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Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation

BACKGROUND: Point-of-care arterial blood gas (ABG) is a blood measurement test and a useful diagnostic tool that assists with treatment and therefore improves clinical outcomes. However, numerically reported test results make rapid interpretation difficult or open to interpretation. The arterial blo...

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Autores principales: Rodríguez-Villar, Sancho, Poza-Hernández, Paloma, Freigang, Sascha, Zubizarreta-Ormazabal, Idoia, Paz-Martín, Daniel, Holl, Etienne, Pérez-Pardo, Osvaldo Ceferino, Tovar-Doncel, María Sherezade, Wissa, Sonja Maria, Cimadevilla-Calvo, Bonifacio, Tejón-Pérez, Guillermo, Moreno-Fernández, Ismael, Escario-Méndez, Alejandro, Arévalo-Serrano, Juan, Valentín, Antonio, Do-Vale, Bruno Manuel, Fletcher, Helen Marie, Lorenzo- Fernández, Jesús Medardo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7946183/
https://www.ncbi.nlm.nih.gov/pubmed/33690724
http://dx.doi.org/10.1371/journal.pone.0248264
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author Rodríguez-Villar, Sancho
Poza-Hernández, Paloma
Freigang, Sascha
Zubizarreta-Ormazabal, Idoia
Paz-Martín, Daniel
Holl, Etienne
Pérez-Pardo, Osvaldo Ceferino
Tovar-Doncel, María Sherezade
Wissa, Sonja Maria
Cimadevilla-Calvo, Bonifacio
Tejón-Pérez, Guillermo
Moreno-Fernández, Ismael
Escario-Méndez, Alejandro
Arévalo-Serrano, Juan
Valentín, Antonio
Do-Vale, Bruno Manuel
Fletcher, Helen Marie
Lorenzo- Fernández, Jesús Medardo
author_facet Rodríguez-Villar, Sancho
Poza-Hernández, Paloma
Freigang, Sascha
Zubizarreta-Ormazabal, Idoia
Paz-Martín, Daniel
Holl, Etienne
Pérez-Pardo, Osvaldo Ceferino
Tovar-Doncel, María Sherezade
Wissa, Sonja Maria
Cimadevilla-Calvo, Bonifacio
Tejón-Pérez, Guillermo
Moreno-Fernández, Ismael
Escario-Méndez, Alejandro
Arévalo-Serrano, Juan
Valentín, Antonio
Do-Vale, Bruno Manuel
Fletcher, Helen Marie
Lorenzo- Fernández, Jesús Medardo
author_sort Rodríguez-Villar, Sancho
collection PubMed
description BACKGROUND: Point-of-care arterial blood gas (ABG) is a blood measurement test and a useful diagnostic tool that assists with treatment and therefore improves clinical outcomes. However, numerically reported test results make rapid interpretation difficult or open to interpretation. The arterial blood gas algorithm (ABG-a) is a new digital diagnostics solution that can provide clinicians with real-time interpretation of preliminary data on safety features, oxygenation, acid-base disturbances and renal profile. The main aim of this study was to clinically validate the algorithm against senior experienced clinicians, for acid-base interpretation, in a clinical context. METHODS: We conducted a prospective international multicentre observational cross-sectional study. 346 sample sets and 64 inpatients eligible for ABG met strict sampling criteria. Agreement was evaluated using Cohen’s kappa index, diagnostic accuracy was evaluated with sensitivity, specificity, efficiency or global accuracy and positive predictive values (PPV) and negative predictive values (NPV) for the prevalence in the study population. RESULTS: The concordance rates between the interpretations of the clinicians and the ABG-a for acid-base disorders were an observed global agreement of 84,3% with a Cohen’s kappa coefficient 0.81; 95% CI 0.77 to 0.86; p < 0.001. For detecting accuracy normal acid-base status the algorithm has a sensitivity of 90.0% (95% CI 79.9 to 95.3), a specificity 97.2% (95% CI 94.5 to 98.6) and a global accuracy of 95.9% (95% CI 93.3 to 97.6). For the four simple acid-base disorders, respiratory alkalosis: sensitivity of 91.2 (77.0 to 97.0), a specificity 100.0 (98.8 to 100.0) and global accuracy of 99.1 (97.5 to 99.7); respiratory acidosis: sensitivity of 61.1 (38.6 to 79.7), a specificity of 100.0 (98.8 to 100.0) and global accuracy of 98.0 (95.9 to 99.0); metabolic acidosis: sensitivity of 75.8 (59.0 to 87.2), a specificity of 99.7 (98.2 to 99.9) and a global accuracy of 97.4 (95.1 to 98.6); metabolic alkalosis sensitivity of 72.2 (56.0 to 84.2), a specificity of 95.5 (92.5 to 97.3) and a global accuracy of 93.0 (88.8 to 95.3); the four complex acid-base disorders, respiratory and metabolic alkalosis, respiratory and metabolic acidosis, respiratory alkalosis and metabolic acidosis, respiratory acidosis and metabolic alkalosis, the sensitivity, specificity and global accuracy was also high. For normal acid-base status the algorithm has PPV 87.1 (95% CI 76.6 to 93.3) %, and NPV 97.9 (95% CI 95.4 to 99.0) for a prevalence of 17.4 (95% CI 13.8 to 21.8). For the four-simple acid-base disorders and the four complex acid-base disorders the PPV and NPV were also statistically significant. CONCLUSIONS: The ABG-a showed very high agreement and diagnostic accuracy with experienced senior clinicians in the acid-base disorders in a clinical context. The method also provides refinement and deep complex analysis at the point-of-care that a clinician could have at the bedside on a day-to-day basis. The ABG-a method could also have the potential to reduce human errors by checking for imminent life-threatening situations, analysing the internal consistency of the results, the oxygenation and renal status of the patient.
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spelling pubmed-79461832021-03-19 Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation Rodríguez-Villar, Sancho Poza-Hernández, Paloma Freigang, Sascha Zubizarreta-Ormazabal, Idoia Paz-Martín, Daniel Holl, Etienne Pérez-Pardo, Osvaldo Ceferino Tovar-Doncel, María Sherezade Wissa, Sonja Maria Cimadevilla-Calvo, Bonifacio Tejón-Pérez, Guillermo Moreno-Fernández, Ismael Escario-Méndez, Alejandro Arévalo-Serrano, Juan Valentín, Antonio Do-Vale, Bruno Manuel Fletcher, Helen Marie Lorenzo- Fernández, Jesús Medardo PLoS One Research Article BACKGROUND: Point-of-care arterial blood gas (ABG) is a blood measurement test and a useful diagnostic tool that assists with treatment and therefore improves clinical outcomes. However, numerically reported test results make rapid interpretation difficult or open to interpretation. The arterial blood gas algorithm (ABG-a) is a new digital diagnostics solution that can provide clinicians with real-time interpretation of preliminary data on safety features, oxygenation, acid-base disturbances and renal profile. The main aim of this study was to clinically validate the algorithm against senior experienced clinicians, for acid-base interpretation, in a clinical context. METHODS: We conducted a prospective international multicentre observational cross-sectional study. 346 sample sets and 64 inpatients eligible for ABG met strict sampling criteria. Agreement was evaluated using Cohen’s kappa index, diagnostic accuracy was evaluated with sensitivity, specificity, efficiency or global accuracy and positive predictive values (PPV) and negative predictive values (NPV) for the prevalence in the study population. RESULTS: The concordance rates between the interpretations of the clinicians and the ABG-a for acid-base disorders were an observed global agreement of 84,3% with a Cohen’s kappa coefficient 0.81; 95% CI 0.77 to 0.86; p < 0.001. For detecting accuracy normal acid-base status the algorithm has a sensitivity of 90.0% (95% CI 79.9 to 95.3), a specificity 97.2% (95% CI 94.5 to 98.6) and a global accuracy of 95.9% (95% CI 93.3 to 97.6). For the four simple acid-base disorders, respiratory alkalosis: sensitivity of 91.2 (77.0 to 97.0), a specificity 100.0 (98.8 to 100.0) and global accuracy of 99.1 (97.5 to 99.7); respiratory acidosis: sensitivity of 61.1 (38.6 to 79.7), a specificity of 100.0 (98.8 to 100.0) and global accuracy of 98.0 (95.9 to 99.0); metabolic acidosis: sensitivity of 75.8 (59.0 to 87.2), a specificity of 99.7 (98.2 to 99.9) and a global accuracy of 97.4 (95.1 to 98.6); metabolic alkalosis sensitivity of 72.2 (56.0 to 84.2), a specificity of 95.5 (92.5 to 97.3) and a global accuracy of 93.0 (88.8 to 95.3); the four complex acid-base disorders, respiratory and metabolic alkalosis, respiratory and metabolic acidosis, respiratory alkalosis and metabolic acidosis, respiratory acidosis and metabolic alkalosis, the sensitivity, specificity and global accuracy was also high. For normal acid-base status the algorithm has PPV 87.1 (95% CI 76.6 to 93.3) %, and NPV 97.9 (95% CI 95.4 to 99.0) for a prevalence of 17.4 (95% CI 13.8 to 21.8). For the four-simple acid-base disorders and the four complex acid-base disorders the PPV and NPV were also statistically significant. CONCLUSIONS: The ABG-a showed very high agreement and diagnostic accuracy with experienced senior clinicians in the acid-base disorders in a clinical context. The method also provides refinement and deep complex analysis at the point-of-care that a clinician could have at the bedside on a day-to-day basis. The ABG-a method could also have the potential to reduce human errors by checking for imminent life-threatening situations, analysing the internal consistency of the results, the oxygenation and renal status of the patient. Public Library of Science 2021-03-10 /pmc/articles/PMC7946183/ /pubmed/33690724 http://dx.doi.org/10.1371/journal.pone.0248264 Text en © 2021 Rodríguez-Villar et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Rodríguez-Villar, Sancho
Poza-Hernández, Paloma
Freigang, Sascha
Zubizarreta-Ormazabal, Idoia
Paz-Martín, Daniel
Holl, Etienne
Pérez-Pardo, Osvaldo Ceferino
Tovar-Doncel, María Sherezade
Wissa, Sonja Maria
Cimadevilla-Calvo, Bonifacio
Tejón-Pérez, Guillermo
Moreno-Fernández, Ismael
Escario-Méndez, Alejandro
Arévalo-Serrano, Juan
Valentín, Antonio
Do-Vale, Bruno Manuel
Fletcher, Helen Marie
Lorenzo- Fernández, Jesús Medardo
Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation
title Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation
title_full Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation
title_fullStr Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation
title_full_unstemmed Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation
title_short Automatic real-time analysis and interpretation of arterial blood gas sample for Point-of-care testing: Clinical validation
title_sort automatic real-time analysis and interpretation of arterial blood gas sample for point-of-care testing: clinical validation
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7946183/
https://www.ncbi.nlm.nih.gov/pubmed/33690724
http://dx.doi.org/10.1371/journal.pone.0248264
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