Article or data-article in scientific journal (B1)

Using clinical Natural Language Processing for health outcomes research: Overview and actionable suggestions for future advances




List of AuthorsVelupillai S, Suominen H, Liakata M, Roberts A, Shah AD, Morley K, Osborn D, Hayes J, Stewart R, Downs J, Chapman W, Dutta R

PublisherACADEMIC PRESS INC ELSEVIER SCIENCE

Publication year2018

JournalJournal of Biomedical Informatics

Journal name in sourceJOURNAL OF BIOMEDICAL INFORMATICS

Journal acronymJ BIOMED INFORM

Volume number88

Start page11

End page19

Number of pages9

ISSN1532-0464

eISSN1532-0480

DOIhttp://dx.doi.org/10.1016/j.jbi.2018.10.005

Self-archived copy’s web addresshttps://research.utu.fi/converis/portal/detail/Publication/39862666


Abstract
The importance of incorporating Natural Language Processing (NLP) methods in clinical informatics research has been increasingly recognized over the past years, and has led to transformative advances.Typically, clinical NLP systems are developed and evaluated on word, sentence, or document level annotations that model specific attributes and features, such as document content (e.g., patient status, or report type), document section types (e.g., current medications, past medical history, or discharge summary), named entities and concepts (e.g., diagnoses, symptoms, or treatments) or semantic attributes (e.g., negation, severity, or temporality).From a clinical perspective, on the other hand, research studies are typically modelled and evaluated on a patient-or population-level, such as predicting how a patient group might respond to specific treatments or patient monitoring over time. While some NLP tasks consider predictions at the individual or group user level, these tasks still constitute a minority. Owing to the discrepancy between scientific objectives of each field, and because of differences in methodological evaluation priorities, there is no clear alignment between these evaluation approaches.Here we provide a broad summary and outline of the challenging issues involved in defining appropriate intrinsic and extrinsic evaluation methods for NLP research that is to be used for clinical outcomes research, and vice versa. A particular focus is placed on mental health research, an area still relatively understudied by the clinical NLP research community, but where NLP methods are of notable relevance. Recent advances in clinical NLP method development have been significant, but we propose more emphasis needs to be placed on rigorous evaluation for the field to advance further. To enable this, we provide actionable suggestions, including a minimal protocol that could be used when reporting clinical NLP method development and its evaluation.

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Last updated on 2022-07-04 at 17:18