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Predictors of readmission and long length of stay in elders admitted with neurological disorders in a tertiary center: a real-world investigation

Preditores de readmissão hospitalar e de longo tempo de internação em idosos admitidos com doenças neurológicas em centro terciário: uma investigação no mundo real

ABSTRACT

Hospital readmission and long length of stay (LOS) increase morbidity and hospital mortality and are associated with excessive costs to health systems.

Objective:

This study aimed to identify predictors of hospital readmission and long LOS among elders with neurological disorders (NDs).

Methods:

Patients ≥ 60 years of age admitted to the hospital between January 1, 2009, and December 31, 2010, with acute NDs, chronic NDs as underpinnings of acute clinical disorders, and neurological complications of other diseases were studied. We analyzed demographic factors, NDs, and comorbidities as independent predictors of readmission and long LOS (≥ 9 days). Logistic regression was performed for multivariate analysis.

Results:

Overall, 1,154 NDs and 2,679 comorbidities were identified among 798 inpatients aged ≥ 60 years (mean 75.8 ± 9.1). Of the patients, 54.5% were female. Patient readmissions were 251(31%) and 409 patients (51%) had an LOS ≥ 9 days (95% confidence interval 48%–55%). We found no predictors for readmission. Low socioeconomic class (p = 0.001), respiratory disorder (p < 0.001), infection (p < 0.001), genitourinary disorder (p < 0.033), and arterial hypertension (p = 0.002) were predictors of long LOS. Identified risks of long LOS explained 22% of predictors.

Conclusions:

Identifying risk factors for patient readmission are challenges for neurology teams and health system stakeholders. As low socioeconomic class and four comorbidities, but no NDs, were identified as predictors for long LOS, we recommend studying patient multimorbidity as well as functional and cognitive scores to determine whether they improve the risk model of long LOS in this population.

Keywords:
Patient readmission; length of stay; nervous system diseases; multimorbidity; aged; risk factors

RESUMO

Readmissão hospitalar e tempo longo de internação aumentam a morbidade, a mortalidade hospitalar e estão associados a custos excessivos para os sistemas de saúde.

Objetivo:

Este estudo almejou identificar preditores de readmissões hospitalares e longo tempo de internação (TDI) entre idosos com doenças neurológicas (DN).

Métodos:

Pacientes de idade ≥ 60 anos admitidos no hospital entre 1 de janeiro de 2009 e 31 de dezembro de 2010 com DN aguda, DN crônica subjacente a transtorno clínico agudo e complicações neurológicas de outras doenças foram estudados. Nos analisamos fatores demográficos, DN e comorbidades como preditores independentes de readmissão hospitalar e TDI (≥ 9 dias). Utilizamos regressão logística para analise multivariada.

Resultados:

Um total de 1154 DN e 2679 comorbidades foram identificadas entre 798 pacientes com idade ≥ 60 anos (media 75.8 ± 9.1). Desses pacientes 54.5% foram mulheres. Foram 251(31%) readmissões de pacientes e 409 (51%) dos pacientes tiveram um TDI≥9 dias (intervalo de confiança 95%, 48%–55%). Não encontramos preditores para readmissões. Baixa classe social (p = 0,001), distúrbio respiratório (p < 0,001), infecção (p < 0,001), distúrbio genito-urinário (p = 0,033) e hipertensão arterial (p = 0,002) foram os preditores de longo tempo de internação. Esses fatores de risco compõem 22% dos preditores para longo TDI.

Conclusões:

A identificação de fatores de risco para readmissão hospitalar é um desafio para equipes neurológicas e gestores dos sistemas de saúde. Conquanto baixa classe social e 4 comorbidades, todavia nenhuma DN, foram identificadas como preditoras para longo TDI nós recomendamos investigar multimorbidade, escores funcionais e cognitivos para saber se eles melhoram o modelo de risco para longo TDI nesta população.

Palavras-chave:
Readmissão do paciente; tempo de internação; doenças do sistema nervoso; multimorbidade; idoso; fatores de risco

Unplanned readmissions indicate suboptimal quality of patient care, cumulative costs, increasing morbidity, and greater hospital mortality11. Wong EL, Cheung AW, Leung MC, Yam CH, Chan FW, Wong FY, et al. Unplanned readmission rates, length of hospital stay, mortality, and medical costs of ten common medical conditions: a retrospective analysis of Hong Kong hospital data. BMC Health Serv Res. 2011 Jun;11(1):149. https://doi.org/10.1186/1472-6963-11-149
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. In addition, the aging population is associated with the burden of neurological disorders (NDs), which is a global phenomenon44. Group GB; GBD 2015 Neurological Disorders Collaborator Group. Global, regional, and national burden of neurological disorders during 1990-2015: a systematic analysis for the Global Burden of Disease Study 2015. Lancet Neurol. 2017 Nov;16(11):877-97. https://doi.org/10.1016/S1474-4422(17)30299-5
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. Long-term neurological conditions such as cerebrovascular diseases, epilepsy, dementia, Parkinson's disease, neuromuscular disorders, and their comorbidities are associated with patient readmissions and long LOS11. Wong EL, Cheung AW, Leung MC, Yam CH, Chan FW, Wong FY, et al. Unplanned readmission rates, length of hospital stay, mortality, and medical costs of ten common medical conditions: a retrospective analysis of Hong Kong hospital data. BMC Health Serv Res. 2011 Jun;11(1):149. https://doi.org/10.1186/1472-6963-11-149
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. Inappropriate readmissions of patients with long-term neurological conditions are related to neglected opportunities to improve ambulatory care and inadequacies in hospital procedures, such as discharge planning and patient transfers1212. Hammond CL, Phillips MF, Pinnington LL, Pearson BJ, Fakis A. Appropriateness of acute admissions and last in-patient day for patients with long term neurological conditions. BMC Health Serv Res. 2009 Feb;9(1):40. https://doi.org/10.1186/1472-6963-9-40
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. Moreover, in elders, hospital readmissions and long LOS are very common and closely related1313. García-Pérez L, Linertová R, Lorenzo-Riera A, Vázquez-Díaz JR, Duque-González B, Sarría-Santamera A. Risk factors for hospital readmissions in elderly patients: a systematic review. QJM. 2011 Aug;104(8):639-51. https://doi.org/10.1093/qjmed/hcr070
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. In Brazil, the elderly population is increasing much faster than in developed countries, exceeding 30 million persons aged 60 years or older in 20171414. Agência IBGE Notícias. Numero de idosos cresce 18% em cinco anos e ultrapassa 30 milhões em 2017. 2018 Apr 26. Available from:https://agenciadenoticias.ibge.gov.br/agencia-noticias/2012-agencia-de-noticias/noticias/20980-numero-de-idosos-cresce
https://agenciadenoticias.ibge.gov.br/ag...
. In a previously published study we found high rates of hospital readmission (31%), and long LOS (51%) during a two-year analysis of 798 elders hospitalized with NDs1515. Bacellar A, Pedreira BB, Costa G, Assis T. Frequency, associated features, and burden of neurological disorders in older adult inpatients in Brazil: a retrospective cross-sectional study. BMC Health Serv Res. 2017 Jul;17(1):504. https://doi.org/10.1186/s12913-017-2260-x
https://doi.org/10.1186/s12913-017-2260-...
. The present study intended to analyze demographic factors, NDs, and comorbidities in the population of elderly inpatients to identify independent predictors of readmission and long LOS.

METHODS

Patients

Patients aged 60 years or older successively admitted to the Hospital São Rafael (HSR) between January 1, 2009, and December 31, 2010, and evaluated by neurologists were enrolled. The HSR is a general tertiary teaching hospital in Salvador, Brazil, that admits patients who are clients of several private health insurance companies, as well as users of the Brazilian Unified Public Health System (SUS users).

Data were collected from electronic medical records, which made it easy to find patients with NDs in discharge lists, as well as registries of all neurological procedures. The Information Technology Department at this hospital (IT-HSR) recorded all admissions during the period of the study. Further information regarding the HSR and the method for capturing patients, including details concerning ND diagnostic assessments, can be found in our previously-published studies of the same population1515. Bacellar A, Pedreira BB, Costa G, Assis T. Frequency, associated features, and burden of neurological disorders in older adult inpatients in Brazil: a retrospective cross-sectional study. BMC Health Serv Res. 2017 Jul;17(1):504. https://doi.org/10.1186/s12913-017-2260-x
https://doi.org/10.1186/s12913-017-2260-...
,1616. Bacellar A, Assis T, Pedreira BB, Costa G, Nascimento OJ. Hospital mortality among elderly patients admitted with neurological disorders was not predicted by any particular diagnosis in a tertiary medical center. Open Neurol J. 2018 Jan;12(1):1-11. https://doi.org/10.2174/1874205X01812010001
https://doi.org/10.2174/1874205X01812010...
. We enrolled elderly inpatients with NDs in this study using the following methods: 1) IT-HSR searches of NDs listed in discharge summaries and 2) IT-HSR identification of registered neurological procedures. After the IT-HSR selection, the authors carefully examined all of the written patient health records. We selected elderly inpatients with neurological symptoms based on the following criteria: 1) elderly patients with acute NDs admitted for treatment by neurologists, 2) patients admitted with acute clinical disorders owing to an underlying chronic neurological disease that needed care or follow-on therapy by a neurologist, and 3) medical or surgical patients who suffered neurological complications during their hospital stay and required consultation with a neurologist. This method ensured a corroborated data bank and captured all inpatients with NDs and their comorbidities that might have influenced readmission and long LOS. Furthermore, this process recognized patients with more than one ND and a relevant patient multimorbidity, which represents the real world of caring for elderly inpatients.

Exclusion criteria were as follows: 1) patients who were admitted by or consulted with a neurologist but who had no NDs; 2) patients whose medical records lacked important data; 3) patients with acute trauma, subarachnoid hemorrhage, central nervous system (CNS) tumor, or other neurosurgical diseases, who were directly referred to a neurosurgeon; and 4) patients who underwent neurological consultation solely for a diagnosis of brain death due to head trauma, cardiovascular arrest, neurosurgical or oncological condition that was beyond the responsibility of neurologists; and 5) patients transferred to another hospital without an established diagnosis.

Demographics

The influences of age, sex, marital status, and socioeconomic level on patient readmission and on long LOS were considered. Differences in patient readmission and long LOS with regard to socioeconomic status were estimated comparing these outcomes among SUS users with these outcomes in patients who were clients of private health insurance companies. Elderly patients who belong to families categorized as Brazilian B2 socioeconomic class (average monthly income equal to or less than equivalent to US$1,475)1717. Brazilian Market Research Association. Critério de Classificação Econômica Brasil. Brazilian Criteria 2015 and social class distribution update for 2016. 2016. [Cited 2016 Apr 16]. Available from:http://www.abep.org/Servicos/Download.aspx?id=13
http://www.abep.org/Servicos/Download.as...
or lower socioeconomic classes use SUS1818. Bós AM, Bós AJ. [Determinants of elders’ choice between private and public health care providers]. Rev Saude Publica. 2004 Feb;38(1):113-20. Portuguese. https://doi.org/10.1590/S0034-89102004000100016
https://doi.org/10.1590/S0034-8910200400...
, whereas elders belonging to the Brazilian middle class (class B1 with an average family monthly income US$2,813) and from the Brazilian upper social classes prefer to pay for private health services1717. Brazilian Market Research Association. Critério de Classificação Econômica Brasil. Brazilian Criteria 2015 and social class distribution update for 2016. 2016. [Cited 2016 Apr 16]. Available from:http://www.abep.org/Servicos/Download.aspx?id=13
http://www.abep.org/Servicos/Download.as...
,1818. Bós AM, Bós AJ. [Determinants of elders’ choice between private and public health care providers]. Rev Saude Publica. 2004 Feb;38(1):113-20. Portuguese. https://doi.org/10.1590/S0034-89102004000100016
https://doi.org/10.1590/S0034-8910200400...
,1919. Boccolini CS, Souza Junior PR. Inequities in Healthcare utilization: results of the Brazilian National Health Survey, 2013. Int J Equity Health. 2016 Nov;15(1):150. https://doi.org/10.1186/s12939-016-0444-3
https://doi.org/10.1186/s12939-016-0444-...
.

Neurological disorders

Diagnostic criteria for NDs were based on the Tenth Revision of the International Statistical Classification of Diseases and Related Health Problems (ICD-10)2020. van Drimmelen-Krabbe JJ, Bradley WG, Orgogozo JM, Sartorius N. The application of the International Statistical Classification of Diseases to neurology: ICD-10 NA. J Neurol Sci. 1998 Nov;161(1):2-9. https://doi.org/10.1016/S0022-510X(98)00217-2
https://doi.org/10.1016/S0022-510X(98)00...
. We analyzed disease frequency, readmissions, and LOS of the following: cerebrovascular disorders representing ischemic stroke, transient ischemic attack, and spontaneous brain hemorrhage (excluding subarachnoid hemorrhage); epilepsy and acute symptomatic seizures; movement disorders including hyperkinetic disorders (Huntington's chorea, Parkinson's disease, and parkinsonism (but not cases of Parkinson's disease dementia or Lewy bodies dementia); neuromuscular disorders; CNS infections; headaches; syncope or near syncope; CNS toxic and metabolic disorders including alcoholism and other toxic or metabolic encephalopathy as well as acute neurologic complications of water-electrolytic balance disturbances and brain injury, represented in patients with sequelae of cardiovascular arrest. In addition, CNS neoplasms were included if patients under the care of an oncologist or neurosurgeon had consulted a neurologist for clinical treatment of NDs, such as epilepsy, headache, or cognitive disorders. Neurocognitive disorders were also included if cases of delirium and cases of dementia were diagnosed based on DSM-IV criteria2121. American Psychiatric Association. Diagnostic and statistical manual of mental disorders, 4th ed. Washington, DC: American Psychiatric Association; 1994..

Comorbidities

Using the following criteria, we compiled important comorbidities that could influence the studied outcomes.

1) Arterial hypertension was diagnosed according to the criteria of the Joint National Committee on the Prevention, Detection, Evaluation and Treatment of High Blood Pressure2222. Chobanian AV, Bakris GL, Black HR, Cushman WC, Green LA, Izzo JL Jr, et al. The Seventh Report of the Joint National Committee on Prevention, Detection, Evaluation, and Treatment of High Blood Pressure: the JNC 7 report. JAMA. 2003 May;289(19):2560-72. https://doi.org/10.1001/jama.289.19.2560
https://doi.org/10.1001/jama.289.19.2560...
. 2) Dyslipidemias were defined according to the recommendations of the National Cholesterol Education Program Expert Panel on the Detection, Evaluation and Treatment of High Blood Cholesterol in Adults (Adult Treatment Panel III) and the results of recent clinical trials2323. Grundy SM, Cleeman JI, Merz CN, Brewer HB Jr, Clark LT, Hunninghake DB, et al. Implications of recent clinical trials for the National Cholesterol Education Program Adult Treatment Panel III Guidelines. J Am Coll Cardiol. 2004 Aug;44(3):720-32. https://doi.org/10.1016/j.jacc.2004.07.001
https://doi.org/10.1016/j.jacc.2004.07.0...
. 3) Diabetes mellitus was diagnosed based on the follow-up report of the 2007 guidelines of the American Diabetes Association2424. Genuth S, Alberti KG, Bennett P, Buse J, Defronzo R, Kahn R, et al. Follow-up report on the diagnosis of diabetes mellitus. Diabetes Care. 2003 Nov;26(11):3160-7. https://doi.org/10.2337/diacare.26.11.3160
https://doi.org/10.2337/diacare.26.11.31...
. 4) Clinical disorders were classified according to the ICD-10 and included a) infections, which represented not only in patients who were admitted with infections but also patients with neurological symptoms who experienced infections during their hospitalization; b) neoplasms; c) chronic and acute respiratory system diseases; d) musculoskeletal diseases; e) genitourinary disorders; f) digestive disorders; g) endocrine and metabolic disorders, including water-electrolyte imbalances (hepatic insufficiency was considered a metabolic rather than a digestive disorder); h) circulatory system disorders (cardiac and peripheral vascular disorders), excluding patients with cerebrovascular diseases; and i) psychiatric disorders diagnosed based on DSM-IV criteria2121. American Psychiatric Association. Diagnostic and statistical manual of mental disorders, 4th ed. Washington, DC: American Psychiatric Association; 1994.. These psychiatric disorders were classified only as comorbidities of NDs, because HSR does not admit patients with a primary psychiatric diagnosis; therefore, most of the disorders were anxiety, depression, and bipolar disorder. 5) Patient multimorbidity signified patients suffering from two or more morbidities2525. Oni T, McGrath N, BeLue R, Roderick P, Colagiuri S, May CR, et al. Chronic diseases and multi-morbidity: conceptual modification to the WHO ICCC model for countries in health transition. BMC Public Health. 2014 Jun;14(1):575. https://doi.org/10.1186/1471-2458-14-575
https://doi.org/10.1186/1471-2458-14-575...
.

Readmission and long LOS

Hospital readmissions during the two-year study period were recorded. The median LOS for the entire population was nine days; hence, hospitalizations of nine days or longer were conventionally considered long LOS.

Predictors of readmission and long LOS

Patients were dichotomized according to the incidence or no incidence of readmission. The same process was used for categorizing patients according to occurrence of long LOS. Univariate analysis of all patient characteristics was performed to find potential predictors of hospital readmission as well as to detect predictors of long LOS. Multivariate analysis of selected variables was executed thereafter.

Statistics

Quantitative variables with normal distribution were reported as their mean and standard deviation, and for variables with non-normal distribution by their median and interquartile interval. Normal variables were identified by graphic analysis and the Shapiro-Wilk test. Categorical variables were reported as frequencies and percentages.

Bivariate comparisons between groups were performed using Student's t-test for numerical variables with normal distribution. Categorical variables were compared by Pearson's chi-square or Fisher's exact test when necessary. We performed a stepwise backward hierarchic logistic regression for multivariate analysis to increment the power of prediction of the model. Independent variables were considered for multivariate analysis if recognized as a biological plausibility associated with the main study hypotheses and when bivariate tests showed a p-value < 0.25 according to the algorithm proposed by Hosmer and Lemeshow2626. Hosmer DW Jr, Lemeshow S. Applied logistic regression. 2nd ed. New York: Wiley-Interscience; 2000..

The dimension of the model was measured by the Akaike information criterion. The Nagelkerke R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
was employed to estimate how much the model explained outcomes, and the omnibus test of model coefficients (p-value) tested whether the explained variance in a set of data was significantly greater than the unexplained variance, overall. Other tests for the dimension of the multivariable model employed were: McFadden R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
, Cox and Snell R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
(ML), McKelvey and Zavoina, and Effron.

Statistical analyses were performed using SPSS (v.25, Chicago, IL), R Program (v.3.4.4), and Microsoft Excel 2016 software.

Ethics

The HSR Ethical Committee for Research approved this study (No. 8/11) on August 25, 2011. The HSR Ethical Committee for Research is certified by the National Committee for Ethics in Research, according to the Brazilian Operational Manual for Ethics Committee in Research.

RESULTS

Patient demographics

We selected 798 elders with NDs, admitted to HSR, to be studied. The mean age of these individuals was 75.8 ± 9.1 years (median, 76 years). The interquartile interval was 68 years (25th percentile) to 82 years (75th percentile). Women formed 55% of this population. Of this geriatric population, 464 (58%) were married and 713 (89%) were patients of private health services.

Readmission

Over the two-year study period, 251 patients were readmitted to HSR, producing a readmission rate of 31% (95%CI, 28%–35%). Among these patients, 101 (40%) were readmitted more than once, resulting in an average of 1.8 ± 1.5 readmissions per patient.

Length of stay

The median hospital LOS for these elderly neurological inpatients was nine days, with an interquartile range between 1-20 days; thus, 409 (51%) patients had an LOS of ≥ 9 days (95%CI, 48% –55%).

NDs and comorbidities: frequency and association with patient readmission and long LOS

Among our older adult inpatient population, 555 (70%) had primary NDs diagnosed by neurologists and identified in discharge summaries. The remaining 243 (30%) patients were admitted with clinical complications of underlying neurological chronic NDs or developed neurological complications during their stay in the hospital. The latter were captured by IT-HSR examination of the physicians’ billing codes. Overall, 312 (39%) patients were affected by more than one ND, totaling 668 additional NDs that were classified as neurological comorbidities in this population. Therefore, we found 1,154 NDs among 798 elderly inpatients, which represented a mean of 1.32 ± 0.91 NDs (95%CI, 1.23–1.38), with a range of 1-5 NDs per patient. Moreover, we observed a wide range of diagnostic frequency of the NDs (0.3%-50.8%), with cerebrovascular disease being the most common (50.8%; Figure 1). This study captured 2,679 comorbidities involving 90% of patients with two or more comorbidities, constituting a mean of 3.35 ± 1.51 (95% CI, 3.25–3.47) and a range of 0-9 comorbidities per patient. We found a wide range of diagnostic frequency for comorbidities (5.6%-84.5%), with arterial hypertension (84.5%) and diabetes (57.5%) being the most common comorbidities (Figure 2). Overall, for patient multimorbidity (NDs + comorbidities), the mean was 4.7 ± 1.7 morbidities per patient (median, 5.0).

Figure 1
Frequency of the most-common neurological disorders and respective rate of readmission and long length of stay in elders admitted with neurological disorders in a tertiary medical center.
Figure 2
Frequency of comorbidities and respective rates of readmission and long length of stay in elders admitted with neurological disorders in a tertiary medical center.

Patient readmission rates were quite similar among all NDs and among their comorbidities. In contrast, there was significant variation in the rates of long LOS for patients with NDs as well as between their comorbidities. Figure 1 shows all NDs with disease frequency exceeding 5% and their respective rates of readmission and long LOS. Figure 2 shows these findings for their comorbidities.

Predictors of readmission and long LOS

Tables 1 and 2 compare the characteristics of patients who were readmitted to the hospital with those who were not and also of patients who stayed ≥ 9 days (long LOS) and those who stayed < 9 days. We found no statistically significant differences in the rates of patient readmission among independent variables, except for female sex and arterial hypertension (p < 0.05), which were associated with reduced readmission rates. However, several variables were associated with a long LOS: age, SUS, delirium, arterial hypertension, infection, neoplasm, and genitourinary and respiratory disorders. Female sex, syncope, and headache were associated with a shorter LOS (p < 0.05).

Table 1
Univariate analysis of demographics and neurological disorders according to incidence of readmission and occurrence of long length of stay in elderly inpatients admitted in a tertiary medical center.
Table 2
Univariate analysis of comorbidities according to readmission and long length of stay in 798 elderly neurological inpatients.

Multivariate analysis

Despite female sex (p = 0.045) and arterial hypertension (p = 0.0016) being associated with each other in a multiple model, their logistic model was poor, according to statistics of model dimension effect: pseudo R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
, Cox-Snell R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
(R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
= 0.013), Nagelkerke R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
(R22. Zook CJ, Savickis SF, Moore FD. Repeated hospitalization for the same disease: a multiplier of national health costs. Milbank Mem Fund Q Health Soc. 1980;58(3):454-71. https://doi.org/10.2307/3349734
https://doi.org/10.2307/3349734...
= 0.18), and Hosmer-Lemeshow (cHL2[2]=19.859), p = 0.007. Thus, these findings provided unsatisfactory data for female sex and arterial hypertension in the final adjustment and, consequently, they did not predict a decrease in readmissions.

Table 3 shows multivariate analysis for long LOS: adjusted odds ratio (Exp b) with 95% CI for the three blocks (demographics, comorbidities, and NDs) as well as p-values of variables’ coefficients, according to Wald statistics. It follows that this study demonstrated that SUS users, respiratory disorders, infection, genitourinary disorders, and arterial hypertension predicted long LOS, whereas dyslipidemia, headache, and syncope were associated with a decreased probability of long LOS. Note that dyslipidemia was included in the multivariable analysis because of its relevance and in accordance with the Hosmer-Lemeshow criteria.

Table 3
Multivariate analysis for long length of stay: adjusted odds ratio and final p-values according to Wald statistics.

Accordingly, in this study, no NDs were recognized as independent risk factors for long LOS, but syncope and headache were confirmed as associated with shorter LOS. Figure 3 shows the model receiver operating characteristic and analysis of the area under the curve, which quantified the power of prediction of this model. Table 4 shows summary statistics related to the variables of hierarchical logistic regression for models according to the variables block for long LOS. Additional description of the statistical analysis is available on request.

Figure 3
Receiver operating characteristic curve (ROC) for the final model.
Table 4
Hierarchical logistic regression for long length of stay related variables. The summary of statistics for models according to variable blocks.

DISCUSSION

Patient readmission and long LOS are major undesirable outcomes for elderly inpatients. We studied a relatively large population of elderly inpatients with a high mean age (25% of patients were aged 82 years or older). Our method of capturing data was uncommon, because health systems are largely configured for individual disorders (i.e., patient multimorbidity was frequent in this population, which is common among elders)2727. Barnett K, Mercer SW, Norbury M, Watt G, Wyke S, Guthrie B. Epidemiology of multimorbidity and implications for health care, research, and medical education: a cross-sectional study. Lancet. 2012 Jul;380(9836):37-43. https://doi.org/10.1016/S0140-6736(12)60240-2
https://doi.org/10.1016/S0140-6736(12)60...
. Eighty-five (11%) of the studied inpatients were SUS users. As SUS users belong to a lower socioeconomic class than users of private health services, we were able to compare outcomes of these two socioeconomically distinct populations. All patient characteristics were associated with a fairly high uniform rate of hospital readmission including NDs. Notwithstanding the high rate of patient readmission in this population, neither the isolated diagnosis of NDs nor their comorbidities were recognized as predictors for readmission. Other risk factors for readmission in this population should be examined, such as lack of appropriate follow-up (post-discharge suboptimal care) and social or additional factors as cited for other patients2828. Yam CH, Wong EL, Chan FW, Leung MC, Wong FY, Cheung AW, et al. Avoidable readmission in Hong Kong: system, clinician, patient or social factor? BMC Health Serv Res. 2010 Nov;10(1):311. https://doi.org/10.1186/1472-6963-10-311
https://doi.org/10.1186/1472-6963-10-311...
,2929. Hesselink G, Zegers M, Vernooij-Dassen M, Barach P, Kalkman C, Flink M, et al. Improving patient discharge and reducing hospital readmissions by using Intervention Mapping. BMC Health Serv Res. 2014 Sep;14(1):389. https://doi.org/10.1186/1472-6963-14-389
https://doi.org/10.1186/1472-6963-14-389...
. As expected, headache, syncope, and dyslipidemia were associated with reduced risk of long LOS3030. Knox J, Chuni C, Naqvi Z, Crawford P, Waring W. Presentations to an acute medical unit due to headache: a review of 306 consecutive cases. Acute Med. 2012;11(3):144-9.3232. Delgado-Rodríguez M, Medina-Cuadros M, Gómez-Ortega A, Martínez-Gallego G, Mariscal-Ortiz M, Martinez-Gonzalez MA, et al. Cholesterol and serum albumin levels as predictors of cross infection, death, and length of hospital stay. Arch Surg. 2002 Jul;137(7):805-12. https://doi.org/10.1001/archsurg.137.7.805
https://doi.org/10.1001/archsurg.137.7.8...
. Being an SUS user was a significant predictor of long LOS, because these patients are likely to be more severely affected by chronic disorders owing to inequalities in access to health care3333. Garcia-Subirats I, Vargas I, Mogollón-Pérez AS, De Paepe P, Silva MR, Unger JP, et al. Inequities in access to health care in different health systems: a study in municipalities of central Colombia and north-eastern Brazil. Int J Equity Health. 2014 Jan;13(1):10. https://doi.org/10.1186/1475-9276-13-10
https://doi.org/10.1186/1475-9276-13-10...
. Long LOS has been noted in other low-income populations of neurological patients3434. Corrao G, Rea F, Merlino L, Mazzola P, Annoni F, Annoni G. Management, prognosis and predictors of unfavourable outcomes in patients newly hospitalized for transient ischemic attack: a real-world investigation from Italy. BMC Neurol. 2017 Jan;17(1):12. https://doi.org/10.1186/s12883-017-0796-3
https://doi.org/10.1186/s12883-017-0796-...
. Hence, strategies for better access to primary care could ultimately reduce the LOS in Brazilian hospitals, as only 24% of Brazil's population use private health services3535. Instituto Brasileiro de Geografia e Estatística – IBGE. Brazilian health services availability and utilization: a population-based study. (1998, Dec 15). Available from:http://www.ibge.gov.br/home/estatistica/populacao/trabalhoerendimento/pnad98/saude/analise.shtm
http://www.ibge.gov.br/home/estatistica/...
. Despite the fact that no ND predicted a long LOS, several comorbidities such as respiratory disorder, infection, genitourinary disorder, and arterial hypertension were associated with long LOS in this population. Patients suffering from acute and chronic respiratory disorders represented only 11% of comorbidities, but the vast majority (85%) was associated with long LOS, indicating respiratory disorders are a strong predictor for this outcome. These results corroborate that long LOS is common in patients admitted with acute or chronic respiratory disorders3636. Gadre SK, Duggal A, Mireles-Cabodevila E, Krishnan S, Wang XF, Zell K, et al. Acute respiratory failure requiring mechanical ventilation in severe chronic obstructive pulmonary disease (COPD). Medicine (Baltimore). 2018 Apr; 97(17): e0487. https://doi.org/10.1097/MD.0000000000010487
https://doi.org/10.1097/MD.0000000000010...
. Infections were numerous, affecting almost half of the patients, and predicted long LOS in this population. Infections are common in neurological units, particularly urinary infection by gram-negative bacteria, blood infections, skin and soft tissue infections, as well as respiratory system infections3737. Djordjevic Z, Jankovic S, Gajovic O, Djonovic N, Folic N, Bukumiric Z. Hospital infections in a neurological intensive care unit: incidence, causative agents and risk factors. J Infect Dev Ctries. 2012 Nov;6(11):798-805. https://doi.org/10.3855/jidc.2659
https://doi.org/10.3855/jidc.2659...
. Genitourinary disorders were also frequent among this elderly population, especially kidney diseases. Kidney disorders are common causes of long LOS, principally when associated with sepsis and cardiovascular disorders3838. Yong TY, Fok JS, Ng PZ, Hakendorf P, Ben-Tovim DI, Roberts S, et al. The significance of reduced kidney function among hospitalized acute general medical patients. QJM. 2013 Jan;106(1):59-65. https://doi.org/10.1093/qjmed/hcs192
https://doi.org/10.1093/qjmed/hcs192...
. Arterial hypertension was the most common comorbidity and a strong predictor for long LOS in this population, and it may be due to patients (elders) suffering from long-term arterial hypertension3939. Sanders JS, Skipworth JR, Cooper JA, Brull DJ, Humphries SE, Mythen M, et al. Duration of preceding hypertension is associated with prolonged length of ICU stay. Int J Cardiol. 2012 May;157(2):180-4. https://doi.org/10.1016/j.ijcard.2010.12.011
https://doi.org/10.1016/j.ijcard.2010.12...
. Arterial hypertension is a long-lasting disorder, and its control depends on adequate primary care, which is underprovided in Bahia, northeastern Brazil4040. Aleluia IR, Medina MG, Almeida PF, Vilasbôas AL. Care coordination in primary health care: an evaluative study in a municipality in the Northeast of Brazil. Cien Saúde Colet. 2017 Jun;22(6):1845-56. https://doi.org/10.1590/1413-81232017226.02042017
https://doi.org/10.1590/1413-81232017226...
. Comorbidities were the leading risk for long LOS in these elderly neurological patients; thus, patient multimorbidity needs to be better studied in this population. Patient multimorbidity is a matter of concern to health services, as health systems are configured for individual disease rather than multimorbidity2727. Barnett K, Mercer SW, Norbury M, Watt G, Wyke S, Guthrie B. Epidemiology of multimorbidity and implications for health care, research, and medical education: a cross-sectional study. Lancet. 2012 Jul;380(9836):37-43. https://doi.org/10.1016/S0140-6736(12)60240-2
https://doi.org/10.1016/S0140-6736(12)60...
.

Overall, the studied variables accounted for 22% of the predictors of long LOS, indicating that a prospective study is needed that includes other risks, such as patient multimorbidity, nutrition status, and cognitive and functional scores, as stated for other elderly populations4141. Campbell SE, Seymour DG, Primrose WR. A systematic literature review of factors affecting outcome in older medical patients admitted to hospital. Age Ageing. 2004 Mar;33(2):110-5. https://doi.org/10.1093/ageing/afh036
https://doi.org/10.1093/ageing/afh036...
.

Limitations of this study

This was a retrospective study, and we examined only the outcome of readmission to the same hospital over a maximum two-year period. Furthermore, these patients were studied before restructuring of and improvements to the HSR neurology department, which recently incorporated a neurological intensive care unit.

Strengths of this study

The number of elderly inpatients in this sample and the method used for searching NDs and comorbidities could be considered relatively robust; for more than 20 years, HSR has been one of the most important reference centers for neurology in northeast Brazil.

CONCLUSIONS

This study found no predictors for patient readmission among analyzed characteristics in elderly neurological inpatients. We suggest collaboration involving hospital neurology teams, home care stakeholders, and outpatient coordinators to study other possible risk factors and post-discharge measures to prevent patient readmissions.

Social deprivation and several comorbidities accounted for 22% of the predictors of long LOS in this particular population. Conversely, NDs were not a risk factor for long LOS. Therefore, improvements in the model of risk for long LOS ought to be attempted, including study of other patient characteristics such as patient multimorbidity and functional and cognitive scores as identified in other elderly populations.

  • Support: The Hospital Sao Rafael–Monte Tabor Foundation partially reimburses manuscript-processing charges to motivate research.

Acknowledgments

We acknowledge Prof. Luis Correia for scientific support and Lucas E. F. Oliveira for performing statistical analysis.

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Publication Dates

  • Publication in this collection
    00 00 2019
  • Date of issue
    May 2019

History

  • Received
    03 Oct 2018
  • Reviewed
    17 Dec 2018
  • Accepted
    01 Feb 2019
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