论文标题
低资源设置中用于胎儿超声的AI系统
AI system for fetal ultrasound in low-resource settings
论文作者
论文摘要
尽管在孕产妇医疗保健方面取得了很大进展,但在低至中收入的国家中,孕产妇和围产期死亡仍然很高。胎儿超声是产前护理的重要组成部分,但是缺乏经过足够培训的医疗人员限制了其采用。我们开发并验证了一种人工智能(AI)系统,该系统使用新手获得的“盲扫”超声视频来估计胎龄(GA)和胎儿弊端。我们进一步解决了在低资源环境中可能遇到的障碍。使用简化的扫描协议和实时AI有关扫描质量的反馈,我们已经证明了模型性能的概括,即使用具有智障AI集成的低成本超声设备对受过训练的新手超声操作员进行了最小的新手超声操作员。 GA模型与标准的胎儿生物特征估计值不属于两次扫描,并且胎儿不良模型在操作员和设备之间具有较高的AUC-ROC。我们的AI模型有可能协助在低资源设置中升级训练有素的超声操作员的功能。
Despite considerable progress in maternal healthcare, maternal and perinatal deaths remain high in low-to-middle income countries. Fetal ultrasound is an important component of antenatal care, but shortage of adequately trained healthcare workers has limited its adoption. We developed and validated an artificial intelligence (AI) system that uses novice-acquired "blind sweep" ultrasound videos to estimate gestational age (GA) and fetal malpresentation. We further addressed obstacles that may be encountered in low-resourced settings. Using a simplified sweep protocol with real-time AI feedback on sweep quality, we have demonstrated the generalization of model performance to minimally trained novice ultrasound operators using low cost ultrasound devices with on-device AI integration. The GA model was non-inferior to standard fetal biometry estimates with as few as two sweeps, and the fetal malpresentation model had high AUC-ROCs across operators and devices. Our AI models have the potential to assist in upleveling the capabilities of lightly trained ultrasound operators in low resource settings.