| Literature DB >> 20573235 |
E Michael Foster1, Michael R Hosking, Serhan Ziya.
Abstract
OBJECTIVES: A recent joint report from the Institute of Medicine and the National Academy of Engineering, highlights the benefits of--indeed, the need for--mathematical analysis of healthcare delivery. Tools for such analysis have been developed over decades by researchers in Operations Research (OR). An OR perspective typically frames a complex problem in terms of its essential mathematical structure. This article illustrates the use and value of the tools of operations research in healthcare. It reviews one OR tool, queueing theory, and provides an illustration involving a hypothetical drug treatment facility.Entities:
Mesh:
Year: 2010 PMID: 20573235 PMCID: PMC2914732 DOI: 10.1186/1471-2288-10-60
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.615
Kendall's notation for Queueing Models
| Position | Meaning | Description |
|---|---|---|
| 1st (A) | Arrival Process | This parameter describes how customers arrive at the system. In particular, whether they arrive in groups or as individuals and the distribution of inter-arrival times. |
| 2nd (B) | Service Time Distribution | This parameter describes the distribution of service times. |
| 3rd (C) | Number of Servers | Often this parameter is 1, meaning that there is only one server, but multi-server systems are common, and so most results are generalized to an arbitrary number of servers, c. Some queues can also have infinite servers. |
| 4th (K) | System Capacity | This parameter indicates how many custometers can be served at one time, including those in service. It is often assumed to be sufficiently large as to never be an issue. |
| 5th (D) | Service Discipline | This parameter refers to the order (or discipline) that arriving customers are served. For most examples the discipline is First Come First Served (FCFS). But other options exist such as Last Come First Served (LCFS) and Service In Random Order (SIRO) |
Figure 1Number of beds added and key performance measures.
Figure 2Average waiting time for an arrival not immediately served.
Effect of the additional arrivals on Key Outcomes
| Arrivals rate (per day) | Avg. Percent of Beds Occupied | Percent of Arrivals Who Do not Wait | Avg. Wait Given That the Arrival Must Wait (in days) |
|---|---|---|---|
| 3, (After Merger, no action) | 87.5 | 87.7 | 1.55 |
| 3.1 | 90.4 | 78.0 | 1.90 |
| 3.2 | 93.3 | 63.2 | 2.55 |
| 3.3 | 96.3 | 41.4 | 4.24 |
| 95/28 (3.39) | 99.0 | 13.2 | 14.3 |
| 3.5 and above | 100 | 0 | Infinite |
| Original situation (pre merger) | 87.5 | 66.4 | 4.11 |
Effect of reductions in the number of beds on Key Outcomes
| Beds Cut (NumberLeft) | Avg. Percent of Beds Occupied | Percent of Arrivals Who Don't Wait | Avg. Wait Given That the Arrival Must Wait (in days) |
|---|---|---|---|
| 0, (96) (no action) | 87.5 | 87.7 | 1.55 |
| 2 (94) | 89.3 | 81.6 | 1.78 |
| 4 (92) | 91.3 | 73.3 | 2.13 |
| 6 (90) | 93.3 | 61.9 | 2.71 |
| 8 (88) | 95.4 | 46.5 | 3.87 |
| 10 (86) | 97.7 | 26.3 | 7.36 |
| 11 (85) | 98.8 | 14.0 | 14.4 |
| 12 or more | 100 | 0 | Infinite |
| Original situation (pre merge) | 87.5 | 66.4 | 4.11 |