Khan M Jaleed, Vatish Manu, Davis Jones Gabriel
Oxford Digital Health Labs, Nuffield Department of Women's & Reproductive Health (NDWRH), University of Oxford, Women's Centre (Level 3), John Radcliffe Hospital, Oxford OX3 9DU, UK.
Sensors (Basel). 2025 Apr 22;25(9):2650. doi: 10.3390/s25092650.
Antepartum Cardiotocography (CTG) is a biomedical sensing technology widely used for fetal health monitoring. While the visual interpretation of CTG traces is highly subjective, with the inter-observer agreement as low as 29% and a false positive rate of approximately 60%, the Dawes-Redman system provides an automated approach to fetal well-being assessments. However, it is primarily designed to rule out adverse outcomes rather than detect them, resulting in a high specificity (90.7%) but low sensitivity (18.2%) in identifying fetal distress. This paper introduces PatchCTG, an AI-enabled biomedical time series transformer for CTG analysis. It employs patch-based tokenisation, instance normalisation, and channel-independent processing to capture essential local and global temporal dependencies within CTG signals. PatchCTG was evaluated on the Oxford Maternity (OXMAT) dataset, which comprises over 20,000 high-quality CTG traces from diverse clinical outcomes, after applying the inclusion and exclusion criteria. With extensive hyperparameter optimisation, PatchCTG achieved an AUC of 0.77, with a specificity of 88% and sensitivity of 57% at Youden's index threshold, demonstrating its adaptability to various clinical needs. Its robust performance across varying temporal thresholds highlights its potential for both real-time and retrospective analysis in sensor-driven fetal monitoring. Testing across varying temporal thresholds showcased it robust predictive performance, particularly with finetuning on data closer to delivery, achieving a sensitivity of 52% and specificity of 88% for near-delivery cases. These findings suggest the potential of PatchCTG to enhance clinical decision-making in antepartum care by providing a sensor-based, AI-driven, objective tool for reliable fetal health assessment.
产前胎心监护(CTG)是一种广泛用于胎儿健康监测的生物医学传感技术。虽然对CTG曲线的视觉解读具有高度主观性,观察者间的一致性低至29%,假阳性率约为60%,但道斯-雷德曼系统提供了一种胎儿健康评估的自动化方法。然而,它主要旨在排除不良结局而非检测它们,导致在识别胎儿窘迫时具有高特异性(90.7%)但低敏感性(18.2%)。本文介绍了PatchCTG,一种用于CTG分析的人工智能生物医学时间序列变压器。它采用基于补丁的令牌化、实例归一化和通道独立处理来捕获CTG信号内的基本局部和全局时间依赖性。在应用纳入和排除标准后,在牛津产妇(OXMAT)数据集上对PatchCTG进行了评估,该数据集包含来自不同临床结局的20000多条高质量CTG曲线。通过广泛的超参数优化,PatchCTG在约登指数阈值下实现了0.77 的AUC,特异性为88%,敏感性为57%,证明了其对各种临床需求 的适应性。其在不同时间阈值下 的稳健性能突出了其在传感器驱动的胎儿监测中进行实时和回顾性分析 的潜力 在不同时间阈值下进行测试展示了其强大 的预测性能, 特别是在接近分娩的数据上进行微调时,对于接近分娩的病例,敏感性达到52%,特异性达到88%。这些发现表明,PatchCTG有潜力通过提供一种基于传感器、由人工智能驱动的客观工具来进行可靠的胎儿健康评估,从而加强产前护理中的临床决策。