Veronese Paola, Guariento Alvise, Cattapan Claudia, Fedrigo Marny, Gervasi Maria Teresa, Angelini Annalisa, Riva Arianna, Vida Vladimiro
Maternal-Fetal Medicine Unit, Department of Women's and Children's Health, University of Padua, 35128 Padova, Italy.
Pediatric and Congenital Cardiac Surgery Unit, Department of Cardiac, Thoracic, Vascular Sciences and Public Health, University of Padua, 35128 Padova, Italy.
Diagnostics (Basel). 2023 Jan 26;13(3):456. doi: 10.3390/diagnostics13030456.
(1) Background: Artificial Intelligence (AI) is a modern tool with numerous applications in the medical field. The case series reported here aimed to investigate the diagnostic performance of the fetal intelligent navigation echocardiography (FINE) method applied for the first time in the prenatal identification of atrioventricular septal defects (AVSD). This congenital heart disease (CHD) is associated with extracardiac anomalies and chromosomal abnormalities. Therefore, an early diagnosis is essential to advise parents and make adequate treatment decisions. (2) Methods: Four fetuses diagnosed with AVSD via two-dimensional (2D) ultrasound examination in the second trimester were enrolled. In all cases, the parents chose to terminate the pregnancy. Since the diagnosis of AVSD with 2D ultrasound may be missed, one or more four-dimensional (4D) spatiotemporal image correlation (STIC) volume datasets were obtained from a four-chamber view. The manual navigation enabled by the software is time-consuming and highly operator-dependent. (3) Results: FINE was applied to these volumes and nine standard fetal echocardiographic views were generated and optimized automatically, using the assistance of the virtual intelligent sonographer (VIS). Here, 100% of the four-chamber views, and after the VISA System application the five-chamber views, of the diagnostic plane showed the atrioventricular septal defect and a common AV valve. The autopsies of the fetuses confirmed the ultrasound results. (4) Conclusions: By applying intelligent navigation technology to the STIC volume datasets, 100% of the AVSD diagnoses were detected.
(1) 背景:人工智能(AI)是一种在医学领域有众多应用的现代工具。本文报告的病例系列旨在研究首次应用于产前识别房室间隔缺损(AVSD)的胎儿智能导航超声心动图(FINE)方法的诊断性能。这种先天性心脏病(CHD)与心外异常和染色体异常有关。因此,早期诊断对于向父母提供建议并做出适当的治疗决策至关重要。(2) 方法:纳入了4例在孕中期通过二维(2D)超声检查诊断为AVSD的胎儿。在所有病例中,父母选择终止妊娠。由于二维超声对AVSD的诊断可能会漏诊,因此从四腔心切面获取了一个或多个四维(4D)时空图像相关(STIC)容积数据集。软件启用的手动导航既耗时又高度依赖操作员。(3) 结果:将FINE应用于这些容积,在虚拟智能超声医师(VIS)的协助下自动生成并优化了9个标准胎儿超声心动图切面。在此,诊断平面的四腔心切面以及应用VISA系统后的五腔心切面中,100%显示了房室间隔缺损和共同房室瓣。胎儿尸检证实了超声检查结果。(4) 结论:通过将智能导航技术应用于STIC容积数据集,100%的AVSD诊断被检测到。