INRS - Working Life Department, 1 rue de Morvan, 54500 Vandoeuvre les Nancy, France.
INRS - Working Life Department, 1 rue de Morvan, 54500 Vandoeuvre les Nancy, France.
Accid Anal Prev. 2014 Sep;70:155-66. doi: 10.1016/j.aap.2014.04.004. Epub 2014 Apr 25.
A probabilistic approach has been developed to extract recurrent serious Occupational Accident with Movement Disturbance (OAMD) scenarios from narrative texts within a prevention framework. Relevant data extracted from 143 accounts was initially coded as logical combinations of generic accident factors. A Bayesian Network (BN)-based model was then built for OAMDs using these data and expert knowledge. A data clustering process was subsequently performed to group the OAMDs into similar classes from generic factor occurrence and pattern standpoints. Finally, the Most Probable Explanation (MPE) was evaluated and identified as the associated recurrent scenario for each class. Using this approach, 8 scenarios were extracted to describe 143 OAMDs in the construction and metallurgy sectors. Their recurrent nature is discussed. Probable generic factor combinations provide a fair representation of particularly serious OAMDs, as described in narrative texts. This work represents a real contribution to raising company awareness of the variety of circumstances, in which these accidents occur, to progressing in the prevention of such accidents and to developing an analysis framework dedicated to this kind of accident.
一种概率方法已被开发出来,以便从预防框架内的叙述性文本中提取重复出现的严重职业事故与运动障碍(OAMD)场景。从 143 个案例中提取的相关数据最初被编码为通用事故因素的逻辑组合。然后,使用这些数据和专家知识,为 OAMD 构建了一个基于贝叶斯网络(BN)的模型。随后,进行了数据聚类过程,以便从通用因素发生和模式的角度将 OAMD 分组为类似的类别。最后,评估并确定了最可能的解释(MPE),作为每个类别的相关重复场景。使用这种方法,从建筑和冶金部门的 143 个 OAMD 中提取了 8 个场景进行描述。讨论了它们的重复性。可能的通用因素组合提供了对特别严重的 OAMD 的公平描述,如叙述性文本中所描述的。这项工作真正有助于提高公司对这些事故发生的各种情况的认识,有助于推进这些事故的预防,并开发专门用于这种事故的分析框架。