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Hemoglobin and glucose level estimation from PPG characteristics features of fingertip video using MGGP-based model

机译:使用基于MGGP的模型的PPG特征特征的血红蛋白和葡萄糖水平估计

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Hemoglobin and the glucose level can be measured after taking a blood sample using a needle from the human body and analyzing the sample, the result can be observed. This type of invasive measurement is very painful and uncomfortable for the patient who is required to measure hemoglobin or glucose regularly. However, the noninvasive method only needed a bio-signal (image or spectra) to estimate blood components with the advantages of being painless, cheap, and user-friendliness. In this work, a non-invasive hemoglobin and glucose level estimation model have been developed based on multigene genetic programming (MGGP) using photoplethysmogram (PPG) characteristic features extracted from fingertip video captured by a smartphone. The videos are processed to generate the PPG signal. Analyzing the PPG signal, its first and second derivative, and applying Fourier analysis total of 46 features have been extracted. Additionally, age and gender are also included in the feature set. Then, a correlation-based feature selection method using a genetic algorithm is applied to select the best features. Finally, an MGGP based symbolic regression model has been developed to estimate hemoglobin and glucose level. To compare the performance of the MGGP model, several classical regression models are also developed using the same input condition as the MGGP model. A comparison between MGGP based model and classical regression models have been done by estimating different error measurement indexes. Among these regression models, the best results (+/- 0.304 for hemoglobin and +/- 0.324 for glucose) are found using selected features and symbolic regression based on MGGP.
机译:血红蛋白和葡萄糖水平可以在使用来自人体的针和分析样品的用针进行血液样品后测量,可以观察结果。这种类型的侵入性测量对于需要定期测量血红蛋白或葡萄糖所需的患者非常痛苦和不舒服。然而,非侵入性方法仅需要生物信号(图像或谱)来估计血液成分,具有无痛,便宜和用户友好的优点。在该作品中,已经基于使用由智能手机捕获的指尖视频提取的光电电肌谱(PPG)特征特征来开发非侵入性血红蛋白和葡萄糖水平估计模型。处理视频以生成PPG信号。分析PPG信号,其第一和第二衍生物,并提取了46个特征的傅立叶分析。此外,年龄和性别也包含在功能集中。然后,应用使用遗传算法的基于相关的特征选择方法来选择最佳特征。最后,已经开发了基于MGGP的符号回归模型来估计血红蛋白和葡萄糖水平。为了比较MGGP模型的性能,还使用与MGGP模型相同的输入条件开发了几种经典回归模型。通过估计不同的误差测量索引,完成了基于MGCP模型和经典回归模型的比较。在这些回归模型中,使用基于MGGP的所选特征和符号回归,找到最佳结果(血红蛋白的+/- 0.324和血糖+/- 0.324)。

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