Propensity Score Matching: Identifying Opportunities for Future Use in Nursing Studies
Abstract
:1. Introduction
2. Materials and Methods
- Using synthetic knowledge synthesis, we identified study themes by analyzing publications describing PSM use in nursing published in the period 2020–2024 from the Web of Science bibliographic database, using the search string “propensity score matching” limited to the research area of nursing. The study period was limited to the recent five years to analyze state-of-the-art research and trends only. No additional inclusion/exclusion criteria were used.
- Using synthetic knowledge synthesis, we identified the most popular themes for observational, retrospective, and other quasi-experimental studies in nursing using the same study period and bibliographic database as in Step 1. The search string was observational or retrospective or “quasi?experimental” limited to research area Nursing. No additional inclusion/exclusion criteria were used.
- Comparing the themes identified in Step 1 and Step 2 and using themes emerging just in Step 2 as keywords, we searched for influential articles in the Web of Science and Scopus databases, where PMS has already been successfully used in medical applications. The cases presented in these articles were finally identified as new opportunities for PSM use in nursing.
- Develop a comprehensive search strategy to compile a relevant corpus of publications that addresses the research objectives through a knowledge synthesis process.
- Select Author Keywords as units of information for content analysis, as they precisely reflect the intended focus of the research that authors aim to share with the academic community, while maintaining a balance between structured terminology and author-driven expression.
- Perform a bibliometric mapping of author’s keywords into a clustered bibliometric map using VOSViewer [34].
- Analyze the links and proximity between author keywords in individual clusters to form categories.
- Condense categories into themes.
3. Results and Discussion
3.1. Synthetic Knowledge Synthesis of Nursing PSM Studies
- Red cluster: Psychological health (anxiety and depression) of nursing staff after workplace violence. PSM and regression analysis were used to compare depression and anxiety symptoms in physicians and nurses who had or had not experienced workplace violence [35] or whether workplace violence affects psychological health in general [22].
- Light blue cluster: Nurse-led management [36].
- Violet cluster: Nurse-led management. PMS was used to compare groups of patients who received nurse-led multidisciplinary psychological management and who did not [36] to compare anesthesia-related outcomes between patients monitored by newly recruited nurse anesthetists and those monitored by newly recruited anesthesiologists [39].
- Green cluster: Successful aging. PSM was used to assess the effect of hospitalization on successful aging [42].
3.2. Syntetic Knowledge Synthesis of Nursing Observational, Retrospective and Other Quasi Experimental Studies
- Nursing education;
- Emergency and critical care nursing;
- Primary care nursing;
- Patient safety and quality of care;
- Pandemics;
- Midwifery;
- CVD rehabilitation;
- Quality of life and self-care/management for all ages;
- Pain management;
- Epidemiology from the nursing perspective.
3.3. Identifying a Sample of New Opportunities
3.4. Study Limitations
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Public Involvement Statement
Guidelines and Standards Statement
Use of Artificial Intelligence
Conflicts of Interest
References
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Themes of Nursing Observational Studies | Opportunities Translated from General Healthcare Research Where PSM was Used |
---|---|
Nursing education | Comparing distance/blended and face-to-face learning [43,44], does voluntary clinical practice improve study outcomes [45]? |
Emergency and critical care nursing | Impact of personal protective equipment [46]. |
Primary care nursing | Effectiveness of self-management in the elderly [47], effectiveness of diets in chronic diseases [48]. |
Patient safety and quality of care | Patient safety and efficiency of the health of robots [49]. |
Midwifery | The effects of midwifery continuity care on delivery [49], association of quality of care with healthcare costs [50]. |
CVD rehabilitation | Effectiveness of early rehabilitation in intensive units [51]. |
Quality of life and self-care/management | Association between self-medication for mild symptoms and quality of life among older adults [52], long-term effects of severe COVID-19 [53]. |
Pain management | Effect of perioperative pain neuroscience education [54], impact of biological sex patients with chronic pain [55]. |
Epidemiology | Emulating randomized clinical trials with nonrandomized real-world evidence studies [56], association between initial treatment strategy and long-term survival [57]. |
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Blažun Vošner, H.; Kokol, P.; Završnik, J. Propensity Score Matching: Identifying Opportunities for Future Use in Nursing Studies. Nurs. Rep. 2025, 15, 142. https://doi.org/10.3390/nursrep15050142
Blažun Vošner H, Kokol P, Završnik J. Propensity Score Matching: Identifying Opportunities for Future Use in Nursing Studies. Nursing Reports. 2025; 15(5):142. https://doi.org/10.3390/nursrep15050142
Chicago/Turabian StyleBlažun Vošner, Helena, Peter Kokol, and Jernej Završnik. 2025. "Propensity Score Matching: Identifying Opportunities for Future Use in Nursing Studies" Nursing Reports 15, no. 5: 142. https://doi.org/10.3390/nursrep15050142
APA StyleBlažun Vošner, H., Kokol, P., & Završnik, J. (2025). Propensity Score Matching: Identifying Opportunities for Future Use in Nursing Studies. Nursing Reports, 15(5), 142. https://doi.org/10.3390/nursrep15050142