论文标题
通过机器学习对胎龄进行更快,更可靠的超声检查评估
Enabling faster and more reliable sonographic assessment of gestational age through machine learning
论文作者
论文摘要
胎儿超声是产前护理的重要组成部分,可用于估计胎龄(GA)。准确的GA评估对于在整个怀孕期间提供适当的产前护理和确定并发症(例如胎儿生长障碍)很重要。由于手动胎儿生物特征测量值(头部,腹部,股骨)是依赖操作员且耗时的,因此已经进行了许多研究工作,专注于使用人工智能(AI)模型使用标准生物测量图估算GA的模型,但仍有用于改善这些AI系统的准确性和可靠性的宽敞系统的空间。为了提高GA估计值,而没有对提供商工作流进行重大更改,我们利用AI来解释标准的平面超声图像以及“飞行”超声视频,这些视频是5-10S视频自动记录在静止图像之前,自动记录为护理标准的一部分。我们开发并验证了三个AI模型:使用标准平面图像的图像模型,使用飞行视频的视频模型以及合奏模型(结合图像和视频)。与临床标准的胎儿生物特征法(平均差异:-1.51 $ \ pm $ 3.96天,95%CI [-1.9,-1.1])相比,这三个在统计学上均优于专家超声检查员得出的基于标准的基于胎儿生物的GA估计,其平均绝对误差(MAE)最低(MAE)(MAE)。我们表明,我们的模型的表现要优于标准生物特征,而对于GA来说,胎儿的差距更大。我们的AI模型有可能使受过训练的操作员能够以更高的准确性估算GA,同时降低所需的时间和用户可变性。
Fetal ultrasounds are an essential part of prenatal care and can be used to estimate gestational age (GA). Accurate GA assessment is important for providing appropriate prenatal care throughout pregnancy and identifying complications such as fetal growth disorders. Since derivation of GA from manual fetal biometry measurements (head, abdomen, femur) are operator-dependent and time-consuming, there have been a number of research efforts focused on using artificial intelligence (AI) models to estimate GA using standard biometry images, but there is still room to improve the accuracy and reliability of these AI systems for widescale adoption. To improve GA estimates, without significant change to provider workflows, we leverage AI to interpret standard plane ultrasound images as well as 'fly-to' ultrasound videos, which are 5-10s videos automatically recorded as part of the standard of care before the still image is captured. We developed and validated three AI models: an image model using standard plane images, a video model using fly-to videos, and an ensemble model (combining both image and video). All three were statistically superior to standard fetal biometry-based GA estimates derived by expert sonographers, the ensemble model has the lowest mean absolute error (MAE) compared to the clinical standard fetal biometry (mean difference: -1.51 $\pm$ 3.96 days, 95% CI [-1.9, -1.1]) on a test set that consisted of 404 participants. We showed that our models outperform standard biometry by a more substantial margin on fetuses that were small for GA. Our AI models have the potential to empower trained operators to estimate GA with higher accuracy while reducing the amount of time required and user variability in measurement acquisition.