Fetal pHocus: A Novel Approach to Non-Invasive Fetal Arterial Blood pH Assessment via Near-Infrared Spectroscopy.

IF 8
Randall Fowler, Begum Kasap, Weitai Qian, Rishad Joarder, Kourosh Vali, Siddharth Mani, Herman L Hedriana, Aijun Wang, Diana Farmer, Soheil Ghiasi
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引用次数: 0

Abstract

Modern intrapartum fetal health assessments are currently limited to monitoring heart rate and spatial parameters, neglecting critical biomarkers that remain unmeasurable with today's clinical devices without performing surgery. Without precise evaluations of oxygen levels and blood acidity, clinicians are forced to rely on postnatal assessments to gauge fetal well-being, a delay that may obscure timely intervention. Fetal blood pH is a vital indicator of acid-base balance and cellular health, as any deviation could indicate potential health risks such as hypoxia and acidemia. In this study, we leverage the indirect relationship between pH and oxygen saturation to estimate fetal blood pH non-invasively using near-infrared (NIR) spectroscopy with wavelengths optimized for light transmission depth and oxygen saturation measurements. A convolutional neural network (CNN) extracts features from the acquired data, enabling accurate prediction of fetal blood pH using our machine learning (ML) model. Evaluation using hypoxic sheep models demonstrated an average prediction error of just 0.023 pH units, with all rounds maintaining errors below 0.05 pH units.

胎儿pHocus:一种通过近红外光谱无创胎儿动脉血pH值评估的新方法。
现代产时胎儿健康评估目前仅限于监测心率和空间参数,忽略了关键的生物标志物,这些生物标志物在不进行手术的情况下仍然无法用今天的临床设备测量。由于没有精确的氧含量和血液酸度评估,临床医生被迫依靠产后评估来衡量胎儿的健康状况,这种延迟可能会影响及时干预。胎儿血液pH值是酸碱平衡和细胞健康的重要指标,任何偏差都可能提示潜在的健康风险,如缺氧和酸血症。在这项研究中,我们利用pH值和氧饱和度之间的间接关系,利用近红外(NIR)光谱无创地估计胎儿血液pH值,其波长针对光透射深度和氧饱和度测量进行了优化。卷积神经网络(CNN)从采集的数据中提取特征,使用我们的机器学习(ML)模型准确预测胎儿血液pH值。使用缺氧羊模型的评估显示,平均预测误差仅为0.023 pH单位,所有回合的误差均保持在0.05 pH单位以下。
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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来源期刊
CiteScore
10.30
自引率
0.00%
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