Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches

Hypoglycemia poses a critical challenge in managing diabetes. Existing literature, while extensive, lacks a holistic perspective. This study aims to bridge this gap by combining bibliometric analysis and a comprehensive review of Bayesian analysis-related hypoglycemic issues. This study employed dat...

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Main Authors: Sharmin, Afsana Al, Zulkafli, Hani Syahida, Mohamed Ali, Nazihah, Al Mamun, Md. Abdullah, Shafrin, Rubaiya
Format: Article
Language:English
Published: Malque Publishing 2025
Online Access:http://psasir.upm.edu.my/id/eprint/119265/
http://psasir.upm.edu.my/id/eprint/119265/1/119265.pdf
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author Sharmin, Afsana Al
Zulkafli, Hani Syahida
Mohamed Ali, Nazihah
Al Mamun, Md. Abdullah
Shafrin, Rubaiya
author_facet Sharmin, Afsana Al
Zulkafli, Hani Syahida
Mohamed Ali, Nazihah
Al Mamun, Md. Abdullah
Shafrin, Rubaiya
author_sort Sharmin, Afsana Al
building UPM Institutional Repository
collection Online Access
description Hypoglycemia poses a critical challenge in managing diabetes. Existing literature, while extensive, lacks a holistic perspective. This study aims to bridge this gap by combining bibliometric analysis and a comprehensive review of Bayesian analysis-related hypoglycemic issues. This study employed data from the SCI-EXPANDED database for bibliometric analysis. The keywords "symptom" or "symptoms," "hypoglycemic" or "hypoglycemia," or "hypoglycaemia" or "hypoglycaemic," and "Diabetes" or "Diabetic" or "Diabetics" were used to locate 1,596 documents from 2000 to 2022. Document types, authorship patterns, and citation metrics were examined. Bayesian methodologies were systematically reviewed across various diabetes types and evaluated using specific assessment tools. Most of the articles published in "Endocrinology & Metabolism" contributed 37.2% of total articles, with a notable CPP2022 (Citations Per Publication (CPP)) of 35, and the main publication type were articles with an average of about six authors and over 32,000 citations in 2022. The United States (US) consistently leads in the number of published articles, followed by China, Japan, and India. Novo Nordisk led institutions with 36 publications and a substantial CPP2022 of 60.9. The comprehensive review emphasized that Bayesian statistical modeling is widely used for adult Type 1 and Type 2 diabetes but is limited in child Type 1 and absent in Gestational Diabetes (GAD) research. In contrast, Bayesian Networks (BNs) are mainly applied to adult Type 2 diabetes, with gaps in other types. Furthermore, Bayesian Neural Networks (BNNs) are prevalent in adult and child Type 1 studies but not applied to Type 2 or GAD. Since 2010, Total Publications (TP) have increased rapidly, indicating increased interest in researching hypoglycemia. Outlining potential research directions and emphasizing the transformative impact of Bayesian methodologies provides valuable insights for clinicians, researchers, and healthcare stakeholders.
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spelling upm-1192652025-08-13T00:10:16Z http://psasir.upm.edu.my/id/eprint/119265/ Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches Sharmin, Afsana Al Zulkafli, Hani Syahida Mohamed Ali, Nazihah Al Mamun, Md. Abdullah Shafrin, Rubaiya Hypoglycemia poses a critical challenge in managing diabetes. Existing literature, while extensive, lacks a holistic perspective. This study aims to bridge this gap by combining bibliometric analysis and a comprehensive review of Bayesian analysis-related hypoglycemic issues. This study employed data from the SCI-EXPANDED database for bibliometric analysis. The keywords "symptom" or "symptoms," "hypoglycemic" or "hypoglycemia," or "hypoglycaemia" or "hypoglycaemic," and "Diabetes" or "Diabetic" or "Diabetics" were used to locate 1,596 documents from 2000 to 2022. Document types, authorship patterns, and citation metrics were examined. Bayesian methodologies were systematically reviewed across various diabetes types and evaluated using specific assessment tools. Most of the articles published in "Endocrinology & Metabolism" contributed 37.2% of total articles, with a notable CPP2022 (Citations Per Publication (CPP)) of 35, and the main publication type were articles with an average of about six authors and over 32,000 citations in 2022. The United States (US) consistently leads in the number of published articles, followed by China, Japan, and India. Novo Nordisk led institutions with 36 publications and a substantial CPP2022 of 60.9. The comprehensive review emphasized that Bayesian statistical modeling is widely used for adult Type 1 and Type 2 diabetes but is limited in child Type 1 and absent in Gestational Diabetes (GAD) research. In contrast, Bayesian Networks (BNs) are mainly applied to adult Type 2 diabetes, with gaps in other types. Furthermore, Bayesian Neural Networks (BNNs) are prevalent in adult and child Type 1 studies but not applied to Type 2 or GAD. Since 2010, Total Publications (TP) have increased rapidly, indicating increased interest in researching hypoglycemia. Outlining potential research directions and emphasizing the transformative impact of Bayesian methodologies provides valuable insights for clinicians, researchers, and healthcare stakeholders. Malque Publishing 2025 Article PeerReviewed text en cc_by_nc_nd_4 http://psasir.upm.edu.my/id/eprint/119265/1/119265.pdf Sharmin, Afsana Al and Zulkafli, Hani Syahida and Mohamed Ali, Nazihah and Al Mamun, Md. Abdullah and Shafrin, Rubaiya (2025) Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches. Multidisciplinary Reviews, 8 (3). art. no. e2025081. pp. 1-12. ISSN 2595-3982 https://malque.pub/ojs/index.php/mr/article/view/5524 10.31893/multirev.2025081
spellingShingle Sharmin, Afsana Al
Zulkafli, Hani Syahida
Mohamed Ali, Nazihah
Al Mamun, Md. Abdullah
Shafrin, Rubaiya
Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches
title Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches
title_full Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches
title_fullStr Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches
title_full_unstemmed Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches
title_short Symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of Bayesian approaches
title_sort symptomatology of hypoglycemia in diabetes: a bibliometric analysis (2000-2022) of bayesian approaches
url http://psasir.upm.edu.my/id/eprint/119265/
http://psasir.upm.edu.my/id/eprint/119265/
http://psasir.upm.edu.my/id/eprint/119265/
http://psasir.upm.edu.my/id/eprint/119265/1/119265.pdf