population segmentation
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2021 ◽  
Vol 21 (1) ◽  
Author(s):  
Jun Jie Benjamin Seng ◽  
Amelia Yuting Monteiro ◽  
Yu Heng Kwan ◽  
Sueziani Binte Zainudin ◽  
Chuen Seng Tan ◽  
...  

Abstract Background Population segmentation permits the division of a heterogeneous population into relatively homogenous subgroups. This scoping review aims to summarize the clinical applications of data driven and expert driven population segmentation among Type 2 diabetes mellitus (T2DM) patients. Methods The literature search was conducted in Medline®, Embase®, Scopus® and PsycInfo®. Articles which utilized expert-based or data-driven population segmentation methodologies for evaluation of outcomes among T2DM patients were included. Population segmentation variables were grouped into five domains (socio-demographic, diabetes related, non-diabetes medical related, psychiatric / psychological and health system related variables). A framework for PopulAtion Segmentation Study design for T2DM patients (PASS-T2DM) was proposed. Results Of 155,124 articles screened, 148 articles were included. Expert driven population segmentation approach was most commonly used, of which judgemental splitting was the main strategy employed (n = 111, 75.0%). Cluster based analyses (n = 37, 25.0%) was the main data driven population segmentation strategies utilized. Socio-demographic (n = 66, 44.6%), diabetes related (n = 54, 36.5%) and non-diabetes medical related (n = 18, 12.2%) were the most used domains. Specifically, patients’ race, age, Hba1c related parameters and depression / anxiety related variables were most frequently used. Health grouping/profiling (n = 71, 48%), assessment of diabetes related complications (n = 57, 38.5%) and non-diabetes metabolic derangements (n = 42, 28.4%) were the most frequent population segmentation objectives of the studies. Conclusions Population segmentation has a wide range of clinical applications for evaluating clinical outcomes among T2DM patients. More studies are required to identify the optimal set of population segmentation framework for T2DM patients.


Author(s):  
Jia Loon Chong ◽  
David Bruce Matchar ◽  
Yuyang Tan ◽  
Shalini Sri Kumaran ◽  
Mihir Gandhi ◽  
...  

2019 ◽  
Vol 22 ◽  
pp. 100192 ◽  
Author(s):  
R.M. Wood ◽  
B.J. Murch ◽  
R.C. Betteridge

2019 ◽  
Vol 8 (1) ◽  
Author(s):  
Jia Loon Chong ◽  
Ka Keat Lim ◽  
David Bruce Matchar

2019 ◽  
Vol 10 ◽  
pp. 215013271982931 ◽  
Author(s):  
Yan Li ◽  
Foram Jasani ◽  
Dejun Su ◽  
Donglan Zhang ◽  
Lizheng Shi ◽  
...  

Objective: Nearly one-third of adults in New York City (NYC) have high blood pressure and many social, economic, and behavioral factors may influence nonadherence to antihypertensive medication. The objective of this study is to identify profiles of adults who are not taking antihypertensive medications despite being advised to do so. Methods: We used a machine learning–based population segmentation approach to identify population profiles related to nonadherence to antihypertensive medication. We used data from the 2016 NYC Community Health Survey to identify and segment adults into subgroups according to their level of nonadherence to antihypertensive medications. Results: We found that more than 10% of adults in NYC were not taking antihypertensive medications despite being advised to do so by their health care providers. We identified age, neighborhood poverty, diabetes, household income, health insurance coverage, and race/ethnicity as important characteristics that can be used to predict nonadherence behaviors as well as used to segment adults with hypertension into 10 subgroups. Conclusions: Identifying segments of adults who do not adhere to hypertensive medications has practical implications as this knowledge can be used to develop targeted interventions to address this population health management challenge and reduce health disparities.


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