Yeganegi Maryam, Danaei Mahsa, Azizi Sepideh, Jayervand Fatemeh, Bahrami Reza, Dastgheib Seyed Alireza, Rashnavadi Heewa, Masoudi Ali, Shiri Amirmasoud, Aghili Kazem, Noorishadkam Mahood, Neamatzadeh Hossein
Department of Obstetrics and Gynecology, School of Medicine, Iranshahr University of Medical Sciences, Iranshahr, Iran.
Department of Obstetrics and Gynecology, School of Medicine, Iran University of Medical Sciences, Tehran, Iran.
Front Pediatr. 2025 Apr 17;13:1514447. doi: 10.3389/fped.2025.1514447. eCollection 2025.
Artificial Intelligence is revolutionizing prenatal diagnostics by enhancing the accuracy and efficiency of procedures. This review explores AI and machine learning (ML) in the early detection, prediction, and assessment of neural tube defects (NTDs) through prenatal ultrasound imaging. Recent studies highlight the effectiveness of AI techniques, such as convolutional neural networks (CNNs) and support vector machines (SVMs), achieving detection accuracy rates of up to 95% across various datasets, including fetal ultrasound images, genetic data, and maternal health records. SVM models have demonstrated 71.50% accuracy on training datasets and 68.57% on testing datasets for NTD classification, while advanced deep learning (DL) methods report patient-level prediction accuracy of 94.5% and an area under the receiver operating characteristic curve (AUROC) of 99.3%. AI integration with genomic analysis has identified key biomarkers associated with NTDs, such as Growth Associated Protein 43 (GAP43) and Glial Fibrillary Acidic Protein (GFAP), with logistic regression models achieving 86.67% accuracy. Current AI-assisted ultrasound technologies have improved diagnostic accuracy, yielding sensitivity and specificity rates of 88.9% and 98.0%, respectively, compared to traditional methods with 81.5% sensitivity and 92.2% specificity. AI systems have also streamlined workflows, reducing median scan times from 19.7 min to 11.4 min, allowing sonographers to prioritize critical patient care. Advancements in DL algorithms, including Oct-U-Net and PAICS, have achieved recall and precision rates of 0.93 and 0.96, respectively, in identifying fetal abnormalities. Moreover, AI's evolving role in genetic research supports personalized NTD prevention strategies and enhances public awareness through AI-generated health messages. In conclusion, the integration of AI in prenatal diagnostics significantly improves the detection and assessment of NTDs, leading to greater accuracy and efficiency in ultrasound imaging. As AI continues to advance, it has the potential to further enhance personalized healthcare strategies and raise public awareness about NTDs, ultimately contributing to better maternal and fetal outcomes.
人工智能正在通过提高程序的准确性和效率,彻底改变产前诊断。这篇综述探讨了人工智能和机器学习在通过产前超声成像早期检测、预测和评估神经管缺陷方面的应用。最近的研究强调了人工智能技术的有效性,如卷积神经网络(CNN)和支持向量机(SVM),在包括胎儿超声图像、基因数据和孕产妇健康记录在内的各种数据集中,检测准确率高达95%。对于神经管缺陷分类,支持向量机模型在训练数据集上的准确率为71.50%,在测试数据集上为68.57%,而先进的深度学习方法报告的患者水平预测准确率为94.5%,受试者工作特征曲线下面积(AUROC)为99.3%。人工智能与基因组分析的整合已经确定了与神经管缺陷相关的关键生物标志物,如生长相关蛋白43(GAP43)和胶质纤维酸性蛋白(GFAP),逻辑回归模型的准确率达到86.67%。与传统方法(灵敏度为81.5%,特异性为92.2%)相比,当前的人工智能辅助超声技术提高了诊断准确性,灵敏度和特异性分别为88.9%和98.0%。人工智能系统还简化了工作流程,将中位扫描时间从19.7分钟减少到11.4分钟,使超声检查人员能够优先处理关键的患者护理。包括Oct-U-Net和PAICS在内的深度学习算法在识别胎儿异常方面的召回率和精确率分别达到了0.93和0.96。此外,人工智能在基因研究中不断演变的作用支持个性化的神经管缺陷预防策略,并通过人工智能生成的健康信息提高公众意识。总之,人工智能在产前诊断中的整合显著改善了神经管缺陷的检测和评估,提高了超声成像的准确性和效率。随着人工智能的不断发展,它有可能进一步加强个性化医疗保健策略,提高公众对神经管缺陷的认识,最终为改善母婴结局做出贡献。