| Literature DB >> 17892601 |
Rosemary Karmel1, Diane Gibson.
Abstract
BACKGROUND: The interface between acute hospital care and residential aged care has long been recognised as an important issue in aged care services research in Australia. However, existing national data provide very poor information on the movements of clients between the two sectors. Nevertheless, there are national data sets which separately contain data on individuals' hospital episodes and stays in residential aged care, so that linking the two data sets-if feasible-would provide a valuable resource for examining relationships between the two sectors. As neither name nor common person identifiers are available on the data sets, other information needs to be used to link events relating to inter-sector movement.Entities:
Mesh:
Year: 2007 PMID: 17892601 PMCID: PMC2254617 DOI: 10.1186/1472-6963-7-154
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Linking hospital and residential aged care events: estimated maximum false match rate for several event-based strategies
| Estimated maximum false match rate (%) | ||
|---|---|---|
| Linkage strategy | Population 10000 (single sex) | Population 35000 (single sex) |
| Base linkage strategy(a) | 1.68 | 5.87 |
| -but allowing up to a two day gap when matching a hospital separation to a new admission into residential aged care (3-date admission matching) | 2.67 | 9.36 |
| -but insisting episodes of hospital leave from residential aged care exactly match on both the start and end of the hospital episode | 1.24 | 4.34 |
| -but excluding matching to episodes of social leave from residential aged care as unlikely | 1.05 | 3.66 |
| -but insisting episodes of hospital leave from residential aged care exactly match on both the start and end of the hospital episode and at the same time excluding matching to episodes of social leave from residential aged care | 0.61 | 2.14 |
| Changing assumption to birth dates spread uniformly over 30 years | 0.84 | 2.93 |
| Changing assumption to birth dates spread across 5-year age groups as per aged care admissions over 30 years | 1.10 | 3.86 |
(a) Base linkage strategy includes the following assumptions to allow estimation:
• 15 years of birth dates, uniform distribution
• single-date (exact end-date) matching only of separations to residential aged care admissions and to residential aged care hospital leave
• allow separations to match to social leave covering the hospital episode (cover matching).
Calculations use national average hospital separation rates (2000–01) and residential aged care admission and residential aged care leave rates (2001–02) [38]. Estimates take into account the distribution of hospital episodes by length of stay.
Figure 1The effect of population size on the estimated maximum false match rate.
Estimation assumes:
• 22 years of birth dates, uniform distribution (compromise distribution).
• single-date (exact end-date) matching only of separations to residential aged care admissions.
• exact period matching to residential aged care hospital leave.
Calculations use national average hospital separation rates (2000–01) and residential aged care admission and residential aged care leave rates (2001–02) [38]. Estimates take into account the distribution of hospital episodes by length of stay.
Figure 2The estimated maximum false match rate given observed event and match rates: The estimated maximum false match rate among achieved matches as a function of the match rate among the initial exit events and the occurrence rate of the possibly-related entry events, for two population sizes.
Figure 3Example examining the relationship between false links and true links for different linkage strategies. Figure 3 shows the estimated number of false matches and true matches among achieved matches for links of exit events happening at a rate of 1.2 per day (per 1,000 people) to 20,000 entry events occurring over a year, and demonstrates the change in the entry event match rate as the size of the match region is varied.