Davis Jones G, Albert B, Cooke W, Vatish M
Oxford Digital Health Labs, Nuffield Department of Women's & Reproductive Health, University of Oxford, Women's Centre, John Radcliffe Hospital, Oxford, UK.
The Alan Turing Institute, London, UK.
Ultrasound Obstet Gynecol. 2025 Feb;65(2):191-197. doi: 10.1002/uog.29167.
To assess the effectiveness of the Dawes-Redman algorithm in identifying fetal wellbeing at term by analyzing 30 years of retrospective clinical data, comparing normal and adverse pregnancy outcomes, evaluating key metrics and testing its performance when used 0-48 h before delivery.
Antepartum fetal heart rate (FHR) traces from term singleton pregnancies at 37 + 0 to 41 + 6 weeks' gestation obtained between 1991 and 2024 were extracted from the Oxford University Hospitals database. Traces with > 30% of their signal information missing or with incomplete Dawes-Redman analyses were excluded. Only traces performed within 48 h prior to delivery were considered. A cohort of pregnancies with subsequent normal pregnancy outcome (NPO) was established using rigorous inclusion and exclusion criteria. Another cohort of pregnancies with adverse pregnancy outcome (APO) was developed if the neonate experienced at least one of seven APOs after delivery. Propensity score matching (PSM) facilitated a balanced comparison between NPO and APO cohorts using six factors: gestational age at FHR monitoring, fetal sex, maternal body mass index at presentation, maternal age at delivery, parity and time interval between FHR trace and delivery. FHR traces were categorized as either 'criteria met' (indicating fetal wellbeing) or 'criteria not met' (indicating a need for further evaluation) according to the Dawes-Redman algorithm, which informed the evaluation of predictive performance metrics. Performance was assessed using accuracy, sensitivity, specificity, positive predictive value, and negative predictive value (NPV) adjusted for various population risk prevalences of APO.
A balanced dataset of 3316 antepartum FHR traces was developed with PSM (standardized mean difference < 0.10). The Dawes-Redman algorithm showed a high specificity of 90.7% (95% CI, 89.2-92.0%) for ruling out APO. Sensitivity was 18.2% (95% CI, 16.3-20.0%). The NPV varied with the population prevalence of APO and was high in very-low-risk settings (NPV, 99.1% (95% CI, 98.9-99.3%) at 1% APO prevalence) and decreased with increasing risk of APO (NPV, 72.1% (95% CI, 67.7-76.1%) at 30% APO prevalence). Temporal proximity of FHR assessment to delivery indicated robust specificity, which was similar for assessments performed at 0-24 h and 24-48 h prior to delivery (specificity at 0-24 h, 90.8% (95% CI, 88.8-92.7%); specificity at 24-48 h, 90.3% (95% CI, 88.2-92.3%); P = 0.898). Across the different adverse outcomes comprising the APO cohort, the performance of the Dawes-Redman algorithm remained consistent, with high specificity (ranging from 87.7% to 94.7%) and NPVs (ranging from 95.4% to 96.0%), confirming its utility in identifying fetal wellbeing.
These findings indicate that the Dawes-Redman algorithm is effective for its intended purpose: identifying a state of fetal wellbeing. This is evidenced by its high specificity. However, its low sensitivity suggests limitations in its ability to identify fetuses at risk of APO. The predictive accuracy of the algorithm is affected significantly by the prevalence of healthy pregnancies within the population. Clinical interpretation of FHR traces that do not satisfy the 10 Dawes-Redman criteria warrant further expert clinical evaluation. While the algorithm proves reliable for its primary objective, the development of an algorithm optimized for high-risk pregnancy scenarios remains an area of interest for future study. © 2025 The Author(s). Ultrasound in Obstetrics & Gynecology published by John Wiley & Sons Ltd on behalf of International Society of Ultrasound in Obstetrics and Gynecology.
通过分析30年的回顾性临床数据,比较正常和不良妊娠结局,评估关键指标,并测试其在分娩前0 - 48小时使用时的性能,以评估Dawes - Redman算法在足月时识别胎儿健康状况的有效性。
从牛津大学医院数据库中提取1991年至2024年期间妊娠37⁺⁰至41⁺⁶周的足月单胎妊娠的产前胎儿心率(FHR)记录。排除信号信息缺失超过30%或Dawes - Redman分析不完整的记录。仅考虑在分娩前48小时内进行的记录。使用严格的纳入和排除标准建立了一组随后妊娠结局正常(NPO)的队列。如果新生儿在出生后经历了七种不良妊娠结局(APO)中的至少一种,则建立另一组不良妊娠结局(APO)的队列。倾向评分匹配(PSM)使用六个因素促进了NPO和APO队列之间的平衡比较:FHR监测时的孕周、胎儿性别、就诊时的孕妇体重指数、分娩时的孕妇年龄、产次以及FHR记录与分娩之间的时间间隔。根据Dawes - Redman算法,FHR记录被分类为“符合标准”(表明胎儿健康)或“不符合标准”(表明需要进一步评估),这为预测性能指标的评估提供了依据。使用针对APO的各种人群风险患病率调整后的准确性、敏感性、特异性、阳性预测值和阴性预测值(NPV)来评估性能。
通过PSM建立了一个包含3316条产前FHR记录的平衡数据集(标准化平均差<0.10)。Dawes - Redman算法在排除APO方面显示出90.7%的高特异性(95%CI,89.2 - 92.0%)。敏感性为18.2%(95%CI,16.3 - 20.0%)。NPV随APO的人群患病率而变化,在极低风险环境中较高(APO患病率为1%时,NPV为99.1%(95%CI,98.9 - 99.3%)),并随着APO风险的增加而降低(APO患病率为30%时,NPV为72.1%(95%CI,67.7 - 76.1%))。FHR评估与分娩的时间接近度表明具有较强的特异性,在分娩前0 - 24小时和24 - 48小时进行的评估相似(0 - 24小时的特异性为90.8%(95%CI,88.8 - 92.7%);24 - 48小时的特异性为90.3%(95%CI,88.2 - 92.3%);P = 0.898)。在构成APO队列的不同不良结局中,Dawes - Redman算法的性能保持一致,具有高特异性(范围为87.7%至94.7%)和NPV(范围为95.4%至96.0%),证实了其在识别胎儿健康状况方面的效用。
这些发现表明,Dawes - Redman算法对于其预期目的是有效的:识别胎儿健康状态。这由其高特异性证明。然而,其低敏感性表明其在识别有APO风险的胎儿方面存在局限性。该算法的预测准确性受到人群中健康妊娠患病率的显著影响。不符合10条Dawes - Redman标准的FHR记录的临床解释需要进一步的专家临床评估。虽然该算法在其主要目标上被证明是可靠的,但开发针对高危妊娠情况进行优化的算法仍然是未来研究的一个感兴趣的领域。© 2025作者。由John Wiley & Sons Ltd代表国际妇产科超声学会出版的《妇产科超声》。