2022
DOI: 10.2196/34274
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Exploring Patient Multimorbidity and Complexity Using Health Insurance Claims Data: A Cluster Analysis Approach

Abstract: Background Although the trend of progressing morbidity is widely recognized, there are numerous challenges when studying multimorbidity and patient complexity. For multimorbid or complex patients, prone to fragmented care and high health care use, novel estimation approaches need to be developed. Objective This study aims to investigate the patient multimorbidity and complexity of Swiss residents aged ≥50 years using clustering methodology in claims dat… Show more

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Cited by 4 publications
(4 citation statements)
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“…Consumers would benefit from customized solutions without incurring extra costs. Theoretically, it extends study [18] argument of reducing the information gaps using ICT based solutions. The findings of this study also support the argument of the technology diffusion theory, which states that the successful adoption of technology depends on its compatibility with existing social settings and systems.…”
Section: Implication For Practicementioning
confidence: 62%
“…Consumers would benefit from customized solutions without incurring extra costs. Theoretically, it extends study [18] argument of reducing the information gaps using ICT based solutions. The findings of this study also support the argument of the technology diffusion theory, which states that the successful adoption of technology depends on its compatibility with existing social settings and systems.…”
Section: Implication For Practicementioning
confidence: 62%
“…(c) Global spatial trend analysis was applied to evaluate the characteristics of the spatial allocation trends of medical intervention resources and coverage for ASD based on 2D and 3D perspectives [22]. (d) Density-based cluster analysis was conducted to determine the spatial clustering patterns of ASD medical resources [23]. (e) The spatial regression relationships of the independent and dependent variables were evaluated using MGWR and plotted as digital maps to visualize the spatial regression relationships.…”
Section: Methods and Softwarementioning
confidence: 99%
“…However, there is concern that this approach may be suboptimal for some patients and does not address the heterogeneity of the condition [5,6]. Clinical phenotypes, or subtypes, can be best defined as distinct groups of patients with similar laboratory abnormalities, organ dysfunction, and outcomes [7][8][9]. Efforts to identify clinical sepsis phenotypes have gained interest recently but have remained limited in clinical applications.…”
Section: Introductionmentioning
confidence: 99%