A model to predict the results of changes in smoking behaviour on smoking prevalence.

John Kemm
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引用次数: 11

Abstract

Background: Data are available on the prevalence of smoking states (never, current and ex). However, data on behaviour change rates (starting - never to current, quitting - current to ex and lapsing - ex to current) are not readily available and cannot be simply derived from or related to prevalence data.

Method: A model was constructed to relate prevalence of smoking states to behaviour change rates. It was populated with prevalence of smoking status taken from the General Household Survey together with population structure, age- and sex-specific death rates, and birth rates for England and Wales. This model could be used to calculate past behaviour change given observed prevalence of smoking states or future prevalence of smoking given predicted rates of behaviour change.

Results: To fit data it was necessary to assume that as they age some ex smokers reclassify themselves as never smokers. In the age band 16-19 years about 9 percent of never smokers start smoking, and about 5 percent of current smokers quit. In the age band 20-24 years the corresponding figures for starting are about 4 percent in males and 2 percent in females, and for quitting about 2 percent in both. In older age bands the percentages starting are zero or less than zero (indicating reclassifying), and the percentage quitting rises with age. Net lapsing (shift from ex to current) occurred very infrequently and is quantitatively unimportant. If the current starting, quitting and lapsing rates are maintained the Smoking kills target will not be met. Future prevalence of smoking under different scenarios is examined.

Conclusion: The model is useful in calculating the proportions changing smoking state from serial cross-sectional data on prevalence and for predicting future prevalence.

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预测吸烟行为变化对吸烟率影响的模型。
背景:有关于吸烟状态(从不吸烟、现在吸烟和曾经吸烟)患病率的数据。然而,关于行为改变率的数据(开始-从不到目前,戒烟-从现在到现在以及从过去到现在)并不容易获得,不能简单地从流行数据中得出或与之相关。方法:建立吸烟状态患病率与行为改变率之间的关系模型。研究人员从家庭综合调查中获取了吸烟的流行状况,以及英格兰和威尔士的人口结构、特定年龄和性别的死亡率和出生率。这个模型可以用来计算过去吸烟状态下的行为变化,或者根据预测的行为改变率来计算未来吸烟的流行程度。结果:为了拟合数据,有必要假设随着年龄的增长,一些前吸烟者将自己重新归类为从不吸烟者。在16-19岁年龄段中,从不吸烟的人中约有9%开始吸烟,目前吸烟者中约有5%戒烟。在20-24岁年龄段中,男性开始吸烟的比例约为4%,女性为2%,两者的戒烟比例均为2%。在年龄较大的年龄组中,开始吸烟的百分比为零或小于零(表明重新分类),戒烟的百分比随着年龄的增长而上升。净损耗(从电流转移到电流)很少发生,在数量上也不重要。如果保持目前的开始、戒烟和戒烟率,吸烟致死目标将无法实现。研究了未来不同情景下的吸烟流行率。结论:该模型可用于从流行率的连续横断面数据中计算吸烟状态变化的比例和预测未来流行率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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