Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.

The topology of the patient flow network in a hospital is complex, comprising hundreds of overlapping patient journeys, and is a determinant of operational efficiency. To understand the network architecture of patient flow, we performed a data-driven network analysis of patient flow through two acut...

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Main Authors: Daniel M Bean, Clive Stringer, Neeraj Beeknoo, James Teo, Richard J B Dobson
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5624623?pdf=render
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spelling doaj-543ca485407944df9276f212be79bddd2020-11-24T21:26:34ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-011210e018591210.1371/journal.pone.0185912Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.Daniel M BeanClive StringerNeeraj BeeknooJames TeoRichard J B DobsonThe topology of the patient flow network in a hospital is complex, comprising hundreds of overlapping patient journeys, and is a determinant of operational efficiency. To understand the network architecture of patient flow, we performed a data-driven network analysis of patient flow through two acute hospital sites of King's College Hospital NHS Foundation Trust. Administration databases were queried for all intra-hospital patient transfers in an 18-month period and modelled as a dynamic weighted directed graph. A 'core' subnetwork containing only 13-17% of all edges channelled 83-90% of the patient flow, while an 'ephemeral' network constituted the remainder. Unsupervised cluster analysis and differential network analysis identified sub-networks where traffic is most associated with A&E performance. Increased flow to clinical decision units was associated with the best A&E performance in both sites. The component analysis also detected a weekend effect on patient transfers which was not associated with performance. We have performed the first data-driven hypothesis-free analysis of patient flow which can enhance understanding of whole healthcare systems. Such analysis can drive transformation in healthcare as it has in industries such as manufacturing.http://europepmc.org/articles/PMC5624623?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Daniel M Bean
Clive Stringer
Neeraj Beeknoo
James Teo
Richard J B Dobson
spellingShingle Daniel M Bean
Clive Stringer
Neeraj Beeknoo
James Teo
Richard J B Dobson
Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.
PLoS ONE
author_facet Daniel M Bean
Clive Stringer
Neeraj Beeknoo
James Teo
Richard J B Dobson
author_sort Daniel M Bean
title Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.
title_short Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.
title_full Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.
title_fullStr Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.
title_full_unstemmed Network analysis of patient flow in two UK acute care hospitals identifies key sub-networks for A&E performance.
title_sort network analysis of patient flow in two uk acute care hospitals identifies key sub-networks for a&e performance.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description The topology of the patient flow network in a hospital is complex, comprising hundreds of overlapping patient journeys, and is a determinant of operational efficiency. To understand the network architecture of patient flow, we performed a data-driven network analysis of patient flow through two acute hospital sites of King's College Hospital NHS Foundation Trust. Administration databases were queried for all intra-hospital patient transfers in an 18-month period and modelled as a dynamic weighted directed graph. A 'core' subnetwork containing only 13-17% of all edges channelled 83-90% of the patient flow, while an 'ephemeral' network constituted the remainder. Unsupervised cluster analysis and differential network analysis identified sub-networks where traffic is most associated with A&E performance. Increased flow to clinical decision units was associated with the best A&E performance in both sites. The component analysis also detected a weekend effect on patient transfers which was not associated with performance. We have performed the first data-driven hypothesis-free analysis of patient flow which can enhance understanding of whole healthcare systems. Such analysis can drive transformation in healthcare as it has in industries such as manufacturing.
url http://europepmc.org/articles/PMC5624623?pdf=render
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