| Literature DB >> 22666140 |
Abstract
Over the last few years, increasing attention has been directed toward the problems inherent to measuring the quality of healthcare and implementing benchmarking strategies. Besides offering accreditation and certification processes, recent approaches measure the performance of healthcare institutions in order to evaluate their effectiveness, defined as the capacity to provide treatment that modifies and improves the patient's state of health. This paper, dealing with hospital effectiveness, focuses on research methods for effectiveness analyses within a strategy comparing different healthcare institutions. The paper, after having introduced readers to the principle debates on benchmarking strategies, which depend on the perspective and type of indicators used, focuses on the methodological problems related to performing consistent benchmarking analyses. Particularly, statistical methods suitable for controlling case-mix, analyzing aggregate data, rare events, and continuous outcomes measured with error are examined. Specific challenges of benchmarking strategies, such as the risk of risk adjustment (case-mix fallacy, underreporting, risk of comparing noncomparable hospitals), selection bias, and possible strategies for the development of consistent benchmarking analyses, are discussed. Finally, to demonstrate the feasibility of the illustrated benchmarking strategies, an application focused on determining regional benchmarks for patient satisfaction (using 2009 Lombardy Region Patient Satisfaction Questionnaire) is proposed.Entities:
Mesh:
Year: 2012 PMID: 22666140 PMCID: PMC3361319 DOI: 10.1100/2012/606154
Source DB: PubMed Journal: ScientificWorldJournal ISSN: 1537-744X
Item Analysis: missing values, percentage of patients satisfied, and item-component correlation (n = 46, 096).
| Missing | % Satisfied | Y1 | Y2 | Y3 | |
|---|---|---|---|---|---|
| Item description | values | (scores 6+7) | ClinSAT | GenSAT | WaitLists |
| Nurses' courtesy, attention, availability | 370 | 88.5% |
| 0.04 | 0.09 |
| Doctors' courtesy, attention, availability | 606 | 89.4% |
| 0.19 | 0.08 |
|
| 1309 | 89.3% |
| 0.06 | 0.07 |
| Health status (and discharge) information | 609 | 85.1% |
| 0.06 | 0.05 |
| Privacy and consent information | 635 | 88.6% |
| 0.11 | −0.05 |
| Comfort, bed, food, cleanliness | 2150 | 83.6% | 0.12 |
| 0.11 |
| Organisation of the process of the care | 627 | 81.6% | 0.11 |
| 0.02 |
| Recommend hospital (friends or relatives) | 1346 | 85.2% | 0.12 |
| −0.03 |
| Overall satisfaction | 704 | 85.3% | 0.05 |
| 0.01 |
| Waiting time to be admitted to the hospital | 1417 | 75.7% | 0.01 | −0.02 |
|
ICC and significant hospital characteristics.
| Y1 | Y2 | Y3d | |
|---|---|---|---|
| ClinSAT | GenSAT | WaitDISSAT | |
| ICC | 13.0%§ | 14.8%§ | 12.2% |
| Residual ICC | 2.7%§ | 9.5%§ | 1.2%# |
|
| |||
| Hospital Characteristics | Model coefficients and significance | ||
|
| |||
| Private Hosp | n.s | 2.068** | 0.0420*** |
| University Hosp | 1.729** | n.s | n.s. |
| % Beds | −0.020* | −0.056** | n.s. |
| N_ Specialties | −0.079*** | −0.281*** | −0.0040*** |
| N_OpRoom | 0.072*** | −0.102* | n.s. |
| % High medical casemix | 3.515* | n.s | n.s. |
| Hours_OpRoom | n.s | 0.001*** | n.s. |
| Ave_MH_OpRoom | n.s | −0.058*** | −0.0004* |
§corrected for measurement error, #rescaled with scale correction factor.
*** P-value < 0.01, **P-value < 0.05, *P-value < 0.10, n.s. = not significant.