人工智能用于胎龄估计:系统回顾和荟萃分析。

IF 2.3 Q2 OBSTETRICS & GYNECOLOGY
Frontiers in global women's health Pub Date : 2025-01-30 eCollection Date: 2025-01-01 DOI:10.3389/fgwh.2025.1447579
Sabahat Naz, Sahir Noorani, Syed Ali Jaffar Zaidi, Abdu R Rahman, Saima Sattar, Jai K Das, Zahra Hoodbhoy
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引用次数: 0

摘要

简介:估计一个可靠的胎龄(GA)是必不可少的,在怀孕期间提供适当的护理。随着数据科学的进步,有一些关于使用人工智能(AI)模型使用超声(US)图像估计遗传算法的出版物。本荟萃分析的目的是评估人工智能模型在将GA与US作为黄金标准进行评估时的准确性。方法:在PubMed、CINAHL、Wiley Cochrane Library、Scopus和Web of Science数据库中进行文献检索。包括以US为参考标准,报道使用AI模型进行遗传估计的研究。使用诊断准确性研究质量评估-2 (QUADAS-2)工具进行偏倚风险评估。使用STATA version-17估计GA的平均误差,并对GA评估、人工智能模型、研究设计和外部验证的三个月进行亚组分析。结果:在筛选的1039项研究中,有17项纳入了综述,其中10项研究纳入了meta分析。5项(29%)研究来自高收入国家(HICs), 4项(24%)来自中高收入国家(UMICs), 1项(6%)来自中低收入国家(LMIC),其余7项(41%)研究使用了不同收入区域的数据。基于2D图像(n = 6)和盲扫描视频(n = 4)的遗传算法估计的汇总平均误差为4.32天(95% CI: 2.82, 5.83;2: 97.95%)和2.55天(95% CI: -0.13, 5.23;l2: 100%)。在基于2D图像的亚组分析中,妊娠早期GA估计的平均误差为7.00天(95% CI: 6.08, 7.92),妊娠中期GA估计的平均误差为2.35天(95% CI: 1.03, 3.67),妊娠晚期GA估计的平均误差为4.30天(95% CI: 4.10, 4.50)。在对2D图像使用深度学习的研究中,使用CNN估计胎龄的平均误差为5.11天(95% CI: 1.85, 8.37),而使用DNN估计胎龄的平均误差为5.39天(95% CI: 5.10, 5.68)。大多数研究在患者选择、指标测试、参比标准、流程和时间以及适用性等多个领域存在不明确或低偏倚风险。结论:人工智能模型在估计遗传算法方面具有良好的准确性。这为怀孕约会提供了巨大的潜力,特别是在资源贫乏的环境中,训练有素的口译员可能有限。系统评价注册:PROSPERO,标识符(CRD42022319966)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of artificial intelligence for gestational age estimation: a systematic review and meta-analysis.

Introduction: Estimating a reliable gestational age (GA) is essential in providing appropriate care during pregnancy. With advancements in data science, there are several publications on the use of artificial intelligence (AI) models to estimate GA using ultrasound (US) images. The aim of this meta-analysis is to assess the accuracy of AI models in assessing GA against US as the gold standard.

Methods: A literature search was performed in PubMed, CINAHL, Wiley Cochrane Library, Scopus, and Web of Science databases. Studies that reported use of AI models for GA estimation with US as the reference standard were included. Risk of bias assessment was performed using Quality Assessment for Diagnostic Accuracy Studies-2 (QUADAS-2) tool. Mean error in GA was estimated using STATA version-17 and subgroup analysis on trimester of GA assessment, AI models, study design, and external validation was performed.

Results: Out of the 1,039 studies screened, 17 were included in the review, and of these 10 studies were included in the meta-analysis. Five (29%) studies were from high-income countries (HICs), four (24%) from upper-middle-income countries (UMICs), one (6%) from low-and middle-income countries (LMIC), and the remaining seven studies (41%) used data across different income regions. The pooled mean error in GA estimation based on 2D images (n = 6) and blind sweep videos (n = 4) was 4.32 days (95% CI: 2.82, 5.83; l 2: 97.95%) and 2.55 days (95% CI: -0.13, 5.23; l 2: 100%), respectively. On subgroup analysis based on 2D images, the mean error in GA estimation in the first trimester was 7.00 days (95% CI: 6.08, 7.92), 2.35 days (95% CI: 1.03, 3.67) in the second, and 4.30 days (95% CI: 4.10, 4.50) in the third trimester. In studies using deep learning for 2D images, those employing CNN reported a mean error of 5.11 days (95% CI: 1.85, 8.37) in gestational age estimation, while one using DNN indicated a mean error of 5.39 days (95% CI: 5.10, 5.68). Most studies exhibited an unclear or low risk of bias in various domains, including patient selection, index test, reference standard, flow and timings and applicability domain.

Conclusion: Preliminary experience with AI models shows good accuracy in estimating GA. This holds tremendous potential for pregnancy dating, especially in resource-poor settings where trained interpreters may be limited.

Systematic review registration: PROSPERO, identifier (CRD42022319966).

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