Idaho National Laboratory, 2525 N. Fremont Ave., Idaho Falls, ID 83415, USA.
Jet Propulsion Laboratory, California Institute of Technology, 4800 Oak Grove Dr., Pasdena, CA 91109, USA.
Life Sci Space Res (Amst). 2021 Aug;30:39-44. doi: 10.1016/j.lssr.2021.05.001. Epub 2021 May 17.
Planetary Protection is applicable for missions to biologically sensitive targets of interest in the solar system. For robotic missions landing on the Martian surface, Earth-based biological contamination must be reduced, controlled, and monitored to adhere to forward planetary protection requirements. To address the overall biological load limit and microbial density requirements per spacecraft each component is tracked based on its manufacturing pedigree and/or directly assessed using a direct sampling technique with either a swab or wipe. The tracking and reporting of requirements compliance has varied from mission to mission and reporting of numbers has consistently leaned towards the conservative worst-case scenario. With an increase in the number of missions and mission complexities, the need to establish a technically sound, statistical, and biological solution that provides a single point solution which addresses the distribution of spacecraft contamination becomes critical. Select components of the InSight mission, launched in 2018, have been used as a test case to evaluate the efficacy of applying Bayesian statistics to planetary protection data sets. Eight representative components covering the various bounding cases of high and low surface area, biological count, and sampling devices were analyzed as well as an assembly level case to evaluate the rollup of directly sampled and manufacturing pedigree components. A Bayesian approach was developed leveraging different priors from the zero-inflated data sets and compared to the heritage and existing NASA bioburden assessment approaches. In addition, several non-informative priors were evaluated for use in performing bioburden calculations. The results have demonstrated a viable framework to enable a Bayesian statistical approach to be further developed and utilized for planetary protection requirements assessment.
行星保护适用于对太阳系中具有生物敏感性的目标任务。对于在火星表面着陆的机器人任务,必须减少、控制和监测地球生物污染,以符合行星保护的要求。为了满足总体生物负载限制和每个航天器的微生物密度要求,每个组件都根据其制造血统进行跟踪,或者直接使用拭子或擦拭物进行直接采样技术进行直接评估。要求遵守情况的跟踪和报告因任务而异,并且报告的数字一直偏向于保守的最坏情况。随着任务数量和任务复杂性的增加,有必要建立一个技术上合理、统计上和生物学上的解决方案,提供一个单一的解决方案,解决航天器污染的分布问题变得至关重要。2018 年发射的洞察号任务的部分组件已被用作评估将贝叶斯统计应用于行星保护数据集的有效性的测试案例。分析了覆盖高和低表面积、生物计数和采样设备各种边界情况的 8 个代表性组件,以及一个组装级别的案例,以评估直接采样和制造血统组件的汇总情况。利用零膨胀数据集的不同先验值开发了贝叶斯方法,并与传统和现有的美国宇航局生物负荷评估方法进行了比较。此外,还评估了几个非信息先验值,用于进行生物负荷计算。结果表明,有一个可行的框架可以使贝叶斯统计方法进一步发展和用于行星保护要求评估。