State Key Laboratory of Precision Measurement Technology and Instrument, Tianjin University, Tianjin, China.
China and Tianjin Key Laboratory of Biomedical Detecting Techniques and Instruments, Tianjin University, Tianjin, China.
Appl Spectrosc. 2020 Jan;74(1):23-33. doi: 10.1177/0003702818815508. Epub 2019 Sep 12.
Dynamic spectra (DS) can greatly reduce the influence of individual differences and the measurement environment by extracting the absorbance of pulsating blood at multiple wavelengths, and it is expected to achieve noninvasive detection of blood components. Extracting high-quality DS is the prerequisite for improving detection accuracy. This paper proposed an optimizing differential extraction method in view of the deficiency of existing extraction methods. In the proposed method, the sub-dynamic spectrum (sDS) is composed by sequentially extracting the absolute differences of two sample points corresponding to the height of the half peak on the two sides of the lowest point in each period of the logarithm photoplethysmography signal. The study was based on clinical trial data from 231 volunteers. Single-trial extraction method, original differential extraction method, and optimizing differential extraction method were used to extract DS from the volunteers' experimental data. Partial least squares regression (PLSR) and radial basis function (RBF) neural network were used for modeling. According to the effect of PLSR modeling, by extracting DS using the proposed method, the correlation coefficient of prediction set () has been improved by 17.33% and the root mean square error of prediction set has been reduced by 7.10% compared with the original differential extraction method. Compared with the single-trial extraction method, the correlation coefficient of calibration set () has increased from 0.747659 to 0.8244, with an increase of 10.26%, while the correlation coefficient of prediction set () decreased slightly by 3.22%, much lower than the increase of correction set. The result of the RBF neural network modeling also shows that the accuracy of the optimizing differential method is better than the other two methods both in calibration set and prediction set. In general, the optimizing differential extraction method improves the data utilization and credibility compared with the existing extraction methods, and the modeling effect is better than the other two methods.
动态光谱(DS)通过提取多个波长的脉动血液的吸光度,极大地降低了个体差异和测量环境的影响,有望实现对血液成分的非侵入性检测。提取高质量的 DS 是提高检测精度的前提。针对现有提取方法的不足,本文提出了一种优化差分提取方法。在所提出的方法中,通过依次提取对数光体积描记信号每个周期中最低点两侧高度的两个采样点之间的绝对差,构成子动态光谱(sDS)。该研究基于 231 名志愿者的临床试验数据。使用单试提取方法、原始差分提取方法和优化差分提取方法从志愿者的实验数据中提取 DS。使用偏最小二乘回归(PLSR)和径向基函数(RBF)神经网络进行建模。根据 PLSR 建模效果,使用所提出的方法提取 DS 后,与原始差分提取方法相比,预测集的相关系数()提高了 17.33%,预测集的均方根误差降低了 7.10%。与单试提取方法相比,校正集的相关系数()从 0.747659 增加到 0.8244,增加了 10.26%,而预测集的相关系数略有降低 3.22%,远低于校正集的增加。RBF 神经网络建模的结果也表明,优化差分方法在校正集和预测集的准确性均优于其他两种方法。总的来说,与现有提取方法相比,优化差分提取方法提高了数据利用率和可信度,建模效果优于其他两种方法。