Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?

Introduction: The National Early Warning Score (NEWS) introduced by the Royal College of Physicians in 2012, has been widely adopted across the NHS to monitor patient deterioration. It incorporates vital signs (respiratory rate, oxygen saturation, heart rate, blood pressure, consciousness and temper...

Full description

Saved in:
Bibliographic Details
Main Authors: Luke Oakes, Ella Riley, Amna Riaz, Radhiya Bakth, David Goldsmith, Vibhor Barve, Zahra Nejad, Sarah Md Fuad, Kausik Chatterjee
Format: Article
Language:English
Published: Elsevier 2025-07-01
Series:Clinical Medicine
Online Access:http://www.sciencedirect.com/science/article/pii/S1470211825001447
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849254646807265280
author Luke Oakes
Ella Riley
Amna Riaz
Radhiya Bakth
David Goldsmith
Vibhor Barve
Zahra Nejad
Sarah Md Fuad
Kausik Chatterjee
author_facet Luke Oakes
Ella Riley
Amna Riaz
Radhiya Bakth
David Goldsmith
Vibhor Barve
Zahra Nejad
Sarah Md Fuad
Kausik Chatterjee
author_sort Luke Oakes
collection DOAJ
description Introduction: The National Early Warning Score (NEWS) introduced by the Royal College of Physicians in 2012, has been widely adopted across the NHS to monitor patient deterioration. It incorporates vital signs (respiratory rate, oxygen saturation, heart rate, blood pressure, consciousness and temperature) and stratifies risk into low, medium and high categories, each requiring different escalation levels. According to National Institute of Health and Care Excellence (NICE) guidelines (MIB205), a NEWS of ≥5, or a score of 3 in any one parameter, warrants an urgent doctor review.1 However, its suitability for older patients (>65 years), especially in rehabilitation settings, remains under-investigated. This project evaluated adherence to NEWS protocols and assessed the appropriateness of current thresholds for older patients. Materials and Methods: This retrospective observational audit included older patients initially managed at a district general hospital (DGH) before transfer to a nearby rehabilitation unit. Data were extracted from electronic health records (Cerner) between November 2023 and September 2024, including demographics, NEWS values, escalation records, staff responses, length of stay and outcomes. Escalation actions were categorised into three levels for nurses (monitoring, minor intervention and escalation) and four for doctors (no action, monitoring, minor intervention and referral to another specialty). Statistical tests, including Kendall’s tau-B, Chi-square and logistic regression, explored trends and associations with frailty scores and patient characteristics. Results and Discussion: Among 94 patients (mean age 84±7 years), 11,871 NEWS alerts were analysed. Most alerts occurred between days 10 and 20 post-admission, indicating possible delays in identifying clinical decline. 73% of patients were discharged home, 23% to care facilities and 3% died. Nurses primarily continued monitoring (59%), while 9% triggered minor interventions and 32% escalated to medical teams, such as critical care outreach. Frailty significantly influenced nurse escalation: higher frailty scores (6–7) were associated with increased escalation (p<0.001). Conversely, doctors’ responses did not significantly correlate with frailty (p>0.05) and were frequently delayed. While NEWS thresholds showed moderate sensitivity (73–87%), specificity was low (37–48%). Machine learning models highlighted age, oxygen saturation, respiratory rate and temperature as key predictors, suggesting that incorporating frailty could enhance predictive accuracy of nursing escalation (Figs 1 and 2). Conclusion: Current NEWS protocols may be suboptimal for frail older patients, with delays in escalation and inconsistent interprofessional responses. The system’s low specificity and disconnection between nursing and medical teams suggest a need for revised thresholds and clearer communication pathways. Integrating frailty scores and applying machine learning tools could refine risk prediction and guide timely, appropriate interventions. Further research should develop and validate frailty-adjusted NEWS models to support improved patient outcomes.
format Article
id doaj-art-96032d78c50042e089e0ca34e1de0e70
institution Kabale University
issn 1470-2118
language English
publishDate 2025-07-01
publisher Elsevier
record_format Article
series Clinical Medicine
spelling doaj-art-96032d78c50042e089e0ca34e1de0e702025-08-20T03:56:04ZengElsevierClinical Medicine1470-21182025-07-0125410042610.1016/j.clinme.2025.100426Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?Luke Oakes0Ella Riley1Amna Riaz2Radhiya Bakth3David Goldsmith4Vibhor Barve5Zahra Nejad6Sarah Md Fuad7Kausik Chatterjee8Countess of Chester HospitalCountess of Chester HospitalCountess of Chester HospitalCountess of Chester HospitalCountess of Chester HospitalCountess of Chester HospitalCountess of Chester HospitalCountess of Chester HospitalCountess of Chester HospitalIntroduction: The National Early Warning Score (NEWS) introduced by the Royal College of Physicians in 2012, has been widely adopted across the NHS to monitor patient deterioration. It incorporates vital signs (respiratory rate, oxygen saturation, heart rate, blood pressure, consciousness and temperature) and stratifies risk into low, medium and high categories, each requiring different escalation levels. According to National Institute of Health and Care Excellence (NICE) guidelines (MIB205), a NEWS of ≥5, or a score of 3 in any one parameter, warrants an urgent doctor review.1 However, its suitability for older patients (>65 years), especially in rehabilitation settings, remains under-investigated. This project evaluated adherence to NEWS protocols and assessed the appropriateness of current thresholds for older patients. Materials and Methods: This retrospective observational audit included older patients initially managed at a district general hospital (DGH) before transfer to a nearby rehabilitation unit. Data were extracted from electronic health records (Cerner) between November 2023 and September 2024, including demographics, NEWS values, escalation records, staff responses, length of stay and outcomes. Escalation actions were categorised into three levels for nurses (monitoring, minor intervention and escalation) and four for doctors (no action, monitoring, minor intervention and referral to another specialty). Statistical tests, including Kendall’s tau-B, Chi-square and logistic regression, explored trends and associations with frailty scores and patient characteristics. Results and Discussion: Among 94 patients (mean age 84±7 years), 11,871 NEWS alerts were analysed. Most alerts occurred between days 10 and 20 post-admission, indicating possible delays in identifying clinical decline. 73% of patients were discharged home, 23% to care facilities and 3% died. Nurses primarily continued monitoring (59%), while 9% triggered minor interventions and 32% escalated to medical teams, such as critical care outreach. Frailty significantly influenced nurse escalation: higher frailty scores (6–7) were associated with increased escalation (p<0.001). Conversely, doctors’ responses did not significantly correlate with frailty (p>0.05) and were frequently delayed. While NEWS thresholds showed moderate sensitivity (73–87%), specificity was low (37–48%). Machine learning models highlighted age, oxygen saturation, respiratory rate and temperature as key predictors, suggesting that incorporating frailty could enhance predictive accuracy of nursing escalation (Figs 1 and 2). Conclusion: Current NEWS protocols may be suboptimal for frail older patients, with delays in escalation and inconsistent interprofessional responses. The system’s low specificity and disconnection between nursing and medical teams suggest a need for revised thresholds and clearer communication pathways. Integrating frailty scores and applying machine learning tools could refine risk prediction and guide timely, appropriate interventions. Further research should develop and validate frailty-adjusted NEWS models to support improved patient outcomes.http://www.sciencedirect.com/science/article/pii/S1470211825001447
spellingShingle Luke Oakes
Ella Riley
Amna Riaz
Radhiya Bakth
David Goldsmith
Vibhor Barve
Zahra Nejad
Sarah Md Fuad
Kausik Chatterjee
Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?
Clinical Medicine
title Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?
title_full Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?
title_fullStr Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?
title_full_unstemmed Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?
title_short Is National Early Warning Score (NEWS) effective in older populations with acute illnesses?
title_sort is national early warning score news effective in older populations with acute illnesses
url http://www.sciencedirect.com/science/article/pii/S1470211825001447
work_keys_str_mv AT lukeoakes isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT ellariley isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT amnariaz isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT radhiyabakth isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT davidgoldsmith isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT vibhorbarve isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT zahranejad isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT sarahmdfuad isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses
AT kausikchatterjee isnationalearlywarningscorenewseffectiveinolderpopulationswithacuteillnesses