Clinically meaningful categorisation of ICD-10-AM (Australian modification).

Graeme J Duke, Steven Hirth, John D Santamaria, Carla Read, Adina Hamilton, Melisa Lau, Tharanga Fernando, Zhuoyang Li, Teresa Le, Kirstie Walkley
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Abstract

Background: Current methods of categorising the International Statistical Classification of Diseases and Related Health Problems (ICD) have limitations when deciphering administrative data and monitoring healthcare outcomes. These include many-to-one relationships, non-linear sequencing, collinearity, and ambiguous miscellaneous (residual) codes. Objective: Describe novel methodology for clinically meaningful categorisation of 12th Edition of ICD Version 10 Australian modification (ICD-10-AM). Setting: State of Victoria (Australia), population of 6.6 million with over 3 million separations per annum. Method: Diagnosis codes from ICD-10-AM were aggregated into Clinical Diagnosis Group (CDG) sets according to clinical features and associated risk of in-hospital death and complications. Residual codes were excluded. Administrative data from July 2020 to June 2023 were interrogated to ascertain frequency of diagnoses captured by CDG sets. Results: 12,716 (87.9%) of 14,470 total ICD-10-AM codes were aggregated into 406 CDG sets; mean 32 (range 1-288) codes per set. One thousand seven hundred fifty-three (12.1%) were excluded (not allocated): 775 (5.4%) residual codes; 702 (4.9%) indicating reason for healthcare encounter; and 276 (1.9%) ill-defined clinical symptom codes. Over 36-months, 11.8 million separations were coded with 11,898 (82.2%) unique ICD-10-AM diagnoses, including 10,721 (90.1%) present in a CDG set. Of the 8571 (59.2%) codes associated with death or complications, 7813 (91.2%) were present in a CDG set. Conclusion: The CDG list provides a clinically meaningful method of categorisation and interrogating datasets based on ICD-10-AM and complements existing methods.

ICD-10-AM(澳大利亚修订版)具有临床意义的分类。
背景:目前对《国际疾病和相关健康问题统计分类》(ICD)进行分类的方法在解读管理数据和监测医疗结果时存在局限性。这些限制包括多对一关系、非线性排序、共线性和模糊的杂项(残余)代码。目标:描述对第 12 版 ICD 第 10 版澳大利亚修订版(ICD-10-AM)进行有临床意义分类的新方法。环境:维多利亚州(澳大利亚),人口 660 万,每年有 300 多万人离职。方法:根据临床特征以及相关的院内死亡和并发症风险,将 ICD-10-AM 中的诊断代码汇总到临床诊断组 (CDG) 中。剩余代码被排除在外。对 2020 年 7 月至 2023 年 6 月的管理数据进行查询,以确定 CDG 集所包含诊断的频率。结果显示在总共 14,470 个 ICD-10-AM 代码中,有 12,716 个(87.9%)代码被归入 406 个 CDG 集;平均每个 CDG 集有 32 个(范围 1-288)代码。1753个(12.1%)被排除在外(未分配):775个(5.4%)残余代码;702个(4.9%)表明就医原因的代码;以及276个(1.9%)定义不明的临床症状代码。在 36 个月中,有 1180 万次离职被编码为 11,898 个(82.2%)独特的 ICD-10-AM 诊断,其中 10,721 个(90.1%)出现在 CDG 集中。在 8571 个(59.2%)与死亡或并发症相关的代码中,7813 个(91.2%)出现在 CDG 集中。结论:CDG 列表为基于 ICD-10-AM 的数据集的分类和查询提供了一种具有临床意义的方法,是对现有方法的补充。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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