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Use of Latent Class Analysis and k-Means Clustering to Identify Complex Patient Profiles.
- Source :
-
JAMA network open [JAMA Netw Open] 2020 Dec 01; Vol. 3 (12), pp. e2029068. Date of Electronic Publication: 2020 Dec 01. - Publication Year :
- 2020
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Abstract
- Importance: Medically complex patients are a heterogeneous group that contribute to a substantial proportion of health care costs. Coordinated efforts to improve care and reduce costs for this patient population have had limited success to date.<br />Objective: To define distinct patient clinical profiles among the most medically complex patients through clinical interpretation of analytically derived patient clusters.<br />Design, Setting, and Participants: This cohort study analyzed the most medically complex patients within Kaiser Permanente Northern California, a large integrated health care delivery system, based on comorbidity score, prior emergency department admissions, and predicted likelihood of hospitalization, from July 18, 2018, to July 15, 2019. From a starting point of over 5000 clinical variables, we used both clinical judgment and analytic methods to reduce to the 97 most informative covariates. Patients were then grouped using 2 methods (latent class analysis, generalized low-rank models, with k-means clustering). Results were interpreted by a panel of clinical stakeholders to define clinically meaningful patient profiles.<br />Main Outcomes and Measures: Complex patient profiles, 1-year health care utilization, and mortality outcomes by profile.<br />Results: The analysis included 104 869 individuals representing 3.3% of the adult population (mean [SD] age, 70.7 [14.5] years; 52.4% women; 39% non-White race/ethnicity). Latent class analysis resulted in a 7-class solution. Stakeholders defined the following complex patient profiles (prevalence): high acuity (9.4%), older patients with cardiovascular complications (15.9%), frail elderly (12.5%), pain management (12.3%), psychiatric illness (12.0%), cancer treatment (7.6%), and less engaged (27%). Patients in these groups had significantly different 1-year mortality rates (ranging from 3.0% for psychiatric illness profile to 23.4% for frail elderly profile; risk ratio, 7.9 [95% CI, 7.1-8.8], P < .001). Repeating the analysis using k-means clustering resulted in qualitatively similar groupings. Each clinical profile suggested a distinct collaborative care strategy to optimize management.<br />Conclusions and Relevance: The findings suggest that highly medically complex patient populations may be categorized into distinct patient profiles that are amenable to varying strategies for resource allocation and coordinated care interventions.
- Subjects :
- Aged
California epidemiology
Cluster Analysis
Ethnicity statistics & numerical data
Female
Health Care Rationing methods
Humans
Latent Class Analysis
Male
Mental Disorders epidemiology
Mortality
Quality Improvement organization & administration
Resource Allocation methods
Hospitalization trends
Multiple Chronic Conditions classification
Multiple Chronic Conditions economics
Multiple Chronic Conditions epidemiology
Multiple Chronic Conditions therapy
Patient Acceptance of Health Care statistics & numerical data
Patient Care Management economics
Patient Care Management standards
Subjects
Details
- Language :
- English
- ISSN :
- 2574-3805
- Volume :
- 3
- Issue :
- 12
- Database :
- MEDLINE
- Journal :
- JAMA network open
- Publication Type :
- Academic Journal
- Accession number :
- 33306116
- Full Text :
- https://doi.org/10.1001/jamanetworkopen.2020.29068