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Brief Report

COVID-19 Mortality in Patients with a Ward-Based Ceiling of Care

by
Matthew Ingram
1,2,*,
Ellen Tullo
1,3,
Laura Mackay
1,
Avinash Aujayeb
1 and
Northumbria COVID-19 Audit Collaborative
1
Northumbria Healthcare NHS Foundation Trust, North Shields NE1 7RU, UK
2
Translational and Clinical Research Institute, Newcastle University, Newcastle upon Tyne NE1 7RU, UK
3
NIHR Newcastle Biomedical Research Centre, Newcastle upon Tyne NE1 7RU, UK
*
Author to whom correspondence should be addressed.
See Appendix A for Collaborator List.
Submission received: 14 October 2021 / Revised: 4 November 2021 / Accepted: 4 November 2021 / Published: 17 November 2021
(This article belongs to the Special Issue SARS-CoV-2 and Stresses)

Abstract

:
Objectives: COVID-19 patients thought unlikely to benefit from organ support, thereby having a ward-based ceiling of care (WBCoC), represent a distinct subgroup. There are no associated studies in mortality. We sought to identify clinical risk factors for inpatient COVID-19 mortality. Design and setting: this was a retrospective observational study of patients admitted to Northumbria Healthcare NHS Foundation Trust. Clinical variables were associated with inpatient mortality via logistic regression. Participants: all patients admitted with COVID-19 infection and who had a WBCoC at point of admission were included (n = 114). Main outcome measures: the outcome measure was inpatient death.

1. Summary

What is already known on this subject?
Frailer and more elderly patients are at increased risk of COVID-19 mortality and are also more likely to have a ward-based ceiling of care (WBCoC).
Being better able to prognosticate patients with a WBCoC would allow more informed discussions with patients and relatives and would better enable services to provide holistic and end-of-life cares, such as family visits.
What are the new findings?
Mortality rate in this patient group was 48.2%.
Risk factors for inpatient mortality included increasing clinical frailty, raised inflammatory markers, increasing oxygen requirement and increasing serum creatinine.
Within this patient group, age and residential status were not risk factors for inpatient mortality.
How might it impact clinical practice in the foreseeable future?
More objective means to prognosticate COVID-19 patients with a WBCoC would allow strained healthcare systems to appropriately allocate resources and would enable clinicians to provide better holistic and clinical care.

2. Introduction

Older, frailer and co-morbid patients are disproportionately affected by COVID-19 [1,2,3]. Guidance from the National Institute of Clinical Excellence suggests that such individuals are less likely to benefit from organ support on intensive care and high-dependency units, thus being more likely to have a ward-based ceiling of care (WBCoC) [4]. Patients with a WBCoC represent a distinct clinical subgroup, which has become increasingly relevant during the COVID-19 pandemic. Whilst it is anticipated that those patients with severe COVID-19 infection and a WBCoC will have a guarded prognosis, to our knowledge there are no studies outlining their risk factors for mortality.

3. Methods

Northumbria Healthcare NHS Foundation Trust (NHCT) serves a population of 600,000 in the North East of England with care organized across four sites, including a purpose built acute care center [5]. All NHCT COVID-19 inpatients admitted between 1 March 2020 and 27 April 2020 were identified. With local Caldicott approval, data and outcomes were collected retrospectively from clinical records. Rockwood clinical frailty scores (CFS) [6] were individually checked by two consultants in geriatric medicine.
WBCoC was defined as not being for level 2 and 3 care (not for non-invasive ventilation or admission to intensive care), as established at admission (Supplemental Information). We analyzed all COVID-19 inpatients with a WBCoC and for whom infection was confirmed by polymerase chain reaction (PCR) swab within the week preceding presentation, or within five days following presentation.
We carried out univariate logistic regression of common clinical variables against inpatient mortality (Supplemental Information). Significance was inferred if p < 0.05. We included significant variables in a progressive multivariate logistic regression analysis, adjusted to optimize the Akaike information criterion (AIC).
Patient and public bodies were not consulted regarding study design or reporting.

4. Results

114 patients were identified, 61 (53.5%) were male and 55 patients (48.2%) died. Median age was 83 (IQR 78–87, range 58–100). Of the 109 patients for whom data was available, 60 (55.0%) lived at a private residence, with 49 (45.0%) living in care homes or supported accommodation prior to admission.
Results from univariate logistic regression are displayed in Table 1 and Table 2. ACE-inhibitor use was associated with reduced odds of inpatient death (odds ratio 0.354, 95% confidence interval 0.145–0.863; p = 0.022) (Table 1). Increased odds of inpatient death were seen with admission high FiO2 requirements of 60% or more (23.111, 5.087–104.989; p < 0.0001) and 28% or more (15.562, 5.738–42.202; p < 0.0001). Chest X-ray changes at presentation (2.684, 1.232–5.847; p = 0.013) and requirement of antibiotics for suspected bacterial infection (2.355, 1.028–5.392; p = 0.042) were also associated. No association with inpatient death was seen with either male gender (0.817, 0.391–1.708; p = 0.591) or living in a private residence (0.898, 0.422–1.911; p = 0.780).
Age was not associated with inpatient mortality (0.997, 0.951–1.045, per year increase; p = 0.908), whereas Rockwood CFS was (1.308, 1.002–1.705, per unit increase; p = 0.048) (Table 2). At presentation, lower peripheral oxygen saturations (0.891, 0.807–0.984, per % increase; p = 0.023), requirement of higher inhaled FiO2 (1.072, 1.025–1.122, per % increase; p = 0.003) and increased respiratory rate (1.206, 1.099–1.323, per beath per minute increase; p < 0.0001) were associated with inpatient mortality.
From serum blood tests at presentation, neutrophilia (1.099, 1.008–1.198, per 109/L increase; p = 0.033), increasing C-reactive protein (CRP; 1.009, 1.004–1.015, per mg/L; p = 0.0003) and increasing creatinine (1.009, 1.002–1.016, per μmol/L; 0.017) associated with later mortality. In the smaller number of patients with blood gases at presentation, odds of inpatient death increased with decreasing pCO2 (0.428, 0.248–0.739, per kPa; p = 0.002), bicarbonate (0.858, 0.763–0.964, per mmol/L; p = 0.010) and base excess (0.894, 0.806–0.993, per mmol/L; p = 0.036).
During admission, number of affected zones on worst chest X-ray (1.532, 1.170–2.009, per zone; p = 0.002), and higher peak measurements of CRP (1.009, 1.005–1.014, per mg/L; p < 0.001) and creatinine (1.009, 1.002–1.015, per μmol/L; p = 0.012) all associated with increased odds of death.
For multivariate logistic regression, we selected from variables with significant univariate relationships and included all patients for whom we had data for all selected variables (n = 95). After optimizing AIC, we observed adjusted odds ratios as shown in Table 3. Inpatient requirement of FiO2 greater than or equal to 28% (10.479, 2.888–38.023; p < 0.001), respiratory rate at presentation (1.181, 1.030–1.353, per breaths per minute; p = 0.017), Rockwood CFS (1.612, 1.040–2.499, per unit increase; p = 0.033), admission high CRP (1.010, 1.002–1.019, per mg/L; p = 0.010) and admission high creatinine (1.011, 1.001–1.020, per μmol/L; p = 0.029) all increased odds of inpatient mortality.

5. Discussion

The mortality rate (48.2%) in this patient group was higher than in previous studies [1,2,3]. Whilst our population was clearly elderly when compared to the general COVID-19 population [1,2,3], we did not find any association of age with mortality within our group. In contrast to previous studies [1], care home or supported residence were not associated with inpatient mortality. Additionally, no significant association was seen with any individual comorbidity.
Our strongest predictors of mortality were those reflective of respiratory distress, as were clinical frailty and biomarkers indicative of inflammatory response, such as neutrophilia, CRP and chest X-ray changes. These findings are consistent with previous clinical studies and autopsy reports [1,3,7]. The results of multivariate analysis evidence organ failure (in the form of type 1 respiratory failure and declining creatinine clearance) as implicit in mortality risk, which is especially pertinent in those unlikely to benefit from organ support.
Limitations to this analysis include our reliance on retrospective data collected from clinical records, which resulted in missing data and may result in errors in the effect sizes of some variables. However, our main conclusions are based upon objective measures within which there were minimal missing data. Additionally, it is possible that not all WBCoC patients were successfully identified. However, data selection is unlikely to have been biased towards either outcome, minimizing effects on our findings. Another limitation was our reliance on laboratory tests that were collected during routine clinical care; inclusion of investigations such as serum cardiac troponin, brain natriuretic protein (BNP), D-dimer and procalcitonin may further aid prognostication [3,8,9,10].
We conclude that having more objective means to assess risk factors of mortality in patients with a WBCoC would better enable clinicians, patients and relatives to discuss appropriate settings of care, likely trajectories and to balance the provision of holistic care with infection risk. Whilst our results suggest some concordance with mortality risk factors observed in the general COVID-19 population [1,2,11], there is sufficient divergence to warrant investigation with larger prospective studies.

Supplementary Materials

The following are available online at https://0-www-mdpi-com.brum.beds.ac.uk/article/10.3390/stresses1040020/s1, Treatment escalation plans at Northumbria Healthcare Trust; Selection of clinical variables.

Author Contributions

Conceptualization, M.I., L.M. and A.A.; methodology, M.I., L.M. and A.A.; software, M.I.; validation, M.I., L.M. and A.A.; formal analysis, M.I.; investigation, M.I., E.T., L.M. and A.A.; resources, L.M. and A.A.; data curation, M.I., E.T., L.M. and A.A.; writing—original draft preparation, M.I.; writing—review and editing, M.I., E.T., L.M. and A.A.; supervision, A.A.; project administration, L.M. and A.A.; funding acquisition, not applicable. Northumbria COVID-19 Audit Collaborative contributed to data collection. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. This research received no external funding.

Institutional Review Board Statement

The study was registered as a clinical service evaluation with the Northumbria Healthcare NHS Foundation Trust and was exempt from ethical approval, with analysis of anonymized healthcare data approved by the Caldicott Guardian.

Informed Consent Statement

Informed consent was not required for a retrospective anonymized evaluation under the Control of Patient Information Regulations Notice for processing of data in connection to COVID-19.

Data Availability Statement

The data are not publicly available due to patient confidentiality.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Northumbria COVID-19 Audit Collaborative.
Table A1. Northumbria COVID-19 Audit Collaborative.
NameEmailAffiliation
1Karl Jackson[email protected]Northumbria, HealthCare, NHS, Foundation, Trust Newcastle, United Kingdom
2Elinor Edwards[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
3Elizabeth Marsh[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
4Catherine Moores[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
5Esther Longden[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
6Pierre Chinedu[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
7Matt Ingram[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
8Gemma Stonier[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
9Ellen Tullo[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
10Laura Mackay[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
11Catherine Dotchin[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
12Amaani Hussain[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
13Samuel Dale[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
14Sarah Manning[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
15Lindsey Dew[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
16Thomas Ross[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
17Leyla Wannous[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
18Sophia Oxenburgh[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
19Declan Murphy[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
20Richard Gavin[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
21Leah Taylor[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
22Sarah Welsh[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
23Caitlin Carolan[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
24April Donne[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
25Nicholas Moss[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
26Josephine Gwinnell[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
27Fiona Starkie[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
28Robert Johnston[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
29James Dundas[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
30Johannna Jones[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
31Kristen Davies[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
32Richard Anderson[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
33Peter Ireland[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom
34Avinash Aujayeb[email protected]Northumbria, HealthCare, NHS Foundation Trust Newcastle United Kingdom

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Table 1. Results of univariate logistical regression of categorical variables against inpatient death. OR, Odds ratio; CI, Confidence interval. Ɨ, As opposed to care home residence or supported living. *, p < 0.05; ***, p < 0.001.
Table 1. Results of univariate logistical regression of categorical variables against inpatient death. OR, Odds ratio; CI, Confidence interval. Ɨ, As opposed to care home residence or supported living. *, p < 0.05; ***, p < 0.001.
Total (Died)Percent Positive (%)OR (95% CI)p-Value
All patients114 (55)
Demographics
Male Gender114 (55)53.50.817 (0.391–1.708)0.591
Living in private residence Ɨ109 (54)55.00.898 (0.422–1.911)0.780
Clinical history
Atrial Fibrillation114 (55)33.31.111 (0.510–2.422)0.791
Chronic Kidney Disease114 (55)46.50.828 (0.395–1.950)0.617
Dementia114 (55)29.80.666 (0.296–1.499)0.326
Diabetes Mellitus114 (55)33.30.949 (0.435–2.069)0.895
Hypertension114 (55)41.20.503 (0.235–1.076)0.076
Ischaemic Heart Disease114 (55)33.30.690 (0.315–1.513)0.354
ACE-inhibitor114 (55)26.30.354 (0.145–0.863)0.022 *
Smoking history82 (42)52.40.818 (0.343–1.950)0.651
Admission history
Admission high FiO2 requirement ≥ 28%103 (53)43.715.562 (5.738–42.202)p < 0.001 ***
Admission high FiO2 requirement ≥ 60%103 (53)27.223.111 (5.087–104.988)p < 0.001 ***
Antibiotics for lower respiratory tract infection113 (55)69.02.355 (1.028–5.392)0.042 *
Chest X-ray changes at presentation108 (53)51.92.684 (1.232–5.847)0.013 *
Table 2. Results of univariate logistical regression of continuous variables against inpatient death. All odds ratios given as per unit increase. OR, Odds ratio; CI, Confidence interval. *, p < 0.05; **, p < 0.01; ***, p < 0.001.
Table 2. Results of univariate logistical regression of continuous variables against inpatient death. All odds ratios given as per unit increase. OR, Odds ratio; CI, Confidence interval. *, p < 0.05; **, p < 0.01; ***, p < 0.001.
Total (Died)OR (95% CI)p-Value
All patients114 (55)
Demographics
Age (years)114 (55)0.997 (0.951–1.045)0.908
Number of hospital admissions in preceding 12 months114 (55)1.318 (1.012–1.718)0.041 *
Rockwood clinical frailty score108(54)1.308 (1.002–1.705)0.048 *
Physiological measurements at presentation
Bodyweight (kg)84 (35)1.002 (0.979–1.025)0.879
Body mass index (kg/m2)84 (35)1.027 (0.962–1.097)0.428
Peripheral oxygen saturation (%)113 (54)0.891 (0.807–0.984)0.023 *
Heart rate (beats/min)114 (55)1.009 (0.993–1.026)0.271
Respiratory rate (breaths/min)114 (55)1.206 (1.099–1.323)<0.001 ***
Systolic blood pressure (mmHg)114 (55)0.989 (0.975–1.002)0.100
Diastolic blood pressure (mmHg)114 (55)0.992 (0.968–1.017)0.517
Temperature (°C)114 (55)1.110 (0.791–1.559)0.546
Inhaled FiO2 (%)114 (55)1.072 (1.025–1.122)0.003 **
Venous blood at presentation
Neutrophils (109/L)113 (54)1.099 (1.008–1.198)0.033 *
Lymphocytes (109/L)113 (54)0.709 (0.313–1.605)0.410
Platelets (109/L)113 (54)0.998 (0.994–1.003)0.476
C-reactive protein (mg/L)111 (52)1.009 (1.004–1.015)<0.001 ***
Procalcitonin (ng/mL)43 (22)1.610 (0.646–4.013)0.307
Urea (mmol/L)113 (54)1.039 (0.994–1.087)0.089
Creatinine (μmol/L)113 (54)1.009 (1.002–1.016)0.017 *
ALT (IU/L)109 (53)1.003 (0.999–1.007)0.205
Bilirubin (μmol/L)106 (51)1.030 (0.972–1.091)0.315
Fibrinogen (g/L)63 (35)1.143 (0.809–1.613)0.449
Lactate (mmol/L)91 (47)1.374 (0.995–1.896)0.053
Blood gas at presentation
pH63 (34)2.506 (0.007–965.303)0.763
pO2 (arterial blood gases only, kPa)46 (27)0.971 (0.884–1.066)0.532
pCO2 (kPa)62 (34)0.428 (0.248–0.739)0.002 **
Bicarbonate (mmol/L)61 (32)0.858 (0.763–0.964)0.010 *
Base excess (mmol/L)60 (31)0.894 (0.806–0.993)0.036 *
During admission
Peak C-reactive protein (mg/L)111 (52)1.009 (1.005–1.014)<0.001 ***
Peak creatinine (μmol/L)113 (54)1.009 (1.002–1.015)0.012 *
Number of affected zones on worst chest X-ray108 (53)1.532 (1.170–2.009)0.002 **
Table 3. Adjusted odds ratios of variables from adjusted multivariate logistical regression against inpatient death, in the 95 patients for whom data for all patients was available. OR, Odds ratio; CI, Confidence interval. Ɨ, continuous variable, OR presented as per unit increase. *, p < 0.05; ***, p < 0.001.
Table 3. Adjusted odds ratios of variables from adjusted multivariate logistical regression against inpatient death, in the 95 patients for whom data for all patients was available. OR, Odds ratio; CI, Confidence interval. Ɨ, continuous variable, OR presented as per unit increase. *, p < 0.05; ***, p < 0.001.
Adjusted OR (95% CI)p-Value
Admission high FiO2 requirement ≥ 28%10.479 (2.888–38.023)<0.001 ***
Respiratory rate Ɨ (breaths/min)1.181 (1.030–1.353)0.017 *
Peak C-reactive protein Ɨ (mg/L)1.010 (1.002–1.018)0.010 *
Peak creatinine Ɨ (μmol/L)1.011 (1.001–1.020)0.029 *
Rockwood clinical frailty score Ɨ1.612 (1.040–2.499)0.033 *
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MDPI and ACS Style

Ingram, M.; Tullo, E.; Mackay, L.; Aujayeb, A.; Northumbria COVID-19 Audit Collaborative. COVID-19 Mortality in Patients with a Ward-Based Ceiling of Care. Stresses 2021, 1, 277-284. https://0-doi-org.brum.beds.ac.uk/10.3390/stresses1040020

AMA Style

Ingram M, Tullo E, Mackay L, Aujayeb A, Northumbria COVID-19 Audit Collaborative. COVID-19 Mortality in Patients with a Ward-Based Ceiling of Care. Stresses. 2021; 1(4):277-284. https://0-doi-org.brum.beds.ac.uk/10.3390/stresses1040020

Chicago/Turabian Style

Ingram, Matthew, Ellen Tullo, Laura Mackay, Avinash Aujayeb, and Northumbria COVID-19 Audit Collaborative. 2021. "COVID-19 Mortality in Patients with a Ward-Based Ceiling of Care" Stresses 1, no. 4: 277-284. https://0-doi-org.brum.beds.ac.uk/10.3390/stresses1040020

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