开发和评估用于心动图解读的深度学习模型

Nicole Chiou, Nichole Young-Lin, Christopher Kelly, Tiya Tiyasirichokchai, Abdoulaye Diack, Sanmi Koyejo, Katherine Heller, Mercy Nyamewaa Asiedu
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引用次数: 0

摘要

产科临床专家在对胎心图(CTG)进行肉眼判读时,会出现观察者内部和观察者之间的固有差异,这给产科护理带来了巨大挑战。为此,我们将研究自动 CTG 解读作为一种潜在的解决方案,以加强分娩过程中胎儿缺氧的早期检测,这有可能减少不必要的手术干预,并改善孕产妇和新生儿的整体护理。这项研究采用了深度学习技术,以减少与可视 CTG 解读相关的主观性。我们的研究结果表明,使用客观的脐带血 pH 值结果测量,而不是临床医生定义的 Apgar 评分,能产生更一致、更稳健的模型性能。此外,通过一系列消融研究,我们探索了时间分布变化对这些深度学习模型性能的影响。我们研究了性能和公平性之间的权衡,特别是评估了不同人口和临床亚群的性能。最后,我们讨论了我们的研究结果对现实世界部署此类系统的实际影响,强调了它们在资源有限的医疗环境中的潜在用途。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and Evaluation of Deep Learning Models for Cardiotocography Interpretation
The inherent variability in the visual interpretation of cardiotocograms (CTGs) by obstetric clinical experts, both intra- and inter-observer, presents a substantial challenge in obstetric care. In response, we investigate automated CTG interpretation as a potential solution to enhance the early detection of fetal hypoxia during labor, which has the potential to reduce unnecessary operative interventions and improve overall maternal and neonatal care. This study employs deep learning techniques to reduce the subjectivity associated with visual CTG interpretation. Our results demonstrate that using objective umbilical cord blood pH outcome measurements, rather than clinician-defined Apgar scores, yields more consistent and robust model performance. Additionally, through a series of ablation studies, we explore the impact of temporal distribution shifts on the performance of these deep learning models. We examine tradeoffs between performance and fairness, specifically evaluating performance across demographic and clinical subgroups. Finally, we discuss the practical implications of our findings for the real-world deployment of such systems, emphasizing their potential utility in medical settings with limited resources.
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