Hostname: page-component-586b7cd67f-t7czq Total loading time: 0 Render date: 2024-11-23T20:52:46.078Z Has data issue: false hasContentIssue false

ACCI could be a poor prognostic indicator for the in-hospital mortality of patients with SFTS

Published online by Cambridge University Press:  06 December 2023

Chen Gong
Affiliation:
Department of Pediatrics, The First Affiliated Hospital of Anhui Medical University, Hefei, China
Xinjian Xiang
Affiliation:
Department of Plastic and Reconstructive Surgery, The Second Affiliated Hospital of Anhui Medical University, Hefei, China
Baoyu Hong
Affiliation:
Department of Pediatrics, The Second Affiliated Hospital of Anhui Medical University, Hefei, China
Tingting Shen
Affiliation:
Department of Pathology, the First Affiliated Hospital of Anhui Medical University, Hefei, China
Meng Zhang
Affiliation:
Department of Cardiology, The Second Affiliated Hospital of Anhui Medical University, Hefei, China
Shichun Shen*
Affiliation:
Department of Cardiology, The First Affiliated Hospital of USTC, Division of Life Sciences and Medicine, University of Science and Technology of China, Hefei, China
Shenggang Ding*
Affiliation:
Department of Pediatrics, The First Affiliated Hospital of Anhui Medical University, Hefei, China
*
Corresponding authors: Shichun Shen and Shenggang Ding; Emails: [email protected]; [email protected]
Corresponding authors: Shichun Shen and Shenggang Ding; Emails: [email protected]; [email protected]
Rights & Permissions [Opens in a new window]

Abstract

This study aims to evaluate the predictive role of age-adjusted Charlson comorbidity index (ACCI) scores for in-hospital prognosis of severe fever in thrombocytopenia syndrome (SFTS) patients. A total of 192 patients diagnosed with SFTS were selected as the study subjects. Clinical data were retrospectively collected. Receiver operating characteristic curves were used to evaluate the diagnostic value of ACCI for the mortality of SFTS patients, and Cox regression models were used to assess the association between predictive factors and prognosis. The 192 SFTS patients were divided into two groups according to the clinical endpoints (survivors/non-survivors). The results showed that the mortality of the 192 hospitalized SFTS patients was 26.6%. The ACCI score of the survivor group was significantly lower than that of the non-survivor group. Multivariate Cox regression analysis showed that the increased ACCI score was a significant predictor of poor prognosis in SFTS. Kaplan–Meier survival analysis showed that SFTS patients with an ACCI >2.5 had shorter mean survival times, indicating a poor prognosis. Our findings suggest that ACCI, as an easy-to-use clinical indicator, may offer a simple and feasible approach for clinicians to determine the severity of SFTS.

Type
Original Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press

Introduction

Severe fever with thrombocytopenia syndrome (SFTS) is an infectious zoonotic disease caused by the SFTS virus (SFTSV), a recently discovered member of the Phlebovirus genus in the Bunyaviridae family. SFTSV is divided into six genotypes (A-F) and was first isolated from a patient in Hubei, China, in 2009. Subsequently, the same virus was identified in multiple patients and was confirmed to be SFTSV [Reference Zhang1Reference Fu3]. SFTS has mainly been reported in countries such as China, South Korea, Japan, and Pakistan [Reference Matsumoto4Reference Zohaib6], with major symptoms including fever, leukopenia, thrombocytopenia, and gastrointestinal symptoms. This disease is highly contagious, with a mortality of up to 30% [Reference Yu2, Reference Chen7]. The primary transmission route of SFTS is believed to be through tick bites [Reference Zhang1, Reference Niu8]. Nevertheless, transmission through contact with infected animals and patients, as well as sexual transmission between humans, has also been reported [Reference Chung9Reference Yoo, Lee and Heo11].

Early identification of SFTS in patients with a high risk of death can help implement efficient clinical approaches, thereby reducing disease severity and mortality. Comorbidities affect the mortality rate of patients with infectious diseases and may also influence their treatment plans. Previous studies have shown that information on the patient’s health status and the number of comorbidities involved can help determine the prognosis of the disease [Reference Bahlis, Diogo and Fuchs12]. Therefore, a comprehensive indicator of the patient’s basic health status may be useful. One standardized method for assessing comorbidities is the Charlson comorbidity index (CCI), which was first proposed in 1987 and developed based on 17 potential conditions to predict one-year and ten-year all-cause mortality [Reference Charlson13].

CCI is the most widely used comorbidity index and has been validated in many clinical settings [Reference de Groot14, Reference Bar15]. The clinical measurement sensitivity of CCI has also been proven under various medical conditions, and increases in CCI scores correlate with an increase in mortality. Furthermore, CCI has incremental clinical measurement properties, and adding CCI to other measurements can improve the overall predictive accuracy [Reference Charlson16]. Studies have shown that CCI can predict long-term mortality in different clinical populations, including internal medicine, surgery, and intensive care units (ICUs) [Reference Charlson16]. It is also a reliable predictor of in-hospital mortality for infectious diseases such as acute respiratory infections and community-acquired pneumonia [Reference Bahlis, Diogo and Fuchs12, Reference Setter17].

However, no studies have yet focussed on the predictive effect of comorbidities on adverse outcomes in hospitalized SFTS patients. In addition, studies have shown that adverse outcomes in SFTS patients are significantly associated with the patient’s age. Zhang et al.’s study showed that the risk of death in SFTS patients over 65 years old increased by 3.384 times [Reference Zhang18]. Due to advances in treatment and disease management, CCI has undergone various refinements and has been validated in different studies [Reference Charlson19Reference Bannay21]. Among them, the age-adjusted Charlson comorbidity index (ACCI) score, which incorporates age as an additional indicator, has also been proven to be a good predictor of adverse outcomes in COVID-19 patients [Reference Kurien22]. Therefore, the aim of this study is to identify predictors of outcomes in hospitalized SFTS patients and to explore the effectiveness of ACCI as a prognostic indicator.

Materials and methods

Study design and patient selection

This study was performed in the First Affiliated Hospital of Anhui Medical University. One hundred ninety-two patients with SFTS who were hospitalized between April 2020 and January 2023 were enrolled in this study. Patient demographic and clinical data were collected from the electronic medical record system. This study complied with all relevant national regulations and was approved by the Ethics Committee of the First Affiliated Hospital of Anhui Medical University (Ethics Approval No. PJ 2023-2107-50). In this retrospective study, informed consent was waived by using anonymous clinical data. The confidentiality of all participants’ personal information was safeguarded.

Diagnostic criteria

According to the criteria published by the Chinese Ministry of Health in 2010, SFTS is defined as patients with fever ≥38.0 °C, bleeding and/or gastrointestinal symptoms, epidemiological risk factors (including exposure to ticks and/or contact with SFTS endemic areas), and laboratory results including thrombocytopenia. The diagnosis is confirmed by positive viral nucleic acid detection by RT-PCR or positive SFTSV-specific IgM/IgG antibodies [Reference BMoHoPsRo23, Reference Zhang24]. The exclusion criteria were patients who died within 24 h of admission, those aged below 16 years, and those with incomplete clinical data.

Laboratory test

Data on demographic characteristics and laboratory findings of all SFTS patients upon admission were collected through the electronic medical record system, including routine blood parameters, biochemical indicators, and coagulation function indicators. Blood samples for laboratory tests were collected within 24 h after the patients were admitted (using EDTA tubes, sodium citrate tubes, or coagulation tubes). Blood collected with EDTA was immediately tested for routine blood parameters. Blood collected with sodium citrate underwent coagulation function tests after being centrifuged at 3500 r/s for 15 min, and blood without anticoagulant underwent biochemical tests after being centrifuged at 3500 r/s for 5 min.

ACCI score evaluation

In this study, SFTS patients were classified according to the original Charlson index [Reference Charlson13] for comorbidities. The Charlson index considers 17 different comorbidities, with scores ranging from 1 to 6 points for each comorbidity, and the final CCI score for each patient is the sum of all comorbidity scores. The CCI score was calculated based on the patient’s medical history at admission, and diagnoses made after admission were not included in the scoring. The ACCI score was then formed by incorporating age as an additional indicator in the modified version from 1994 [Reference Charlson19]. Detailed definitions and calculation methods of CCI are provided in the Supplementary Material.

Statistical analysis

The normality of data distribution for continuous variables was assessed using a Kolmogorov–Smirnov test. Normally distributed variables were expressed as mean ± standard deviation (SD), while skewed variables were expressed as median (25th–75th percentiles). Between-group data comparisons were conducted through either a t-test or a non-parametric Mann–Whitney U test. The chi-square test or Fisher’s exact probability test was used to compare differences for categorical variables.

Multivariate Cox regression analysis was used to identify factors associated with the in-hospital mortality of SFTS. The entry time was the time of admission, and the exit time was the time of either in-hospital death or discharge. The event was defined as death during hospitalization. No violations of proportional hazard assumption were found (p > 0.99). Using a stepwise regression approach, variables with a p < 0.1 in the univariate Cox regression analysis were included in the multivariate Cox regression to determine the independent factors affecting in-hospital mortality in SFTS patients.

Receiver operating characteristic (ROC) curves were plotted, and the area under the curve (AUC) was used to evaluate the predictive ability of the four Charlson comorbidity index scores. Based on the optimal cutoff value of the ACCI score in the ROC analysis, patients were stratified into high- and low-risk groups. Kaplan–Meier survival curves were plotted, and the log-rank test was used to analyze the survival differences between the two groups.

SPSS 25.0 software (SPSS Inc., Chicago, IL, USA), GraphPad Prism (version 9.0) and R (version 4.1.2) were used for statistical analyses and graphic depiction. The values of p < 0.05 were considered statistically significant.

Results

Comparison of demographics and clinical characteristics between survivors and non-survivors

This study included 192 hospitalized SFTS-confirmed patients from April 2020 to January 2023, including 84 males (43.7%) and 108 females (56.3%). The median age of patients was 64.00 (54.25, 71.00) years. The case fatality rate was 26.6% (51/192), with multiple organ dysfunction being the main cause of death.

The comparison of clinical characteristics between SFTS survivors and non-survivors was shown in Table 1. Survivors had a median age of 61 years, compared to 71 years for non-survivors; a statistically significant difference was found (p < 0.001). The most common symptoms of SFTS patients included fever, rash, digestive system symptoms, respiratory system symptoms, and central nervous system symptoms. Among them, there was a significant difference in neurological symptoms between the two groups, with a higher proportion of central nervous system symptoms in non-survivors (33.3%) than in survivors (14.9%) (p = 0.007). In addition, there was no significant difference in smoking and drinking history between the two groups. Nevertheless, the proportion of hypertensive patients in the non-survivor group was significantly higher than that in the survivor group (p = 0.015).

Table 1. Participant clinical characteristics between survivors and non-survivors of SFTS

Note: Continuous variable data are presented as the mean (± SD) or the median (P25, P75). Classified variable data are presented as n (%). p values are based on comparisons between the group of survivors and the group of non-survivors.

Abbreviations: Alb, albumin; ALP, alkaline phosphatase; ALT, alanine aminotransaminase; aPTT, activated partial thromboplastin time; CK-MB, creatine phosphokinase isoenzyme; CNS, central nervous system; eGFR, estimated glomerular filtration rate; FDP, fibrinogen degradation product; Glu, glucose; HB, Haemoglobin; L, lymphocyte; LDH, lactate dehydrogenase; M, monocyte; N, neutrophil; PLT, platelet; PT, prothrombin time; SFTS, severe fever with thrombocytopenia syndrome; TBIL, total bilirubin; WBC, white blood cell.

Statistical analysis of the laboratory examination results of SFTS patients showed that, compared with survivors, non-survivors had lower white blood cell counts, lymphocyte counts, PLT counts, Alb, eGFR, blood calcium, bicarbonate, and FIB and higher levels of LDH, ALT, Glu, CK-MB, blood potassium, aPTT, PT, and FDP (Table 1).

Comparison of ACCI between survivors and non-survivors of SFTS

Table 2 summarizes the contributions of each factor to the final ACCI scores for the two groups. Among the 192 SFTS patients, 72 patients (37.5%) had at least one complication. The most common comorbidities were diabetes mellitus in 44 patients (22.9%), followed by cerebrovascular disease (11.5%), mild liver disease (5.2%), and peripheral vascular disease (3.1%). Compared with SFTS survivors, the proportions of cerebrovascular disease (31.4%) were significantly higher among non-survivors (Table 2).

Table 2. Comparison of ACCI with score weights between survivors and non-survivors of SFTS

Abbreviations: ACCI, age-adjusted Charlson Comorbidity Index; AIDS, acquired immune deficiency syndrome.

Distinct Charlson comorbidity scores for survivors and non-survivors of SFTS

To explore the discriminative value of different CCI index scores in predicting poor prognosis in SFTS patients, we evaluated the differences and area under the ROC curve (AUC) of four different CCI indices in survivors and non-survivors. The results showed that the four CCI scores were significantly higher in the non-survivor group than in the survivor group (Table 3), but the highest AUC was found for the ACCI, with an AUC (95% CI) of 0.844 (0.787–0.900), indicating a higher diagnostic value. The diagnostic value of the 2011 revised CCI was poor, with an AUC (95% CI) of 0.566 (0.470–0.662). The diagnostic values of the original 1987 CCI and the 2016 revised CCI were similar, with AUCs (95% CI) of 0.707 (0.618–0.795) and 0.710 (0.619–0.800), respectively (Figure 1).

Table 3. Distinct Charlson comorbidity scores for survivors and non-survivors of SFTS

Figure 1. Receiver operating characteristic (ROC) curves of distinct Charlson comorbidity scores for distinguishing survivors and non-survivors of SFTS; SFTS, Severe fever with thrombocytopenia syndrome.

ACCI is an independent risk factor for prognosis in SFTS patients

Based on the results of the univariate analysis, variables with p < 0.1 were included in the multivariate Cox regression analysis. The results showed that ACCI (hazard ratio (HR) = 2.354 (95% confidence interval (CI), 1.690–3.278), p < 0.001) was an independent risk factor for death in SFTS patients, while Ca2+ (HR = 0.024 (95% CI, 0.001–0.407), p = 0.010), Alb (HR = 0.889 (95% CI, 0.804–0.984), p = 0.023), and HCO3- (HR = 0.908 (95% CI, 0.826–0.998), p = 0.046) were protective factors for SFTS mortality (Figure 2a). The optimal cutoff value for the ACCI in predicting prognosis, as identified through ROC curve analysis, was found to be 2.5, with a sensitivity of 0.843 and a specificity of 0.702 (AUC = 0.844, 95% CI = 0.787–0.900). The Kaplan–Meier survival analysis stratified by the optimal ACCI cutoff value showed that high-risk SFTS patients with ACCI >2.5 had a poor prognosis (log-rank test p < 0.001) (Figure 2b). Moreover, the mortality rate of SFTS patients in the high-risk ACCI group was significantly higher than that in the low-risk ACCI group (50.58% vs. 7.48%, p < 0.001) (Figure 2c).

Figure 2. (A) Forest plots of HRs by multivariable Cox regression analysis; Red indicates HR > 1, Blue indicates HR < 1. (B) Kaplan–Meier survival curve for overall survival in SFTS patients stratified according to the ACCI. (C) Comparison of fatality at different ACCI levels.

Discussion

SFTS is an emerging infectious disease with a high mortality rate, ranging from 12% to 30%. In this study, among the 192 SFTS patients included, the mortality rate was 26.6%. The lack of timely medical treatment awareness and low medical standards may contribute to the higher mortality rate of SFTS patients in this region. The clinical manifestations of SFTS are not specific, with the main symptoms including fever, nausea, and vomiting. In this study, fever was the most common symptom in SFTS patients, with a proportion as high as 95.3%. Similar to other viral infections, the digestive and nervous systems are the most common targets of the virus. In this study, gastrointestinal symptoms were the most common local symptoms and included nausea, vomiting, abdominal pain, and diarrhoea. In contrast, neurological symptoms were more common in expired SFTS patients, suggesting a poor prognosis. In addition, rash appeared in most patients. A previous study detected SFTSV RNA and virus-infected cells in skin biopsy specimens of SFTS patients [Reference Sato25], indicating that the SFTS virus also invades the skin during the early stage of the disease.

The main laboratory findings in SFTS patients are decreases in platelets. The current mechanism of platelet reduction is thought to be due to the SFTS virus invading and adhering to platelets, triggering macrophage recognition and phagocytosis of platelets [Reference Jin26]. On the other hand, SFTSV stimulation and damage to vascular endothelial cells lead to barrier function impairment and platelet adhesion [Reference Westover27]. Compared with SFTS survivors, the decrease in ALT and Alb in deceased patients indicated that liver function impairment was correlated with poor prognosis. Similarly, the increase in CK-MB, aPTT, PT, and FDP and the decrease in eGFR indicated that heart and kidney damage and coagulation dysfunction were related to mortality.

In addition, this study found that the blood glucose level in patients in the non-survivor group was significantly elevated, and 31.4% of patients in the non-surviving group had diabetes, which was consistent with a previous study’s conclusion that a hyperglycaemic state in STFS patients was significantly correlated with mortality. Their study suggested that elevated fasting blood glucose was related to immunity and infection, and the severity of infection led to stress-induced hyperglycaemia. Furthermore, pancreatic injuries might also lead to insulin level disruptions, resulting in hyperglycaemia [Reference Zhang28]. Past research has shown that acute pancreatitis can be a complication of SFTS. Patients with SFTS have been found to exhibit mild pancreatic congestion and increased levels of pancreatic amylase. Additionally, real-time RT–PCR tests have confirmed the presence of SFTSV in the pancreas of these patients [Reference Tian29]. Hu et al. reported that 10 out of 33 SFTS patients (30.3%) had concurrent acute pancreatitis. Research by Zhang Yin et al. found elevated amylase in 59 out of 77 SFTS patients, with some also showing elevated blood sugar levels [Reference Zhang28, Reference Hu30]. The pathogenesis of SFTSV complicating acute pancreatitis is still not fully understood. Apart from the cytopathic effects of SFTSV, cytokine storms are also believed to play a crucial role in the onset of acute pancreatitis [Reference Tian29].

The bicarbonate levels in critically ill patients were increased. Elevated serum bicarbonate levels in hospitalized patients may be closely related to metabolic alkalosis [Reference Do, Vasquez and Soleimani31]. Gastrointestinal symptoms were the main clinical manifestations in this study, which may lead to metabolic alkalosis. In this study, high serum calcium level was a protective factor for death in SFTS patients. Serum calcium affects many physiological functions of the body, including the release of hormones and neurotransmitters, activation of enzymes, and blood coagulation. The normal maintenance of serum calcium levels helps protect the body’s balance [Reference Thongprayoon32]. Albumin is primarily synthesized in the liver, aiding in the transport of various substances and serving as an indicator of the body’s nutritional status [Reference Fanali33]. Hypoalbuminaemia is an indicator of liver dysfunction, malnutrition, and systemic inflammation. In this study, Alb levels were found to be lower in SFTS patients with poor clinical outcomes than in survivors. This may be related to the severe infections and multiorgan dysfunction caused by SFTSV infection [Reference Yang34].

In our multivariate regression analysis, we found that ACCI is an independent risk factor for mortality in patients with SFTS. Patients with an ACCI greater than 2.5 had a worse prognosis and a higher mortality rate. To our knowledge, this is the first study to evaluate comorbidities in combination with age as predictive factors for in-hospital mortality in SFTS patients.

Our research assessed the effectiveness of four distinct CCI scores in forecasting mortality among SFTS patients. When focussing on in-hospital mortality, ACCI emerged as the most accurate predictor. This suggests a link between age and mortality in SFTS cases. While older age often aligns with more comorbidities, it is important to note that many healthy elderly patients can still respond positively to comprehensive treatments and have good outcomes, in contrast to less healthy younger individuals [Reference Telli35]. In terms of comorbidities, we found a higher proportion of cerebrovascular and peripheral vascular diseases in deceased SFTS patients. In addition, we also found that ACCI >2.5 was observed in 42 patients (76.3%) in the non-survival group, including 16 patients with cerebrovascular disease and 5 patients with peripheral vascular disease, while an ACCI >2.5 was observed in 44 patients (30.7%) in the survival group, including 7 patients with cerebrovascular disease and 2 patients with peripheral vascular disease. In the non-survival group, SFTS patients with an ACCI >2.5 had more complications of cerebrovascular disease and peripheral vascular disease. This finding suggests that when considering the poor prognosis in SFTS, there is a need for close attention to patients with these comorbidities, and the possibility of incorporating treatment for existing comorbidities should be considered in the therapeutic regimen. Early improvement in the status of comorbidities might shift SFTS patients from having a high to low risk, thereby reducing mortality. ACCI, as a composite indicator of age and comorbidities, provides a better assessment of prognosis in SFTS patients. It may become a simple, rough, and comprehensive risk assessment method for clinicians managing SFTS patients [Reference Zhou36].

This study has certain limitations. First, our retrospective assessment of comorbidities may underestimate their true prevalence and result in biased outcomes. Second, this is a single-centre study with a relatively small sample size. The lack of external data validation is also a limitation of this study [Reference Telli35]. Despite these limitations, the advantage of the ACCI score is that it does not require expensive lab tests and can be calculated through online applications and patient records. Therefore, we believe that the ACCI score might aid clinicians in assessing the severity of patients with SFTS in the context of limited resources.

Conclusion

In summary, this research indicates that ACCI is a valuable predictor of mortality for hospitalized SFTS patients. The relationship between ACCI and the mortality rate of SFTS deserves validation in a broader population.

Supplementary material

The supplementary material for this article can be found at http://doi.org/10.1017/S0950268823001930.

Data availability statement

The datasets used and analyzed during the current study are available from the corresponding author upon reasonable request.

Author contribution

Chen Gong, Xinjian Xiang, Baoyu Hong, Tingting Shen, and Meng Zhang contributed to clinical data collection. Chen Gong drafted the manuscript. Shichun Shen and Shenggang Ding contributed to the revision of the manuscript. All authors read and approved the final manuscript.

Financial support

This research was supported by the National Natural Science Foundation of China (Grant No.52273113) and the Natural Science Foundation of Anhui Province (Grant No.1708085MH209).

Competing interest

All authors declare no conflict of interest.

References

Zhang, YZ, et al. (2012) The ecology, genetic diversity, and phylogeny of Huaiyangshan virus in China. Journal of Virology 86(5), 28642868.Google Scholar
Yu, XJ, et al. (2011) Fever with thrombocytopenia associated with a novel bunyavirus in China. New England Journal of Medicine 364(16), 15231532.Google Scholar
Fu, Y, et al. (2016) Phylogeographic analysis of severe fever with thrombocytopenia syndrome virus from Zhoushan Islands, China: Implication for transmission across the ocean. Scientific Reports 6, 19563.Google Scholar
Matsumoto, C, et al. (2018) Investigation of antibody to severe fever with thrombocytopenia syndrome virus (SFTSV) in blood samples donated in a SFTS-endemic area in Japan. Vox Sanguinis 113(3), 297299.Google Scholar
Kim, YR, et al. (2018) Severe fever with thrombocytopenia syndrome virus infection, South Korea, 2010 . Emerging Infectious Disease 24(11), 21032105.CrossRefGoogle ScholarPubMed
Zohaib, A, et al. (2020) Serologic evidence of severe fever with thrombocytopenia syndrome virus and related viruses in Pakistan. Emerging Infectious Disease 26(7), 15131516.Google Scholar
Chen, L, et al. (2023) Recent advances in the study of the immune escape mechanism of SFTSV and its therapeutic agents. Viruses 15(4), 940.CrossRefGoogle Scholar
Niu, G, et al. (2013) Severe fever with thrombocytopenia syndrome virus among domesticated animals, China. Emerging Infectious Disease 19(5), 756763.Google Scholar
Chung, JK, et al. (2020) Severe fever with thrombocytopenia syndrome associated with manual De-ticking of domestic dogs. Vector-Borne and Zoonotic Diseases 20(4), 285294.Google Scholar
Kobayashi, Y, et al. (2020) Severe fever with thrombocytopenia syndrome, Japan, 2013–2017. Emerging Infectious Disease 26(4), 692699.CrossRefGoogle ScholarPubMed
Yoo, JR, Lee, KH and Heo, ST. (2018) Surveillance results for family members of patients with severe fever with thrombocytopenia syndrome. Zoonoses and Public Health 65(8), 903907.Google Scholar
Bahlis, LF, Diogo, LP and Fuchs, SC (2021) Charlson comorbidity index and other predictors of in-hospital mortality among adults with community-acquired pneumonia. Jornal Brasileiro de Pneumologia 47(1), e20200257.CrossRefGoogle ScholarPubMed
Charlson, ME, et al. (1987) A new method of classifying prognostic comorbidity in longitudinal studies: Development and validation. Journal of Chronic Diseases 40, 373383.Google Scholar
de Groot, V, et al. (2003) How to measure comorbidity. A critical review of available methods. Journal Clinical Epidemiology 56(3), 221229.Google Scholar
Bar, B, et al. (2011) Charlson comorbidity index adjustment in intracerebral hemorrhage. Stroke 42(10), 29442946.Google Scholar
Charlson, ME, et al. (2022) Charlson comorbidity index: A critical review of clinimetric properties. Psychotherapy and Psychosomatics 91(1), 835.CrossRefGoogle ScholarPubMed
Setter, NW, et al. (2020) Charlson comorbidity index scores and in-hospital prognosis of patients with severe acute respiratory infections. Internal Medicine Journal 50(6), 691697.Google Scholar
Zhang, Y, et al. (2023) Development and validation of a clinical risk score to predict the occurrence of critical illness in hospitalized patients with SFTS. Journal of Infection and Public Health 16(3), 393398.Google Scholar
Charlson, M, et al. (1994) Validation of a combined comorbidity index. Journal of Clinical Epidemiology 47, 12451251.Google Scholar
Quan, H, et al. (2011) Updating and validating the Charlson comorbidity index and score for risk adjustment in hospital discharge abstracts using data from 6 countries. American Journal Epidemiology 173(6), 676682.Google Scholar
Bannay, A, et al. (2016) The best use of the Charlson comorbidity index with electronic health care database to predict mortality. Medical Care 54, 188194.CrossRefGoogle ScholarPubMed
Kurien, SS, et al. (2023) Correlation between biomarkers and age-adjusted Charlson comorbidity index in patients with COVID-19: A cross-sectional study in a tertiary care center in South India. Cureus 15(3), e36000.Google Scholar
BMoHoPsRo, C (2010) Guideline for prevention and treatment of severe fever with thrombocytopenia syndrome (2010 version). Chinese Journal Clinical Infectious Diseases 4(4), 193194.Google Scholar
Zhang, Y, et al. (2021) Severe fever with thrombocytopenia syndrome in Hefei: Clinical features, risk factors, and ribavirin therapeutic efficacy. Journal Medical Virology 93(6), 35163523.Google Scholar
Sato, T, et al. (2019) Cutaneous histopathology of the tick-bite region in severe fever with thrombocytopenia syndrome. Journal of Dermatology 46(5), 409412.Google Scholar
Jin, C, et al. (2012) Pathogenesis of emerging severe fever with thrombocytopenia syndrome virus in C57/BL6 mouse model. Proceedings of the National Academy of Sciences 109(25), 1005310058.Google Scholar
Westover, JB, et al. (2019) Vascular leak and hypercytokinemia associated with severe fever with thrombocytopenia syndrome virus infection in mice. Pathogens 8(4), 158.CrossRefGoogle ScholarPubMed
Zhang, Y, et al. (2021) The associations between fasting blood glucose levels and mortality of SFTS in patients. BMC Infectious Diseases 21(1), 761.Google Scholar
Tian, B, et al. (2020) Acute pancreatitis in patients with severe fever with thrombocytopenia syndrome virus infection. Pancreatology 20(8), 16311636.CrossRefGoogle ScholarPubMed
Hu, LF, et al. (2018) The regulation of seventeen inflammatory mediators are associated with patient outcomes in severe fever with thrombocytopenia syndrome. Scientific Reports 8(1), 159.CrossRefGoogle ScholarPubMed
Do, C, Vasquez, PC and Soleimani, M (2022) Metabolic alkalosis pathogenesis, diagnosis, and treatment: Core curriculum 2022. American Journal of Kidney Diseases 80(4), 536551.Google Scholar
Thongprayoon, C, et al. (2020) Hospital mortality and long-term mortality among hospitalized patients with various admission serum ionized calcium levels. Postgraduate Medicine 132(4), 385390.Google Scholar
Fanali, G, et al. (2012) Human serum albumin: From bench to bedside. Molecular Aspects of Medicine 33(3), 209290.Google Scholar
Yang, X, et al. (2022) The prognostic significance of C-reactive protein to albumin ratio in patients with severe fever with thrombocytopenia syndrome. Frontiers in Medicine 9, 879982.Google Scholar
Telli, TA, et al. (2023) Age-adjusted Charlson comorbidity index is a valuable prognostic tool in operable soft tissue sarcoma of trunk and extremities. Orthopaedics & Traumatology: Surgery & Research 109(3), 103491.Google Scholar
Zhou, S, et al. (2022) The age-adjusted Charlson comorbidity index predicts prognosis in elderly Cancer patients. Cancer Management and Research 14, 16831691.Google Scholar
Figure 0

Table 1. Participant clinical characteristics between survivors and non-survivors of SFTS

Figure 1

Table 2. Comparison of ACCI with score weights between survivors and non-survivors of SFTS

Figure 2

Table 3. Distinct Charlson comorbidity scores for survivors and non-survivors of SFTS

Figure 3

Figure 1. Receiver operating characteristic (ROC) curves of distinct Charlson comorbidity scores for distinguishing survivors and non-survivors of SFTS; SFTS, Severe fever with thrombocytopenia syndrome.

Figure 4

Figure 2. (A) Forest plots of HRs by multivariable Cox regression analysis; Red indicates HR > 1, Blue indicates HR < 1. (B) Kaplan–Meier survival curve for overall survival in SFTS patients stratified according to the ACCI. (C) Comparison of fatality at different ACCI levels.

Supplementary material: File

Gong et al. supplementary material
Download undefined(File)
File 16.9 KB