DeepTSE: A Time-Sensitive Deep Embedding of ICU Data for Patient Modeling and Missing Data Imputation.Open Access

Fujarski M; Porschen C; Plagwitz L; Stroth D; Van Alen CM; Sadjadi M; Weiss R; Zarbock A; Von Groote T; Varghese J

Research article (journal) | Peer reviewed

Abstract

Missing data is a common problem in the intensive care unit as a variety of factors contribute to incomplete data collection in this clinical setting. This missing data has a significant impact on the accuracy and validity of statistical analyses and prognostic models. Several imputation methods can be used to estimate the missing values based on the available data. Although simple imputations with mean or median generate reasonable results in terms of mean absolute error, they do not account for the currentness of the data. Furthermore, heterogeneous time span of data records adds to this complexity, especially in high-frequency intensive care unit datasets. Therefore, we present DeepTSE, a deep model that is able to cope with both, missing data and heterogeneous time spans. We achieved promising results on the MIMIC-IV dataset that can compete with and even outperform established imputation methods.

Details about the publication

JournalStudies in Health Technology and Informatics (Stud Health Technol Inform)
Volume302
Page range237-241
StatusPublished
Release year2023 (18/05/2023)
Language in which the publication is writtenEnglish
KeywordsHumans; Data Collection; Research Design; Intensive Care Units; Patients

Authors from the University of Münster

Fujarski, Michael
Groote, Thilo Caspar
Plagwitz, Lucas
Porschen, Christian
Sadjadi, Mahan
Stroth, Daniel
van Alen, Catharina Marie
Varghese, Julian
Weiss, Raphael
Zarbock, Alexander