Department of Biomedical Informatics, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.
J Am Med Inform Assoc. 2010 Jul-Aug;17(4):462-71. doi: 10.1136/jamia.2009.000356.
A system that monitors a region for a disease outbreak is called a disease outbreak surveillance system. A spatial surveillance system searches for patterns of disease outbreak in spatial subregions of the monitored region. A temporal surveillance system looks for emerging patterns of outbreak disease by analyzing how patterns have changed during recent periods of time. If a non-spatial, non-temporal system could be converted to a spatio-temporal one, the performance of the system might be improved in terms of early detection, accuracy, and reliability. A Bayesian network framework is proposed for a class of space-time surveillance systems called BNST. The framework is applied to a non-spatial, non-temporal disease outbreak detection system called PC in order to create the spatio-temporal system called PCTS. Differences in the detection performance of PC and PCTS are examined. The results show that the spatio-temporal Bayesian approach performs well, relative to the non-spatial, non-temporal approach.
用于监测疾病爆发的系统称为疾病爆发监测系统。空间监测系统搜索监测区域的空间子区域中疾病爆发的模式。时间监测系统通过分析近期疾病爆发模式的变化来寻找新出现的爆发模式。如果可以将非空间、非时间系统转换为时空系统,则可以提高系统的早期检测、准确性和可靠性。为一类称为 BNST 的时空监测系统提出了贝叶斯网络框架。该框架应用于一种称为 PC 的非空间、非时间疾病爆发检测系统,以创建称为 PCTS 的时空系统。检查了 PC 和 PCTS 的检测性能差异。结果表明,相对于非空间、非时间方法,时空贝叶斯方法的性能良好。