To assess fetal health during pregnancy, doctors use the gestational age (GA) calculation based on the Crown Rump Length (CRL) measurement in order to check for fetal size and growth trajectory. However, GA estimation based on CRL, requires proper positioning of calipers on the fetal crown and rump view, which is not always an easy plane to find, especially for an inexperienced sonographer. Finding a slightly oblique view from the true CRL view could lead to a different CRL value and therefore incorrect estimation of GA. This study presents an AI-based method for a quality assessment of the CRL view by verifying 7 clinical scoring criteria that are used to verify the correctness of the acquired plane. We show how our proposed solution achieves high accuracy on the majority of the scoring criteria when compared to an expert. We also show that if such scoring system is used, it helps identify poorly acquired images accurately and hence may help sonographers acquire better images which could potentially lead to a better assessment of conditions such as Intrauterine Growth Restriction (IUGR).
翻译:为了评估怀孕期间的胎儿健康,医生使用基于冠状隆隆长度测量的妊娠年龄(GA)计算法,以检查胎儿大小和生长轨迹;然而,基于CRL的GA估计法,要求在胎冠和臀部视图上正确定位卡利pers,这并不总是容易找到的平面,特别是对于一个经验不足的书写者来说更是如此。从真正的CRL视图中略微模糊的视角可以得出不同的CRL值,从而得出对GA的不正确估计。这项研究为CRL观点的质量评估提供了一种基于AI的方法,通过核实用于核实所购飞机正确性的7项临床评分标准。我们展示了我们提议的解决方案如何在与专家比较时在多数评分标准上达到很高的准确性。我们还表明,如果使用这种评分系统,将有助于准确识别所得的图像不准确,从而帮助书写者获得更好的图像,从而有可能导致对宫内增长限制(IUGR)等条件进行更好的评估。