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Administrative Data Is Insufficient to Identify Near-Future Critical Illness: A Population-Based Retrospective Cohort Study.


ABSTRACT:

Background

Prediction of future critical illness could render it practical to test interventions seeking to avoid or delay the coming event.

Objective

Identify adults having >33% probability of near-future critical illness.

Research design

Retrospective cohort study, 2013-2015.

Subjects

Community-dwelling residents of Manitoba, Canada, aged 40-89 years.

Measures

The outcome was a near-future critical illness, defined as intensive care unit admission with invasive mechanical ventilation, or non-palliative death occurring 30-180 days after 1 April each year. By dividing the data into training and test cohorts, a Classification and Regression Tree analysis was used to identify subgroups with ≥33% probability of the outcome. We considered 72 predictors including sociodemographics, chronic conditions, frailty, and health care utilization. Sensitivity analysis used logistic regression methods.

Results

Approximately 0.38% of each yearly cohort experienced near-future critical illness. The optimal Tree identified 2,644 mutually exclusive subgroups. Socioeconomic status was the most influential variable, followed by nursing home residency and frailty; age was sixth. In the training data, the model performed well; 41 subgroups containing 493 subjects had ≥33% members who developed the outcome. However, in the test data, those subgroups contained 429 individuals, with 20 (4.7%) experiencing the outcome, which comprised 0.98% of all subjects with the outcome. While logistic regression showed less model overfitting, it likewise failed to achieve the stated objective.

Conclusions

High-fidelity prediction of near-future critical illness among community-dwelling adults was not successful using population-based administrative data. Additional research is needed to ascertain whether the inclusion of additional types of data can achieve this goal.

SUBMITTER: Garland A 

PROVIDER: S-EPMC10910992 | biostudies-literature | 2022

REPOSITORIES: biostudies-literature

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Publications

Administrative Data Is Insufficient to Identify Near-Future Critical Illness: A Population-Based Retrospective Cohort Study.

Garland Allan A   Marrie Ruth Ann RA   Wunsch Hannah H   Yogendran Marina M   Chateau Daniel D  

Frontiers in epidemiology 20220725


<h4>Background</h4>Prediction of future critical illness could render it practical to test interventions seeking to avoid or delay the coming event.<h4>Objective</h4>Identify adults having >33% probability of near-future critical illness.<h4>Research design</h4>Retrospective cohort study, 2013-2015.<h4>Subjects</h4>Community-dwelling residents of Manitoba, Canada, aged 40-89 years.<h4>Measures</h4>The outcome was a near-future critical illness, defined as intensive care unit admission with invas  ...[more]

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