| Literature DB >> 25052742 |
Ola Caster1, Kristina Juhlin, Sarah Watson, G Niklas Norén.
Abstract
BACKGROUND: Detection of unknown risks with marketed medicines is key to securing the optimal care of individual patients and to reducing the societal burden from adverse drug reactions. Large collections of individual case reports remain the primary source of information and require effective analytics to guide clinical assessors towards likely drug safety signals. Disproportionality analysis is based solely on aggregate numbers of reports and naively disregards report quality and content. However, these latter features are the very fundament of the ensuing clinical assessment.Entities:
Mesh:
Year: 2014 PMID: 25052742 PMCID: PMC4134478 DOI: 10.1007/s40264-014-0204-5
Source DB: PubMed Journal: Drug Saf ISSN: 0114-5916 Impact factor: 5.606
Variables considered for inclusion into vigiRank
| Variable | Concept | Motivation | VigiBasea implementation |
|---|---|---|---|
| Informative reports (INF) | Reports on the drug and the ADR with sufficient information to allow a causality assessment of the individual case | Reporters may be more likely to provide detailed information when they have a strong suspicion that the adverse event was drug related | Reports with vigiGrade completeness score ≥0.9 (for details, see Sect. |
| Narrative (NAR) | Number of reports with free text information available | Free text information may strengthen the causality assessment of a case. In addition to this, reporters may be more likely to provide free text information when they have a strong suspicion that the adverse event was drug related. | Reports with narrative information, excluding purely numerical narratives and standard phrases, e.g. ‘none provided’ |
| Dechallenge (DCH) | Reports indicating that the adverse event subsided upon withdrawal of the drug | Resolution of the adverse event upon withdrawal of the drug strengthens the causality assessment for the individual case | Reports with positive dechallenge (by definition including positive rechallenge, see below) |
| Rechallenge (RCH) | Reports indicating that the adverse event recurred upon re-exposure to the same drug | Repeated occurrence of the adverse event upon exposure to the drug strengthens the causality assessment for the individual case | Reports with positive rechallenge |
| Causality assessment (CAU and CAU+) | Reports indicating a positive result of causality assessment of the individual case | Strengthens the causality assessment of the individual case | Implemented as two separate variables: number of reports with causality probable/certain (CAU) and number of reports with causality certain (CAU+) |
| Time-to-onset (TTO) | Reports with a plausible time between the intake of the drug and the adverse event | Time-to-onset information may strengthen the causality assessment of the individual case | Reports with reported time-to-onset less than 90 daysb |
| Solely reported (SOL) | Reports with no concomitant or co-suspected drugs | To capture reports with low likelihood of other drugs having contributed to the reaction | Reports with no concomitant or co-suspected drugs |
| Multiple reporting elements (MUL) | Reports fulfilling multiple defined criteria, strengthening the causality of the case | Several criteria that speak in favour of a causal relationship naturally strengthens the overall causality assessment of the individual case | Reports fulfilling at least two of the following: solely reported, dechallenge, narrative, causality probable/certain |
| Recent reporting (REC) | Reports entered during the last 3 years | To capture emerging safety issues; lack of recent reports may speak against a causal relationship | Reports entered during the last 3 years |
| Disproportional reporting (DIS) | Information on whether the drug–ADR pair is reported more often than expected | An unexpectedly large number of reports on the drug–ADR may strengthen the likelihood of a causal relationship | Disproportionate reporting as measured by a lower limit of the credibility interval for the IC either on the full dataset or on a subset of the data (for details, see Sect. |
| Geographic spread (GEO) | Number of geographic regions contributing reports on the drug–ADR pair of interest | True ADRs might be expected to occur not just in a single geographic region | Countries with IC > 0 for the drug–ADR pair of interestc |
| Time trend (TRE) | Increase in the reporting frequency of the drug–ADR pair | Emerging safety issues may be expected to exhibit an increase in reporting with time | Growing IC values over the three 6-month periods up to the dataset end date |
ADR adverse drug reaction, IC information component, WHO World Health Organization
aVigiBase®, the WHO global individual case safety report database, is the particular collection of individual case reports considered in this study. As of March 2014 it contained more than 8.5 million reports from 118 countries
bAdmittedly a crude attempt to capture plausible time-to-onset, which may rather filter out implausible temporal relations, with the exception of long-latency reactions
cFor rare drugs and ADRs this is likely to equal the number of countries with at least one report of the drug–ADR pair
Fig. 1Mathematical transforms used for numerical variables to gradually decrease the reward from additional units (i.e. reports or reporting countries). The respective points at which the transforms begin to increase were determined empirically based on the variables’ frequency among the negative controls
Fig. 2a Estimated coefficients by lasso logistic regression for all considered variables. The top five variables with non-zero coefficients define our new screening algorithm, vigiRank. The model intercept was −3.45. b All non-zero coefficients estimated by lasso logistic regression for any variable, either based on all data (as in a) or when excluding a fold during fivefold cross-validation. Positive and negative controls were randomly assigned to one of five folds, so that each fold contains 20 % of the entire reference dataset
Fig. 3Outline of how vigiRank applies to a set of eight reports on a fictional drug–adverse drug reaction pair. The first part shows a conceptual summary of each report. As an example, the top left report is a report from Switzerland that includes a case narrative, attains a vigiGrade completeness score of 1.0, and was received in 1995. The second part shows the raw data for each of the predictors (three informative reports, four recent reports, disproportionality = TRUE, three reports with case narratives, and four countries of origin with positive Information Component). The third part displays the corresponding transformed values that are multiplied with their corresponding estimated coefficients. The fourth part sums the independent contributions from all variables with the intercept (−3.45) to produce the overall score of −1.45 on logit scale, which corresponds to a 19 % probability. Either the score or the probability could be used for ranking purposes. Note: here the year 2014 is used as a reference point to determine whether or not a report is recent
Fig. 4a Receiver operating characteristic curves for our new screening algorithm, vigiRank, standard disproportionality analysis (IC025), and raw numbers of reports, relative to the benchmark based on historic European Medicines Agency safety signals. The difference between vigiRank and IC025 is statistically significant (p < 0.001 using DeLong’s test [36]). The circle corresponds to the standard threshold for IC025, 0, and the 45° line corresponds to random guessing. b Area under the curve (AUC) values for the three methods from the evaluation on all data as well as from the individual iterations of the cross-validation. The error bars indicate 95 % confidence intervals. The mean values over the cross-validation folds are 0.775, 0.736, and 0.707 for vigiRank, IC025, and raw numbers of reports, respectively. IC information component, IC is the lower limit of the two-sided 95 % credibility interval for the IC disproportionality measure
Underlying data on the three positive controls not detected by standard disproportionality (IC025 > 0) that were highest ranked by vigiRank, and the three positive controls that were lowest ranked by vigiRank
| Drug | Adverse reaction | Nr. of reports | Data on considered variablesa | vigiRank rankb | IC025 | IC025 rankb | ||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| INF | NAR | DCH | RCH | CAU | CAU+ | TTO | SOL | MUL | REC | DIS | GEO | TRE | ||||||
| Olanzapine | Bradycardia | 105 | 4 (1.10) | 7 (0.56) | 25 | 4 | 4 | 2 | 46 | 32 | 12 | 67 (0.00) | Yesc (0.77) | 10 (0.22) | No | 54 | −0.30 | 1882 |
| Clopidogrel | Stevens-Johnson syndrome | 25 | 5 (1.22) | 5 (0.56) | 5 | 0 | 3 | 0 | 13 | 4 | 3 | 22 (0.00) | No (0.00) | 5 (0.15) | No | 157 | −0.73 | 2448 |
| Clopidogrel | Myalgia | 69 | 4 (1.10) | 15 (0.56) | 12 | 3 | 5 | 0 | 21 | 11 | 9 | 48 (0.00) | No (0.00) | 6 (0.20) | No | 173 | −0.82 | 2582 |
| Raloxifene | Arterial thrombosis | 3 | 0 (0.00) | 1 (0.00) | 0 | 0 | 0 | 0 | 0 | 2 | 1 | 1 (−0.42) | No (0.00) | 2 (0.00) | No | 4720 | −1.04 | 2862 |
| Pramipexole | Hyperkinesia | 3 | 0 (0.00) | 0 (0.00) | 0 | 0 | 0 | 0 | 2 | 0 | 0 | 1 (−0.42) | No (0.00) | 2 (0.00) | No | 4720 | −1.71 | 3712 |
| Nelfinavir | Erythema multiforme | 10 | 0 (0.00) | 0 (0.00) | 5 | 0 | 1 | 0 | 6 | 1 | 1 | 0 (−1.06) | No (0.00) | 3 (0.00) | No | 5291 | −1.15 | 3006 |
ADR adverse drug reaction, IC information component, INF informative reporting
aNumbers in parentheses indicate how much the variables contribute to the algorithm’s score, for a particular drug–ADR pair. For example, the four reports on INF for olanzapine–bradycardia are transformed to 0.9 (see Fig. 1) and multiplied with 1.22 (the INF coefficient, see Fig. 2a) to yield 1.10. Full names of all variables are provided in Table 1
bOut of 5,544 drug–ADR pairs in total. vigiRank’s rank for a given drug–ADR pair is based on the predicted probability (see Fig. 3)
cIC005 > 0 in the two age groups 12–17 years and 18–44 years (see Sect. 2.1.2)
| Today, automated screening of large collections of individual case reports to identify possible drug safety issues often relies on disproportionality analysis, which is based solely on aggregate numbers of reports, disregarding report quality and content |
| This study identifies the following variables as strong predictors of emerging drug safety issues: the number of informative reports, recent reports, and reports with free-text descriptions; disproportional reporting; and geographic spread. Simultaneously accounting for these aspects of strength of evidence significantly improves the accuracy of automated screening of individual case reports compared with disproportionality analysis alone |
| Utilizing the identified predictive model can be expected to reduce the number of false alerts and uncover drug safety issues that would otherwise go undetected |