Godde Kanya
Sociology/Anthropology Department, University of La Verne, La Verne, CA 91750, USA.
Department of Anthropology, University of Tennessee, Knoxville, Knoxville, TN, USA.
AIMS Public Health. 2017 Jun 7;4(3):278-288. doi: 10.3934/publichealth.2017.3.278. eCollection 2017.
The aim of this study is to examine how well different informative priors model age-at-death in Bayesian statistics, which will shed light on how the skeleton ages, particularly at the sacroiliac joint. Data from four samples were compared for their performance as informative priors for auricular surface age-at-death estimation: (1) American population from US Census data; (2) county data from the US Census data; (3) a local cemetery; and (4) a skeletal collection. The skeletal collection and cemetery are located within the county that was sampled. A Gompertz model was applied to compare survivorship across the four samples. Transition analysis parameters, coupled with the generated Gompertz parameters, were input into Bayes' theorem to generate highest posterior density ranges from posterior density functions. Transition analysis describes the age at which an individual transitions from one age phase to another. The result is age ranges that should describe the chronological age of 90% of the individuals who fall in a particular phase. Cumulative binomial tests indicate the method performed lower than 90% at capturing chronological age as assigned to a biological phase, despite wide age ranges at older ages. The samples performed similarly overall, despite small differences in survivorship. Collectively, these results show that as we age, the senescence pattern becomes more variable. More local samples performed better at describing the aging process than more general samples, which implies practitioners need to consider sample selection when using the literature to diagnose and work with patients with sacroiliac joint pain.
本研究的目的是检验在贝叶斯统计中不同的信息先验如何很好地模拟死亡年龄,这将有助于揭示骨骼的老化方式,特别是在骶髂关节处。比较了来自四个样本的数据作为耳状面死亡年龄估计的信息先验的性能:(1)来自美国人口普查数据的美国人群;(2)来自美国人口普查数据的县数据;(3)一个当地墓地;以及(4)一个骨骼样本集。骨骼样本集和墓地位于被采样的县内。应用Gompertz模型比较四个样本的生存率。将转移分析参数与生成的Gompertz参数相结合,输入贝叶斯定理,以从后验密度函数生成最高后验密度范围。转移分析描述了个体从一个年龄阶段过渡到另一个年龄阶段的年龄。结果是年龄范围,该范围应描述处于特定阶段的90%个体的实际年龄。累积二项式检验表明,尽管老年时年龄范围较宽,但该方法在捕捉分配给生物阶段的实际年龄方面的表现低于90%。尽管生存率存在微小差异,但样本的总体表现相似。总体而言,这些结果表明,随着年龄的增长,衰老模式变得更加多变。更多的本地样本在描述衰老过程方面比更一般的样本表现更好,这意味着从业者在使用文献诊断和治疗骶髂关节疼痛患者时需要考虑样本选择。