Semantic clustering to augment qualitative content analysis in exploring reasons for emergency department transfer delays




Laura-Maria Peltonen, Sanna Salanterä, Hans Moen

Alpo Värri, Jaime Delgado, Parisis Gallos, Maria Hägglund, Kristiina Häyrinen, Ulla-Mari Kinnunen, Louise B. Pape-Haugaard, Laura-Maria Peltonen, Kaija Saranto, Philip Scott

275

European Federation for Medical Informatics

PublisherIOS Press BV

2020

Studies in Health Technology and Informatics

Integrated Citizen Centered Digital Health and Social Care: Citizens as Data Producers and Service co-Creators: Proceedings of the EFMI 2020 Special Topic Conference

Studies in Health Technology and Informatics

Studies in Health Technology and Informatics

275

162

166

978-1-64368-144-3

978-1-64368-145-0

0926-9630

DOIhttps://doi.org/10.3233/SHTI200715

https://research.utu.fi/converis/portal/detail/Publication/51366518



The aim of the study was to explore emergency department transfer

delays and to assess the potential of using a semantic clustering approach to augment

the content analysis of transfer delay data. Data were collected over a period of 5

months from two hospitals. A set of (unique) phrases describing reasons for transfer

delays (n=333) were clustered using the k-means with 1) cluster centroids initiated

in an unsupervised fashion and 2) a semi-supervised version where the cluster

centroids were initiated with keywords. The unsupervised algorithm clustered 77 %

and the semi-supervised 86 % of the phrases to suitable clusters. We chose the better

performing approach to augment our content analysis. Three main categories for

transfer delays were found as a result. These included 1) insufficient staffing

resources, 2) transportation and bed issues, and 3) patient and care related reasons.

The findings inform the audit of organisational processes, accuracy of staffing and

workflow to reduce transfer delays. Future research should explore implications of 

semantic clustering approaches to other narrative data sets in health service research.


Last updated on 2024-26-11 at 14:58