18–21 May 2026
Europe/Warsaw timezone

Deriving Duration Time from Occupancy Data – A case study in the length of stay in Intensive Care Units for COVID-19 patients

19 May 2026, 14:21
18m
Room 12

Room 12

oral presentation Statistical modelling 1

Speaker

Göran Kauermann (Ludwig-Maximilians-Universität München)

Description

This paper focuses on drawing information on underlying processes, which are not directly observed in the data. In particular, we work with data in which only the total count of units in a system at a given time point is observed, but the underlying process of inflows, length of stay, and outflows is not. The particular data example looked at in this paper is the occupancy of intensive care units (ICU) during the COVID-19 pandemic, where the aggregated numbers of occupied beds in ICUs on the district level (‘Landkreis’) are recorded, but not the number of incoming and outgoing patients. The Skellam distribution allows us to infer the number of incoming and outgoing patients from the occupancy in the ICUs.

This paper goes a step beyond and approaches the question of whether we can also estimate the average length of stay of ICU patients. Hence, the task is to derive not only the number of incoming and outgoing units from a total net count but also to gain information on the duration time of patients on ICUs. We make use of a stochastic Expectation-Maximisation algorithm and additionally include exogenous information that are assumed to explain the intensity of inflow.

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Author

Göran Kauermann (Ludwig-Maximilians-Universität München)

Co-author

Martje Rave (Ludwig-Maximilians-Universität München)

Presentation materials

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