Literature DB >> 27612566

Predicting invasive fungal disease due to Candida species in non-neutropenic, critically ill, adult patients in United Kingdom critical care units.

Jason Shahin1,2, Elizabeth J Allen3, Krishna Patel1, Hannah Muskett1, Sheila E Harvey1, Jonathan Edgeworth4, Christopher C Kibbler5, Rosemary A Barnes6, Sharmistha Biswas2, Neil Soni7, Kathryn M Rowan1, David A Harrison8.   

Abstract

BACKGROUND: Given the predominance of invasive fungal disease (IFD) amongst the non-immunocompromised adult critically ill population, the potential benefit of antifungal prophylaxis and the lack of generalisable tools to identify high risk patients, the aim of the current study was to describe the epidemiology of IFD in UK critical care units, and to develop and validate a clinical risk prediction tool to identify non-neutropenic, critically ill adult patients at high risk of IFD who would benefit from antifungal prophylaxis.
METHODS: Data on risk factors for, and outcomes from, IFD were collected for consecutive admissions to adult, general critical care units in the UK participating in the Fungal Infection Risk Evaluation (FIRE) Study. Three risk prediction models were developed to model the risk of subsequent Candida IFD based on information available at three time points: admission to the critical care unit, at the end of 24 h and at the end of calendar day 3 of the critical care unit stay. The final model at each time point was evaluated in the three external validation samples.
RESULTS: Between July 2009 and April 2011, 60,778 admissions from 96 critical care units were recruited. In total, 359 admissions (0.6 %) were admitted with, or developed, Candida IFD (66 % Candida albicans). At the rate of candidaemia of 3.3 per 1000 admissions, blood was the most common Candida IFD infection site. Of the initial 46 potential variables, the final admission model and the 24-h model both contained seven variables while the end of calendar day 3 model contained five variables. The end of calendar day 3 model performed the best with a c index of 0.709 in the full validation sample.
CONCLUSIONS: Incidence of Candida IFD in UK critical care units in this study was consistent with reports from other European epidemiological studies, but lower than that suggested by previous hospital-wide surveillance in the UK during the 1990s. Risk modeling using classical statistical methods produced relatively simple risk models, and associated clinical decision rules, that provided acceptable discrimination for identifying patients at 'high risk' of Candida IFD. TRIAL REGISTRATION: The FIRE Study was reviewed and approved by the Bolton NHS Research Ethics Committee (reference: 08/H1009/85), the Scotland A Research Ethics Committee (reference: 09/MRE00/76) and the National Information Governance Board (approval number: PIAG 2-10(f)/2005).

Entities:  

Keywords:  Candida; Critical care; Fungal; Invasive fungal disease; Prophylaxis

Mesh:

Substances:

Year:  2016        PMID: 27612566      PMCID: PMC5016930          DOI: 10.1186/s12879-016-1803-9

Source DB:  PubMed          Journal:  BMC Infect Dis        ISSN: 1471-2334            Impact factor:   3.090


Background

Once seen typically in immunocompromised patients, invasive fungal disease (IFD) amongst the critically ill is now predominantly found in the adult, general, non-immunocompromised population [1]. Over 5000 cases of IFD due to Candida species (Candida IFD) occur in the UK each year, with 40 % occurring in critical care units [2]. Epidemiological trends in IFD among the critically ill are changing, due in large part to the increased incidence of IFD risk factors and to new therapeutic strategies. A number of randomised controlled trials have evaluated prophylactic and or empiric therapy with antifungals in non-neutropenic, critically ill patients. Despite patient heterogeneity, these trials have demonstrated a beneficial effect of antifungal prophylaxis on the risk of developing proven IFD and suggested a reduction in mortality [3]. Given that the effectiveness of antifungal prophylaxis has only been demonstrated in groups at high risk of IFD and that more widespread use of antifungal drugs may promote resistance and drive up costs, it is necessary to establish a method to identify high risk patient groups, who stand to benefit most from an antifungal prophylactic strategy. Several risk models and clinical decision rules have been proposed for identifying patients at high risk of IFD [4-8]. However, model generalisability has been limited owing to the restricted study population, being either post-surgical patients [7, 8], or patients already colonised with Candida [8]. Given the potential benefit of antifungal prophylaxis and lack of generalisable tools to identify high risk patients, the aim of the current study was to describe the epidemiology of IFD in UK critical care units and to develop and validate a clinical risk prediction tool to predict the risk of Candida IFD at three decision time points: at admission to the critical care unit, at 24 h following admission, and at the end of the third calendar day following admission, in order to identify non-neutropenic, critically ill adult patients at high risk of IFD who would benefit from antifungal prophylaxis.

Methods

Study design

Based on the results of a systematic review of the literature conducted by our research team [5] and on expert clinical opinion, data on risk factors for, and outcomes from, IFD were collected for consecutive admissions to adult, general critical care units in the UK participating in the Fungal Infection Risk Evaluation (FIRE) Study [9]. These data were linked with additional patient data collected for national clinical audits – the Case Mix Programme (in England, Wales and Northern Ireland) and the Scottish Intensive Care Society Audit Group (in Scotland) – to form the FIRE Study database. For all sources, data were collected prospectively and abstracted by trained data collectors and underwent extensive validation.

FIRE Study database

For all critical care unit admissions, data were extracted on age, sex, medical history, surgical status, acute severity of illness, primary reason for admission, therapies received, IFD, fungal colonisation, mortality and length of stay. Severe comorbidities were defined using the APACHE II method [10] and must have been evident in the 6 months prior to critical care unit admission. Surgery within up to 7 days prior to admission to the critical care unit was classified as either emergency/urgent or scheduled/elective. Acute severity of illness was summarised using the APACHE II Score [10] and the ICNARC Physiology Score [11] assessed during the first 24 h following admission to the critical care unit. Data on the following therapies were collected: total parenteral nutrition; systemic antimicrobials; immunosuppressive therapy; central venous catheters, organ support; and antifungal use. Corticosteroids were included as immunosuppressives. Organ support was recorded throughout the critical care unit stay, defined according to the UK Department of Health Critical Care Minimum Dataset [12]. Fungal colonisation was defined as the presence of yeasts in any sample reported on a microbiology system and was recorded as the date that a positive report was available – i.e. the point at which a treatment decision could be made based on this knowledge. IFD was defined as a blood culture or sample from a normally sterile site (including, but not restricted to: cerebrospinal fluid; peritoneal fluid; pleural fluid; and pericardial fluid; and excluding bronchoalveolar lavage, urine and sputum) positive for yeast/mould cells in a microbiological or histopathological report. This definition was based on the Revised Definitions of Invasive Fungal Disease from the European Organization for Research and Treatment of Cancer/Invasive Fungal Infections Cooperative Group and the National Institute of Allergy and Infectious Diseases Mycoses Study Group (EORTC/MSG) Consensus Group [13]. This definition was chosen to best capture Candida IFD and was recognised to under-represent IFD due to other species. Timing of IFD was defined by the date on which the positive sample was collected. All patients reported to have IFD (pre critical care unit or during critical care unit stay), and a random sample of 2 % of those reported not to have IFD, were independently rechecked against hospital notes and microbiology records by the local investigator, blinded to the original data. For admissions that developed IFD during critical care unit stay, the timing of the first systemic antifungal was also reported relative to the timing of IFD. Patients were followed up for mortality and length of stay until death or final discharge from acute hospital and those transferred to another acute hospital.

Descriptive epidemiology

Analyses were performed using Stata/SE Version 10.1 (StataCorp LP, College Station TX). For the purpose of summarising case mix, outcomes and antifungal use, the cohort was divided into groups of: admissions with IFD positive for Candida albicans (Candida albicans IFD); admissions with IFD positive for other Candida species (non-albicans Candida spp IFD); and admissions with no IFD either prior to or during the critical care unit stay (no IFD). Admissions with IFD positive for Candida of unknown species or non-Candida species were excluded due to small numbers. Admissions with IFD positive for both Candida albicans and non-albicans Candida species were included in the Candida albicans subgroup.

Development and validation of risk prediction models

Three risk prediction models were developed to model the risk of subsequent Candida IFD based on information available at three time points: admission to critical care unit, at the end of 24 h and at the end of calendar day 3 of the critical care unit stay. The following exclusions were applied for the development and validation of the risk model at admission: age less than 18 years; second and subsequent admissions of the same patient; neutropenia (absolute neutrophil count less than 1 × 109 l−1); active haematological malignancy; admission following solid organ transplant; IFD identified up to 7 days prior to admission; and receipt of systemic antifungals up to 7 days prior to admission. For the models at 24 h and at the end of calendar day 3, exclusions were as above plus any of the following occurring before the decision time point: death or discharge from the critical care unit; IFD; or receipt of systemic antifungals. The dataset was divided into the following development and validation samples: development sample – all admissions to a random sample of participating critical care units in England, Wales and Northern Ireland, July 2009 to December 2010 (selected to include approximately two thirds of all admissions); random validation sample – all admissions to the remaining units in England, Wales and Northern Ireland; temporal validation sample – all admissions to units in the development sample, January to March 2011; and geographical validation sample – all admissions to units in Scotland. The risk prediction models were derived in the development sample using logistic regression models with robust standard errors to allow for clustering within critical care units. All candidate variables were included in a ‘full’ multivariable model and the model was progressively simplified using backwards-stepwise selection with the least statistically significant being removed at each step. Model discrimination was assessed with the c index [14], equivalent to the area under the receiver operating characteristic curve [15], calibration by graphical plots of observed against expected risk, and overall fit by Brier’s score [16], the mean squared error between outcome and prediction. Bootstrapping with 200 bootstrap samples was used on the development sample to internally validate the final selected model at each time point and to estimate optimism adjusted measures of the model discrimination and overall fit [17]. The final model at each time point was evaluated in the three external validation samples: a random sample, a geographic sample and a temporal sample, as described above. Each sample was chosen to test different aspects of future performance. The models were evaluated in each validation sample separately and then in all three samples combined using the same measures as in the development sample. The sensitivity, specificity, positive predictive value and negative predictive value of the risk model at the end of calendar day 3 was compared with that of existing clinical decision rules identified from the systematic review of the literature using the full validation dataset. For comparison with the clinical decision rules, three alternative risk thresholds were applied to the risk predictions from the FIRE Study model corresponding to predicted risks of >0.5 % (F1), >1 % (F2) and >2 % (F3). The following existing clinical decision rules were included in the comparison: three rules presented in Ostrosky-Zeichner et al. [6] (OZ1-OZ3) and three rules presented in Paphitou et al. [7] (P1-P3).

Results

Between July 2009 and April 2011, a total of 96 critical care units with 60,778 admissions participated in the FIRE Study (see Fig. 1). The units were representative of all UK adult general critical care units in terms of geographical distribution, hospital teaching status and number of beds.
Fig. 1

Flow of admissions in the FIRE Study

Flow of admissions in the FIRE Study In total, 359 admissions (0.6 %) were admitted with, or developed, Candida IFD of which 66 % were Candida albicans (see Fig. 2). The most common non-albicans Candida species was Candida glabrata (17 %).
Fig. 2

Organogram of Candida species causing invasive fungal disease

Organogram of Candida species causing invasive fungal disease Admissions with non-albicans Candida spp IFD were compared to admissions with Candida albicans IFD as shown in Table 1. The critical care unit and acute hospital lengths of stay and mortality rates were comparable between the Candida albicans and non-albicans Candida spp. IFD subgroups but substantially higher when compared with admissions with no IFD. Overall crude critical care unit and acute hospital mortality for admissions with any Candida species IFD were 29.9 and 39.6 %, respectively.
Table 1

Case mix of admissions by invasive fungal disease subgroup

Candida albicans IFDNon-albicans Candida spp. IFDNo IFD
Number of admissions23510660,362
Demographics
 Age (years), median (IQR)61 (49, 71)62 (50, 73)64 (48, 74)
 Male sex, n (%)123 (52.3)60 (56.6)33,613 (55.7)
Medical history, n (%)
 Severe comorbidities
  Any severe comorbidity34 (14.5)27 (25.5)10,142 (17.0)
  Very severe cardiovascular disease2 (1.3)4 (5.1)1021 (2.5)
  Severe respiratory disease5 (3.2)1 (1.3)1650 (4.0)
  Chronic renal disease6 (3.8)2 (2.6)1122 (2.7)
  Chronic liver disease9 (5.7)6 (7.6)1909 (4.7)
  Metastatic disease2 (1.3)1 (1.3)1421 (3.5)
  Haematological malignancy3 (1.9)5 (6.4)1064 (2.6)
  Immunocompromised16 (10.2)14 (18.0)4092 (10.0)
 Diabetes mellitus36 (15.3)20 (18.9)9608 (15.9)
 Neutropenia7 (3.7)2 (2.5)930 (1.8)
Surgery within up to 7 days prior to admission, n (%)
 Emergency/urgent91 (38.7)29 (27.4)13,127 (21.7)
 Scheduled/elective27 (11.5)15 (14.2)14,987 (24.8)
 No surgery117 (49.8)62 (58.5)32,230 (53.4)
Acute severity of illness, mean (SD)
 APACHE II Score19.0 (6.6)19.6 (7.5)16.0 (7.0)
 ICNARC Physiology Score23.1 (8.8)22.4 (9.2)17.3 (9.3)
Primary reason for admission to the critical care unit, n (%)
 Medical126 (51.3)60 (62.5)32,114 (52.2)
  Respiratory52 (22.4)24 (23.1)12,022 (21.0)
  Cardiovascular28 (12.1)11 (10.6)5622 (9.8)
  Gastrointestinal15 (6.5)13 (12.5)2519 (4.4)
  Neurological6 (2.6)1 (1.0)4697 (8.2)
  Other25 (10.8)11 (10.6)7254 (12.7)
 Surgical118 (50.2)44 (41.5)28,131 (46.6)
  Cardiovascular76 (32.8)37 (35.6)13,280 (23.2)
  Gastrointestinal13 (5.6)5 (4.8)4201 (7.3)
  Other17 (7.2)2 (1.9)7601 (13.3)
Mortality, deaths (%)
 Critical care unit mortality82 (34.9)30 (28.3)10,047 (16.6)
 Acute hospital mortality93 (49.5)42 (47.7)13,926 (24.5)
Length of stay (days), median (IQR)
 Critical care unit stay12 (6, 24)11 (5, 25)2 (1, 5)
  Unit survivors12 (6, 25)12 (6, 26)2 (1, 5)
  Unit non-survivors12 (7, 23)10 (3, 25)2 (1, 6)
 Acute hospital stay33 (15, 58)40 (20, 73)13 (6, 27)
  Acute hospital survivors48 (31, 79)51 (34, 82)14 (7, 29)
  Acute hospital non-survivors19 (11, 42)29 (10, 63)8 (2, 19)

SD standard deviation, IQR interquartile range

Case mix of admissions by invasive fungal disease subgroup SD standard deviation, IQR interquartile range The most common Candida IFD infection site was blood (57 %; Additional file 1: Table S1) corresponding to a rate of candidaemia of 3.3 per 1000 admissions. Of the 359 total admissions with IFD, approximately half had pre-critical care unit IFD (identified from a sample taken pre-admission or on calendar day 1 or 2) with the other half developing IFD during their critical care unit stay (identified from a sample taken from calendar day 3 onwards; Additional file 2: Figure S1). The median day for Candida IFD developed during the critical care unit stay was day 7 (IQR 4 to 12). The incidence of Candida IFD developed during the critical care unit stay was 3.1 cases per 1000 admissions. Both Candida spp. IFD subgroups received similar organ support and systemic antifungals (Additional file 3: Table S2). In the admissions with Candida IFD that received systemic antifungals, 27 % received these before the first sample from which IFD was identified, 47 % within 3 days of the first positive sample and 27 % more than 3 days after the first positive sample. Characteristics of the patients included in the development and validation samples are reported in the Additional file 4: Table S3. Of 46 potential variables, 19 candidate variables were selected for the admission model and, following backwards elimination, the final model contained seven variables with 11 parameters (c index 0.705; Table 2 and Additional file 5: Table S4). The 24-h model contained seven variables with 10 parameters (c index 0.824) and the end of calendar day 3 model contained five variables with seven parameters (c index 0.835). Validation of the models is reported in Table 3. The end of calendar day 3 model performed the best with a c index of 0.709 in the full validation sample.
Table 2

Final risk models at admission, 24 h and end of calendar day 3

Admission model24-h modelEnd of calendar day 3 model
Admission for pre-surgical preparation5.01 (2.23, 11.26)
Surgery within 7 days prior to admission a:
 Elective/scheduled – no unexpected complications b 1
 Elective/scheduled – unexpected complications b 2.51 (0.89, 7.06)
 Emergency/urgent3.61 (2.17, 6.01)
 No surgery5.59 (2.91, 10.75)
Surgery within 7 days prior to admission c:
 Elective/scheduled1
 Emergency/urgent2.44 (1.28, 4.63)
 No surgery2.43 (1.12, 5.28)
Pancreatitis4.00 (1.75, 9.15)3.38 (1.34, 8.56)3.01 (1.33, 6.85)
Number of central venous catheters:
 None111
 11.49 (1.04, 2.12)3.87 (1.53, 9.78)3.65 (1.10, 12.05)
 2 or more4.16 (1.81, 9.60)13.53 (5.45, 33.60)14.79 (4.44, 49.26)
Number of drains:
 None111
 1–31.90 (1.23, 2.93)2.04 (1.41, 2.94)1.93 (1.26, 2.95)
 4 or more5.12 (1.30, 20.10)8.05 (2.35, 27.59)7.61 (2.61, 22.2)
Enteral feeding tube in place1.52 (1.04, 2.21)
Lowest SBP (first 24 h) < 90 mmHg1.73 (1.21, 2.46)
Highest heart rate (first 24 h) ≥ 100 min−1 2.35 (1.47, 3.74)2.20 (1.24, 3.89)
Number of samples positive for fungal colonization a:
 None or 11
 2 or more7.84 (1.54, 39.76)
Number of samples positive for fungal colonization c:
 None11
 1 or more6.47 (4.26, 9.84)8.21 (4.11, 16.39)

Values are odds ratio (95 % confidence interval). SBP systolic blood pressure

aFor admission model

bExamples indicative of complications in surgery include: simple surgery with unexpected blood loss (requiring transfusion); unexpected spillage/contamination during surgery; unexpected adhesions making surgery more complex than expected; surgery being far bigger, or lasting far longer than expected

cFor 24-h/end of calendar day 3 model

Table 3

Measures of model performance in the development and validation samples

MeasureDevelopment sampleValidation samples
OriginalOptimism Adjusted a RandomTemporalGeographicalFull
Admission model
 c index0.7050.6880.7210.6500.6400.655
 Brier’s score0.00400.00410.00260.00430.00400.0038
24-h model
 c index0.8240.8100.8400.7590.6500.732
 Brier’s score0.00380.00380.00190.00420.00440.0037
End of calendar day 3 model
 c index0.8350.8250.8030.7200.6610.709
 Brier’s score0.00500.00500.00260.00490.00480.0043

aOptimism adjusted using bootstrapping

Final risk models at admission, 24 h and end of calendar day 3 Values are odds ratio (95 % confidence interval). SBP systolic blood pressure aFor admission model bExamples indicative of complications in surgery include: simple surgery with unexpected blood loss (requiring transfusion); unexpected spillage/contamination during surgery; unexpected adhesions making surgery more complex than expected; surgery being far bigger, or lasting far longer than expected cFor 24-h/end of calendar day 3 model Measures of model performance in the development and validation samples aOptimism adjusted using bootstrapping The comparison of clinical decision rules based on the end of calendar day 3 FIRE Study model with existing clinical decision rules is reported in Table 4. The best performing of the existing rules was rule OZ3. This rule had better sensitivity, specificity, PPV and NPV than rules P1 and P3, while the remaining rules (OZ1, OZ2 and P2) gave higher sensitivity but at the cost of treating 43 to 83 % of admissions. Applying thresholds of >0.5 % (F1) or >1 % (F2) to risk predictions from the FIRE Study model gave similar performance to rule OZ3, with rule F1 giving slightly higher sensitivity but lower specificity and rule F2 giving slightly lower sensitivity but higher specificity (Additional file 6: Figure S2).
Table 4

Performance of clinical decision rules at the end of calendar day 3 following admission to the critical care unit in the full validation sample

RulePercentage ‘high risk’Sensitivity (95 % CI)Specificity (95 % CI)PPV (95 % CI)NPV (95 % CI)
FIRE Study
 F127.154.1 (36.9, 70.5)73.0 (72.0, 73.9)0.87 (0.53, 1.34)99.7 (99.6, 99.8)
 F215.740.5 (24.8, 57.9)84.5 (83.7, 85.2)1.13 (0.63, 1.85)99.7 (99.5, 99.8)
 F36.424.3 (11.8, 41.2)93.6 (93.1, 94.2)1.65 (0.76, 3.11)99.6 (99.5, 99.8)
Ostrosky-Zeichner et al., 2007 [6]
 OZ158.586.5 (71.2, 95.5)41.6 (40.5, 42.7)0.64 (0.44, 0.91)99.9 (99.7, 100)
 OZ243.481.1 (64.8, 92.0)56.7 (55.7, 57.8)0.81 (0.55, 1.16)99.9 (99.7, 99.9)
 OZ321.151.4 (34.4, 68.1)79.1 (78.2, 79.9)1.06 (0.64, 1.65)99.7 (99.6, 99.8)
Paphitou et al., 2005 [7]
 P129.043.2 (27.1, 60.5)71.0 (70.1, 72.0)0.65 (0.37, 1.05)99.7 (99.5, 99.8)
 P283.297.3 (85.8, 99.9)16.8 (16.0, 17.7)0.51 (0.36, 0.71)99.9 (99.6, 100)
 P323.343.2 (27.1, 60.5)76.8 (75.9, 77.7)0.81 (0.46, 1.31)99.7 (99.5, 99.8)

CI confidence interval, NPV negative predictive value, PPV positive predictive value

Performance of clinical decision rules at the end of calendar day 3 following admission to the critical care unit in the full validation sample CI confidence interval, NPV negative predictive value, PPV positive predictive value

Discussion

The FIRE Study is the first multicentre study to report specifically on Candida IFD in UK critical care units and to develop and validate risk prediction tools to identify critically ill non-neutropenic adults at risk for IFD. Candida albicans accounted for two thirds of Candida IFD. Blood was the most common infection site, accounting for more than half of all Candida IFD. The risk prediction tools were developed at three decision time points: at admission to the critical care unit, at 24 h following admission, and at the end of calendar day 3 following admission. The final model at admission to the critical care unit had fair discrimination (c index ~0.7). When additional information from the first 24 h following admission was added, discrimination improved (c index ~0.8) and this level of discrimination was maintained at the end of calendar day 3. When clinical decision rules were defined based on cut-points of predicted risk at the end of calendar day 3, the performance of these rules was similar to the best performing rule from the literature. The major strength of the FIRE Study is the huge sample size of admissions to a large number of critical care units across the UK, providing extremely representative and generalisable results. The definition of Candida IFD was chosen to be consistent with current international consensus definitions and was carefully validated. However, despite the huge sample size, the low rate of Candida IFD observed (although clearly good for patients) made robust statistical modelling challenging. The observed rate of Candida IFD was approximately half that anticipated from the literature and consequently the resulting models had a lower number of events per variable than ideal, which may have contributed to the drop in model performance when assessed in the validation samples. Model performance was worst when applied in the geographical validation sample, despite a similar rate of Candida IFD, suggesting that particular care should be taken in transferring the models to different geographical settings. A further potential limitation is the reliance on routinely available data – for example, the definition of Candida colonisation was based on samples sent for microbiological evaluation in normal clinical practice, and we did not specify any particular screening schedule. This may contribute to variation across critical care units, and therefore to how well the models validated in external data. The rate of candidaemia in the present study, at 3.3 per 1000 admissions, is similar to other reports from European critical care units [18-20]. A previous hospital-wide surveillance from six sentinel hospitals in the UK identified that 45 % of candidaemia was reported from the critical care unit, corresponding to an incidence of 7.4 per 1000 admissions [21]. A prospective study in 24 French critical care units demonstrated a candidaemia incidence of 6.7 per 1000 admissions [22]. The distribution of Candida species in the present study is also similar to that of other critical care units in Western Europe [20]. A retrospective analysis of the EPIC II study, examining Candida bloodstream infections in 14,414 patients to 1265 critical care units in 76 countries, demonstrated varying proportions of Candida albicans and non-albicans Candida spp. infections [23]. Seventy two percent of the Candida infections in Western European units were due to Candida albicans, as compared to 66 % in the present study and 79 % in the previous UK sentinel hospital study [21]. Variations in proportions of non-albicans Candida spp infections may be due to differential use of fluconazole prophylaxis and subsequent emergence of resistant strains [1]. An analysis of Candida isolates reported to the Communicable Disease Surveillance Centre from England and Wales between 1990 and 1999 found that Candida albicans was responsible for 60 % of all clinically significant isolates [24]. Annual reporting between 1990 and 1999 showed increasing rates of reported Candida species. However, more recent data from the Health Protection Agency have shown a decline in both the total number of Candida bloodstream infections and the proportion of these due to Candida albicans (51 % in 2010) [25]. A recent systematic review of the literature, conducted as part of the FIRE Study [5], identified only one previous study with the explicit aim of developing a risk model for IFD, the “Candida score” [8]. The Candida score was developed in a cohort of 1699 patients admitted to 73 critical care units in Spain and has subsequently been externally validated among 1107 patients admitted to 36 critical care units in Spain, Argentina and France [26]. There are substantial differences between the rationale and approach of the Candida score and the FIRE Study. The Estudio de Prevalencia de Candidiasis (EPCAN) project, from which the Candida score was developed, recruited only patients staying at least 7 days in the critical care unit, and the Candida score was developed using only those diagnosed with colonisation by Candida species at any time during the critical care unit stay. The FIRE Study demonstrated that the risk factors, and the strength of their association with Candida IFD, varied between admission to the critical care unit and the end of calendar day 3. A model developed using data from later in the critical care unit stay may therefore not accurately reflect risk earlier in the stay, limiting the usefulness of the Candida score for making early decisions regarding antifungal prophylaxis. Similarly, the comparison of clinical decision rules based on the FIRE Study models with existing rules was limited to the decision time point at the end of calendar day 3 as all previous clinical decision rules have been based solely on data from patients staying at least 3 days [6, 7].

Conclusion

In summary, incidence of Candida IFD in UK critical care units in this study was consistent with reports from other European epidemiological studies, but lower than that suggested by previous hospital-wide surveillance in the UK during the 1990s. Risk modeling using classical statistical methods produced relatively simple risk models, and associated clinical decision rules, that provided acceptable discrimination for identifying patients at ‘high risk’ of Candida IFD.
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Authors:  Ghislaine Leleu; Philippe Aegerter; Bertrand Guidet
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6.  Candida bloodstream infections in intensive care units: analysis of the extended prevalence of infection in intensive care unit study.

Authors:  Daniel H Kett; Elie Azoulay; Pablo M Echeverria; Jean-Louis Vincent
Journal:  Crit Care Med       Date:  2011-04       Impact factor: 7.598

7.  Effects of nosocomial candidemia on outcomes of critically ill patients.

Authors:  Stijn I Blot; Koenraad H Vandewoude; Eric A Hoste; Francis A Colardyn
Journal:  Am J Med       Date:  2002-10-15       Impact factor: 4.965

8.  Management and outcome of bloodstream infections due to Candida species in England and Wales.

Authors:  C C Kibbler; S Seaton; R A Barnes; W R Gransden; R E Holliman; E M Johnson; J D Perry; D J Sullivan; J A Wilson
Journal:  J Hosp Infect       Date:  2003-05       Impact factor: 3.926

9.  Usefulness of the "Candida score" for discriminating between Candida colonization and invasive candidiasis in non-neutropenic critically ill patients: a prospective multicenter study.

Authors:  Cristóbal León; Sergio Ruiz-Santana; Pedro Saavedra; Beatriz Galván; Armando Blanco; Carmen Castro; Carina Balasini; Aránzazu Utande-Vázquez; Francisco J González de Molina; Miguel A Blasco-Navalproto; Maria J López; Pierre Emmanuel Charles; Estrella Martín; María Adela Hernández-Viera
Journal:  Crit Care Med       Date:  2009-05       Impact factor: 7.598

10.  Revised definitions of invasive fungal disease from the European Organization for Research and Treatment of Cancer/Invasive Fungal Infections Cooperative Group and the National Institute of Allergy and Infectious Diseases Mycoses Study Group (EORTC/MSG) Consensus Group.

Authors:  Ben De Pauw; Thomas J Walsh; J Peter Donnelly; David A Stevens; John E Edwards; Thierry Calandra; Peter G Pappas; Johan Maertens; Olivier Lortholary; Carol A Kauffman; David W Denning; Thomas F Patterson; Georg Maschmeyer; Jacques Bille; William E Dismukes; Raoul Herbrecht; William W Hope; Christopher C Kibbler; Bart Jan Kullberg; Kieren A Marr; Patricia Muñoz; Frank C Odds; John R Perfect; Angela Restrepo; Markus Ruhnke; Brahm H Segal; Jack D Sobel; Tania C Sorrell; Claudio Viscoli; John R Wingard; Theoklis Zaoutis; John E Bennett
Journal:  Clin Infect Dis       Date:  2008-06-15       Impact factor: 9.079

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  9 in total

1.  Machine Learning in Infectious Disease for Risk Factor Identification and Hypothesis Generation: Proof of Concept Using Invasive Candidiasis.

Authors:  Lisa M Mayer; Jeffrey R Strich; Sameer S Kadri; Michail S Lionakis; Nicholas G Evans; D Rebecca Prevots; Emily E Ricotta
Journal:  Open Forum Infect Dis       Date:  2022-08-03       Impact factor: 4.423

2.  A multisite evaluation of antifungal use in critical care: implications for antifungal stewardship.

Authors:  C Logan; C Hemsley; A Fife; J Edgeworth; A Mazzella; P Wade; A Goodman; P Hopkins; D Wyncoll; J Ball; T Planche; S Schelenz; T Bicanic
Journal:  JAC Antimicrob Resist       Date:  2022-06-23

3.  Should we continue to use prediction tools to identify patients at risk of Candida spp. infection? If yes, why?

Authors:  A Cortegiani; V Russotto; S M Raineri; G Gregoretti; A Giarratano
Journal:  Crit Care       Date:  2016-10-30       Impact factor: 9.097

4.  Fungal infections in adult patients on extracorporeal life support.

Authors:  Yiorgos Alexandros Cavayas; Hakeem Yusuff; Richard Porter
Journal:  Crit Care       Date:  2018-04-17       Impact factor: 9.097

5.  Risk factors of invasive candidiasis in critical cancer patients after various gastrointestinal surgeries: A 4-year retrospective study.

Authors:  Rui Xia; Donghao Wang
Journal:  Medicine (Baltimore)       Date:  2019-11       Impact factor: 1.817

6.  Epidemiology and Mycology of Candidaemia in non-oncological medical intensive care unit patients in a tertiary center in the United States: Overall analysis and comparison between non-COVID-19 and COVID-19 cases.

Authors:  Precious Macauley; Oleg Epelbaum
Journal:  Mycoses       Date:  2021-03-08       Impact factor: 4.931

Review 7.  State of the Art of Machine Learning-Enabled Clinical Decision Support in Intensive Care Units: Literature Review.

Authors:  Na Hong; Chun Liu; Jianwei Gao; Lin Han; Fengxiang Chang; Mengchun Gong; Longxiang Su
Journal:  JMIR Med Inform       Date:  2022-03-03

8.  Clinical predictive models of invasive Candida infection: A systematic literature review.

Authors:  Adriana M Rauseo; Abdullah Aljorayid; Margaret A Olsen; Lindsey Larson; Kim L Lipsey; William G Powderly; Andrej Spec
Journal:  Med Mycol       Date:  2021-11-03       Impact factor: 3.747

9.  The Overlooked Immune State in Candidemia: A Risk Factor for Mortality.

Authors:  Christian Ortega-Loubon; Beatriz Cano-Hernández; Rodrigo Poves-Alvarez; María Fe Muñoz-Moreno; Patricia Román-García; Sara Balbás-Alvarez; Olga de la Varga-Martínez; Esther Gómez-Sánchez; Estefanía Gómez-Pesquera; Mario Lorenzo-López; Eduardo Tamayo; María Heredia-Rodríguez
Journal:  J Clin Med       Date:  2019-09-20       Impact factor: 4.241

  9 in total

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