Hemoglobin and glucose level estimation from PPG characteristics features of fingertip video using MGGP-based model
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- @Article{GOLAP:2021:BSPC,
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author = "Md. Asaf-uddowla Golap and S. M. Taslim Uddin Raju and
Md. Rezwanul Haque and M. M. A Hashem",
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title = "Hemoglobin and glucose level estimation from {PPG}
characteristics features of fingertip video using
{MGGP-based} model",
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journal = "Biomedical Signal Processing and Control",
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volume = "67",
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pages = "102478",
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year = "2021",
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ISSN = "1746-8094",
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DOI = "doi:10.1016/j.bspc.2021.102478",
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URL = "https://www.sciencedirect.com/science/article/pii/S1746809421000756",
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keywords = "genetic algorithms, genetic programming, Multigene
genetic programming (MGGP), Hemoglobin (Hb), Glucose
(Gl), Photoplethysmogram (PPG), Feature selection,
Feature extraction",
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abstract = "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 non-invasive 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 (plus-minus0.304 for hemoglobin and
plus-minus0.324 for glucose) are found using selected
features and symbolic regression based on MGGP",
- }
Genetic Programming entries for
Md Asaf-uddowla Golap
S M Taslim Uddin Raju
Md Rezwanul Haque
M M A Hashem
Citations