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Newborn jaundice determination by reflectance spectroscopy using multiple polynomial regression, neural network, and support vector regression

机译:使用多项式回归,神经网络和支持向量回归的反射光谱法测定新生儿黄疸

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Diffuse reflectance spectroscopy is a non-destructive method to obtain biochemical and physiological information by investigating the optical properties of skin. Transcutaneous bilirubin (TcB) measurement utilizes reflectance spectroscopy to determine the jaundice level in newborns. Although TcB measurement has some advantages over total serum bilirubin (TSB) measurement such as being non-invasive, noninfectious, painless, and instantaneous, the existing TcB devices cannot yet replace TSB devices due to the inaccuracy of measurements. In this paper, we propose the use of reflectance spectroscopy in conjunction with regression tools such as multiple polynomial regression (MPR), artificial neural network (ANN), and support vector regression (SVR) to predict the jaundice level. The proposed methods were tested on TcB measurement data obtained from 314 babies. TcB measurements were collected by two devices: a commercially available product, Draeger IM-103, and a prototype device on which we can implement the proposed algorithms. The results are encouraging towards increasing the clinical usage of transcutaneous bilirubinometers as all the three methods accurately predict the jaundice level with a correlation value between 0.932 and 0.943. The proposed use of ANN improves the non-invasive transcutaneous approach, with results converging to more accurate invasive serum bilirubin measurements by blood sampling. (C) 2019 Elsevier Ltd. All rights reserved.
机译:漫反射光谱法是通过研究皮肤的光学特性来获取生化和生理信息的一种非破坏性方法。经皮胆红素(TcB)测量利用反射光谱法确定新生儿的黄疸水平。尽管TcB测量相对于总血清胆红素(TSB)测量具有一些优势,例如无创,无感染,无痛且瞬时,但由于测量的准确性,现有的TcB设备仍不能替代TSB设备。在本文中,我们提出将反射光谱与诸如多项式回归(MPR),人工神经网络(ANN)和支持向量回归(SVR)的回归工具结合使用来预测黄疸水平。对从314名婴儿获得的TcB测量数据进行了测试。 TcB测量是通过两种设备收集的:市售产品Draeger IM-103,以及可以在其上实现所提出算法的原型设备。由于这三种方法都能准确地预测黄疸水平,其相关值在0.932至0.943之间,因此,该结果对于增加经皮胆红素计的临床应用令人鼓舞。拟议的人工神经网络的使用改进了非侵入性经皮方法,其结果收敛到通过采血更准确的侵入性血清胆红素测量。 (C)2019 Elsevier Ltd.保留所有权利。

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