Interpreting Missing Data Patterns in the ICU
Robert O'Shea

TL;DR
This study analyzes ICU data to uncover how missing data patterns reflect clinical decision-making and workload influences, revealing insights into care practices and potential areas for quality improvement.
Contribution
It applies sparse Gaussian Graphical modeling to identify dependencies between missing data and observed variables, revealing patterns linked to clinical norms and workload effects.
Findings
Reduced temperature and respiratory monitoring in less conscious patients
Winter pressures lead to decreased monitoring of key variables
Evidence of Missing Not at Random patterns in FiO2 and SF ratio
Abstract
PURPOSE: Clinical examinations are performed on the basis of necessity. However, our decisions to investigate and document are influenced by various other factors, such as workload and preconceptions. Data missingness patterns may contain insights into conscious and unconscious norms of clinical practice. METHODS: We examine data from the SPOTLIGHT study, a multi-centre cohort study of the effect of prompt ICU admission on mortality. We identify missing values and generate an auxiliary dataset indicating the missing entries. We deploy sparse Gaussian Graphical modelling techniques to identify conditional dependencies between the observed data and missingness patterns. We quantify these associations with sparse partial correlation, correcting for multiple collinearity. RESULTS: We identify 35 variables which significantly influence data missingness patterns (alpha = 0.01). We identify…
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Taxonomy
TopicsMachine Learning in Healthcare · Sepsis Diagnosis and Treatment · Hemodynamic Monitoring and Therapy
