首页> 外文期刊>The British journal of general practice: the journal of the Royal College of General Practitioners >Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis
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Use of primary care data to predict those most vulnerable to cold weather: a case-crossover analysis

机译:利用初级保健数据预测最容易受寒冷天气影响的人群:病例交叉分析

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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.
机译:背景美国国家健康与护理卓越研究所(NICE)建议全科医生使用常规可用数据来确定因在寒冷的家中生活而面临死亡和健康不良风险最大的患者。目的调查社会人口统计学特征,临床因素和房屋能源效率特征和特征可以预测与感冒相关的死亡率。设计与背景对临床实践研究数据链中于2012年4月至2014年3月死亡的34 777名≥65岁的患者进行了病例交叉分析。平均死亡日期和平均温度3岁之间。之前的天数是根据Met Office的数据计算得出的。计算死亡日期前后28天的平均3天温度,并将这些温度与死亡日期前后经历的温度进行比较。方法采用条件对数回归来估算死亡的比值比(OR)。与温度相关的死亡以及温度与社会人口统计学特征,临床因素以及房屋能源效率特征之间的相互作用,以相对比值比(ROR)表示。结果3天较低的温度与较高的死亡风险相关(OR 1.011每1°C下降; 95%CI = 1.007至1.015; P <0.001)。没有观察到社会人口统计学特征,临床因素和房屋能源效率特征的改善作用。分析冬季死亡的原因通常与冬季死亡率过高有关(N = 7710),显示一些证据表明较低的3天温度对女性的影响较弱(ROR 0.980 / 1°C,95%CI = 0.959至1.002,P = 0.082),对居住在英格兰北部的患者效果更佳(ROR 1.040 / 1°C,95%CI = 1.013至1.066,P = 0.002)。结论GP不太可能识别出患感冒风险最高的老年患者使用常规可用数据进行死亡相关的调查,NICE可能需要完善其指南。

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