Computer Vision for Identification of Increased Fetal Heart Variability in Cardiotocogram.

Neonatology Pub Date : 2024-04-02 DOI:10.1159/000538134
Mikko J Tarvonen, Matti Manninen, Petri Lamminaho, Petri Jehkonen, Ville Tuppurainen, Sture Andersson
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Abstract

INTRODUCTION Increased fetal heart rate variability (IFHRV), defined as fetal heart rate (FHR) baseline amplitude changes of >25 beats per minute with a duration of ≥1 min, is an early sign of intrapartum fetal hypoxia. This study evaluated the level of agreement of machine learning (ML) algorithms-based recognition of IFHRV patterns with expert analysis. METHODS Cardiotocographic recordings and cardiotocograms from 4,988 singleton term childbirths were evaluated independently by two expert obstetricians blinded to the outcomes. Continuous FHR monitoring with computer vision analysis was compared with visual analysis by the expert obstetricians. FHR signals were graphically processed and measured by the computer vision model labeled SALKA. RESULTS In visual analysis, IFHRV pattern occurred in 582 cardiotocograms (11.7%). Compared with visual analysis, SALKA recognized IFHRV patterns with an average Cohen's kappa coefficient of 0.981 (95% CI: 0.972-0.993). The sensitivity of SALKA was 0.981, the positive predictive rate was 0.822 (95% CI: 0.774-0.903), and the false-negative rate was 0.01 (95% CI: 0.00-0.02). The agreement between visual analysis and SALKA in identification of IFHRV was almost perfect (0.993) in cases (N = 146) with neonatal acidemia (i.e., umbilical artery pH <7.10). CONCLUSIONS Computer vision analysis by SALKA is a novel ML technique that, with high sensitivity and specificity, identifies IFHRV features in intrapartum cardiotocograms. SALKA recognizes potential early signs of fetal distress close to those of expert obstetricians, particularly in cases of neonatal acidemia.
计算机视觉识别胎心图中增加的胎心变异。
简介胎儿心率变异性增加(IFHRV)是指胎儿心率(FHR)基线振幅变化>25次/分且持续时间≥1分钟,是产后胎儿缺氧的早期征兆。本研究评估了基于机器学习(ML)算法的 IFHRV 模式识别与专家分析的一致性水平。方法由两名对结果保密的产科专家对 4988 例单胎足月分娩的心动图记录和心动图进行独立评估。通过计算机视觉分析进行的连续 FHR 监测与产科专家的视觉分析进行了比较。结果 在视觉分析中,582 张心动图(11.7%)出现了 IFHRV 模式。与视觉分析相比,SALKA识别IFHRV模式的平均科恩卡帕系数为0.981(95% CI:0.972-0.993)。SALKA 的灵敏度为 0.981,阳性预测率为 0.822(95% CI:0.774-0.903),假阴性率为 0.01(95% CI:0.00-0.02)。在新生儿酸血症(即脐动脉 pH <7.10)的病例(N = 146)中,视觉分析和 SALKA 在识别 IFHRV 方面的一致性几乎达到完美(0.993)。SALKA 能识别胎儿窘迫的潜在早期征兆,与产科专家的识别能力接近,尤其是在新生儿酸血症病例中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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