Keyword search (4,163 papers available)

"diabetes" Keyword-tagged Publications:

Title Authors PubMed ID
1 Beyond the wound: A scoping review of the psychosocial impact of diabetes-related foot ulcers Hanlon M; McGuire BE; MacGilchrist C; Kirwan E; Neachtain DN; Dhatariya K; Blanchette V; Durand H; Dragomir A; McIntosh C; 41721498
SOH
2 Associations of pregnancy complications with paternal cardiovascular risk: a retrospective cohort study Mussa J; Wen L; Sharafi M; Gouin JP; Rahme E; Dasgupta K; 41407531
PSYCHOLOGY
3 Regional primary preadipocyte characteristics in humans with obesity and type 2 diabetes mellitus Plissonneau C; Santosa S; 39553621
SOH
4 Actovegin improves skeletal muscle mitochondrial respiration and functional aerobic capacity in a type 1 diabetic male murine model Kosik B; Larsen S; Bergdahl A; 37913525
HKAP
5 Pilates training reduces blood pressure in older women with type 2 diabetes: A randomized controlled trial Andrade IYTP; Melo KCB; Andrade KTP; Almeida LG; Moreira SR; 35500966
HKAP
6 A Proposed Multi-Criteria Optimization Approach to Enhance Clinical Outcomes Evaluation for Diabetes Care: A Commentary Wan TTH; Matthews S; Luh H; Zeng Y; Wang Z; Yang L; 35372638
ENCS
7 Natural history and determinants of dysglycemia in Canadian children with parental obesity from ages 8-10 to 15-17 years: The QUALITY cohort Soren Harnois-Leblanc 35023257
PERFORM
8 Sex differences in regional adipose tissue depots pose different threats for the development of Type 2 diabetes in males and females Kerri Z Delaney 34985183
PERFORM
9 Glycemic extremes are related to cognitive dysfunction in children with type 1 diabetes: A meta-analysis He J; Ryder AG; Li S; Liu W; Zhu X; 29573221
PSYCHOLOGY
10 Metabolic networks of the human gut microbiota. Selber-Hnatiw S, Sultana T, Tse W, Abdollahi N, Abdullah S, Al Rahbani J, Alazar D, Alrumhein NJ, Aprikian S, Arshad R, Azuelos JD, Bernadotte D, Beswick N, Chazbey H, Church K, Ciubotaru E, D'Amato L, Del Corpo T, Deng J, Di Giulio BL, Diveeva D, Elahie E, Frank JGM, Furze E, Garner R, Gibbs V, Goldberg-Hall R, Goldman CJ, Goltsios FF, Gorjipour K, Grant T, Greco B, Guliyev N, Habrich A, Hyland H, Ibrahim N, Iozzo T, Jawaheer-Fenaoui A, Jaworski JJ, Jhajj MK, Jones J, Joyette R, Kaudeer S, Kelley S, Ki 31799915
BIOLOGY
11 Longitudinal testing of the Information-Motivation-Behavioral Skills model of self-care among adults with type 2 diabetes. Meunier S, Coulombe S, Beaulieu MD, Côté J, Lespérance F, Chiasson JL, Bherer L, Lambert J, Houle J 27373961
PERFORM

 

Title:A Proposed Multi-Criteria Optimization Approach to Enhance Clinical Outcomes Evaluation for Diabetes Care: A Commentary
Authors:Wan TTHMatthews SLuh HZeng YWang ZYang L
Link:https://pubmed.ncbi.nlm.nih.gov/35372638/
DOI:10.1177/23333928221089125
Publication:Health services research and managerial epidemiology
Keywords:diabetes care outcomesdiscipline-free statistical methodsmulti-criteria optimizationmulti-wave data analysispredictive analyticssimulation modelingtime effect
PMID:35372638 Category: Date Added:2022-04-04
Dept Affiliation: ENCS
1 Department of Healthcare Administration and Medical Informatics, Kaohsiung Medical University, Kaohsiung, Taiwan and University of Central Florida, Orlando, FL, USA.
2 Health Communication Consultants, Inc., Orlando, FL, USA.
3 College of Sciences, National Chengchi University, Taipei, Taiwan.
4 Institute for Information Systems Engineering, Concordia University, Montreal, Canada.
5 College of Engineering and Computer Science, University of Central Florida, Orlando, Florida, USA.
6 Cancer Epidemiology and Prevention Research, University of Calgary, Alberta, Canada.

Description:

There are several challenges in diabetes care management including optimizing the currently used therapies, educating patients on selfmanagement, and improving patient lifestyle and systematic healthcare barriers. The purpose of performing a systems approach to implementation science aided by artificial intelligence techniques in diabetes care is two-fold: 1) to explicate the systems approach to formulate predictive analytics that will simultaneously consider multiple input and output variables to generate an ideal decision-making solution for an optimal outcome; and 2) to incorporate contextual and ecological variations in practicing diabetes care coupled with specific health educational interventions as exogenous variables in prediction. A similar taxonomy of modeling approaches proposed by Brennon et al (2006) is formulated to examining the determinants of diabetes care outcomes in program evaluation. The discipline-free methods used in implementation science research, applied to efficiency and quality-of-care analysis are presented. Finally, we illustrate a logically formulated predictive analytics with efficiency and quality criteria included for evaluation of behavioralchange intervention programs, with the time effect included, in diabetes care and research.





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