Furthermore, a hybrid deep learning technique called bi-directional LSTM with convolutional neural network (B-LSTM-CNN) for fetal growth analysis to compute the fetus growth and health. Finally, we validate our proposed method through the open benchmark datasets are HC18 (Ultrasound image) and oxford university research archive (ORA-data) (Ultrasound video frames). We compared the simulation results of our proposed algorithm with the existing state-of-art techniques in terms of various metrics.
出生缺陷及其相关死亡、孕产妇保健的高健康和经济成本以及相关发病率是婴儿死亡率的主要原因。如果法律允许,产前诊断允许宫内护理、更复杂的医院分娩和终止妊娠。在怀孕期间,通常会使用一组测量值来监测胎儿的健康状况,包括胎儿头围、顶臀长、腹围和股骨长。由于生物组织和 US 波与母亲和胎儿之间的复杂相互作用,从专业角度分析胎儿 US 图像是困难的。伪影包括声影、斑点噪声、运动模糊和边界缺失。胎儿移动迅速,身体结构紧密,怀孕周数差异很大。在这项工作中,我们通过使用最佳分割和混合分类器的头围生物测量 US 图像提出了一种胎儿生长分析。首先,我们引入了一种混合鲸鱼与对立果蝇优化(WOFF)算法,用于分割胎儿头部,提高检测精度。接下来,利用改进的 U-Net 设计提取隐藏特征(头围生物测量),从分割提取中提取特征。然后,我们设计了一种改进的 Boosting 算法优化(MBAO)算法,用于特征优化,以在多个特征中选择最佳最佳特征,以减少数据维度问题。此外,还设计了一种称为带有卷积神经网络的双向长短时记忆(B-LSTM-CNN)的混合深度学习技术,用于胎儿生长分析,以计算胎儿的生长和健康状况。最后,我们通过开放基准数据集 HC18(超声图像)和牛津大学研究档案(ORA-data)(超声视频帧)验证了我们的方法。我们将我们提出的算法的模拟结果与现有最先进技术的各种指标进行了比较。