Zhang Yuanji, Yang Xin, Ji Chunya, Hu Xindi, Cao Yan, Chen Chaoyu, Sui He, Li Binghan, Zhen Chaojiong, Huang Weijun, Deng Xuedong, Yin Linliang, Ni Dong
National-Regional Key Technology Engineering Laboratory for Medical Ultrasound, School of Biomedical Engineering, Health Science Center, Shenzhen University, No. 3688 Nanhai Avenue, Nanshan District, Shenzhen 518060, PR China.
Medical Ultrasound Image Computing (MUSIC) Lab, Shenzhen University, Shenzhen, PR China.
Radiol Artif Intell. 2025 Jul;7(4):e240498. doi: 10.1148/ryai.240498.
Purpose To develop and evaluate an artificial intelligence-based model for real-time nuchal translucency (NT) plane identification and measurement in prenatal US assessments. Materials and Methods In this retrospective multicenter study conducted from January 2022 to October 2023, the Automated Identification and Measurement of NT (AIM-NT) model was developed and evaluated using internal and external datasets. NT plane assessment, including identification of the NT plane and measurement of NT thickness, was independently conducted by AIM-NT and experienced radiologists, with the results subsequently audited by radiology specialists and accuracy compared between groups. To assess alignment of artificial intelligence with radiologist workflow, discrepancies between the AIM-NT model and radiologists in NT plane identification time and thickness measurements were evaluated. Results The internal dataset included a total of 3959 NT images from 3153 fetuses, and the external dataset included 267 US videos from 267 fetuses. On the internal testing dataset, AIM-NT achieved an area under the receiver operating characteristic curve of 0.92 for NT plane identification. On the external testing dataset, there was no evidence of differences between AIM-NT and radiologists in NT plane identification accuracy (88.8% vs 87.6%, = .69) or NT thickness measurements on standard and nonstandard NT planes ( = .29 and .59). AIM-NT demonstrated high consistency with radiologists in NT plane identification time, with 1-minute discrepancies observed in 77.9% of cases, and NT thickness measurements, with a mean difference of 0.03 mm and mean absolute error of 0.22 mm (95% CI: 0.19, 0.25). Conclusion AIM-NT demonstrated high accuracy in identifying the NT plane and measuring NT thickness on prenatal US images, showing minimal discrepancies with radiologist workflow. Ultrasound, Fetus, Segmentation, Feature Detection, Diagnosis, Convolutional Neural Network (CNN) © RSNA, 2025 See also commentary by Horii in this issue.
目的 开发并评估一种基于人工智能的模型,用于产前超声评估中实时识别和测量颈部透明带(NT)平面。材料与方法 在这项于2022年1月至2023年10月进行的回顾性多中心研究中,使用内部和外部数据集开发并评估了NT自动识别与测量(AIM-NT)模型。NT平面评估,包括NT平面的识别和NT厚度的测量,由AIM-NT和经验丰富的放射科医生独立进行,结果随后由放射科专家审核,并比较两组之间的准确性。为了评估人工智能与放射科医生工作流程的一致性,评估了AIM-NT模型与放射科医生在NT平面识别时间和厚度测量方面的差异。结果 内部数据集包括来自3153例胎儿的总共3959张NT图像,外部数据集包括来自267例胎儿的267段超声视频。在内部测试数据集上,AIM-NT在NT平面识别方面的受试者操作特征曲线下面积为0.92。在外部测试数据集上,没有证据表明AIM-NT与放射科医生在NT平面识别准确性(88.8%对87.6%,P = 0.69)或标准和非标准NT平面上的NT厚度测量方面存在差异(P = 0.29和0.59)。AIM-NT在NT平面识别时间方面与放射科医生表现出高度一致性,77.9%的病例中差异为1分钟,在NT厚度测量方面,平均差异为0.03 mm,平均绝对误差为0.22 mm(95%可信区间:0.19,0.25)。结论 AIM-NT在产前超声图像上识别NT平面和测量NT厚度方面表现出高准确性,与放射科医生的工作流程差异最小。超声、胎儿、分割、特征检测、诊断、卷积神经网络(CNN) © RSNA,2025 另见本期Horii的评论。