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Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems

The major challenge in the diagnosis of disseminated intravascular coagulation (DIC) comes from the lack of specific biomarkers, leading to developing composite scoring systems. DIC scores are simple and rapidly applicable. However, optimal fibrin-related markers and their cut-off values remain to b...

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Autores principales: Yoon, Jihoon G., Heo, JoonNyung, Kim, Minkyu, Park, Yu Jin, Choi, Min Hyuk, Song, Jaewoo, Wyi, Kangsan, Kim, Hakbeen, Duchenne, Olivier, Eom, Soowon, Tsoy, Yury
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5931474/
https://www.ncbi.nlm.nih.gov/pubmed/29718941
http://dx.doi.org/10.1371/journal.pone.0195861
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author Yoon, Jihoon G.
Heo, JoonNyung
Kim, Minkyu
Park, Yu Jin
Choi, Min Hyuk
Song, Jaewoo
Wyi, Kangsan
Kim, Hakbeen
Duchenne, Olivier
Eom, Soowon
Tsoy, Yury
author_facet Yoon, Jihoon G.
Heo, JoonNyung
Kim, Minkyu
Park, Yu Jin
Choi, Min Hyuk
Song, Jaewoo
Wyi, Kangsan
Kim, Hakbeen
Duchenne, Olivier
Eom, Soowon
Tsoy, Yury
author_sort Yoon, Jihoon G.
collection PubMed
description The major challenge in the diagnosis of disseminated intravascular coagulation (DIC) comes from the lack of specific biomarkers, leading to developing composite scoring systems. DIC scores are simple and rapidly applicable. However, optimal fibrin-related markers and their cut-off values remain to be defined, requiring optimization for use. The aim of this study is to optimize the use of DIC-related parameters through machine learning (ML)-approach. Further, we evaluated whether this approach could provide a diagnostic value in DIC diagnosis. For this, 46 DIC-related parameters were investigated for both clinical findings and laboratory results. We retrospectively reviewed 656 DIC-suspected cases at an initial order for full DIC profile and labeled their evaluation results (Set 1; DIC, n = 228; non-DIC, n = 428). Several ML algorithms were tested, and an artificial neural network (ANN) model was established via independent training and testing using 32 selected parameters. This model was externally validated from a different hospital with 217 DIC-suspected cases (Set 2; DIC, n = 80; non-DIC, n = 137). The ANN model represented higher AUC values than the three scoring systems in both set 1 (ANN 0.981; ISTH 0.945; JMHW 0.943; and JAAM 0.928) and set 2 (AUC ANN 0.968; ISTH 0.946). Additionally, the relative importance of the 32 parameters was evaluated. Most parameters had contextual importance, however, their importance in ML-approach was different from the traditional scoring system. Our study demonstrates that ML could optimize the use of clinical parameters with robustness for DIC diagnosis. We believe that this approach could play a supportive role in physicians’ medical decision by integrated into electrical health record system. Further prospective validation is required to assess the clinical consequence of ML-approach and their clinical benefit.
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spelling pubmed-59314742018-05-11 Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems Yoon, Jihoon G. Heo, JoonNyung Kim, Minkyu Park, Yu Jin Choi, Min Hyuk Song, Jaewoo Wyi, Kangsan Kim, Hakbeen Duchenne, Olivier Eom, Soowon Tsoy, Yury PLoS One Research Article The major challenge in the diagnosis of disseminated intravascular coagulation (DIC) comes from the lack of specific biomarkers, leading to developing composite scoring systems. DIC scores are simple and rapidly applicable. However, optimal fibrin-related markers and their cut-off values remain to be defined, requiring optimization for use. The aim of this study is to optimize the use of DIC-related parameters through machine learning (ML)-approach. Further, we evaluated whether this approach could provide a diagnostic value in DIC diagnosis. For this, 46 DIC-related parameters were investigated for both clinical findings and laboratory results. We retrospectively reviewed 656 DIC-suspected cases at an initial order for full DIC profile and labeled their evaluation results (Set 1; DIC, n = 228; non-DIC, n = 428). Several ML algorithms were tested, and an artificial neural network (ANN) model was established via independent training and testing using 32 selected parameters. This model was externally validated from a different hospital with 217 DIC-suspected cases (Set 2; DIC, n = 80; non-DIC, n = 137). The ANN model represented higher AUC values than the three scoring systems in both set 1 (ANN 0.981; ISTH 0.945; JMHW 0.943; and JAAM 0.928) and set 2 (AUC ANN 0.968; ISTH 0.946). Additionally, the relative importance of the 32 parameters was evaluated. Most parameters had contextual importance, however, their importance in ML-approach was different from the traditional scoring system. Our study demonstrates that ML could optimize the use of clinical parameters with robustness for DIC diagnosis. We believe that this approach could play a supportive role in physicians’ medical decision by integrated into electrical health record system. Further prospective validation is required to assess the clinical consequence of ML-approach and their clinical benefit. Public Library of Science 2018-05-02 /pmc/articles/PMC5931474/ /pubmed/29718941 http://dx.doi.org/10.1371/journal.pone.0195861 Text en © 2018 Yoon 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
Yoon, Jihoon G.
Heo, JoonNyung
Kim, Minkyu
Park, Yu Jin
Choi, Min Hyuk
Song, Jaewoo
Wyi, Kangsan
Kim, Hakbeen
Duchenne, Olivier
Eom, Soowon
Tsoy, Yury
Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems
title Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems
title_full Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems
title_fullStr Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems
title_full_unstemmed Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems
title_short Machine learning-based diagnosis for disseminated intravascular coagulation (DIC): Development, external validation, and comparison to scoring systems
title_sort machine learning-based diagnosis for disseminated intravascular coagulation (dic): development, external validation, and comparison to scoring systems
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5931474/
https://www.ncbi.nlm.nih.gov/pubmed/29718941
http://dx.doi.org/10.1371/journal.pone.0195861
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