Rowe Alexander K, Powell Kenneth E, Flanders W Dana
Division of Adult and Community Health, National Center for Chronic Disease Prevention and Health Promotion, Centers for Disease Control and Prevention, Atlanta, Georgia 30341-3724, USA.
Am J Prev Med. 2004 Apr;26(3):243-9. doi: 10.1016/j.amepre.2003.12.007.
Population attributable fractions (PAFs) are useful for estimating the proportion of disease cases that could be prevented if risk factors were reduced or eliminated. For diseases with multiple risk factors, PAFs of individual risk factors can sum to more than 1, a result suggesting the impossible situation in which more than 100% of cases are preventable.
A hypothetical example in which risk factors for a disease were eliminated in different sequences was analyzed to show why PAFs can sum to more than 1.
PAF estimates assume each risk factor is the first to be eliminated, thereby describing mutually exclusive scenarios that are illogical to sum, except under special circumstances. PAFs can sum to more than 1 because some individuals with more than one risk factor can have disease prevented in more than one way, and the prevented cases of these individuals could be counted more than once. Upper and lower limits of sequential attributable fractions (SAFs) can be calculated to describe the maximum and minimum proportions of the original number of disease cases that would be prevented if a particular risk factor were eliminated.
Improved descriptions of the assumptions that underlie the PAF calculations, use of SAF limits, or multivariable PAFs would help avoid unrealistic estimates of the disease burden that would be prevented after resources are expended to reduce or eliminate multiple risk factors.
人群归因分数(PAF)有助于估计如果危险因素得以减少或消除,可预防的疾病病例比例。对于具有多个危险因素的疾病,单个危险因素的PAF之和可能超过1,这一结果暗示了一种不可能的情况,即超过100%的病例是可预防的。
分析了一个假设示例,其中以不同顺序消除疾病的危险因素,以说明PAF为何可以相加之和超过1。
PAF估计假设每个危险因素是首先要消除的,从而描述了相互排斥的情况,这些情况相加是不合逻辑的,除非在特殊情况下。PAF相加之和可能超过1,因为一些具有多个危险因素的个体的疾病可以通过多种方式预防,并且这些个体的预防病例可能会被多次计算。可以计算顺序归因分数(SAF)的上限和下限,以描述如果消除特定危险因素,最初疾病病例数中可预防的最大和最小比例。
对PAF计算所依据的假设进行改进描述、使用SAF限值或多变量PAF,将有助于避免在花费资源减少或消除多个危险因素后,对可预防的疾病负担进行不切实际的估计。