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A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices

The prognosis of paraquat (PQ) poisoning is highly correlated to plasma PQ concentration, which has been identified as the most important index in PQ poisoning. This study investigated the predictive value of coagulation, liver, and kidney indices in prognosticating PQ-poisoning patients, when align...

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Autores principales: Hu, Lufeng, Li, Huaizhong, Cai, Zhennao, Lin, Feiyan, Hong, Guangliang, Chen, Huiling, Lu, Zhongqiu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5648192/
https://www.ncbi.nlm.nih.gov/pubmed/29049326
http://dx.doi.org/10.1371/journal.pone.0186427
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author Hu, Lufeng
Li, Huaizhong
Cai, Zhennao
Lin, Feiyan
Hong, Guangliang
Chen, Huiling
Lu, Zhongqiu
author_facet Hu, Lufeng
Li, Huaizhong
Cai, Zhennao
Lin, Feiyan
Hong, Guangliang
Chen, Huiling
Lu, Zhongqiu
author_sort Hu, Lufeng
collection PubMed
description The prognosis of paraquat (PQ) poisoning is highly correlated to plasma PQ concentration, which has been identified as the most important index in PQ poisoning. This study investigated the predictive value of coagulation, liver, and kidney indices in prognosticating PQ-poisoning patients, when aligned with plasma PQ concentrations. Coagulation, liver, and kidney indices were first analyzed by variance analysis, receiver operating characteristic curves, and Fisher discriminant analysis. Then, a new, intelligent, machine learning-based system was established to effectively provide prognostic analysis of PQ-poisoning patients based on a combination of the aforementioned indices. In the proposed system, an enhanced extreme learning machine wrapped with a grey wolf-optimization strategy was developed to predict the risk status from a pool of 103 patients (56 males and 47 females); of these, 52 subjects were deceased and 51 alive. The proposed method was rigorously evaluated against this real-life dataset, in terms of accuracy, Matthews correlation coefficients, sensitivity, and specificity. Additionally, the feature selection was investigated to identify correlating factors for risk status. The results demonstrated that there were significant differences in the coagulation, liver, and kidney indices between deceased and surviving subjects (p<0.05). Aspartate aminotransferase, prothrombin time, prothrombin activity, total bilirubin, direct bilirubin, indirect bilirubin, alanine aminotransferase, urea nitrogen, and creatinine were the most highly correlated indices in PQ poisoning and showed statistical significance (p<0.05) in predicting PQ-poisoning prognoses. According to the feature selection, the most important correlated indices were found to be associated with aspartate aminotransferase, the aspartate aminotransferase to alanine ratio, creatinine, prothrombin time, and prothrombin activity. The method proposed here showed excellent results that were better than that produced based on blood-PQ concentration alone. These promising results indicated that the combination of these indices can provide a new avenue for prognosticating the outcome of PQ poisoning.
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spelling pubmed-56481922017-11-03 A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices Hu, Lufeng Li, Huaizhong Cai, Zhennao Lin, Feiyan Hong, Guangliang Chen, Huiling Lu, Zhongqiu PLoS One Research Article The prognosis of paraquat (PQ) poisoning is highly correlated to plasma PQ concentration, which has been identified as the most important index in PQ poisoning. This study investigated the predictive value of coagulation, liver, and kidney indices in prognosticating PQ-poisoning patients, when aligned with plasma PQ concentrations. Coagulation, liver, and kidney indices were first analyzed by variance analysis, receiver operating characteristic curves, and Fisher discriminant analysis. Then, a new, intelligent, machine learning-based system was established to effectively provide prognostic analysis of PQ-poisoning patients based on a combination of the aforementioned indices. In the proposed system, an enhanced extreme learning machine wrapped with a grey wolf-optimization strategy was developed to predict the risk status from a pool of 103 patients (56 males and 47 females); of these, 52 subjects were deceased and 51 alive. The proposed method was rigorously evaluated against this real-life dataset, in terms of accuracy, Matthews correlation coefficients, sensitivity, and specificity. Additionally, the feature selection was investigated to identify correlating factors for risk status. The results demonstrated that there were significant differences in the coagulation, liver, and kidney indices between deceased and surviving subjects (p<0.05). Aspartate aminotransferase, prothrombin time, prothrombin activity, total bilirubin, direct bilirubin, indirect bilirubin, alanine aminotransferase, urea nitrogen, and creatinine were the most highly correlated indices in PQ poisoning and showed statistical significance (p<0.05) in predicting PQ-poisoning prognoses. According to the feature selection, the most important correlated indices were found to be associated with aspartate aminotransferase, the aspartate aminotransferase to alanine ratio, creatinine, prothrombin time, and prothrombin activity. The method proposed here showed excellent results that were better than that produced based on blood-PQ concentration alone. These promising results indicated that the combination of these indices can provide a new avenue for prognosticating the outcome of PQ poisoning. Public Library of Science 2017-10-19 /pmc/articles/PMC5648192/ /pubmed/29049326 http://dx.doi.org/10.1371/journal.pone.0186427 Text en © 2017 Hu 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
Hu, Lufeng
Li, Huaizhong
Cai, Zhennao
Lin, Feiyan
Hong, Guangliang
Chen, Huiling
Lu, Zhongqiu
A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices
title A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices
title_full A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices
title_fullStr A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices
title_full_unstemmed A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices
title_short A new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices
title_sort new machine-learning method to prognosticate paraquat poisoned patients by combining coagulation, liver, and kidney indices
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5648192/
https://www.ncbi.nlm.nih.gov/pubmed/29049326
http://dx.doi.org/10.1371/journal.pone.0186427
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