An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin Concentration

In the noninvasive determination of the hemoglobin concentration a main challenge is the "optical path". With sensors - fixed on human skin - the optical path cannot be exactly determined, as it is defined as the layer thickness in the Lambert Beer principle. The layer thickness is signifi...

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Main Authors: Wegerich Philipp, Gehring Hartmut
Format: Article
Language:English
Published: De Gruyter 2018-09-01
Series:Current Directions in Biomedical Engineering
Subjects:
Online Access:https://doi.org/10.1515/cdbme-2018-0084
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spelling doaj-cea59027a002447ca9a8d6e2218e11b22021-09-06T19:19:26ZengDe GruyterCurrent Directions in Biomedical Engineering2364-55042018-09-014135135410.1515/cdbme-2018-0084cdbme-2018-0084An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin ConcentrationWegerich Philipp0Gehring Hartmut1Departement of Anesthesiology and Intensive Care Medicine, University Medical Center and Institute of Medical Engineering, Universität zu Lübeck, Ratzeburger Allee 160 23562Lübeck, GermanyDepartement of Anesthesiology and Intensive Care Medicine, University Medical Center, Ratzeburger Allee 160 23562Lübeck, GermanyIn the noninvasive determination of the hemoglobin concentration a main challenge is the "optical path". With sensors - fixed on human skin - the optical path cannot be exactly determined, as it is defined as the layer thickness in the Lambert Beer principle. The layer thickness is significantly involved in the optical interactions in the tissue. To circumvent this problem self-learning algorithms were evaluated which provide the hemoglobin concentration from reflection and transmission data without knowledge of the layer thickness. First various regression models were trained based on an high rate data set. To evaluate the six most promising models, a prediction dataset was measured in a prospective randomized and blinded study to guarantee integrity of the results. For both data sets, the transmission and reflection of diluted heparinized erythrocyte concentrate was determined with a double integrating sphere setup (laser diodes with 780 to 1310 nm). The evaluated hemoglobin concentrations ranged from 4 to 16 g/dl at a constant oxygen saturation above 97 %. Optical flow through cuvettes (1, 2, 3 mm) simulated different layer thicknesses of the blood. The evaluation of the predictions yielded that the layer thickness independent prediction of the hemoglobin concentration is feasible with the selected approaches. The mean absolute error (MAE) of the best regression model (GPRM - Matern 5/2) is 0.79 g/dl. In the clinically relevant tHb range of less than 8 g/dl the MAE was as low as 0.52 g/dl.https://doi.org/10.1515/cdbme-2018-0084hemoglobin concentrationlayer independent predictionregressionmachine learningoptical properties
collection DOAJ
language English
format Article
sources DOAJ
author Wegerich Philipp
Gehring Hartmut
spellingShingle Wegerich Philipp
Gehring Hartmut
An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin Concentration
Current Directions in Biomedical Engineering
hemoglobin concentration
layer independent prediction
regression
machine learning
optical properties
author_facet Wegerich Philipp
Gehring Hartmut
author_sort Wegerich Philipp
title An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin Concentration
title_short An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin Concentration
title_full An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin Concentration
title_fullStr An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin Concentration
title_full_unstemmed An In vitro Laboratory Investigation on Layer Thickness-Independent Prediction of the Hemoglobin Concentration
title_sort in vitro laboratory investigation on layer thickness-independent prediction of the hemoglobin concentration
publisher De Gruyter
series Current Directions in Biomedical Engineering
issn 2364-5504
publishDate 2018-09-01
description In the noninvasive determination of the hemoglobin concentration a main challenge is the "optical path". With sensors - fixed on human skin - the optical path cannot be exactly determined, as it is defined as the layer thickness in the Lambert Beer principle. The layer thickness is significantly involved in the optical interactions in the tissue. To circumvent this problem self-learning algorithms were evaluated which provide the hemoglobin concentration from reflection and transmission data without knowledge of the layer thickness. First various regression models were trained based on an high rate data set. To evaluate the six most promising models, a prediction dataset was measured in a prospective randomized and blinded study to guarantee integrity of the results. For both data sets, the transmission and reflection of diluted heparinized erythrocyte concentrate was determined with a double integrating sphere setup (laser diodes with 780 to 1310 nm). The evaluated hemoglobin concentrations ranged from 4 to 16 g/dl at a constant oxygen saturation above 97 %. Optical flow through cuvettes (1, 2, 3 mm) simulated different layer thicknesses of the blood. The evaluation of the predictions yielded that the layer thickness independent prediction of the hemoglobin concentration is feasible with the selected approaches. The mean absolute error (MAE) of the best regression model (GPRM - Matern 5/2) is 0.79 g/dl. In the clinically relevant tHb range of less than 8 g/dl the MAE was as low as 0.52 g/dl.
topic hemoglobin concentration
layer independent prediction
regression
machine learning
optical properties
url https://doi.org/10.1515/cdbme-2018-0084
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