Literature DB >> 28088628

Methods needed to measure predictive accuracy: A study of diabetic patients.

Hafiz M R Khan1, Sarah Mende2, Aamrin Rafiq3, Kemesha Gabbidon4, P Hemachandra Reddy5.   

Abstract

Diabetes is one of the leading causes of morbidity and mortality and it can result in several complications such as kidney failure, heart failure, stroke, and blindness making it a major medical and public health concern in the United States. Statistical methods are important to detect risk factors and identify the best sampling plan to determine predictive bounds for diabetic patients' data. The main objective of this paper is to identify the best fit bootstrapping sampling method and to draw the predictive bound considering diabetes patient data. A random sample was used from the National Health and Nutritional Examination Survey (NHANES) for this study. We found that there were significant relationships between age, marital status, and race/ethnicity with diabetes status (p<0.001) and no relationship was observed between gender and diabetes status. We ran the logistic regression to identify the risk factors from the data. We identified that the significant risk factors are age (p<0.001), total protein (p<0.001), fast food (p<0.0339), and direct HDL (p<0.001). This study provides evidence that the parametric bootstrapping method is the best fit method compared with other methods to estimate the predictive error bounds. These findings will be of great significance for identifying the best sampling methods, which can increase the statistical accuracy of laboratory clinical research of diabetes. This will also allow for the determination of precise risk factors that will best represent the data by detecting mild and extreme outliers from disease observations. Therefore, these results will be useful for researchers and clinicians to select the best sampling methods to study diabetes and other diseases in order to maximize the accuracy of their results. This article is part of a Special Issue entitled: Oxidative Stress and Mitochondrial Quality in Diabetes/Obesity and Critical Illness Spectrum of Diseases - edited by P. Hemachandra Reddy.
Copyright © 2017 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Bootstrapping sampling methods; Diabetes; Predictive errors

Mesh:

Year:  2017        PMID: 28088628      PMCID: PMC5429869          DOI: 10.1016/j.bbadis.2017.01.007

Source DB:  PubMed          Journal:  Biochim Biophys Acta Mol Basis Dis        ISSN: 0925-4439            Impact factor:   5.187


  18 in total

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Review 3.  Diabetes and ethnic minorities.

Authors:  J Oldroyd; M Banerjee; A Heald; K Cruickshank
Journal:  Postgrad Med J       Date:  2005-08       Impact factor: 2.401

4.  Characteristics of an adult population with newly diagnosed type 2 diabetes: the relation of obesity and age of onset.

Authors:  T A Hillier; K L Pedula
Journal:  Diabetes Care       Date:  2001-09       Impact factor: 19.112

5.  Association of lipid and lipoprotein profiles with future development of type 2 diabetes in nondiabetic Korean subjects: a 4-year retrospective, longitudinal study.

Authors:  Mi Hae Seo; Ji Cheol Bae; Se Eun Park; Eun Jung Rhee; Cheol Young Park; Ki Won Oh; Sung Woo Park; Sun Woo Kim; Won-Young Lee
Journal:  J Clin Endocrinol Metab       Date:  2011-10-12       Impact factor: 5.958

Review 6.  Definitions (and Current Controversies) of Diabetes and Prediabetes.

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Journal:  Curr Diabetes Rev       Date:  2016

7.  Management and 1 year outcome for UK children with type 2 diabetes.

Authors:  J P H Shield; R Lynn; K C Wan; L Haines; T G Barrett
Journal:  Arch Dis Child       Date:  2008-10-06       Impact factor: 3.791

8.  Differences in A1C by race and ethnicity among patients with impaired glucose tolerance in the Diabetes Prevention Program.

Authors:  William H Herman; Yong Ma; Gabriel Uwaifo; Steven Haffner; Steven E Kahn; Edward S Horton; John M Lachin; Maria G Montez; Tina Brenneman; Elizabeth Barrett-Connor
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9.  The age-specific quantitative effects of metabolic risk factors on cardiovascular diseases and diabetes: a pooled analysis.

Authors:  Gitanjali M Singh; Goodarz Danaei; Farshad Farzadfar; Gretchen A Stevens; Mark Woodward; David Wormser; Stephen Kaptoge; Gary Whitlock; Qing Qiao; Sarah Lewington; Emanuele Di Angelantonio; Stephen Vander Hoorn; Carlene M M Lawes; Mohammed K Ali; Dariush Mozaffarian; Majid Ezzati
Journal:  PLoS One       Date:  2013-07-30       Impact factor: 3.240

10.  Resting heart rate as a low tech predictor of coronary events in women: prospective cohort study.

Authors:  Judith Hsia; Joseph C Larson; Judith K Ockene; Gloria E Sarto; Matthew A Allison; Susan L Hendrix; Jennifer G Robinson; Andrea Z LaCroix; JoAnn E Manson
Journal:  BMJ       Date:  2009-02-03
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  1 in total

1.  A New Way of Investigating the Relationship Between Fasting Blood Sugar Level and Drinking Glucose Solution.

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  1 in total

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