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Evaluation of a New Digital Automated Glycemic Pattern Detection Tool

Background: Blood glucose meters are reliable devices for data collection, providing electronic logs of historical data easier to interpret than handwritten logbooks. Automated tools to analyze these data are necessary to facilitate glucose pattern detection and support treatment adjustment. These t...

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Autores principales: Comellas, María José, Albiñana, Emma, Artes, Maite, Corcoy, Rosa, Fernández-García, Diego, García-Alemán, Jorge, García-Cuartero, Beatriz, González, Cintia, Rivero, María Teresa, Casamira, Núria, Weissmann, Jörg
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Mary Ann Liebert, Inc. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5689116/
https://www.ncbi.nlm.nih.gov/pubmed/29091477
http://dx.doi.org/10.1089/dia.2017.0180
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author Comellas, María José
Albiñana, Emma
Artes, Maite
Corcoy, Rosa
Fernández-García, Diego
García-Alemán, Jorge
García-Cuartero, Beatriz
González, Cintia
Rivero, María Teresa
Casamira, Núria
Weissmann, Jörg
author_facet Comellas, María José
Albiñana, Emma
Artes, Maite
Corcoy, Rosa
Fernández-García, Diego
García-Alemán, Jorge
García-Cuartero, Beatriz
González, Cintia
Rivero, María Teresa
Casamira, Núria
Weissmann, Jörg
author_sort Comellas, María José
collection PubMed
description Background: Blood glucose meters are reliable devices for data collection, providing electronic logs of historical data easier to interpret than handwritten logbooks. Automated tools to analyze these data are necessary to facilitate glucose pattern detection and support treatment adjustment. These tools emerge in a broad variety in a more or less nonevaluated manner. The aim of this study was to compare eDetecta, a new automated pattern detection tool, to nonautomated pattern analysis in terms of time investment, data interpretation, and clinical utility, with the overarching goal to identify early in development and implementation of tool areas of improvement and potential safety risks. Methods: Multicenter web-based evaluation in which 37 endocrinologists were asked to assess glycemic patterns of 4 real reports (2 continuous subcutaneous insulin infusion [CSII] and 2 multiple daily injection [MDI]). Endocrinologist and eDetecta analyses were compared on time spent to analyze each report and agreement on the presence or absence of defined patterns. Results: eDetecta module markedly reduced the time taken to analyze each case on the basis of the emminens eConecta reports (CSII: 18 min; MDI: 12.5), compared to the automatic eDetecta analysis. Agreement between endocrinologists and eDetecta varied depending on the patterns, with high level of agreement in patterns of glycemic variability. Further analysis of low level of agreement led to identifying areas where algorithms used could be improved to optimize trend pattern identification. Conclusion: eDetecta was a useful tool for glycemic pattern detection, helping clinicians to reduce time required to review emminens eConecta glycemic reports. No safety risks were identified during the study.
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spelling pubmed-56891162017-11-24 Evaluation of a New Digital Automated Glycemic Pattern Detection Tool Comellas, María José Albiñana, Emma Artes, Maite Corcoy, Rosa Fernández-García, Diego García-Alemán, Jorge García-Cuartero, Beatriz González, Cintia Rivero, María Teresa Casamira, Núria Weissmann, Jörg Diabetes Technol Ther Original Articles Background: Blood glucose meters are reliable devices for data collection, providing electronic logs of historical data easier to interpret than handwritten logbooks. Automated tools to analyze these data are necessary to facilitate glucose pattern detection and support treatment adjustment. These tools emerge in a broad variety in a more or less nonevaluated manner. The aim of this study was to compare eDetecta, a new automated pattern detection tool, to nonautomated pattern analysis in terms of time investment, data interpretation, and clinical utility, with the overarching goal to identify early in development and implementation of tool areas of improvement and potential safety risks. Methods: Multicenter web-based evaluation in which 37 endocrinologists were asked to assess glycemic patterns of 4 real reports (2 continuous subcutaneous insulin infusion [CSII] and 2 multiple daily injection [MDI]). Endocrinologist and eDetecta analyses were compared on time spent to analyze each report and agreement on the presence or absence of defined patterns. Results: eDetecta module markedly reduced the time taken to analyze each case on the basis of the emminens eConecta reports (CSII: 18 min; MDI: 12.5), compared to the automatic eDetecta analysis. Agreement between endocrinologists and eDetecta varied depending on the patterns, with high level of agreement in patterns of glycemic variability. Further analysis of low level of agreement led to identifying areas where algorithms used could be improved to optimize trend pattern identification. Conclusion: eDetecta was a useful tool for glycemic pattern detection, helping clinicians to reduce time required to review emminens eConecta glycemic reports. No safety risks were identified during the study. Mary Ann Liebert, Inc. 2017-11-01 2017-11-01 /pmc/articles/PMC5689116/ /pubmed/29091477 http://dx.doi.org/10.1089/dia.2017.0180 Text en © Maria José Comellas, et al., 2017; Published by Mary Ann Liebert, Inc. This Open Access article is distributed under the terms of the Creative Commons License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly credited.
spellingShingle Original Articles
Comellas, María José
Albiñana, Emma
Artes, Maite
Corcoy, Rosa
Fernández-García, Diego
García-Alemán, Jorge
García-Cuartero, Beatriz
González, Cintia
Rivero, María Teresa
Casamira, Núria
Weissmann, Jörg
Evaluation of a New Digital Automated Glycemic Pattern Detection Tool
title Evaluation of a New Digital Automated Glycemic Pattern Detection Tool
title_full Evaluation of a New Digital Automated Glycemic Pattern Detection Tool
title_fullStr Evaluation of a New Digital Automated Glycemic Pattern Detection Tool
title_full_unstemmed Evaluation of a New Digital Automated Glycemic Pattern Detection Tool
title_short Evaluation of a New Digital Automated Glycemic Pattern Detection Tool
title_sort evaluation of a new digital automated glycemic pattern detection tool
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5689116/
https://www.ncbi.nlm.nih.gov/pubmed/29091477
http://dx.doi.org/10.1089/dia.2017.0180
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