Nurmaini Siti, Nova Ria, Sapitri Ade Iriani, Rachmatullah Muhammad Naufal, Tutuko Bambang, Firdaus Firdaus, Darmawahyuni Annisa, Islami Anggun, Mandala Satria, Partan Radiyati Umi, Arum Akhiar Wista, Bastian Rio
Intelligent System Research Group, Universitas Sriwijaya, Palembang 30139, Indonesia.
Department of Pediatric, Cardiology Division, Dr. Mohammad Hoesin Hospital, Palembang 30126, Indonesia.
J Imaging. 2024 Nov 3;10(11):280. doi: 10.3390/jimaging10110280.
Echocardiography is the gold standard for the comprehensive diagnosis of cardiac septal defects (CSDs). Currently, echocardiography diagnosis is primarily based on expert observation, which is laborious and time-consuming. With digitization, deep learning (DL) can be used to improve the efficiency of the diagnosis. This study presents a real-time end-to-end framework tailored for pediatric ultrasound video analysis for CSD decision-making. The framework employs an advanced real-time architecture based on You Only Look Once (Yolo) techniques for CSD decision-making with high accuracy. Leveraging the state of the art with the Yolov8l (large) architecture, the proposed model achieves a robust performance in real-time processes. It can be observed that the experiment yielded a mean average precision (mAP) exceeding 89%, indicating the framework's effectiveness in accurately diagnosing CSDs from ultrasound (US) videos. The Yolov8l model exhibits precise performance in the real-time testing of pediatric patients from Mohammad Hoesin General Hospital in Palembang, Indonesia. Based on the results of the proposed model using 222 US videos, it exhibits 95.86% accuracy, 96.82% sensitivity, and 98.74% specificity. During real-time testing in the hospital, the model exhibits a 97.17% accuracy, 95.80% sensitivity, and 98.15% specificity; only 3 out of the 53 US videos in the real-time process were diagnosed incorrectly. This comprehensive approach holds promise for enhancing clinical decision-making and improving patient outcomes in pediatric cardiology.
超声心动图是心脏间隔缺损(CSD)综合诊断的金标准。目前,超声心动图诊断主要基于专家观察,既费力又耗时。随着数字化的发展,深度学习(DL)可用于提高诊断效率。本研究提出了一个实时端到端框架,专门用于儿科超声视频分析以进行CSD决策。该框架采用基于“你只看一次”(Yolo)技术的先进实时架构,以实现高精度的CSD决策。利用Yolov8l(大型)架构的先进技术,所提出的模型在实时过程中实现了强大的性能。可以观察到,实验产生的平均精度均值(mAP)超过89%,表明该框架在从超声(US)视频中准确诊断CSD方面的有效性。Yolov8l模型在对印度尼西亚巨港穆罕默德·霍辛综合医院的儿科患者进行实时测试时表现出精确的性能。基于使用222个US视频的所提出模型的结果,其准确率为95.86%,灵敏度为96.82%,特异性为98.74%。在医院进行实时测试期间,该模型的准确率为97.17%,灵敏度为95.80%,特异性为98.15%;在实时过程中的53个US视频中,只有3个被误诊。这种综合方法有望加强儿科心脏病学的临床决策并改善患者预后。