| Literature DB >> 31304342 |
Jonathan M Clarke1,2,3, Leigh R Warren1, Sonal Arora1, Mauricio Barahona2,4, Ara W Darzi1,3.
Abstract
Effective sharing of clinical information between care providers is a critical component of a safe, efficient health system. National data-sharing systems may be costly, politically contentious and do not reflect local patterns of care delivery. This study examines hospital attendances in England from 2013 to 2015 to identify instances of patient sharing between hospitals. Of 19.6 million patients receiving care from 155 hospital care providers, 130 million presentations were identified. On 14.7 million occasions (12%), patients attended a different hospital to the one they attended on their previous interaction. A network of hospitals was constructed based on the frequency of patient sharing between hospitals which was partitioned using the Louvain algorithm into ten distinct data-sharing communities, improving the continuity of data sharing in such instances from 0 to 65-95%. Locally implemented data-sharing communities of hospitals may achieve effective accessibility of clinical information without a large-scale national interoperable information system.Entities:
Keywords: Applied mathematics; Health care economics; Health policy; Translational research
Year: 2018 PMID: 31304342 PMCID: PMC6550264 DOI: 10.1038/s41746-018-0072-y
Source DB: PubMed Journal: NPJ Digit Med ISSN: 2398-6352
Fig. 1Spatial distribution of patient sharing. Geographic representation by Lower Layer Super Output Area (LSOA) of the probability (as represented by the colour map) that a patient presenting to one provider was last seen at a different provider within the study period
Fig. 2Interhospital patient-sharing networks. Two representations of the patient-sharing network of healthcare providers made sparser for illustration purposes. The network has edge weights given by the patient-sharing cases (F) and the size of the nodes reflects the total number of shared patients. Left: patient-sharing network with edges above 100 cases shown (4397 edges – 38.6%). Right: patient-sharing network with edges above 10,000 cases (346 edges – 3.0%)
Data-sharing community descriptions
| Community name | Number of hospitals | Total fragmented presentations | Previous provider located within community | Previous provider located outside community | % Within community |
|---|---|---|---|---|---|
| ‘East Anglia’ | 10 | 537,408 | 385,490 | 151,918 | 71.73 |
| ‘Merseyside’ | 12 | 1,002,066 | 888,043 | 114,023 | 88.62 |
| ‘North East’ | 9 | 1,086,068 | 1,024,145 | 61,923 | 94.3 |
| ‘North London’ | 24 | 3,373,655 | 2,696,511 | 677,144 | 79.93 |
| ‘North West’ | 15 | 1,476,174 | 1,283,869 | 192,305 | 86.97 |
| ‘South’ | 16 | 1,157,703 | 754,640 | 403,063 | 65.18 |
| ‘South London and South East’ | 16 | 2,107,474 | 1,567,297 | 540,177 | 74.37 |
| ‘South West’ | 16 | 1,172,622 | 986,142 | 186,480 | 84.1 |
| ‘West Midlands’ | 16 | 1,343,370 | 1,137,792 | 205,578 | 84.7 |
| ‘Yorkshire and North Midlands’ | 21 | 1,492,251 | 1,256,115 | 236,136 | 84.18 |
Table showing for each interaction with a provider in each community the proportion of times the patient’s previous secondary care interaction had been with a provider located inside or outside the community of that provider
Fig. 3Spatial representation of data-sharing communities. The left-hand figure shows the geographic location of trusts coloured according to their assigned community. The right-hand figure shows the areas of the country where hospitals in each community are the most frequently attended. The ten communities of hospitals obtained through community detection analysis of the patient-sharing network exhibit a strong geographical character