Becker N G
School of Mathematical and Statistical Sciences, La Trobe University, Bundoora, Australia.
Stat Methods Med Res. 1997 Mar;6(1):24-37. doi: 10.1177/096228029700600103.
The analysis of data on infectious diseases is a natural setting for applications of the EM algorithm, because the infection process is only partially observable. Difficulties in determining the expectation at the E step have been side-stepped by adopting pragmatic models which reflect only part of the mechanism that generates the data. In the HIV/AIDS context the EM algorithm has helped in the reconstruction of the unobserved HIV infection curve, the so-called backprojection problem, as well as in the estimation of the distribution for the incubation period until AIDS, in estimating the infectivity of HIV in partnerships and in estimating parameters describing the decline in the immune system. There is a need for smooth estimates of functions in these applications, suggesting the use of the EMS algorithm or use of the EM algorithm to maximize a penalized likelihood. For data on other infectious diseases the application of the EM algorithm has so far been restricted to analyses of data on the size of outbreaks in a sample of households.
对传染病数据进行分析是期望最大化(EM)算法应用的自然场景,因为感染过程只是部分可观察的。通过采用仅反映生成数据部分机制的实用模型,回避了在期望最大化(E)步骤中确定期望值的困难。在人类免疫缺陷病毒/获得性免疫综合征(HIV/AIDS)背景下,EM算法有助于重建未观察到的HIV感染曲线(即所谓的反向投影问题),以及估计直至艾滋病的潜伏期分布、估计HIV在伴侣关系中的传染性和估计描述免疫系统衰退的参数。在这些应用中,需要对函数进行平滑估计,这表明可使用期望最大化平滑(EMS)算法或使用EM算法来最大化惩罚似然。对于其他传染病的数据,到目前为止,EM算法的应用仅限于对家庭样本中疫情规模数据的分析。