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  5. A proposed paradigm for imputing missing multi-sensor data in the healthcare domain

A proposed paradigm for imputing missing multi-sensor data in the healthcare domain

Publication date
2026-01-07
Document type
Preprint
Author
Gupta, Vaibhav  
Grensing, Florian  
Cinar, Beyza  
Maleshkova, Maria  
Organisational unit
Data Engineering  
DOI
10.48550/arXiv.2601.03565
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/22100
Publisher
arXiv
Is a version of
https://openhsu.ub.hsu-hh.de/handle/10.24405/21535
Part of the university bibliography
✅
Additional Information
Language
English
Keyword
Imputation techniques
Missing values
Preprocessing techniques
Datasets
Diabetes
Hypoglycemia
Abstract
Chronic diseases such as diabetes pose significant management challenges, particularly due to the risk of complications like hypoglycemia, which require timely detection and intervention. Continuous health monitoring through wearable sensors offers a promising solution for early prediction of glycemic events. However, effective use of multisensor data is hindered by issues such as signal noise and frequent missing values. This study examines the limitations of existing datasets and emphasizes the temporal characteristics of key features relevant to hypoglycemia prediction. A comprehensive analysis of imputation techniques is conducted, focusing on those employed in state-of-the-art studies. Furthermore, imputation methods derived from machine learning and deep learning applications in other healthcare contexts are evaluated for their potential to address longer gaps in time-series data. Based on this analysis, a systematic paradigm is proposed, wherein imputation strategies are tailored to the nature of specific features and the duration of missing intervals. The review concludes by emphasizing the importance of investigating the temporal dynamics of individual features and the implementation of multiple, feature-specific imputation techniques to effectively address heterogeneous temporal patterns inherent in the data.
Version
Submitted version under review
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