Sasser Howell, Nussbaum Marcy, Beuhler Michael, Ford Marsha
Dickson Institute for Health Studies, Carolinas Medical Center, Charlotte, NC, USA.
J Med Toxicol. 2008 Jun;4(2):77-83. doi: 10.1007/BF03160959.
Identification of predictors of potential mass poisonings may increase the speed and accuracy with which patients are recognized, potentially reducing the number ultimately exposed and the degree to which they are affected. This analysis used a decision-tree method to sort such potential predictors.
Data from the Toxic Exposure Surveillance System were used to select cyanide and botulism cases from 1993 to 2005 for analysis. Cases of other poisonings from a single poison center were used as controls. After duplication was omitted and removal of cases from the control sample was completed, there remained 1,122 cyanide cases, 262 botulism cases, and 70,804 controls available for both analyses. Classification trees for each poisoning type were constructed, using 131 standardized clinical effects. These decision rules were compared with the current case surveillance definitions of one active poison center and the American Association of Poison Control Centers (AAPCC).
The botulism analysis produced a 4-item decision rule with sensitivity (Se) of 68% and specificity (Sp) of 90%. Use of the single poison center and AAPCC definitions produced Se of 19.5% and 16.8%, and Sp of 99.5% and 83.2%, respectively. The cyanide analysis produced a 9-item decision rule with Se of 74% and Sp of 77%. The single poison center and AAPCC case definitions produced Se of 10.2% and 8.6%, and Sp of 99.8% and 99.8%, respectively.
These results suggest the possibility of improved poisoning case surveillance sensitivity using classification trees. This method produced substantially higher sensitivities, but not specificities, for both cyanide and botulism. Despite limitations, these results show the potential of a classification-tree approach in the detection of poisoning events.
识别潜在大规模中毒事件的预测因素可能会提高识别患者的速度和准确性,从而有可能减少最终暴露的人数及其受影响的程度。本分析采用决策树方法对这类潜在预测因素进行分类。
利用毒物暴露监测系统的数据,选取1993年至2005年的氰化物中毒和肉毒中毒病例进行分析。来自单一毒物中心的其他中毒病例用作对照。在排除重复病例并完成对照样本中病例的剔除后,共有1122例氰化物中毒病例、262例肉毒中毒病例和70804例对照可用于两项分析。利用131种标准化临床效应构建每种中毒类型的分类树。将这些决策规则与一个活跃毒物中心和美国毒物控制中心协会(AAPCC)当前的病例监测定义进行比较。
肉毒中毒分析得出了一条包含4项的决策规则,敏感性(Se)为68%,特异性(Sp)为90%。采用单一毒物中心和AAPCC的定义时,敏感性分别为19.5%和16.8%,特异性分别为99.5%和83.2%。氰化物分析得出了一条包含9项的决策规则,敏感性为74%,特异性为77%。单一毒物中心和AAPCC的病例定义的敏感性分别为10.2%和8.6%,特异性分别为99.8%和99.8%。
这些结果表明,使用分类树有可能提高中毒病例监测的敏感性。该方法对氰化物中毒和肉毒中毒均产生了显著更高的敏感性,但特异性未提高。尽管存在局限性,但这些结果显示了分类树方法在中毒事件检测中的潜力。