Predictors of hospital-at-home feasibility. Data-driven insights
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Author (Corporation)
Publication date
2026
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04B - Conference paper
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2026 IEEE Swiss Conference on Data Science and AI (SDS). Proceedings
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Issue / Number
Pages / Duration
21-28
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Publisher / Publishing institution
IEEE
Place of publication / Event location
Zürich
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Abstract
The hospital-at-home (HaH) model enables patients to receive specialized care at home as an alternative to inpatient treatment while supporting a structured transition back to routine outpatient care. In this pilot study, we evaluated a telemedicine supported transition from hospital to home with subsequent handover to the primary general practitioner, with the aim of identifying which early routinely collected signals are most informative for assessing HaH feasibility. We analyzed data from 234 patients enrolled in a Swiss HaH pilot program, defining regular versus early study termination as the primary outcome (early termination defined a priori as rehospitalization, loss to follow-up, or consent withdrawal, reflecting programlevel feasibility). Candidate variables included demographic and clinical enrollment characteristics, physiological measurements, and early patient- and clinician-reported measures collected within a predefined day 0-1 assessment window. Machine learning models were applied within a stratified cross-validation framework to compare feature sets and to support systematic feature relevance analysis under class imbalance. Models based solely on demographic and routine clinical enrollment data showed limited discriminative ability, with balanced accuracy values close to chance level (up to 0.58). In contrast, models incorporating early patient- and clinician-reported measures achieved markedly improved performance, with balanced accuracies up to 0.79 and precision-recall AUCs approaching 0.90, alongside strong recall for early termination. Feature importance and SHAP analyses confirmed that completion and results of early patient- and clinician-reported measures were more informative for HaH completion than baseline demographic, physiological, or routine clinical characteristics. Overall performance was limited by sample size, and the outcome represents a pragmatic proxy for successful HaH transition. Still, the findings indicate that early routinely collected operational and telemedical assessments were associated with HaH feasibility, with machine learning serving as an analytical tool despite modest predictive gains, and should be interpreted as predictive rather than causal.
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Event
2026 IEEE Swiss Conference on Data Science and AI (SDS)
Exhibition start date
Exhibition end date
Conference start date
06.05.2026
Conference end date
07.05.2026
Date of the last check
ISBN
979-8-3195-0600-9
979-8-3195-0601-6
979-8-3195-0601-6
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Language
English
Created during FHNW affiliation
Yes
Strategic action fields FHNW
Publication status
Published
Review
peer-reviewed
Open access category
Closed
Citation
Suter, S., Gujer, C., van der Lely, S., Meier, R., Hölz, B., Gram, J., Mayer, V., Eckstein, J., & Schmitz-Grosz, K. (2026). Predictors of hospital-at-home feasibility. Data-driven insights. 2026 IEEE Swiss Conference on Data Science and AI (SDS). Proceedings, 21–28. https://doi.org/10.1109/sds70563.2026.00011