Surveillance of drug overdose deaths relies on death certificates for identification of the substances that caused death. Drugs and drug classes can be identified through the International Classification of Diseases, 10th Revision (ICD-10) codes present on death certificates. However, ICD-10 codes do not always provide high levels of specificity in drug identification. To achieve more fine-grained identification of substances on a death certificate, the free-text cause of death section, completed by the medical certifier, must be analyzed. Current methods for analyzing free-text death certificates rely solely on look-up tables for identifying specific substances, which must be frequently updated and maintained. To improve identification of drugs on death certificates, a deep learning named-entity recognition model was developed, which achieved an F1-score of 99.13%. This model can identify new drug misspellings and novel substances that are not present on current surveillance look-up tables, enhancing the surveillance of drug overdose deaths.
翻译:药物过量死亡监测取决于死亡证明书,以确定造成死亡的物质。药物和药物类别可以通过《国际疾病分类》第十修订版(ICD-10)死亡证明书上的编码确定。然而,ICD-10编码并不总能提供药物识别的高度特殊性。为了对死亡证明书上的物质进行更细微的鉴定,必须分析由医生验证人完成的无文本死亡原因部分。目前分析自由文本死亡证明的方法完全依靠查取表格来确定特定物质,必须经常更新和维持。为了改进死亡证明上对药物的识别,开发了一个深层学习的点名实体识别模型,该模型达到了99.13%的F1分。这一模型可以识别目前监视查查表上没有出现的新的药物误切和新型物质,加强对药物过量死亡的监测。