Background : In December 2019, some cases of pneumonia with unknown etiology were identified in Wuhan, Hubei province in China. The World Health Organization (WHO) has named this disease as COVID-19, standing for ``2019 coronavirus disease", and announced the disease have become a public health incident on December 31, 2019. This study aimed to investigate the conditional distribution of the incubation period of COVID-19 on the age of infected cases, and estimate its corresponding conditional quantiles from information on 2172 confirmed cases from 29 provinces outside Hubei in China.
Methods : We collected data including the infection dates, onset dates, and ages of the confirmed cases from the websites of the centres of disease control, or the daily public reports through February 16th, 2020. A new maximum likelihood method was developed to account for the biased sampling, or right truncation, issue of the data as the epidemic is still ongoing. The estimators can be shown to be consistent asymptotically under mild conditions.
Results : Based on the collected data, we found that the conditional quantiles of the incubation period distribution of COVID-19 varies over ages. In detail, the high conditional quantiles of people in the middle age group are shorter than those of others. We estimated that the 0.95-th quantile related to people in the age group 23$\sim$55 is less than 15 days.
Conclusions : Observing that the conditional quantiles vary over ages, we may take more precise measures for people of different ages. For example, we may consider carrying out an age-dependent quarantine duration, rather than a uniform 14-days quarantine, in practice. Remarkably, we may need to extend the current quarantine duration for people aged $0\sim22$ and over 55 because the related 0.95-th quantiles are much greater than 14 days.