| Literature DB >> 29379048 |
Cao Xiao1, Ying Li2, Inci M Baytas3, Jiayu Zhou3, Fei Wang4.
Abstract
Delayed drug safety insights can impact patients, pharmaceutical companies, and the whole society. Post-market drug safety surveillance plays a critical role in providing drug safety insights, where real world evidence such as spontaneous reporting systems (SRS) and a series of disproportional analysis serve as a cornerstone of proactive and predictive drug safety surveillance. However, they still face several challenges including concomitant drugs confounders, rare adverse drug reaction (ADR) detection, data bias, and the under-reporting issue. In this paper, we are developing a new framework that detects improved drug safety signals from multiple data sources via Monte Carlo Expectation-Maximization (MCEM) and signal combination. In MCEM procedure, we propose a new sampling approach to generate more accurate SRS signals for each ADR through iteratively down-weighting their associations with irrelevant drugs in case reports. While in signal combination step, we adopt Bayesian hierarchical model and propose a new summary statistic such that SRS signals can be combined with signals derived from other observational health data allowing for related signals to borrow statistical support with adjustment of data reliability. They combined effectively alleviate the concomitant confounders, data bias, rare ADR and under-reporting issues. Experimental results demonstrated the effectiveness and usefulness of the proposed framework.Entities:
Mesh:
Year: 2018 PMID: 29379048 PMCID: PMC5789130 DOI: 10.1038/s41598-018-19979-7
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1The proposed signal detection and combination framework: For a particular case report, given a set of drugs and a set of ADRs, MCEM procedure is used to filter out the concomitant drug confounders to associate each ADR with one major drug. To further enhance the signal strength, an empirical Bayesian based signal combination approach is used to combine signals from OHD data with signals from SRS case reports.
2 × 2 Contingency Table.
| Report with ADR | Report without ADR | |
|---|---|---|
| Report with Drug |
|
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| Report without Drug |
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Comparison of the standard MGPS score and MCEM MGPS score based on ADRs of interest in FAERS.
| SRS Dataset | Average AUC (MGPS) | Average AUC (MCEM MGPS) |
|---|---|---|
| All ADRs | 0.6787 |
|
| Acute Myocardial Infarction (AMI) | 0.5834 |
|
| Acute Liver Injury(ALI) |
| 0.6512 |
| Acute Renal Failure (ARF) | 0.6926 |
|
| Upper GI Bleeding (UGB) | 0.6610 |
|
Comparison of the standard MGPS score and MCEM MGPS score based on ADRs of interest in MedEffect.
| SRS Dataset | Average AUC (MGPS) | Average AUC (MCEM MGPS) |
|---|---|---|
| All ADRs | 0.7366 |
|
| Acute Myocardial Infarction (AMI) | 0.7500 |
|
| Acute Liver Injury(ALI) |
| 0.4756 |
| Upper GI Bleeding (UGB) | 0.7500 |
|
Comparison of the standard MGPS score and MCEM MGPS score by reporting ending years.
| SRS Dataset | AUC (MGPS) | AUC (MCEM MGPS) |
|---|---|---|
| As of FAERS 2007 | 0.6994 |
|
| As of FAERS 2008 | 0.6936 |
|
| As of FAERS 2009 | 0.6889 |
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| As of FAERS 2010 | 0.6853 |
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| As of FAERS 2011 | 0.6868 |
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| As of FAERS 2012 | 0.6907 |
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| As of FAERS 2013 | 0.7091 |
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| As of FAERS 2014 | 0.7012 |
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Figure 2False positive signals detected by MCEM.
Performance comparison of risk signal combination methods.
| AUCs of Different Combination Methods | |||
|---|---|---|---|
| Rank Aggregation | Empirical Bayesian in[ | Proposed Framework | |
|
| |||
| Raw MGPS + OHD | 0.5176 | 0.7540 | X |
| MCEM MGPS + OHD | 0.6290 | 0.7584 |
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Figure 3Comparison of early detection of true positive signals: ketoprofen causing acute kidney injury (left), and methotrexate causing acute liver injury (right).
Figure 4Comparison of signal strength for upper GI bleeding.