Department of Public Health, College of Medicine, Nova Southeastern University, Lauderdale, FL 33328, USA.
Res Social Adm Pharm. 2010 Mar;6(1):32-8. doi: 10.1016/j.sapharm.2009.03.002. Epub 2009 Aug 13.
Research on job satisfaction and turnover using latent class analysis (LCA) has been conducted in other disciplines. LCA has seldom been applied to social pharmacy research and may be especially useful for examining job situation constructs in pharmacy organizations.
The objective of the study was to determine the probability of turnover among practicing pharmacists using LCA.
Using a cross-sectional descriptive design, 2400 randomly selected pharmacists with active licenses in Florida were surveyed. A model was created using LCA, then fit indices were used to determine whether underlying "job satisfaction clusters" were present. Once identified, these clusters along with the covariate practice site were modeled on a distal outcome turnover.
A 5-class model appeared to best fit the data: a "pseudo-satisfied" class that contained 8% of the sample, a "career-goal" class that contained 11% of the sample, a "satisfied class" that contained 44% of the sample, a "job-expectation" class that contained 3% of the sample, and an "unsatisfied class" that contained 17% of the sample. In terms of predicting the distal outcome "turnover," the calculated odds ratios indicate that compared with class 3 or the satisfied group, class 2 was 14 times more likely, class 4 was 17 times more likely, and class 5 was 26 times more likely to state that they do not intend to be employed with their current employer 1 year from now.
The LCA method was found to be effective for finding relevant subgroups with a heterogeneous at-risk population for turnover. Results from the analysis indicate that job satisfaction may be parsed into smaller, more interpretable and useful subgroups. This result holds great promise for practitioners and researchers, alike.
使用潜在类别分析(LCA)对工作满意度和离职率的研究已经在其他学科中进行过。LCA 很少应用于社会药学研究,对于检验药学组织中的工作情况结构可能特别有用。
本研究的目的是使用 LCA 确定执业药剂师离职的可能性。
采用横断面描述性设计,对佛罗里达州 2400 名随机选择的持有效执照的药剂师进行调查。使用 LCA 建立模型,然后使用拟合指数确定是否存在潜在的“工作满意度聚类”。一旦确定,这些聚类以及协变量实践地点,将对远程结果离职进行建模。
5 类模型似乎最适合拟合数据:一个包含 8%样本的“伪满意”类,一个包含 11%样本的“职业目标”类,一个包含 44%样本的“满意”类,一个包含 3%样本的“工作期望”类,以及一个包含 17%样本的“不满意”类。就预测远程结果“离职”而言,计算出的优势比表明,与第 3 类或满意组相比,第 2 类的可能性高 14 倍,第 4 类的可能性高 17 倍,第 5 类的可能性高 26 倍,表示他们不打算在未来 1 年内受雇于目前的雇主。
发现 LCA 方法对于寻找具有离职高风险的异质人群的相关亚组是有效的。分析结果表明,工作满意度可能被细分为更小、更易于解释和更有用的亚组。这一结果对从业者和研究人员都有很大的帮助。