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      Reducción de la hospitalización mediante un algoritmo de manejo del dengue en Colombia Translated title: Reducing hospitalization with the use of a dengue management algorithm in Colombia

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          Abstract

          OBJETIVO: Evaluar el efecto de un algoritmo de manejo del dengue sobre la tasa de hospitalización de pacientes con sospecha de esta enfermedad, en una institución de salud de primer nivel en un área endémica en Colombia. MÉTODOS: Se realizó un estudio cuasiexperimental en el hospital local de Piedecuesta, Santander, Colombia, basado en la comparación de dos períodos (de 18 semanas cada uno), antes y después de la implementación del algoritmo. Este incluía recomendaciones para diagnosticar clínicamente el dengue y programar consultas de control y hemogramas, así como criterios de hospitalización y de suspensión del seguimiento. Se compararon las tasas de hospitalización en los dos períodos empleando el análisis de Poisson. La población analizada consistió en los pacientes que consultaron por síndrome febril agudo. Para el ajuste se incluyó el número de casos con dengue (IgM positivos) identificados en el mismo municipio. RESULTADOS: e obtuvo información de 964 pacientes en el primer período y de 1 350 en el segundo, y en dichos períodos hubo 44 y 13 hospitalizaciones, respectivamente. La implementación del algoritmo se asoció a una reducción significativa de la tasa de hospitalización (razón de tasas: 0,21; intervalo de confianza de 95% 0,11 a 0,39). Esta asociación no se modificó cuando se ajustó por el número de casos de dengue identificados en la ciudad. No hubo diferencias significativas en la tasa de consultas de control (P = 0,85) y de hemogramas (P = 0,24) en los dos períodos. No hubo casos fatales. CONCLUSIONES: Los resultados sugieren que es posible optimizar los recursos asistenciales en el manejo del dengue mediante la implementación del algoritmo.

          Translated abstract

          OBJECTIVE: Assess the impact of a dengue management algorithm on the hospitalization rate of patients with suspected disease in a primary care health facility in an endemic area of Colombia. METHODS: A quasi-experimental study was conducted at the local hospital in Piedecuesta, Santander, Colombia, based on comparison of two periods (18 weeks each), before and after use of the algorithm. This included recommendations for clinical diagnosis of dengue and the planning of follow-up visits and hemograms, as well as criteria for hospitalization and the discontinuation of follow-up. Hospitalization rates in the two periods were compared using the Poisson analysis. The population analyzed consisted of patients seen in the facility for acute febrile syndrome. For adjustment purposes, the number of dengue cases (IgM positive) identified in the municipality was included. RESULTS: Information was obtained on 964 patients in the first period and 1350 patients in the second. There were 44 and 13 hospitalizations during the respective periods. Use of the algorithm was associated with a significant reduction in the hospitalization rate (ratio: 0.21; 95% confidence interval; 0.11-0.39). This association did not change when adjusted for the number of dengue cases identified in the city. There were no significant differences in the rate of follow-up visits (P = 0.85) and hemograms (P = 0.24) in the two periods. There were no case fatalities. CONCLUSIONS: The results suggest that health care resources for dengue management can be optimized with the use of the algorithm.

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          Clinical and laboratory features that distinguish dengue from other febrile illnesses in endemic populations.

          Clinicians in resource-poor countries need to identify patients with dengue using readily-available data. The objective of this systematic review was to identify clinical and laboratory features that differentiate dengue fever (DF) and/or dengue haemorrhagic fever (DHF) from other febrile illnesses (OFI) in dengue-endemic populations. Systematic review of the literature from 1990 to 30 October 2007 including English publications comparing dengue and OFI. Among 49 studies reviewed, 34 did not meet our criteria for inclusion. Of the 15 studies included, 10 were prospective cohort studies and five were case-control studies. Seven studies assessed all ages, four assessed children only, and four assessed adults only. Patients with dengue had significantly lower platelet, white blood cell (WBC) and neutrophil counts, and a higher frequency of petechiae than OFI patients. Higher frequencies of myalgia, rash, haemorrhagic signs, lethargy/prostration, and arthralgia/joint pain and higher haematocrits were reported in adult patients with dengue but not in children. Most multivariable models included platelet count, WBC, rash, and signs of liver damage; however, none had high statistical validity and none considered changes in clinical features over the course of illness. Several individual clinical and laboratory variables distinguish dengue from OFI; however, some variables may be dependent on age. No published multivariable model has been validated. Study design, populations, diagnostic criteria, and data collection methods differed widely across studies, and the majority of studies did not identify specific aetiologies of OFIs. More prospective studies are needed to construct a valid and generalizable algorithm to guide the differential diagnosis of dengue in endemic countries.
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            Decision Tree Algorithms Predict the Diagnosis and Outcome of Dengue Fever in the Early Phase of Illness

            Introduction Dengue fever/dengue haemorrhagic fever (DF/DHF) is a re-emerging disease throughout the tropical world. The disease is caused by four closely related dengue viruses, which are transmitted by the Aedes mosquitoes, principally Aedes aegypti [1]. DHF and dengue shock syndrome (DSS) represent the severe end of the disease spectrum, which if not properly managed, would result in significant mortality. The pathophysiology of severe DHF and DSS is characterized by plasma leakage as a result of alteration in microvascular permeability [2]. There is as yet no vaccine or specific antiviral therapy for DF/DHF and management of cases remains largely supportive [3]. Dengue illness is often confused with other viral febrile states, confounding both clinical management [4]–[6] and disease surveillance for viral transmission prevention [7]. This difficulty is especially striking during the early phase of illness, where non-specific clinical symptoms and signs accompany the febrile illness [4]. More definitive symptoms, such as retro-orbital pain, and clinical signs, such as petechiae, do not appear until the later stages of illness, if at all. Definitive early dengue diagnosis thus requires laboratory tests and those suitable for use at this stage of illness are either costly, such as RT-PCR for dengue; not sufficiently rapid, such as virus isolation; or undergoing field trials, such as ELISA for NS1 protein of dengue virus [8],[9]. Furthermore, many dengue endemic places lack the necessary laboratory infrastructure or support [7] and thus a scheme for reliable clinical diagnosis, using data that can be obtained routinely, would be useful for early recognition of dengue fever, not only for case management but also for dengue surveillance. The current World Health Organization (WHO) scheme for classifying dengue infection (Table S1) makes use of symptoms and signs that are often not present in the first few days of illness, and thus not a guide for early diagnosis, but are instead designed for monitoring disease progression for clinical management of the severe DHF/DSS. Other attempts at identifying clinical features for the diagnosis of dengue disease have made use of univariate or multivariate analysis of clinical symptoms and signs, haematological or biochemical parameters [10],[11]. Although such studies provide a list of symptoms and signs that could be associated with dengue disease, how these should be applied for clinical diagnosis is not apparent. Evidence-based triage strategies that identify individuals likely to have dengue infection in the early stages of illness are needed to direct patient stratification in clinical investigations, management and healthcare resource planning. To address this goal, we show here that a decision tree approach can be useful to develop an intuitive diagnostic algorithm, using clinical and haematological parameters, that is able to distinguish dengue from non-dengue disease in the first 72 hours of illness. We also demonstrate a proof-of-concept that such an approach can be useful for early dengue disease prognostication. Materials and Methods Patients and clinical methods Ethical considerations The study protocol was approved by each organization's institutional review board. Patient enrolment, clinical and epidemiological data collection within the National Healthcare Group, Singapore was approved by the NHG IRB (DSRB B/05/013). Patient enrolment, clinical and epidemiological data collection in Dong Thap Hospital was approved by the hospital scientific and ethical committee as well as the Oxfordshire Tropical Research Ethical Committee, UK. Enrolment of study participants was conditional on appropriate informed consent administered by a study research nurse. All biological materials collected were anonymized after completion of demographic and clinical data collection. Screening and recruitment The protocol for patient recruitment in Singapore (the early dengue infection and outcome (EDEN) study) was described previously [12]. Adult patients (age >18 years) presenting at selected primary care polyclinics within 72 hours of onset of acute febrile illness and without rhinitis or clinically obvious alternative diagnoses for fever were eligible for study inclusion. Upon consent, anonymized demographic, clinical and epidemiological information were collected on a standardized data entry form on 3 occasions: 1–3 days post-onset of fever (1st visit), 4–7 days post-onset of fever (2nd visit) and 3–4 weeks post-onset of fever (3rd visit). Venous blood was also collected for haematological, virological and serological analyses at every visit. Remaining serum and blood were anonymized and stored at −80°C until use. The list of parameters monitored in this study is shown in the supplementary Table S2. Children or adults in whom there was a clinical suspicion of dengue were recruited within 72 hours of illness onset in Dong Thap Hospital, Vietnam. Blood samples were collected for diagnostic investigations at study enrolment and again at hospital discharge. Clinical data were collected daily on standard case record forms. Laboratory Methods Haematology A full blood count was performed on anticoagulated whole blood collected at all time points. A bench-top, FDA-approved haematocytometer was used for this application (iPoch-100, Sysmex, Japan). Calibration by internal and external QC controls was also performed on a regular basis. Serology and antigen detection IgM and IgG antibodies against dengue virus were detected using commercially available ELISAs (PanBio, Brisbane, Australia) according to manufacturer's instructions. Reverse-transcription polymerase chain reaction (RT-PCR) RNAs were extracted from the first serum portion or virus culture supernatant using QIAamp Viral RNA mini kit (Qiagen, Hilden, Germany) according to the manufacturer's protocol. RT-PCR to detect dengue viral RNA was carried out using a set of generic pan-dengue primers that targeted the 3′ non-coding region of dengue viruses as previously described [13]. Results were analysed with LightCycler software version 3.5 (Roche Diagnostics, Mannheim, Germany). Reactions with high crossover threshold (Ct) value or ambiguous melting curve results were analysed by electrophoresis on a 2% agarose gel, to confirm presence of product of the correct size. RNA extracted from previously obtained clinical isolates, namely dengue-1 (S144), dengue-2 (ST), dengue-3 (SGH) and dengue-4 (S006), propagated in C6/36 cell cultures were included as external control in every RT-PCR run. Decision tree analyses for disease modelling Classifier modelling The C4.5 decision tree classifier [14] software Inforsense (InforSense Ltd., London, UK) was used. A standard pruning confidence of 25% was used to remove branches where the algorithm was 25% or more confident so as to avoid having specific branches that would not be representative for generalisation. This prevents over-fitting of the data. The parameter ‘minimal cases’ represents a stopping criterion for further partition of the data at specific decision nodes. Tree growing at a specific decision node was stopped when at least one class had equal or less cases than the ‘minimal cases’. This prevents the tree from sub-dividing into overly specific nodes which have little supporting data. Choosing an appropriate value for ‘missing cases’ was done using k-fold cross validation (see below). Briefly, various decision trees with different ‘minimal cases’ were calculated and the value resulting in the tree with the best performance was chosen. The calculated algorithms were validated using the k-fold cross-validation approach. This is considered to be a powerful methodology to overcome data over-fitting [15]. Briefly, the original sample was divided into k sub-samples. Each sub-sample was put aside as evaluation data for testing a model, and the remaining k-1 sub-samples were used for training the model. The cross-validation process was repeated k times (folds) and each of the k sub-samples was used once as the validation data. The k results obtained from the k-folds could then be averaged to produce a single estimation of model performance [15]. The fold value was set to k = 10. To analyse the sensitivity and specificity of the decision algorithm, an averaged receiver-operating characteristic (ROC) curve was constructed. The area under the curve (AUC) serves as an indicator of the overall performance of the algorithm. The algorithms with the highest sensitivity along with a high AUC were selected. Statistical analysis All results have been summarized in terms of means and standard deviation for continuous variables using independent sample T-test. Shapiro-Wilk normality test was used to check for non-normally distributed parameters whereby a p value 1000/transfusion. * p 1000), both without documented pleural effusion, ascites or rise in serial hematocrit, or received platelet/blood transfusion. These clinical parameters have been previously observed in severe dengue [15],[16] and we have taken these cases collectively as clinically severe outcomes. Of these 23 cases, 19 (82.6%) were predicted by our tree as either probable severe dengue or likely severe dengue with data obtained in the first three days of illness. Conversely, 91.8% and 100% of the patients in the groups predicted by our tree as either likely non-severe dengue or probable non-severe dengue, respectively, did not show severe clinical outcomes (Table 1). The use of such a prognostic algorithm could prove useful in segregating patients according to likely clinical outcomes to guide clinical management and follow-up visits. Although our EDEN cohort in Singapore has focused on dengue in the adult population, our findings demonstrate a proof-of-concept that the use of simple haematological and virological parameters is predictive of disease outcome, and can be built upon to develop prognosis-based protocols for dengue case management that begins at the primary healthcare setting. Our study represents the first to demonstrate that decision algorithms for dengue diagnosis and prognosis can be developed for clinical use. While a large multi-centre prospective study will be needed for these algorithms to be applied globally, our analysis indicates that a decision tree approach can differentiate dengue from non-dengue febrile illness and predict outcome of disease. Supporting Information Table S1 Criteria for the classification of DF/DHF and the recommended approach to diagnosis, according to the WHO Guidelines. (0.03 MB DOC) Click here for additional data file. Table S2 Parameters and the respective units of measure used in the EDEN study to monitor the recruited cases in all three visits. (0.06 MB DOC) Click here for additional data file.
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              Clinical and laboratory characteristics and risk factors for fatality in elderly patients with dengue hemorrhagic fever.

              To better understand the clinical and laboratory characteristics and to identify risk factor(s) for fatality in elderly patients with dengue hemorrhagic fever (DHF), 66 elderly (age > or = 65 years) and 241 non-elderly adults (age, 19-64 years) with DHF were retrospectively analyzed. Compared with non-elderly adults, elderly individuals had significantly lower incidences of fever (P = 0.002), abdominal pain (P = 0.003), bone pain (P < 0.001), and skin rashes (P = 0.002); higher frequencies of concurrent bacteremia (P = 0.049), gastrointestinal bleeding (P = 0.044), acute renal failure (P = 0.001), and pleural effusion (P < 0.010); higher incidence of prolonged prothrombin time (P = 0.025); lower mean hemoglobin level (P < 0.001); longer hospitalization (P = 0.049); and a higher fatality rate (P = 0.006). Five elderly patients with DHF died. When compared with non-fatal elderly patients with DHF, a significant higher frequency in men (P = 0.019), those with chronic obstructive pulmonary disease (P = 0.008), those with dengue shock syndrome (DSS; P < 0.001), and those with acute renal failure (P < 0.001) was found in the elderly counterparts that died. Multivariate analysis showed that only DSS (odd ratio = 77.33, P = 0.001) was an independent risk factor for fatality in elderly patients.
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                Author and article information

                Journal
                rpsp
                Revista Panamericana de Salud Pública
                Rev Panam Salud Publica
                Organización Panamericana de la Salud (Washington, Washington, United States )
                1020-4989
                1680-5348
                September 2011
                : 30
                : 3
                : 248-254
                Affiliations
                [01] Bucaramanga orgnameUniversidad Industrial de Santander orgdiv1Facultad de Salud orgdiv2Centro de Investigaciones Epidemiológicas Colombia
                Article
                S1020-49892011000900009 S1020-4989(11)03000309
                10.1590/s1020-49892011000900009
                3c827d3b-ae8f-4078-bd02-be198403fd11

                This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.

                History
                : 21 August 2010
                : 26 February 2011
                Page count
                Figures: 0, Tables: 0, Equations: 0, References: 25, Pages: 7
                Product

                SciELO Public Health

                Self URI: Texto completo solamente en formato PDF (ES)
                Categories
                Artículos de Investigación Original

                Colombia,early diagnosis,therapeutics,decision support techniques,hospitalization,fever of unknown origin,Dengue,diagnóstico precoz,técnicas de apoyo para la decisión,hospitalización,fiebre de origen desconocido

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