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Adverse drug events in a paediatric intensive care unit: a prospective cohort
  1. Dafne C B Silva1,
  2. Orlei Ribeiro Araujo2,
  3. Rodrigo G Arduini2,
  4. Carolina F R Alonso2,
  5. Audrey R O Shibata1,
  6. Eduardo J Troster1
  1. 1Faculty of Medicine, Instituto da Criança, University of Sao Paulo, FMUSP, Sao Paulo, Sao Paulo, Brazil
  2. 2Pediatric Oncology Institute (GRAACC/IOP), Federal University of Sao Paulo, Sao Paulo, Sao Paulo, Brazil
  1. Correspondence to Dr Orlei Ribeiro de Araujo; orlei{at}uol.com.br

Abstract

Objectives To describe adverse drug events (ADEs) in children under intensive care, identify risk factors and tools that can detect ADEs early, and the impact on length of stay (LOS).

Design A prospective observational study.

Setting Paediatric intensive care unit of a tertiary care teaching hospital.

Patients 239 patients with a mean age of 67.5 months representing 1818 days of hospitalisation in intensive care unit.

Interventions Active search of charts and electronic patient records using triggers. The statistical analysis involved linear and logistic regression.

Measurements and main results The average LOS was 7.6 days. There were 110 proven, probable and possible ADEs in 84 patients (35.1%). We observed 138 instances of triggers. The major classes of drugs associated with events were: antibiotics (n=41), diuretics (n=24), antiseizures (n=23), sedatives and analgesics (n=17) and steroids (n=18). The number of drugs administered was most related to the occurrence of ADEs and also to the LOS (p<0.001). The occurrence of an ADE may result in an increase in the LOS by 1.5 days per event, but this was not statistically significant in this sample. Patients aged less than 48 months also proved to be at a significant risk for ADEs, with an OR of 1.84 (95% CI 1.07 to 3.15, p=0.025). The number of drugs administered also correlated with the number of ADEs (p<0.0001). The chance of having at least one ADE increased linearly as the patient was administered more drugs.

Conclusions The use of multiple drugs as well as lower patient age favours the occurrence of ADEs. The active search described here provides a systematic approach to this problem.

This is an open-access article distributed under the terms of the Creative Commons Attribution Non-commercial License, which permits use, distribution, and reproduction in any medium, provided the original work is properly cited, the use is non commercial and is otherwise in compliance with the license. See: http://creativecommons.org/licenses/by-nc/2.0/ and http://creativecommons.org/licenses/by-nc/2.0/legalcode.

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Article summary

Article focus

  • Children have increased susceptibility to drug-related adverse events.

  • In intensive care units, multiple, potentially hazardous drugs are routinely administered.

  • Active search focused on specific circumstances associated with adverse drug events (ADEs) in specific elements of the patient's chart can increase the rates of observed ADEs.

Key messages

  • The use of multiple drugs as well as lower patient age favours the occurrence of ADEs.

  • Active search can provide a systematic approach to identify ADEs in paediatric ICUs (PICUs).

  • Definition of triggers and daily search in the records of patients is a simple way to perform an active search for ADEs.

Strengths and limitations of this study

  • (−) Our sample did not have the power to implicate ADEs as a causative factor in prolonging PICU stays.

  • (−) Time of observation was short, and did not include the seasonality of respiratory diseases.

  • (+) We analysed a PICU population in a country outside Europe and North America, in a developing country (Brazil), where ADEs’ notification is incipient.

  • (+) The defined triggers can be useful in other studies involving ADEs in children.

Introduction

The use of medication in children and infants is a matter of great concern largely owing to the vulnerability of their constantly changing and developing homeostasis, as well as the unique mechanisms by which different children respond to injuries. There are important differences in absorption, distribution, metabolism and excretion of drugs during childhood and early adolescence.1 In addition, safety of several medications has not been properly evaluated in the paediatric age group, while others are prescribed differently from those recommended for adults; key differences include dose and frequency of administration, drug formulation, route of administration or indication for use in childhood (ie, ‘off-label’ use), and each of these factors can vary depending on the age of the child.2 Most of the times, recommended doses of drugs used in children are based on extrapolations from adult doses, related only to weight, body surface area and age, often ignoring their pharmacokinetic and pharmacodynamic properties; this results in increased susceptibility of children to drug-related adverse events.1–4

Reports documenting the incidence of adverse drug events in the paediatric population range from 4.3 to 16.7%; 12.2% of these events being serious in nature, with high morbidity and mortality.5 Hospitalised children may be at a higher risk of an adverse event, as doses, drug safety and effectiveness are often difficult to determine.6 Kaushal et al4 identified that the potential frequency of ADEs in children is three times higher than a previous study focused on ADEs in adults, however, the rate of avoidable ADEs was similar. In intensive care units, multiple, potentially hazardous drugs are routinely administered, such as inotropes, sedation medications, analgesia and antibiotics; as the risk of an ADE increases by 1.7% for each additional drug used,5 it is far more likely that adverse reactions will occur in the ICU.

There are a few studies documenting safety in drug administration in children in the ICU. The primary objective of this study is to describe ADEs in children admitted to the paediatric ICU (PICU) of a tertiary care hospital in Sao Paulo, Brazil. As secondary objectives, we attempted to identify risk factors for such events and tools that could detect them early as well as determine if there was impact on LOS.

Materials and methods

We conducted a preliminary survey over a period of 22 days in March 2004 to identify the number of admissions required to effectively report ADEs in the PICU, a unit of 13 beds, with an average occupation of 80%. Based on the results of this survey, we determined that it would then be necessary to study 150 admissions to reach a stable estimate of the incidence of ADEs and explore possible risk factors using a multivariate analysis (approximately 10 ADEs for each variable potentially associated). The study population consisted of consecutive admissions to the PICU between 1 October 2005 and 31 March 2006. The strategy to identify ADEs was through an active search, using pre-established parameters (‘triggers’). A ‘trigger’ can be defined as an occurrence, prompt or flag, found when reviewing a patient's medical chart, that requires further investigations to determine the occurrence or non-occurrence of an adverse event.7 ,8 Using this method, specific events, such as prescription or abrupt discontinuation of certain medications, prescription of antidotes, and some laboratory tests, serve as indicators for further investigation. Several triggers have been described in the literature,8 and therefore we chose and adapted the ones that seemed more consistent with the drugs commonly used in our PICU. Table 1 shows these triggers and the rationale for their use. The positive predictive value (PPV) of each trigger was calculated as the number of times that each trigger identified an ADE, divided by the total number of times the triggers were identified in the active search.

Table 1

Rationale for the use of triggers

The following methodology was undertaken for an active research:

  1. The admission form for each new patient in the PICU was entered by two trained intensive care paediatricians; data were analysed and consolidated by two authors (DCBS and AROS).

  2. The following records for each patient were reviewed, guided by triggers indicative of adverse events:

    • Laboratory tests (electronic database)

    • Clinical annotations

    • Nursing annotations

    • Prescription.

  3. The Naranjo algorithm was applied to classify the cause of the ADE: proven, probable, possible or doubtful.9

  4. Analysis of all proven, probable and possible ADEs.

The study included only unavoidable ADEs, that is, only those that occurred during normal use of a drug, and not the result of a human error,10 as well as those classified as moderate to severe according to the WHO guidelines. By this definition (WHO), ADE is any detrimental or undesirable event, unintended, which appears after administration of a drug at doses normally used for prophylaxis, diagnosis or treatment of a disease. A moderate reaction is one that requires modification of therapy and may require specific treatment; a severe reaction is potentially fatal and requires specific treatment, requires or prolongs hospitalisation.11 We analysed only those ADEs that appeared after admission. ADEs that appeared after admission but were related to drugs that the patient was receiving before being admitted were defined as owing to ‘prevalent drug’. This definition eliminated, for example, ADEs owing to chemotherapy already present before admission in patients with cancer. ADEs related to drugs introduced after admission were classified as owing to ‘incident drug’. The study protocol was reviewed and approved by the Ethics Committee of the institution prior to the start of data collection (protocol number 485/56/2005). Because of the observational nature of the study, without any interference in therapy, informed consent was waived.

Statistical analysis was performed using SPSS and Microsoft Excel, obtaining the OR by logistic regression. A multinomial logistic regression model was performed with the variables ‘Presence of chronic disease’, ‘Age’, ‘Gender’, ‘Number of drugs’ (independent) and ‘ADEs’ (dependent). We chose the variables ‘Age’ and ‘number of drugs’ because they have been significantly correlated with the incidence of ADEs.5 Some studies have shown a lower risk for ADEs in male children.12 Chronic illness is an important variable owing to the continuous use of various drugs and the occurrence of organ dysfunction. We also used a linear regression model for the variables ‘ADEs’, ‘Presence of chronic disease’, ‘Age’, ‘Gender’, ‘Number of drugs’ (independent) and ‘LOS’ (dependent). Significance of differences between means was obtained by the t test. Variables involving time were analysed using the Kaplan-Meier method, and p<0.05 was considered statistically significant.

Results

In our pilot survey, we identified 20 adverse events of moderate-to-severe intensity over a period of 22 days in March 2004, which we calculated to represent at least 5 events/100 patient-days.

In our actual study, there were 244 admissions to the PICU during the period between 1 October 2005 and 31 March 2006. Four patients were excluded because they were adult living-donors for liver transplant, and one patient was excluded owing to age >18 years. We analysed the remaining 239 patients, representing a total of 1818 days of PICU hospitalisation. The average length of stay was 7.6 days with a SD of 9.5 days.

The mean age was 67.5 months (median 51 months, range 1–243), and 113 patients (47.2%) were younger than 48 months. Ninety-four of the 239 patients were male (39.3%). Only 39 of the 239 patients did not have a chronic disease at admission (16.3%); the most prevalent chronic diseases were cancer (n=48, 20%), hepatic disease (n=37, 15.4%), neurological disease (n=28, 11.7%), respiratory disease (n=28, 11.7%) and cardiac disease (n=12, 5%). Admissions were mostly owing to respiratory failure (n=83), postoperative of neurosurgical, general or cardiac surgery (n=52), decreased level of consciousness (n=14) or sepsis/septic shock (n=28). Other causes were seizures, digestive bleeding, dehydration, renal failure, hypertension and others.

We observed 138 occurrences of triggers, as shown in table 2, with their predictive positive values. These triggers led to the identification of 110 proven, probable or possible ADEs in 84 patients (35.1%) during the 6- month study period, resulting in a rate of 60.5 ADEs/1000 patient-days; 21 patients had more than one ADE. Thirty-nine ADEs were owing to prevalent drugs and the remaining 71 (64.5%) were related to drugs introduced after PICU admission or ‘incidents’ (table 3). Table 4 exhibits the observed ADEs and related drugs.

Table 2

Occurrences of triggers used for active search

Table 3

Distribution of prevalent-drug and incident-drug adverse events according to causality

Table 4

Observed adverse drug events (ADEs) and related drugs

Gender, the presence of chronic disease, age and administration of at least five drugs were included in a multinomial logistic regression analysis as independent variables for the incidence of ADEs (dependent variable); for males, the OR was 1.31 (p=0.33); for the presence of a chronic disease, the OR was 0.71 (p=0.35) and none of the individual chronic conditions displayed an increased risk for ADEs; however, patients aged less than 48 months proved to be a significant risk factor, with an OR of 2.1 (95% CI 1.19 to 3.72, p=0.01). There was a positive interaction in patients aged less than 48 months and concomitant administration of at least five drugs (OR=2.05, 95% CI 1.18 to 3.57, p=0.01) in the occurrence of at least one ADE. This interaction remained significant, with discrete elevation of the OR until nine concomitant drugs were administered (OR=2.03, 95% CI 1.15to 3.60, p=0.014, for age<48 months; and OR=4.69, 95% CI 2.41to 9.15, p<0.0001 for the use of 9 drugs).

In a bivariate analysis, the number of drugs received by each patient correlated with the number of ADEs (R2=0.13, p<0.0001). The likelihood of at least one ADE became significant when the patient was given at least five drugs at the same time (OR 2.19, 95% CI 1.14 to 4.20, p=0.018). We observed a linear elevation of the chance of an occurrence of an ADE as the patient was administered more medications, achieving an OR of 7.26 (95% CI 2.77 to 19.1, p<0.0001) with 11 concomitant drugs. The same was observed for the occurrence of more than one ADE (table 5).

Table 5

ORs related to the concomitant use of medications

There was a significant difference between the mean LOS between patients with and without ADEs (11.1 vs 5.3 days, p<0.0001). In a bivariate linear regression model (LOS as the dependent variable and ADEs as independent), the slope coefficient was 2.75 (p=0.001), meaning that each ADE corresponded to an increase of 2.75 days in the LOS. However, this increase was not maintained when other confounding variables were added in the multivariate regression model. The only independent variables remaining in the final model that affected LOS were the number of ADEs (p=0.089; slope coefficient 1.49) and the number of drugs (p<0.001; slope coefficient 0.83; R2=0.104). The slope coefficient could indicate an increase in LOS of 1.49 days for each ADE, if statistically significant, but the study did not have the power to demonstrate it. A sample calculation showed that in order for this fact to be significant in a larger sample, it would take 1000 patients to achieve p<0.05 with a power of 0.94, considering the observed SD of 9.5 for the dependent variable ‘LOS’ and 0.72 for independent ‘number of ADEs’. Other variables did not show any significant relationship.

In addition, mean ‘survival’ without ADEs (time from admittance to the PICU until the occurrence of an ADE) was 19 days for patients older than 48 months and 11.2 days for patients younger than 48 months (p=0.017).

The drug classes involved in ADEs were: antibiotics (n=41), diuretics (24), antiseizures (23), sedatives and analgesics (17), steroids (18), antihypertensives (9), bronchodilators (8), gastric protectors (3), immunosuppressives (4), vasoactive drugs (5), hormonal analogues (4), antipyretics (4) and others (5).

Discussion

Determining the occurrence of adverse events in an intensive care environment is a complex task. The symptoms of the event may overlap the underlying disease and may be caused by several unrelated factors including the pharmacokinetic profile of the drug, unknown drug allergies of each patient or human error. These difficulties may serve as an explanation for why many events are not recognised as ADEs. Frequently, other drugs are administered in an attempt to solve the problem created by the ADE, without any specific diagnosis. While some events are easily attributed to certain drugs, there are several possible and poorly documented events and some are completely unknown and rare. There are also a multitude of patient-specific risk-factors leading to the occurrence of an ADE, including age and certain comorbidities, such as the presence of renal or hepatic impairment. Drug-related factors such as toxicity, time of administration, dosage and duration of use are variables that can also impact the probability of ADEs. In addition, new drugs that have just completed phase III clinical trials may not have been powered to detect rare events.13 In general, if we do not look for ADEs, it is unlikely that we will find them.14

In the absence of reliable empirical methods for detection of ADEs, formal and logical tools can help differentiate an ADE from a symptom caused by exacerbations in a patient's underlying condition. The most widely accepted formal instrument to obtain this is the Naranjo algorithm; however, this tool is also not without bias: in our sample, only 5 of 110 ADEs were classified as ‘proven’ or definite (scores 9 and 10). Therefore, some included events may not have been ADEs. However, to prove an ADE according to the algorithm, it is necessary to re-administer the drug and observe the event again, or obtain serum levels that are known to be toxic. The first option is strongly discouraged and the second may be technically impossible or unavailable. However, we excluded the ‘doubtful’ events (score equal to or less than 1) from our analysis and some of these events may have actually been ADEs.

Most of our patients had chronic diseases, which may contribute to a higher incidence of ADEs, owing to the use of multiple medications. This population of chronic patients reflects the current reality of Brazilian university hospitals. We observed no significant difference in ADE incidence between patients with and without chronic diseases, which can be explained by the exclusion of events prior to PICU admission and was more likely related to the medications used regularly.

The incidence of observed events (35.1% of admissions) is much higher than those reported in adult patients hospitalised in ICUs (around 9%).15 Furthermore, we found that younger children under the age of 48 months, which constitute approximately half the patient sample, were more likely to have ADEs. This was particularly significant with the administration of over five drugs at the same time, and also resulted in an ADE earlier in the patient's ICU stay. The high incidence of ADEs also highlights the importance of an active search focused on triggers to detect ADEs in children: Holdsworth et al reported ADE rates of 6/100 admissions (ICU and paediatric ward, determined using a chart review by a pharmacist).16 Takata et al performed a search focused on triggers and reported 11.1 events/100 inpatients, almost double that of the retrospective study. These authors indicated that performing a search focused on specific circumstances associated with ADEs in specific elements of the patient's chart can increase the rates of observed ADEs.17 The methodology used in this study (definition of triggers and daily search in the records of patients) is a simple way to perform an active search for ADEs. Triggers can be individualised for each hospital setting according to the most frequently used medications. PPVs can be determined through a simple calculation that assists in the choice of triggers that are most useful in each unit. We observed higher PPVs for biochemical alterations; in an automated process, the system of the laboratory itself could alert for possible ADEs.

We wish to highlight that our study evaluated severely ill children under intensive care receiving multiple drugs (up to 18), and the chances of developing an ADE is therefore, more likely. In addition, comparing event rates is also challenging and potentially misleading as definitions of ADEs are unclear among studies, ranging from a benign and transient alteration of electrolytes to vital organ damage.10

We investigated whether ADEs may have an impact on the LOS in the PICU. The most important limitation of the study was that our sample did not have the power to implicate ADEs as a causative factor in prolonging PICU stays by 1.5 days; however, calculations based on SD observed in our sample showed a high probability that this would be true in a longer term study. In addition to possible patient harm, there are significant costs associated with patient stays in the ICU: An increase of 1.5 days/event results in an additional 330 days/year. Estimating cost at US$600.00 each day, ADEs amount to US$198 000/year, which is a considerable sum for our public health system. In principle, the events occurred as a result of habitual use of drugs and were therefore ‘inevitable’; however, a systematic approach could convert some ADEs from presumably inevitable to avoidable. A good example cited by Kane-Gill et al10 describes bleeding caused by the correct dose of heparin in a patient being monitored by partial thromboplastin time and would be classified as inevitable. If an investigation identified that the laboratory has changed their method for thromboplastin time and failed to communicate the necessary adjustment, the error would become preventable. More studies on pharmacokinetics and drug interactions in children are required to define optimal dosing regimens and reduce ADEs.

Another limitation of the study was the short time of observation, which did not include the seasonality of respiratory diseases. A positive aspect of the study was the analysis of a PICU population in a country outside Europe and North America, therefore making it possible to analyse ADEs owing to drugs such as dipyrone. In Brazil, the reporting of ADEs is incipient. The online system provided by the health authority only receives notifications, which are not mandatory. Active search is not utilised, even in private institutions. We hope that our study will contribute to a future systematic approach to this subject in developing countries.

Conclusions

The use of multiple drugs as well as lesser patient age favours the occurrence of ADEs, which in turn may result in an increase in the length of PICU hospitalisation. The use of an active search using triggers can provide a systematic approach to identify ADEs in PICUs.

References

Footnotes

  • Contributors DCBS was responsible for the design, acquisition of data and article drafting. ORA and RGA were responsible for article drafting, analysis and interpretation of data. AROS and CFRA worked on acquisition of data and contributed to the interpretation of the results. EJT conceived the study and revised the draft. All authors read and approved the final manuscript.

  • Funding This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors.

  • Competing interests None.

  • Ethics approval Ethics Committee of the institution—Sao Paulo University (USP).

  • Provenance and peer review Not commissioned; externally peer reviewed.

  • Data sharing statement No additional data are available.