Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.

Acute kidney injury (AKI) is serious and widespread across healthcare (1 in 7 hospital admissions) but recognition is often delayed causing avoidable harm. Nationwide automated biochemistry alerts for AKI stages 1-3 have been introduced in England to improve recognition. We explored how these alerts...

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Main Authors: Simon Sawhney, Angharad Marks, Tariq Ali, Laura Clark, Nick Fluck, Gordon J Prescott, William G Simpson, Corri Black
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4488369?pdf=render
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spelling doaj-13801c4d75f1425da18669a214f145832020-11-25T02:17:56ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01106e013190910.1371/journal.pone.0131909Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.Simon SawhneyAngharad MarksTariq AliLaura ClarkNick FluckGordon J PrescottWilliam G SimpsonCorri BlackAcute kidney injury (AKI) is serious and widespread across healthcare (1 in 7 hospital admissions) but recognition is often delayed causing avoidable harm. Nationwide automated biochemistry alerts for AKI stages 1-3 have been introduced in England to improve recognition. We explored how these alerts compared with clinical diagnosis in different hospital settings.We used a large population cohort of 4464 patients with renal impairment. Each patient had case-note review by a nephrologist, using RIFLE criteria to diagnose AKI and chronic kidney disease (CKD). We identified and staged AKI alerts using the new national NHS England AKI algorithm and compared this with nephrologist diagnosis across hospital settings.Of 4464 patients, 525 had RIFLE AKI, 449 had mild AKI, 2185 had CKD (without AKI) and 1305 were of uncertain chronicity. NHS AKI algorithm criteria alerted for 90.5% of RIFLE AKI, 72.4% of mild AKI, 34.1% of uncertain cases and 14.0% of patients who actually had CKD.The algorithm identified AKI particularly well in intensive care (95.5%) and nephrology (94.6%), but less well on surgical wards (86.4%). Restricting the algorithm to stage 2 and 3 alerts reduced the over-diagnosis of AKI in CKD patients from 14.0% to 2.1%, but missed or delayed alerts in two-thirds of RIFLE AKI patients.Automated AKI detection performed well across hospital settings, but was less sensitive on surgical wards. Clinicians should be mindful that restricting alerts to stages 2-3 may identify fewer CKD patients, but including stage 1 provides more sensitive and timely alerting.http://europepmc.org/articles/PMC4488369?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Simon Sawhney
Angharad Marks
Tariq Ali
Laura Clark
Nick Fluck
Gordon J Prescott
William G Simpson
Corri Black
spellingShingle Simon Sawhney
Angharad Marks
Tariq Ali
Laura Clark
Nick Fluck
Gordon J Prescott
William G Simpson
Corri Black
Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.
PLoS ONE
author_facet Simon Sawhney
Angharad Marks
Tariq Ali
Laura Clark
Nick Fluck
Gordon J Prescott
William G Simpson
Corri Black
author_sort Simon Sawhney
title Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.
title_short Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.
title_full Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.
title_fullStr Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.
title_full_unstemmed Maximising Acute Kidney Injury Alerts--A Cross-Sectional Comparison with the Clinical Diagnosis.
title_sort maximising acute kidney injury alerts--a cross-sectional comparison with the clinical diagnosis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Acute kidney injury (AKI) is serious and widespread across healthcare (1 in 7 hospital admissions) but recognition is often delayed causing avoidable harm. Nationwide automated biochemistry alerts for AKI stages 1-3 have been introduced in England to improve recognition. We explored how these alerts compared with clinical diagnosis in different hospital settings.We used a large population cohort of 4464 patients with renal impairment. Each patient had case-note review by a nephrologist, using RIFLE criteria to diagnose AKI and chronic kidney disease (CKD). We identified and staged AKI alerts using the new national NHS England AKI algorithm and compared this with nephrologist diagnosis across hospital settings.Of 4464 patients, 525 had RIFLE AKI, 449 had mild AKI, 2185 had CKD (without AKI) and 1305 were of uncertain chronicity. NHS AKI algorithm criteria alerted for 90.5% of RIFLE AKI, 72.4% of mild AKI, 34.1% of uncertain cases and 14.0% of patients who actually had CKD.The algorithm identified AKI particularly well in intensive care (95.5%) and nephrology (94.6%), but less well on surgical wards (86.4%). Restricting the algorithm to stage 2 and 3 alerts reduced the over-diagnosis of AKI in CKD patients from 14.0% to 2.1%, but missed or delayed alerts in two-thirds of RIFLE AKI patients.Automated AKI detection performed well across hospital settings, but was less sensitive on surgical wards. Clinicians should be mindful that restricting alerts to stages 2-3 may identify fewer CKD patients, but including stage 1 provides more sensitive and timely alerting.
url http://europepmc.org/articles/PMC4488369?pdf=render
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