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Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis

BACKGROUND: The National Institute for Health and Care Excellence (NICE) recommends that GPs use routinely available data to identify patients most at risk of death and ill health from living in cold homes. AIM: To investigate whether sociodemographic characteristics, clinical factors, and house ene...

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Autores principales: Tammes, Peter, Sartini, Claudio, Preston, Ian, Hay, Alastair D, Lasserson, Daniel, Morris, Richard W
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Royal College of General Practitioners 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5819980/
https://www.ncbi.nlm.nih.gov/pubmed/29378699
http://dx.doi.org/10.3399/bjgp18X694829
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author Tammes, Peter
Sartini, Claudio
Preston, Ian
Hay, Alastair D
Lasserson, Daniel
Morris, Richard W
author_facet Tammes, Peter
Sartini, Claudio
Preston, Ian
Hay, Alastair D
Lasserson, Daniel
Morris, Richard W
author_sort Tammes, Peter
collection PubMed
description BACKGROUND: The National Institute for Health and Care Excellence (NICE) recommends that GPs use routinely available data to identify patients most at risk of death and ill health from living in cold homes. AIM: To investigate whether sociodemographic characteristics, clinical factors, and house energy efficiency characteristics could predict cold-related mortality. DESIGN AND SETTING: A case-crossover analysis was conducted on 34 777 patients aged ≥65 years from the Clinical Practice Research Datalink who died between April 2012 and March 2014. The average temperature of date of death and 3 days previously were calculated from Met Office data. The average 3-day temperature for the 28th day before/after date of death were calculated, and comparisons were made between these temperatures and those experienced around the date of death. METHOD: Conditional logistic regression was applied to estimate the odds ratio (OR) of death associated with temperature and interactions between temperature and sociodemographic characteristics, clinical factors, and house energy efficiency characteristics, expressed as relative odds ratios (RORs). RESULTS: Lower 3-day temperature was associated with higher risk of death (OR 1.011 per 1°C fall; 95% CI = 1.007 to 1.015; P<0.001). No modifying effects were observed for sociodemographic characteristics, clinical factors, and house energy efficiency characteristics. Analysis of winter deaths for causes typically associated with excess winter mortality (N = 7710) showed some evidence of a weaker effect of lower 3-day temperature for females (ROR 0.980 per 1°C, 95% CI = 0.959 to 1.002, P = 0.082), and a stronger effect for patients living in northern England (ROR 1.040 per 1°C, 95% CI = 1.013 to 1.066, P = 0.002). CONCLUSION: It is unlikely that GPs can identify older patients at highest risk of cold-related death using routinely available data, and NICE may need to refine its guidance.
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spelling pubmed-58199802018-02-21 Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis Tammes, Peter Sartini, Claudio Preston, Ian Hay, Alastair D Lasserson, Daniel Morris, Richard W Br J Gen Pract Research BACKGROUND: The National Institute for Health and Care Excellence (NICE) recommends that GPs use routinely available data to identify patients most at risk of death and ill health from living in cold homes. AIM: To investigate whether sociodemographic characteristics, clinical factors, and house energy efficiency characteristics could predict cold-related mortality. DESIGN AND SETTING: A case-crossover analysis was conducted on 34 777 patients aged ≥65 years from the Clinical Practice Research Datalink who died between April 2012 and March 2014. The average temperature of date of death and 3 days previously were calculated from Met Office data. The average 3-day temperature for the 28th day before/after date of death were calculated, and comparisons were made between these temperatures and those experienced around the date of death. METHOD: Conditional logistic regression was applied to estimate the odds ratio (OR) of death associated with temperature and interactions between temperature and sociodemographic characteristics, clinical factors, and house energy efficiency characteristics, expressed as relative odds ratios (RORs). RESULTS: Lower 3-day temperature was associated with higher risk of death (OR 1.011 per 1°C fall; 95% CI = 1.007 to 1.015; P<0.001). No modifying effects were observed for sociodemographic characteristics, clinical factors, and house energy efficiency characteristics. Analysis of winter deaths for causes typically associated with excess winter mortality (N = 7710) showed some evidence of a weaker effect of lower 3-day temperature for females (ROR 0.980 per 1°C, 95% CI = 0.959 to 1.002, P = 0.082), and a stronger effect for patients living in northern England (ROR 1.040 per 1°C, 95% CI = 1.013 to 1.066, P = 0.002). CONCLUSION: It is unlikely that GPs can identify older patients at highest risk of cold-related death using routinely available data, and NICE may need to refine its guidance. Royal College of General Practitioners 2018-03 2018-01-30 /pmc/articles/PMC5819980/ /pubmed/29378699 http://dx.doi.org/10.3399/bjgp18X694829 Text en © British Journal of General Practice 2018 This article is Open Access: CC BY-NC 4.0 licence (http://creativecommons.org/licences/by-nc/4.0/).
spellingShingle Research
Tammes, Peter
Sartini, Claudio
Preston, Ian
Hay, Alastair D
Lasserson, Daniel
Morris, Richard W
Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
title Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
title_full Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
title_fullStr Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
title_full_unstemmed Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
title_short Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
title_sort use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5819980/
https://www.ncbi.nlm.nih.gov/pubmed/29378699
http://dx.doi.org/10.3399/bjgp18X694829
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