CLApr 5, 2019

Distinguishing Clinical Sentiment: The Importance of Domain Adaptation in Psychiatric Patient Health Records

arXiv:1904.03225v11093 citations
Originality Incremental advance
AI Analysis

This work addresses the need for accurate sentiment analysis in clinical settings, particularly for psychiatric patient records, though it is an incremental step in domain adaptation.

The study tackled the problem of applying sentiment analysis to psychiatric electronic health records, finding that off-the-shelf tools fail and that a domain-specific definition is learnable with small training data.

Recently natural language processing (NLP) tools have been developed to identify and extract salient risk indicators in electronic health records (EHRs). Sentiment analysis, although widely used in non-medical areas for improving decision making, has been studied minimally in the clinical setting. In this study, we undertook, to our knowledge, the first domain adaptation of sentiment analysis to psychiatric EHRs by defining psychiatric clinical sentiment, performing an annotation project, and evaluating multiple sentence-level sentiment machine learning (ML) models. Results indicate that off-the-shelf sentiment analysis tools fail in identifying clinically positive or negative polarity, and that the definition of clinical sentiment that we provide is learnable with relatively small amounts of training data. This project is an initial step towards further refining sentiment analysis methods for clinical use. Our long-term objective is to incorporate the results of this project as part of a machine learning model that predicts inpatient readmission risk. We hope that this work will initiate a discussion concerning domain adaptation of sentiment analysis to the clinical setting.

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