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Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus

BACKGROUND: The explosive increase in medical literature has changed therapeutic strategies, but it is challenging for physicians to keep up-to-date on the medical literature. Scientific literature data mining on a large-scale of can be used to refresh physician knowledge and better improve the qual...

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Autores principales: Shu, Jing-xian, Li, Ying, He, Ting, Chen, Ling, Li, Xue, Zou, Lin-lin, Yin, Lu, Li, Xiao-hui, Wang, An-li, Liu, Xing, Yuan, Hong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: International Scientific Literature, Inc. 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5769362/
https://www.ncbi.nlm.nih.gov/pubmed/29306956
http://dx.doi.org/10.12659/MSM.907015
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author Shu, Jing-xian
Li, Ying
He, Ting
Chen, Ling
Li, Xue
Zou, Lin-lin
Yin, Lu
Li, Xiao-hui
Wang, An-li
Liu, Xing
Yuan, Hong
author_facet Shu, Jing-xian
Li, Ying
He, Ting
Chen, Ling
Li, Xue
Zou, Lin-lin
Yin, Lu
Li, Xiao-hui
Wang, An-li
Liu, Xing
Yuan, Hong
author_sort Shu, Jing-xian
collection PubMed
description BACKGROUND: The explosive increase in medical literature has changed therapeutic strategies, but it is challenging for physicians to keep up-to-date on the medical literature. Scientific literature data mining on a large-scale of can be used to refresh physician knowledge and better improve the quality of disease treatment. MATERIAL/METHODS: This paper reports on a reformulated version of a data mining method called MedRank, which is a network-based algorithm that ranks therapy for a target disease based on the MEDLINE literature database. MedRank algorithm input for this study was a clear definition of the disease model; the algorithm output was the accurate recommendation of antihypertensive drugs. Hypertension with diabetes mellitus was chosen as the input disease model. The ranking output of antihypertensive drugs are based on the Joint National Committee (JNC) guidelines, one through eight, and the publication dates, ≤1977, ≤1980, ≤1984, ≤1988, ≤1993, ≤1997, ≤2003, and ≤2013. The McNemar’s test was used to evaluate the efficacy of MedRank based on specific JNC guidelines. RESULTS: The ranking order of antihypertensive drugs changed with the date of the published literature, and the MedRank algorithm drug recommendations had excellent consistency with the JNC guidelines in 2013 (P=1.00 from McNemar’s test, Kappa=0.78, P=1.00). Moreover, the Kappa index increased over time. Sensitivity was better than specificity for MedRank; in addition, sensitivity was maintained at a high level, and specificity increased from 1997 to 2013. CONCLUSIONS: The use of MedRank in ranking medical literature on hypertension with diabetes mellitus in our study suggests possible application in clinical practice; it is a potential method for supporting antihypertensive drug-prescription decisions.
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spelling pubmed-57693622018-01-19 Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus Shu, Jing-xian Li, Ying He, Ting Chen, Ling Li, Xue Zou, Lin-lin Yin, Lu Li, Xiao-hui Wang, An-li Liu, Xing Yuan, Hong Med Sci Monit Clinical Research BACKGROUND: The explosive increase in medical literature has changed therapeutic strategies, but it is challenging for physicians to keep up-to-date on the medical literature. Scientific literature data mining on a large-scale of can be used to refresh physician knowledge and better improve the quality of disease treatment. MATERIAL/METHODS: This paper reports on a reformulated version of a data mining method called MedRank, which is a network-based algorithm that ranks therapy for a target disease based on the MEDLINE literature database. MedRank algorithm input for this study was a clear definition of the disease model; the algorithm output was the accurate recommendation of antihypertensive drugs. Hypertension with diabetes mellitus was chosen as the input disease model. The ranking output of antihypertensive drugs are based on the Joint National Committee (JNC) guidelines, one through eight, and the publication dates, ≤1977, ≤1980, ≤1984, ≤1988, ≤1993, ≤1997, ≤2003, and ≤2013. The McNemar’s test was used to evaluate the efficacy of MedRank based on specific JNC guidelines. RESULTS: The ranking order of antihypertensive drugs changed with the date of the published literature, and the MedRank algorithm drug recommendations had excellent consistency with the JNC guidelines in 2013 (P=1.00 from McNemar’s test, Kappa=0.78, P=1.00). Moreover, the Kappa index increased over time. Sensitivity was better than specificity for MedRank; in addition, sensitivity was maintained at a high level, and specificity increased from 1997 to 2013. CONCLUSIONS: The use of MedRank in ranking medical literature on hypertension with diabetes mellitus in our study suggests possible application in clinical practice; it is a potential method for supporting antihypertensive drug-prescription decisions. International Scientific Literature, Inc. 2018-01-07 /pmc/articles/PMC5769362/ /pubmed/29306956 http://dx.doi.org/10.12659/MSM.907015 Text en © Med Sci Monit, 2018 This work is licensed under Creative Common Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) )
spellingShingle Clinical Research
Shu, Jing-xian
Li, Ying
He, Ting
Chen, Ling
Li, Xue
Zou, Lin-lin
Yin, Lu
Li, Xiao-hui
Wang, An-li
Liu, Xing
Yuan, Hong
Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus
title Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus
title_full Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus
title_fullStr Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus
title_full_unstemmed Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus
title_short Applying a “Big Data” Literature System to Recommend Antihypertensive Drugs for Hypertension Patients with Diabetes Mellitus
title_sort applying a “big data” literature system to recommend antihypertensive drugs for hypertension patients with diabetes mellitus
topic Clinical Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5769362/
https://www.ncbi.nlm.nih.gov/pubmed/29306956
http://dx.doi.org/10.12659/MSM.907015
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