Bolstering Advance Care Planning Measurement Using Natural Language Processing

J Palliat Med. 2024 Apr;27(4):447-450. doi: 10.1089/jpm.2023.0528. Epub 2024 Feb 6.

Abstract

Despite its growth as a clinical activity and research topic, the complex dynamic nature of advance care planning (ACP) has posed serious challenges for researchers hoping to quantitatively measure it. Methods for measurement have traditionally depended on lengthy manual chart abstractions or static documents (e.g., advance directive forms) even though completion of such documents is only one aspect of ACP. Natural language processing (NLP), in the form of an assisted electronic health record (EHR) review, is a technological advancement that may help researchers better measure ACP activity. In this article, we aim to show how NLP-assisted EHR review supports more accurate and robust measurement of ACP. We do so by presenting three example applications that illustrate how using NLP for this purpose supports (1) measurement in research, (2) detailed insights into ACP in quality improvement, and (3) identification of current limitations of ACP in clinical settings.

Keywords: advance care planning; electronic health records; natural language processing; quality improvement; research design.

MeSH terms

  • Advance Care Planning*
  • Advance Directives
  • Documentation
  • Electronic Health Records
  • Humans
  • Natural Language Processing*
  • Quality Improvement