Hybrid Summarization of Medical Records for Predicting Length of Stay in the Intensive Care Unit

Author:

Rhazzafe Soukaina1ORCID,Caraffini Fabio2ORCID,Colreavy-Donnelly Simon1ORCID,Dhassi Younes3ORCID,Kuhn Stefan4ORCID,Nikolov Nikola S.1ORCID

Affiliation:

1. Department of Computer Science and Information Systems, University of Limerick, V94 T9PX Limerick, Ireland

2. Department of Computer Science, Swansea University, Swansea SA2 8PP, UK

3. Sciences and Technology Faculty, Sidi Mohamed Ben Abdellah University, Fes 30050, Morocco

4. Institute of Computer Science, Tartu University, 51009 Tartu, Estonia

Abstract

Electronic health records (EHRs) are a critical tool in healthcare and capture a wide array of patient information that can inform clinical decision-making. However, the sheer volume and complexity of EHR data present challenges for healthcare providers, particularly in fast-paced environments such as intensive care units (ICUs). To address this problem, the automatic summarization of the main problems of patients from daily progress notes can be extremely helpful. Furthermore, by accurately predicting ICU patients’ lengths of stay (LOSs), resource allocation and management can be optimized, allowing for a more efficient flow of patients within the healthcare system. This work proposes a hybrid method to summarize EHR notes and studies the potential of these summaries together with structured data for the prediction of LOSs of ICU patients. Our investigation demonstrates the effectiveness of combining extractive and abstractive summarization techniques with a concept-based method combined with a text-to-text transfer transformer (T5), which shows the most promising results. By integrating the generated summaries and diagnoses with other features, our study contributes to the accurate prediction of LOSs, with a support vector machine emerging as our best-performing classifier with an accuracy of 77.5%, surpassing existing systems and highlighting the potential for optimal allocation of resources within ICUs.

Funder

European Union

Science Foundation Ireland Centre for Research Training in Artificial Intelligence

Publisher

MDPI AG

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