Keyword search (4,164 papers available)

"epidemiology" Keyword-tagged Publications:

Title Authors PubMed ID
1 Updated Status of Physical Activity Research for People With Traumatic Brain Injury Quilico EL; Driver SJ; 41606762
CONCORDIA
2 Impact of COVID-19 on incidence and trends of adverse events among hospitalised patients in Calgary, Canada: a retrospective chart review study Wu G; Eastwood CA; Cheligeer C; Southern DA; Zeng Y; Ghali WA; Bakal JA; Boussat B; Flemons W; Forster A; Xu Y; Quan H; 41592994
CONCORDIA
3 Effect of body image perception and skin-lightening practices on mental health of Filipino emerging adults: a mixed-methods approach protocol Regencia ZJG; Gouin JP; Ladia MAJ; Montoya JC; Baja ES; 37192806
PSYCHOLOGY
4 Geospatial analysis reveals a hotspot of fecal bacteria in Canadian prairie lakes linked to agricultural non-point sources Oliva A; Onana VE; Garner RE; Kraemer SA; Fradette M; Walsh DA; Huot Y; 36653256
BIOLOGY
5 Body-composition phenotypes and their associations with cardiometabolic risks and health behaviours in a representative general US sample Kakinami L; Plummer S; Cohen TR; Santosa S; Murphy J; 36183799
PERFORM
6 Household income and maternal education in early childhood and activity-limiting chronic health conditions in late childhood: findings from birth cohort studies from six countries Spencer NJ; Ludvigsson J; You Y; Francis K; Abu Awad Y; Markham W; Faresjö T; Goldhaber-Fiebert J; Andersson White P; Raat H; Mensah F; Gauvin L; McGrath JJ; 35863874
PERFORM
7 Comparison of different severe obesity definitions in predicting future cardiometabolic risk in a longitudinal cohort of children Kakinami L; Smyrnova A; Paradis G; Tremblay A; Henderson M; 35705336
PERFORM
8 COVID-19-Related Concerns and Symptoms of Anxiety: Does Concern Play a Role in Predicting Severity and Risk? Benzouak T; Gunpat S; Briner EL; Thake J; Kisely S; Rao S; 34987892
PSYCHOLOGY
9 The occurrence of potentially pathogenic fungi and protists in Canadian lakes predicted using geomatics, in situ and satellite-derived variables: Towards a tele-epidemiological approach Oliva A; Garner RE; Walsh D; Huot Y; 34915335
BIOLOGY
10 Discovery of new vascular disrupting agents based on evolutionarily conserved drug action, pesticide resistance mutations, and humanized yeast Garge RK; Cha HJ; Lee C; Gollihar JD; Kachroo AH; Wallingford JB; Marcotte EM; 34849907
BIOLOGY
11 Overestimation of Postpartum Depression Prevalence Based on a 5-item Version of the EPDS: Systematic Review and Individual Participant Data Meta-analysis Thombs BD; Levis B; Lyubenova A; Neupane D; Negeri Z; Wu Y; Sun Y; He C; Krishnan A; Vigod SN; Bhandari PM; Imran M; Rice DB; Azar M; Chiovitti MJ; Saadat N; Riehm KE; Boruff JT; Cuijpers P; Gilbody S; Ioannidis JPA; Kloda LA; Patten SB; Shrier I; Ziegelstein RC; Comeau L; Mitchell ND; Tonelli M; Barnes J; Beck CT; Bindt C; Figueiredo B; Helle N; Howard LM; Kohlhoff J; Kozinszky Z; Leonardou AA; Radoš SN; Quispel C; Rochat TJ; Stein A; Stewart RC; Tadinac M; Tandon SD; Tendais I; Töreki A; Tran TD; Trevillion K; Turner K; Vega-Dienstmaier JM; Benedetti A; 33104415
LIBRARY
12 Weight cycling is associated with adverse cardiometabolic markers in a cross-sectional representative US sample Kakinami L; Knäuper B; Brunet J; 32366587
PERFORM
13 Income inequality and social gradients in children's height: a comparison of cohort studies from five high-income countries. Bird PK, Pickett KE, Graham H, Faresjö T, Jaddoe VWV, Ludvigsson J, Raat H, Seguin L, Wijtzes AI, McGrath JJ 31909223
PSYCHOLOGY

 

Title:Body-composition phenotypes and their associations with cardiometabolic risks and health behaviours in a representative general US sample
Authors:Kakinami LPlummer SCohen TRSantosa SMurphy J
Link:https://pubmed.ncbi.nlm.nih.gov/36183799/
DOI:10.1016/j.ypmed.2022.107282
Publication:Preventive medicine
Keywords:Body compositionCardiometabolic riskEpidemiologyNHANESPhenotype
PMID:36183799 Category: Date Added:2022-10-03
Dept Affiliation: PERFORM
1 Department of Mathematics and Statistics, Concordia University, Montreal, Quebec, Canada; PERFORM Centre, Concordia University, Montreal, Quebec, Canada. Electronic address: lisa.kakinami@concordia.ca.
2 Department of Chemistry, Concordia University, Montreal, Quebec, Canada.
3 Faculty of Land and Food Systems, Food, Nutrition and Health, University of British Columbia, Vancouver, British Columbia, Canada.
4 PERFORM Centre, Concordia University, Montreal, Quebec, Canada; Department of Health, Kinesiology, and Applied Physiology, Concordia University, Montreal, Quebec, Canada; Metabolism, Obesity, Nutrition Lab, PERFORM Centre, Concordia University, Montreal, Quebec, Canada.
5 Department of Health, Kinesiology, and Applied Physiology, Concordia University, Montreal, Quebec, Canada; Metabolism, Obesity, Nutrition Lab, PERFORM Centre, Concordia University, Montreal, Quebec, Canada.

Description:

Body mass index is poor at distinguishing between adiposity and muscle. Based on dual energy X-ray absorptiometry data, a diagnostic framework to analyze body composition by categorizing fat- and muscle-mass body composition into four phenotypes has been proposed. The objective of this study was to assess the association between body-composition phenotypes with adiposity measures, health behaviours and cardiometabolic risks in a representative U.S. adult population. Data were from NHANES (1999-2006: n = 9867; 2011-2018: n = 10,454). Four phenotypes based on being above/below the 50th percentile of age- and sex- adjusted reference curves of fat-mass and muscle-mass were identified. Multiple linear and logistic regressions were used to assess phenotypes (high [H] or low [L] adiposity [A] or muscle mass [M]) against adiposity measures, health behaviours, cardiometabolic risk, and dietary intake. Low-adiposity/high-muscle (LA-HM) was the referent. Analyses incorporated the complex sampling design and survey weights, and were adjusted for age, sex, race, and education. Compared to the LA-HM reference group, the HA-LM phenotype was less physically active, had higher total and lower high-density lipoprotein cholesterol, and had lower intake of all examined nutrients (all p < 0.01). For the HA-HM phenotype, unfavourable values were detected for all adiposity and cardiometabolic measures compared to the LA-HM phenotype (all p < 0.01). The two high adiposity phenotypes were associated with poorer health behaviours and cardiovascular risk factors, regardless of muscle-mass, but associations differed across the phenotypes. Results further underscores the importance of accounting for both adiposity and muscle mass in measurement and analysis. Further longitudinal investigation is needed.





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