Thursday, June 16, 2016

Identifying Patterns of Multimorbidity in Older Americans: Application of Latent Class Analysis - American Geriatric Society

Objectives

To define multimorbidity “classes” empirically based on patterns of disease co-occurrence in older Americans and to examine how class membership predicts healthcare use.

Design

Retrospective cohort study.

Setting

Nationally representative sample of Medicare beneficiaries in file years 1999–2007.

Participants

Individuals aged 65 and older in the Medicare Beneficiary Survey who had data available for at least 1 year after index interview (N = 14,052).

Measurements

Surveys (self-report) were used to assess chronic conditions, and latent class analysis (LCA) was used to define multimorbidity classes based on the presence or absence of 13 conditions. All participants were assigned to a best-fit class. Primary outcomes were hospitalizations and emergency department visits over 1 year.

Results

The primary LCA identified six classes. The largest portion of participants (32.7%) was assigned to the minimal disease class, in which most persons had fewer than two of the conditions. The other five classes represented various degrees and patterns of multimorbidity. Usage rates were higher in classes with greater morbidity, but many individuals could not be assigned to a particular class with confidence (sample misclassification error estimate = 0.36). Number of conditions predicted outcomes at least as well as class membership.

Conclusion

Although recognition of general patterns of disease co-occurrence is useful for policy planning, the heterogeneity of persons with significant multimorbidity (≥3 conditions) defies neat classification. A simple count of conditions may be preferable for predicting usage.



from Journal of the American Geriatrics Society http://ift.tt/1XrGdJb
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