Confirmatory Latent Class Analysis: Model Selection Using Bayes Factors and (Pseudo) Likelihood Ratio Statistics

2001 ◽  
Vol 36 (4) ◽  
pp. 563-588 ◽  
Author(s):  
Herbert Hoijtink
2019 ◽  
pp. 105477381988335
Author(s):  
Ana Railka de Souza Oliveira-Kumakura ◽  
Cássia Milena Freitas Machado Sousa ◽  
Jessica Aparecida Biscaro ◽  
Kelly Cristina Rodrigues da Silva ◽  
Juliany Lino Gomes Silva ◽  
...  

To clinically validate the defining characteristics of nursing diagnoses related to self-care deficits in feeding, bathing, toileting, and dressing in patients with stroke. A diagnostic accuracy study was conducted with a sample of 135 patients with stroke. Sensitivity and specificity were calculated based on the latent class analysis method using the random effects model. The prevalence of diagnoses was 23.5% for Bathing self-care deficit, 18.5% for Dressing self-care deficit, 13.3% for Toileting self-care deficit, and 7.5% for Feeding self-care deficit. Fourteen defining characteristics were sensitive, and 17 were specific. Hemorrhagic stroke and note 4 on the Rankin scale was associated with self-care deficits. Of the 37 defining characteristics of the four diagnoses studied, 19 were clinically validated according to the latent class analysis model. These most accurate clinical indicators contribute to the development of the care plan for patients with stroke.


2017 ◽  
Vol 1 (2) ◽  
Author(s):  
Margaret E Gonsoulin ◽  
Ramon A Durazo-Arvizu ◽  
Karen M Goldstein ◽  
Guichan Cao ◽  
Qiuying Zhang ◽  
...  

Abstract Background and Objectives This study characterizes the multiple morbidities experienced by senior-aged women Veterans so that the Veterans Health Administration (VHA) and other health care systems may be better prepared to meet the health care needs of this growing cohort. Research Design and Methods Using the VHA’s Corporate Data Warehouse, we conducted a retrospective observational study of the 38,597 female veteran patients who were at least 65 years old and received care in the VHA during 2013 and 2014. We use a latent class analysis model to cluster diagnoses associated with inpatient and outpatient events over the years. Results The senior-aged women Veterans are characterized by six major classes of disease clusters. We defined these classes as: Healthy (16.24% of the cohort); Ophthalmological Disorders (13.84%); Musculoskeletal Disorders (14.22%); At Risk for Cardiovascular Disease (37.53%); Diabetic with Comorbidities (9.05%); and Multimorbid (9.12%). The patterns and prevalence of these condition classes vary by race, age, and marital status. Discussion and Implications Each of the six clusters can be used to develop clinical practice guidelines that are appropriate for senior-aged women Veterans. Consistent with past literature, the most common conditions in this cohort are hypertension and hyperlipidemia; together they form the most common class, “At Risk of Cardiovascular Disease (CVD)”. Results also show evidence of race-related disparities, with Blacks being more likely to be in the highest risk classes. Also, members of the cohort who are currently married having improved chances of being in the healthy class. And finally, we see a “healthy survivor” effect with the oldest women in our cohort having low overall rates of disease.


Author(s):  
Praveen Kumar-M ◽  
Rahul Mahajan ◽  
S Kathirvel ◽  
Naveen Hegde ◽  
Ashish Kumar Kakkar ◽  
...  

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