FHD深度学习预后方法:基于超声图像的IROI联合多分辨率DCNN早期检测胎儿心脏病(FHD)。

IF 1.4 4区 医学 Q4 ENGINEERING, BIOMEDICAL
Someshwaran G, Sarada V
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引用次数: 0

摘要

胎儿心脏疾病(FHD)是婴儿死亡最普遍的根本原因,占所有先天性异常的21%,其中大多数情况是灾难性的,因此需要早期预后。超声检查是评估四腔胎儿生长和血管畸形的前沿成像方式。临床诊断异常是费时的,需要放射科医生的技能。随后,许多先前的研究策略都适用于元启发式和深度学习的快速人工神经网络(FANN)、密集递归神经网络(DRNN)、掩模区域卷积神经网络(M RCNN)和增强型深度学习辅助CNN,这些策略都有助于FHD的识别。然而,由于不精确的阻碍和不相关的粘附,预测模型遇到了多重挑战。因此,我们提出了使用超声二维成像在四腔和血管中自动分层网络驱动的FHD发现,该成像经历了三个相应的过程:增强自适应中值滤波(EAMF)预处理,涉及噪声变化,即信噪比失真测试和图像增强,即视觉质量,增强感兴趣区域(IROI)分割,利用空间掩码标记的特征选择和多分辨率深度卷积神经网络(MDCNN)分类,通过混淆度量(CM)检测病变模式。使用MATLAB R2023b确定CM的病变表现,在正常和异常情况下的总体实质效率均为99.79%,具有协助心脏病专家预测FHD预后的重要潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FHD deep learning prognosis approach: Early detection of fetal heart disease (FHD) using ultrasonography image-based IROI combined multiresolution DCNN.

Fetal Heart Disease (FHD) is the most prevalent root cause of infant demise which accounts for 21% of all congenital abnormalities, with most instances being catastrophic, thereby rendering the need for early prognosis. Ultrasonography is the forefront imaging modality for assessing fetal growth in four-chamber and blood vessel malformation. Clinically diagnosing the abnormality is time-consuming and requires the skill of a radiologist. In subsequent, numerous preceding research strategies ideal to meta-heuristic and deep learning's Faster Artificial Neural Network (FANN), Dense Recurrent Neural Network (DRNN), Mask-Regional Convolution Neural Network (M RCNN) and Enhanced Deep Learning-assisted CNN aid in the identification of FHD. However, the prediction models have encountered multiple challenges owing to imprecise hinders and irrelevant adhesion. Hence, we propose the automated hierarchical network-driven findings of FHD in four-chamber and blood vessels using ultrasonic 2D imaging which undergoes 3 consequential processes of Enhanced-Adaptive Median Filtering (EAMF) pre-process concerning noise variations i.e., test for SNR distortion and image enhancement i.e., visual quality, Intensified Region of Interest (IROI) segmentation for exploiting feature selection via spatial mask-labeling and Multiresolution Deep Convolutional Neural Network (MDCNN) classification in the detection of diseased pattern via confusion metrics (CM). The lesion findings of CM is determined using MATLAB R2023b with an overall substantial efficiency of 99.79% in both normal and abnormal conditions with a significant potential to assist cardiologists in the prognosis of FHD.

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来源期刊
Technology and Health Care
Technology and Health Care HEALTH CARE SCIENCES & SERVICES-ENGINEERING, BIOMEDICAL
CiteScore
2.10
自引率
6.20%
发文量
282
审稿时长
>12 weeks
期刊介绍: Technology and Health Care is intended to serve as a forum for the presentation of original articles and technical notes, observing rigorous scientific standards. Furthermore, upon invitation, reviews, tutorials, discussion papers and minisymposia are featured. The main focus of THC is related to the overlapping areas of engineering and medicine. The following types of contributions are considered: 1.Original articles: New concepts, procedures and devices associated with the use of technology in medical research and clinical practice are presented to a readership with a widespread background in engineering and/or medicine. In particular, the clinical benefit deriving from the application of engineering methods and devices in clinical medicine should be demonstrated. Typically, full length original contributions have a length of 4000 words, thereby taking duly into account figures and tables. 2.Technical Notes and Short Communications: Technical Notes relate to novel technical developments with relevance for clinical medicine. In Short Communications, clinical applications are shortly described. 3.Both Technical Notes and Short Communications typically have a length of 1500 words. Reviews and Tutorials (upon invitation only): Tutorial and educational articles for persons with a primarily medical background on principles of engineering with particular significance for biomedical applications and vice versa are presented. The Editorial Board is responsible for the selection of topics. 4.Minisymposia (upon invitation only): Under the leadership of a Special Editor, controversial or important issues relating to health care are highlighted and discussed by various authors. 5.Letters to the Editors: Discussions or short statements (not indexed).
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