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首页> 外文期刊>Health Physics: Official Journal of the Health Physics Society >Classification of chronic radiation sickness cases using neural networks and classification trees.
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Classification of chronic radiation sickness cases using neural networks and classification trees.

机译:使用神经网络和分类树对慢性放射病病例进行分类。

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摘要

Chronic radiation sickness is a deterministic radiation health effect observed among the Mayak Production Association workers in Russia. In this study, unsupervised neural networks were used to cluster hematological measurements in a subset (n = 88) of the Mayak Production Association population while excluding from the analysis the radiation dose and the historical clinical diagnosis. Clusters of observations that had lower average leukocyte and thrombocyte counts were labeled "affected" and those having higher average blood cell counts were labeled "unaffected." The class (cluster) membership for each individual was used subsequently as a dependent variable in a classification tree model in order to identify significant features of the underlying classification model. After re-classification of cases using this method, the results showed a better data separation between the blood cell counts for affected vs. unaffected groups compared to those based on historical classification, and a greater difference between group means for differential blood counts was observed than for the historical diagnosis. The reclassification of diagnostic groups changed the group mean radiation doses. The geometric means (and 95% CL) of cumulative radiation dose equivalent from external exposures, based on the historical diagnosis, are 0.31 (0.0035, 3.4) vs. 1.7 (0.0007, 18) Sv. After clustering and classification tree analyses, the group geometric means were 0.78 (0.0014, 8.6) vs. 1.5 (0.0007, 17) and 0.82 (0.0013, 9.0) vs. 1.4 (0.0008, 16) Sv, using (respectively) whole blood cell counts or differential counts as the independent variables. The approach presented here is useful as a diagnostic aid for both retrospective analyses and in the event of future radiation accidents.
机译:慢性放射病是俄罗斯Mayak生产协会工人中观察到的确定性放射健康效应。在这项研究中,无监督神经网络被用于对Mayak生产协会人群的一部分(n = 88)的血液学测量进行聚类,同时从分析中排除了辐射剂量和历史临床诊断。具有较低平均白细胞和血小板计数的观察结果簇标记为“受影响”,具有较高平均血细胞计数的观察结果标记为“不受影响”。随后,将每个个体的类(集群)成员身份用作分类树模型中的因变量,以识别基础分类模型的重要特征。使用这种方法对病例进行重新分类后,结果显示,与基于历史分类的病例相比,患病组与未患病组的血细胞计数之间的数据分离效果更好,并且观察到的不同血计数的组平均值之间的差异大于用于历史诊断。诊断组的重新分类改变了组的平均辐射剂量。根据历史诊断,来自外部暴露的累积辐射剂量当量的几何平均值(和95%CL)为0.31(0.0035,3.4)vs. 1.7(0.0007,18)Sv。经过聚类和分类树分析后,使用(分别)全血细胞,组的几何平均值分别为0.78(0.0014,8.6)vs. 1.5(0.0007,17)和0.82(0.0013,9.0)vs 1.4(0.0008,16)Sv计数或微分计数作为自变量。此处介绍的方法可用作回顾性分析和将来发生辐射事故时的诊断辅助。

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