[HTML][HTML] Computer-assisted diagnostic coding: effectiveness of an NLP-based approach using SNOMED CT to ICD-10 mappings
AN Nguyen, D Truran, M Kemp… - AMIA Annual …, 2018 - ncbi.nlm.nih.gov
AMIA Annual Symposium Proceedings, 2018•ncbi.nlm.nih.gov
Abstract Computer-assisted (diagnostic) coding (CAC) aims to improve the operational
productivity and accuracy of clinical coders. The level of accuracy, especially for a wide
range of complex and less prevalent clinical cases, remains an open research problem. This
study investigates this problem on a broad spectrum of diagnostic codes and, in particular,
investigates the effectiveness of utilising SNOMED CT for ICD-10 diagnosis coding. Hospital
progress notes were used to provide the narrative rich electronic patient records for the …
productivity and accuracy of clinical coders. The level of accuracy, especially for a wide
range of complex and less prevalent clinical cases, remains an open research problem. This
study investigates this problem on a broad spectrum of diagnostic codes and, in particular,
investigates the effectiveness of utilising SNOMED CT for ICD-10 diagnosis coding. Hospital
progress notes were used to provide the narrative rich electronic patient records for the …
Abstract
Computer-assisted (diagnostic) coding (CAC) aims to improve the operational productivity and accuracy of clinical coders. The level of accuracy, especially for a wide range of complex and less prevalent clinical cases, remains an open research problem. This study investigates this problem on a broad spectrum of diagnostic codes and, in particular, investigates the effectiveness of utilising SNOMED CT for ICD-10 diagnosis coding. Hospital progress notes were used to provide the narrative rich electronic patient records for the investigation. A natural language processing (NLP) approach using mappings between SNOMED CT and ICD-10-AM (Australian Modification) was used to guide the coding. The proposed approach achieved 54.1% sensitivity and 70.2% positive predictive value. Given the complexity of the task, this was encouraging given the simplicity of the approach and what was projected as possible from a manual diagnosis code validation study (76.3% sensitivity). The results show the potential for advanced NLP-based approaches that leverage SNOMED CT to ICD-10 mapping for hospital in-patient coding.
ncbi.nlm.nih.gov
以上显示的是最相近的搜索结果。 查看全部搜索结果