Automatic ICD-10 Classification of Diseases from Dutch Discharge Letters

被引:10
作者
Bagheri, Ayoub [1 ,2 ]
Sammani, Arjan [2 ]
Van der Heijden, Peter G. M. [1 ,3 ]
Asselbergs, Folkert W. [2 ,4 ,5 ]
Oberski, Daniel L. [1 ,6 ]
机构
[1] Univ Utrecht, Fac Social Sci, Dept Methodol & Stat, Utrecht, Netherlands
[2] Univ Med Ctr Utrecht, Div Heart & Lungs, Dept Cardiol, Utrecht, Netherlands
[3] Univ Southampton, Fac Social Sci, S3RI, Southampton, Hants, England
[4] UCL, Fac Populat Hlth Sci, Inst Cardiovasc Sci, London, England
[5] UCL, Inst Hlth Informat, Hlth Data Res UK, London, England
[6] Univ Med Ctr Utrecht, Julius Ctr Hlth Sci & Primary Care, Utrecht, Netherlands
来源
PROCEEDINGS OF THE 13TH INTERNATIONAL JOINT CONFERENCE ON BIOMEDICAL ENGINEERING SYSTEMS AND TECHNOLOGIES, VOL 3: BIOINFORMATICS | 2020年
关键词
Automated ICD Coding; Multi-label Classification; Clinical Text Mining; Dutch Discharge Letters;
D O I
10.5220/0009372602810289
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
The international classification of diseases (ICD) is a widely used tool to describe patient diagnoses. At University Medical Center Utrecht (UMCU), for example, trained medical coders translate information from hospital discharge letters into ICD-10 codes for research and national disease epidemiology statistics, at considerable cost. To mitigate these costs, automatic ICD coding from discharge letters would be useful. However, this task has proven challenging in practice: it is a multi-label task with a large number of very sparse categories, presented in a hierarchical structure. Moreover, existing ICD systems have been benchmarked only on relatively easier versions of this task, such as single-label performance and performance on the higher "chapter" level of the ICD hierarchy, which contains fewer categories. In this study, we benchmark the state-of-the-art ICD classification systems and two baseline systems on a large dataset constructed from Dutch cardiology discharge letters at UMCU hospital. Performance of all systems is evaluated for both the easier chapter-level ICD codes and single-label version of the task found in the literature, as well as for the lower-level ICD hierarchy and multi-label task that is needed in practice. We find that state-of-the-art methods outperform the baseline for the single-label version of the task only. For the multi-label task, the baselines are not defeated by any state-of-the-art system, with the exception of HA-GRU, which does perform best in the most difficult task on accuracy. We conclude that practical performance may have been somewhat overstated in the literature, although deep learning techniques are sufficiently good to complement, though not replace, human ICD coding in our application.
引用
收藏
页码:281 / 289
页数:9
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