Hostname: page-component-8448b6f56d-gtxcr Total loading time: 0 Render date: 2024-04-18T20:12:24.776Z Has data issue: false hasContentIssue false

Malnutrition is an independent predictor of 1-year mortality following acute illness

Published online by Cambridge University Press:  01 August 2007

Salah Gariballa*
Affiliation:
Sheffield Institute for Studies on Ageing, University of Sheffield, Community Sciences Centre, Northern General Hospital, Sheffield, S5 7AU, UK Department of Internal Medicine, Faculty of Medicine and Health Sciences, UAE University, United Arab Emirates
Sarah Forster
Affiliation:
Sheffield Institute for Studies on Ageing, University of Sheffield, Community Sciences Centre, Northern General Hospital, Sheffield, S5 7AU, UK
*
*Corresponding author: Dr Salah Gariballa, fax +44 114 2715771, email s.e.gariballa@sheffield.ac.uk
Rights & Permissions [Opens in a new window]

Abstract

Four hundred and forty-five randomly selected hospitalised patients had their nutritional status assessed from anthropometric, haematological and biochemical data. Nutritional status was compared between survivors and non-survivors at baseline, 6 weeks and 6 months. Using Cox's proportional hazard analysis, we measured the association between nutritional assessment variables and 1-year mortality after adjusting for disability, chronic illness, medications, smoking and tissue inflammation. Nutritional status was significantly worse amongst non-survivors compared with survivors, and non-survivors showed marked and significant deterioration in all measures of nutritional status compared with survivors. After adjusting for poor prognostic indicators the hazard ratios of death in the fourth, third and second quarters of both baseline serum albumin and mid-upper arm circumference distributions relative to the first were 0·68, 0·77 and 0·58 (trend P = 0·013) and 0·61, 1·0 and 0·87 (trend P = 0·005) respectively. Intervention studies are needed to determine whether the relationship between malnutrition and the poor outcome highlighted by the present study is causal or a mere association.

Type
Full Papers
Copyright
Copyright © The Authors 2007

Studies of patients in hospitals and non-acute care settings are in agreement that food intakes are less than those reported for free-living older individuals and that malnutrition is prevalent and often unrecognised in patients admitted to hospitals and institutions (Gariballa & Sinclair, Reference Gariballa and Sinclair1998; Akner & Cederholm, Reference Akner and Cederholm2001). The effect of ill health on the nutritional status of hospitalised patients can often be limited to the time of acute illness, but older individuals are particularly at risk of prolonged malnutrition because of decreased nutritional reserves and the effect of repeated ill health (Gariballa & Sinclair, Reference Gariballa and Sinclair1998). Nutritional depletion during recuperation and rehabilitation, however, may be more serious than during acute illness, since rehabilitation periods may extend over weeks and months, and deterioration in nutritional status, although less marked than in the early catabolic phase, may be greater overall (Sullivan & Walls, Reference Sullivan and Walls1994; Gariballa & Sinclair, Reference Gariballa and Sinclair1998). Although several studies have shown that some anthropometric and biochemical nutritional status indicators are predictive of post-discharge mortality, distinguishing underlying disease from undernutrition, and to separate their effects on patients' outcome is still a challenge for clinicians; therefore, a cause-and-effect relationship has not been definitely established (Klein et al. Reference Klein, Kinney, Jeejeebhoy, Alpers, Hellerstein, Murray and Twomey1997; Liu et al. Reference Liu, Bopp, Robertson and Sullivan2002; Massaia et al. Reference Massaia, Raspo, Bosco, Cena, Molaschi and Fabris2003). The aim of the present study was to measure the impact of undernutrition of hospitalised patients on 1-year mortality following acute illness.

Subjects and methods

The study was conducted at a 650-bed Associate Teaching Hospital in the UK admitting unselected acutely ill patients on the basis of need. The methodology of the present study has been published before (Gariballa & Forster, Reference Gariballa and Forster2006). Briefly 445 acutely ill older patients who took part in a study of nutritional supplementation were included. Admission diagnoses included IHD, heart failure, atrial fibrillation, chronic obstructive pulmonary disease, chest and urinary tract infections, septicaemia, stroke, Parkinson's disease, anaemia, diabetes, osteoarthritis, rheumatoid arthritis, syncope, falls and fracture limbs. Inclusion criteria were: age ≥ 65 years; stable medical condition; able to swallow; able to sign an informed written consent form. Patients excluded from the study were those with severe medical or psychiatric illness including those with gastric surgery, malabsorption, or morbid obesity (BMI ≥ 40 kg/m2), in a coma, diagnosed with severe dementia (abbreviated mental test < 6) or malignancy, living in an institution and patients already on supplements. The study was approved by the local research ethics committee.

Clinical and nutritional assessment

Following informed written consent and recruitment to the study patients had assessments at baseline, 6 weeks and 6 months. The assessment included demographic and medical data including current diagnosis, history of chronic illnesses, smoking, alcohol and drug intake, nutritional status and disability (Barthel score).

Nutritional status was assessed from anthropometric, haematological and biochemical data. All anthropometrics measurements were performed by a single observer (S. F.) using standard methods with intra-observer differences assessed before the commencement of the study. Mid-upper arm circumference (MUAC) and triceps skinfolds were measured by a flexible tape and Harpenden skinfold callipers accurate to 0·2 mm (Practical Metrology, Lancing, West Sussex, UK) respectively and the mean of three measures was recorded (Gariballa et al. Reference Gariballa, Parker, Taub and Castleden1998). The local pathology laboratory performed routine tests including serum ferritin, albumin, transferrin and C-reactive protein measurements. Erythrocyte folate and plasma vitamin B12 were measured on the Architect (Abbott Laboratories, Chicago, IL, USA) using chemiluminescent microparticle immunoassay technology. The inter-assay CV were 12·6 and 8·4 % respectively. Plasma total ascorbic acid was measured by a fluorescence assay automated for the Cobas BioAutoanalyser (Roche Diagnostics, Basel, Switzerland), giving an inter-batch CV of 8·4 %.

Disability at baseline was assessed using the Barthel score on a twenty-point scale. The Barthel scores ten functions on a scale of 0 (fully dependent) to 20 (independent). For quality assurance, two researchers independently checked hospital and primary care records for all routinely collected outcome measures including 1-year mortality. Agreement was 99 %.

Statistical analyses

Statistical analyses were performed with SPSS software, version 11.0 (SPSS Inc., Chicago, IL, USA). Nutritional status between survivors and non-survivors at 6 weeks was analysed using an analysis of covariance model, with baseline values as a covariate. Cox's proportional hazard models were used to examine the 1-year mortality and nutritional status after controlling for poor prognostic indicators. The outcome variable was dichotomised (i.e. alive v. dead) and then analysed as the dependent variable against a number of independent nutritional variables including body weight, BMI, MUAC, triceps and biceps skinfolds, serum albumin and transferrin. Each independent nutritional status variable was first analysed separately against the dependent variable outcome. Then those variables with a significant association with the outcome variable (P < 0·05) were entered with other variables recorded on admission (age, disability, chronic illness, drugs, smoking, and tissue inflammation) into the final model as the independent variables. All four MUAC and serum albumin quarters were entered in the model as a single variable or each quarter separately as an independent predictor variable. Survival times in relation to MUAC and serum albumin divided into four equal quarters are presented graphically using the Kaplan–Meier survival curve and assessed using the log rank test.

Results

Between July 2001 and May 2004, 445 patients were recruited. Table 1 shows baseline clinical characteristics including sex, smoking, alcohol consumption, chronic illness, drugs, disability, tissue inflammation (C-reactive protein), Hb, glucose and renal functions. Non-survivors were significantly older and had higher levels of co-morbidity and serum creatinine concentration compared with 1-year survivors; however, survivors had significantly higher fasting blood sugars (Table 1).

Table 1 Baseline characteristics of subjects according to survival status at 1 year (Number of subjects, percentages, mean values and standard deviations)

COPD, chronic obstructive pulmonary disease.

* Between-group difference was significant (P < 0·05).

One unit of alcohol in terms of UK ‘standard drinks’ is 0·5 pints (0·28 litres) beer, lager or cider, one measure of spirits or one glass of wine.

Also includes falls, atrial fibrillation, syncope, urinary tract infection, anaemia, septicaemia, diabetes, osteoarthritis, rheumatoid arthritis and fractured limbs.

Both anthropometric and nutritional biochemical measures were significantly lower in non-survivors compared with survivors. For example, body weight, BMI, MUAC, serum albumin and plasma ascorbic acid were all significantly lower in non-survivors compared with survivors (Table 2).

Table 2 Baseline anthropometric and biochemical nutritional markers of survivors and non-survivors at 1 year following acute illness (Mean values and standard deviations)

MUAC, mid-upper arm circumference; TSF; triceps skinfold.

* Mean difference was significant (P < 0·05).

Tables 3 and 4 summarise results of the multiple Cox's regression analysis for nutritional and other clinical variables on 1-year mortality. In the multiple Cox's regression analyses MUAC and serum albumin at baseline and 6 weeks were each divided into four quarters and analysed (separately or as a single variable) against a number of poor prognostic variables including age, disability (Barthel), chronic illness, drugs, smoking and inflammatory response (C-reactive protein). After adjusting for poor prognostic indicators the hazard ratios of death in the fourth, third and second quarters of both baseline serum albumin and MUAC distributions relative to the first were 0·68, 0·77 and 0·58 (trend P = 0·013) and 0·61, 1·0 and 0·87 (trend P = 0·005) respectively. Overall the hazard ratios for an outcome of death associated with each quarter increase from the first in baseline serum albumin and MUAC were 0·73 (95 % CI 0·56, 0·97) and 0·72 (95 % CI 0·54, 0·97) respectively (Table 3). Corresponding hazard ratios for serum albumin and MUAC quarters at 6 weeks and 1-year mortality were 0·61 (95 % CI 0·27, 1·38) (P = 0·06) and 0·6 (95 % CI 0·31, 1·18) (P = 0·23) respectively (Table 4).

Table 3 Cox's proportional hazard analysis of the relationship between baseline nutritional status and other prognostic variables and hospitalised patients' 1-year mortality

MUAC, mid-upper arm circumference.

* P < 0·05.

MUAC quarters (cm): 1st < 25·8; 2nd = 25·8–28; 3rd = 28·1–30·5; 4th >30·5.

Albumin quarters (g/l): 1st < 35; 2nd = 35–38; 3rd = 38·1–41; 4th >41.

§ 1st quarter < 25 %; 2nd quarter = 25–50 %; 3rd quarter = 51–75 %; 4th >75 %.

Table 4 Cox's proportional hazard analysis of the relationship between nutritional status at 6 weeks and other prognostic variables and hospitalised patients' 1-year mortality

MUAC, mid-upper arm circumference.

* P < 0·05.

MUAC quarters (cm): 1st < 25·5; 2nd = 25·5–28; 3rd = 28·1–30·5; 4th >30·5.

Albumin quarters (g/l): 1st < 39; 2nd = 39–41; 3rd = 41·1–43; 4th >43.

§ 1st quarter < 25 %; 2nd quarter = 25–50 %; 3rd quarter = 51–75 %; 4th >75 %.

Although the unadjusted hazard ratios of death for body weight and BMI at baseline and 6 weeks were statistically significant, the adjusted hazard ratios were not statistically significant (hazard ratios for body weight at baseline and 6 weeks were 1·0 (95 % CI 0·98, 1·03) and 0·99 (95 % CI 0·94, 1·06) respectively; corresponding adjusted hazard ratios for BMI were 0·82 (95 % CI 0·78, 2·1) and 0·93 (95 % CI 0·72, 1·18) respectively).

The Kaplan–Meier curves clearly demonstrate graded relationships between MUAC and serum albumin at baseline and 6 weeks and 1-year mortality (Figs. 14).

Fig. 1 Survival at 1 year according to serum albumin quarters (1, 2, 3,4) on admission. The relationship between serum albumin on admission and 1-year survival was significant (P < 0·01).

Fig. 2 Survival at 1 year according to serum albumin quarters (1, 2, 3,4) at 6 weeks. The relationship between serum albumin at 6 weeks and 1-year survival was not significant (P < 0·095).

Fig. 3 Survival at 1 year according to mid-upper arm circumference (MUAC) quarters (1, 2, 3, 4) on admission. The relationship between MUAC on admission and 1-year survival was significant (P < 0·001).

Fig. 4 Survival at 1 year according to mid-upper arm circumference (MUAC) quarters (1, 2, 3,4) at 6 weeks. The relationship between MUAC at 6 weeks and 1-year survival was significant (P = 0·03).

Discussion

The present study shows a strong and independent association between nutritional status as measured by MUAC and serum albumin and 1-year mortality of older patients following acute illness. We also observed a graded and significant relationship between MUAC, serum albumin and mortality.

Previously we observed a similar association between serum albumin and 3-month stroke mortality; however, in the present study we have found a similar relationship between MUAC and 1-year mortality in a heterogeneous group of acutely ill patients.

Even though serum albumin is frequently considered a nutritional marker and has been shown to predict outcome in many settings, there are many conditions, such as catabolism, liver and renal disease which may reduce serum albumin levels (Sullivan & Walls, Reference Sullivan and Walls1994; Gariballa et al. Reference Gariballa, Parker, Taub and Castleden1998). The catabolic state and the associated neuroendocrine response which is likely to follow an acute illness may lead to altered serum albumin concentrations. It may therefore be that in catabolic states the synthesis of acute-phase proteins has a priority over serum albumin, and this may partly account for some of the features of the plasma protein profile observed during the acute-phase response after injury. This process is likely to lead to erosion of nutritional reserves. It is also well known that malnutrition negatively affects protein synthesis (Rothschild et al. Reference Rothschild, Oratz and Schreiber1972; Gariballa et al. Reference Gariballa, Parker, Taub and Castleden1998). In the present study and a previous one (Gariballa et al. Reference Gariballa, Parker, Taub and Castleden1998), we have demonstrated that low serum albumin levels were related to poor outcome not just during the acute phase following acute illness but throughout the recovery period, an effect unlikely to be explained by the catabolic state alone. On the other hand, MUAC is a composite measure of muscle and fat stores. Studies which have investigated MUAC either alone or as part of corrected arm muscle area calculated from MUAC and triceps skinfolds found that it has a better ability to discriminate between degrees of malnutrition and is also simple and feasible, and if classified by percentiles may have a good prognostic value in acute care settings (Campbell et al. Reference Campbell, Spears, Brown, Busby and Borrie1990; Muhethaler et al. Reference Muhethaler, Stuck, Minder and Freu1995). When used as part of corrected arm muscle area in community settings it has also been found useful in assessing undernutrition in older adults and that it has better prognostic value than BMI in predicting death in older adults (Miller et al. Reference Miller, Crotty, Giles, Bannerman, Whitehead, Cobiac, Daniels and Andrew2002).

Many studies have evaluated several nutritional and non-nutritional clinical and biochemical prognostic indicators in older adults in acute care settings such as general medical wards and intensive care facilities (Sullivan & Walls, Reference Sullivan and Walls1994; Gariballa et al. Reference Gariballa, Parker, Taub and Castleden1998; Liu et al. Reference Liu, Bopp, Robertson and Sullivan2002; Massaia et al. Reference Massaia, Raspo, Bosco, Cena, Molaschi and Fabris2003). For example, Sullivan and co-workers (Sullivan & Walls, Reference Sullivan and Walls1994; Sullivan et al. Reference Sullivan, Walls and Bopp1995) studied the nutritional status and energy intake of 350 randomly selected admissions to a geriatric rehabilitation unit and found that protein–energy malnutrition was a strong predictor of in-hospital and post-discharge mortality. Another observational study which analysed data of 18 316 hospitalised Italian patients found low BMI to be a significant and independent predictor of shortened survival in older patients (Landi et al. Reference Landi, Onder, Gambassi, Pedone, Carbonin and Bernabei2000).

The challenge is to distinguish underlying co-morbidity from undernutrition, and to separate their effects on older patients' outcome. For patients admitted to intensive care units the risk stratification involve the use of several acute physiological parameters. However, for less critically ill older patients admitted to general medical wards, as is the case in the present study, other functional and co-morbidity measures should be included in models of predictors of clinical outcome. Furthermore, nutritional indices in ageing patients are affected by age-related changes, disability, illness and injury (Klein et al. Reference Klein, Kinney, Jeejeebhoy, Alpers, Hellerstein, Murray and Twomey1997; Dionigi et al. Reference Dionigi, Dominioni, Jemos, Cremaschi and Monico2000). In attempting to overcome some of the above challenges we excluded from the study all patients with severe medical and psychiatric illnesses such as liver, gastrointestinal, kidney or neoplasm. Also by adjusting for underlying disease state, age, drugs, functional capacity and acute-phase response on mortality it was possible to identify a potential independent effect of poor nutritional status on patients' outcome.

The present study lacked information on pre-morbid and long-term post-discharge dietary intake. Another important limitation is inherent difficulties in measuring anthropometric and biochemical nutritional indices in ageing patients. The purpose of assessing intra-observer differences on anthropometric measurements, the longitudinal design of the study and the use of multiple Cox's regression analyses to adjust for poor prognostic clinical indicators was to overcome some of these weaknesses.

In the present study of hospitalised acutely ill patients, we found that baseline nutritional status was worse among those who later died at 1 year and their nutritional status deteriorated further following acute illness compared with those alive at 1 year.

The heterogeneous nature of the patient population in the present study gave us the opportunity to study and adjust for the contribution of underlying disease and co-morbidity, as well as the catabolic state of acute illness to the erosion of macro- and micronutrient nutritional status. Whether the relationship between malnutrition and the poor outcome highlighted by the present study is a causal one or a mere association can also be determined by robust intervention studies.

Acknowledgements

The present study was funded by The Health Foundation project grant. There are no conflicts of interest.

References

Akner, G & Cederholm, T (2001) Treatment of protein-energy malnutrition in chronic non-malignant disorders. Am J Clin Nutr 74, 624.Google Scholar
Campbell, AJ, Spears, GFS, Brown, JS, Busby, WJ & Borrie, MJ (1990) Anthropometric measurements as predictors of mortality in a community population aged 70 years and over. Age Ageing 19, 131135.Google Scholar
Dionigi, R, Dominioni, L, Jemos, V, Cremaschi, R & Monico, R (2000) Diagnosing malnutrition. Gut 27, Suppl. 1, 58.Google Scholar
Gariballa, SE & Forster, S (2006) Effects of acute phase response on nutritional status and clinical outcome of hospitalised patients. Nutrition 22, 750757.Google Scholar
Gariballa, SE, Parker, SG, Taub, N & Castleden, CM (1998) The influence of nutritional status on clinical outcome after acute ischaemic stroke. Am J Clin Nutr 68, 275281.CrossRefGoogle Scholar
Gariballa, SE & Sinclair, AJ (1998) Nutrition, ageing and ill-health. Br J Nutr 80, 721.CrossRefGoogle ScholarPubMed
Klein, S, Kinney, J, Jeejeebhoy, K, Alpers, D, Hellerstein, M, Murray, M & Twomey, P (1997) Nutrition support in clinical practice: review of published data. Am J Clin Nutr 66, 683706.CrossRefGoogle ScholarPubMed
Landi, F, Onder, G, Gambassi, G, Pedone, C, Carbonin, P & Bernabei, R (2000) Body mass index and mortality among hospitalised patients. Arch Intern Med 160, 14591460.Google Scholar
Liu, L, Bopp, MM, Robertson, PK & Sullivan, DH (2002) Undernutrition and risk of mortality in elderly patients within 1 year of hospital discharge. J Gerontol 57, M741M746.CrossRefGoogle ScholarPubMed
Massaia, BM, Raspo, S, Bosco, F, Cena, P, Molaschi, M & Fabris, F (2003) Predictive factors of in-hospital mortality in older patients admitted to a medical intensive care unit. J Am Geriatr Soc 51, 529533.Google Scholar
Miller, MD, Crotty, M, Giles, LC, Bannerman, E, Whitehead, C, Cobiac, L, Daniels, LA & Andrew, G (2002) Corrected arm muscle area: an independent predictor of long-term mortality in community-dwelling older adults? J Am Geriat Soc 50, 12721277.CrossRefGoogle ScholarPubMed
Muhethaler, R, Stuck, AE, Minder, CE & Freu, BM (1995) The prognostic significance of protein and energy malnutrition in geriatric patients. Age Ageing 24, 193197.Google Scholar
Rothschild, MA, Oratz, M & Schreiber, SS (1972) Albumin synthesis. N Engl J Med 286, 748757.Google Scholar
Sullivan, DH & Walls, RC (1994) Impact of nutritional status on morbidity in a population of geriatric rehabilitation patients. J Am Geriat Soc 42, 471477.Google Scholar
Sullivan, DH, Walls, RC & Bopp, MM (1995) Protein-energy under nutrition and the risk of mortality. J Am Geriatr Soc 43, 507512.Google Scholar
Figure 0

Table 1 Baseline characteristics of subjects according to survival status at 1 year (Number of subjects, percentages, mean values and standard deviations)

Figure 1

Table 2 Baseline anthropometric and biochemical nutritional markers of survivors and non-survivors at 1 year following acute illness (Mean values and standard deviations)

Figure 2

Table 3 Cox's proportional hazard analysis of the relationship between baseline nutritional status and other prognostic variables and hospitalised patients' 1-year mortality

Figure 3

Table 4 Cox's proportional hazard analysis of the relationship between nutritional status at 6 weeks and other prognostic variables and hospitalised patients' 1-year mortality

Figure 4

Fig. 1 Survival at 1 year according to serum albumin quarters (1, 2, 3,4) on admission. The relationship between serum albumin on admission and 1-year survival was significant (P < 0·01).

Figure 5

Fig. 2 Survival at 1 year according to serum albumin quarters (1, 2, 3,4) at 6 weeks. The relationship between serum albumin at 6 weeks and 1-year survival was not significant (P < 0·095).

Figure 6

Fig. 3 Survival at 1 year according to mid-upper arm circumference (MUAC) quarters (1, 2, 3, 4) on admission. The relationship between MUAC on admission and 1-year survival was significant (P < 0·001).

Figure 7

Fig. 4 Survival at 1 year according to mid-upper arm circumference (MUAC) quarters (1, 2, 3,4) at 6 weeks. The relationship between MUAC at 6 weeks and 1-year survival was significant (P = 0·03).