Large Language Models for Patient Comments Multi-Label Classification
Patient experience and care quality are crucial for a hospital's sustainability and reputation. The analysis of patient feedback offers valuable insight into patient satisfaction and outcomes. However, the unstructured nature of these comments poses challenges for traditional machine learning m...
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Zusammenfassung: | Patient experience and care quality are crucial for a hospital's
sustainability and reputation. The analysis of patient feedback offers valuable
insight into patient satisfaction and outcomes. However, the unstructured
nature of these comments poses challenges for traditional machine learning
methods following a supervised learning paradigm. This is due to the
unavailability of labeled data and the nuances these texts encompass. This
research explores leveraging Large Language Models (LLMs) in conducting
Multi-label Text Classification (MLTC) of inpatient comments shared after a
stay in the hospital. GPT-4 Turbo was leveraged to conduct the classification.
However, given the sensitive nature of patients' comments, a security layer is
introduced before feeding the data to the LLM through a Protected Health
Information (PHI) detection framework, which ensures patients'
de-identification. Additionally, using the prompt engineering framework,
zero-shot learning, in-context learning, and chain-of-thought prompting were
experimented with. Results demonstrate that GPT-4 Turbo, whether following a
zero-shot or few-shot setting, outperforms traditional methods and Pre-trained
Language Models (PLMs) and achieves the highest overall performance with an
F1-score of 76.12% and a weighted F1-score of 73.61% followed closely by the
few-shot learning results. Subsequently, the results' association with other
patient experience structured variables (e.g., rating) was conducted. The study
enhances MLTC through the application of LLMs, offering healthcare
practitioners an efficient method to gain deeper insights into patient feedback
and deliver prompt, appropriate responses. |
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DOI: | 10.48550/arxiv.2410.23528 |