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Review
. 2023 Nov 16;21(Suppl 6):385.
doi: 10.1186/s12911-023-02363-5.

Interpreting and coding causal relationships for quality and safety using ICD-11

Affiliations
Review

Interpreting and coding causal relationships for quality and safety using ICD-11

Jean-Marie Januel et al. BMC Med Inform Decis Mak. .

Abstract

Many circumstances necessitate judgments regarding causation in health information systems, but these can be tricky in medicine and epidemiology. In this article, we reflect on what the ICD-11 Reference Guide provides on coding for causation and judging when relationships between clinical concepts are causal. Based on the use of different types of codes and the development of a new mechanism for coding potential causal relationships, the ICD-11 provides an in-depth transformation of coding expectations as compared to ICD-10. An essential part of the causal relationship interpretation relies on the presence of "connecting terms," key elements in assessing the level of certainty regarding a potential relationship and how to proceed in coding a causal relationship using the new ICD-11 coding convention of postcoordination (i.e., clustering of codes). In addition, determining causation involves using documentation from healthcare providers, which is the foundation for coding health information. The coding guidelines and examples (taken from the quality and patient safety domain) presented in this article underline how new ICD-11 features and coding rules will enhance future health information systems and healthcare.

Keywords: Adverse events; Causation; ICD-11; International Classification of Diseases; Quality and safety.

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Conflict of interest statement

Membership in the WHO Quality and Safety Topic Advisory Group (Q&S TAG) is non-remunerative, and all contributors are free of financial conflict of interest. None of the authors have any competing interests.

Figures

Fig. 1
Fig. 1
Examples of situations where causal relationships are contemplated

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