scholarly journals P288National prescribing and adverse event rates of patients at risk of stroke with non-valvular AF from CPRD linked database: does “big data” reflect clinical trials and identify areas for improvement?

2018 ◽  
Vol 39 (suppl_1) ◽  
Author(s):  
V S Mehta ◽  
H Petri ◽  
F Vahidnia ◽  
C Wolf ◽  
Y Ding ◽  
...  
Vaccine ◽  
2021 ◽  
Vol 39 (3) ◽  
pp. 536-544
Author(s):  
Vanessa W. Stevens ◽  
Ellyn M. Russo ◽  
Yinong Young-Xu ◽  
Molly Leecaster ◽  
Yue Zhang ◽  
...  

2017 ◽  
Vol 35 (15_suppl) ◽  
pp. 2538-2538
Author(s):  
Mayur Sarangdhar ◽  
Bruce Aronow ◽  
Anil Goud Jegga ◽  
Brian Turpin ◽  
Erin Haag Breese ◽  
...  

2538 Background: Targeted anti-cancer small molecule drugs & immune therapies have had a dramatic impact in improving outcomes & the approach to clinical trials. Increasingly, regulatory approvals are expedited with small studies designed to identify strong efficacy signals. However, this may limit the extent of safety profiling. The use of large scale/big data meta-analyses can identify novel safety & efficacy signals in "real-world" medical settings. Methods: We used AERSMine, an open-source data mining platform to identify drug toxicity signatures in the FDA’s Adverse Event Reporting System of 8.6 million patients. We identified patients (n = 732,198) who received either traditional and targeted cancer therapy & identified therapy-specific toxicity patterns. Patients were classified based on exposures: anthracyclines (n = 83,179), platinum (117,993), antimetabolites (93,062), alkylators (81,507), antimicrotubule agents (97,726), HER2 inhibitors (40,040), VEGFis (79,144), VEGF-TKis (90,734), multi TKis (34,457), anaplastic lymphoma Kis (7,635), PI3K-AKT-mTOR inhibitors (33,864), Bruton TKis (9,247), MEKis (4,018), immunomodulatory agents (174,810), proteasome inhibitors (44,681), immune checkpoint inhibitors (20,287). Pharmacovigilance metrics [Relative Risks & safety signals] were used to establish statistical correlation & toxicity signatures were differentiated using the Kolmogorov–Smirnov test. Results: To validate the use of the AERSMine to detect AEs, we focused on cardiotoxicity. It identified classic drug associated AEs (e.g. ventricular dysfunction with anthracyclines, HER2is & VEGFis; VEGFi hypertension & vascular toxicity; multi TKIs vascular events). AERSMine also identified recently reported uncommon toxicities of myositis/myocarditis with immune checkpoint inhibitors. It indicated a higher frequency of myositis/myocarditis with combination immune checkpoint therapy, paralleling industry corporate safety databases. These toxicities were reported at higher frequencies in patients > 65 yrs. Conclusions: AERSMine “big data” analyses provide a sensitive tool to detect potential new patterns of AEs simultaneously across multiple clinical trials & in the real-world setting.


2018 ◽  
Vol 5 (suppl_1) ◽  
pp. S184-S184
Author(s):  
Vanessa Stevens ◽  
Ellyn Russo ◽  
Yinong Young-Xu ◽  
Molly Leecaster ◽  
Yue Zhang ◽  
...  

Author(s):  
Natalie Flaks‐Manov ◽  
Efrat Shadmi ◽  
Rina Yahalom ◽  
Henia Perry‐Mezre ◽  
Ran Balicer ◽  
...  

2008 ◽  
Vol 26 (22) ◽  
pp. 3721-3726 ◽  
Author(s):  
Simone Mathoulin-Pelissier ◽  
Sophie Gourgou-Bourgade ◽  
Franck Bonnetain ◽  
Andrew Kramar

Purpose Several publications showed that the standards for reporting randomized clinical trials (RCTs) might not be entirely suitable. Our aim was to evaluate the reporting of survival end points in cancer RCTs. Methods A search in MEDLINE databases identified 274 cancer RCTs published in 2004 in four general medical journals and four clinical oncology journals. Eligible articles were those that reported primary analyses of RCT with survival end points. Methodologists reviewed and scored the articles according to seven key points: prevalence of complete definition of survival end points (time of origin, survival events, censoring events) and relevant information about their analyses (estimation or effect size, precision, number of events, patients at risk). Concordance of key points was evaluated from a random subsample. Results After screening, 125 articles were selected; 104 trials were phase III (83%) and 98 publications (78%) were obtained from oncology journals. Among these RCTs, a total of 267 survival end points were recorded, and overall survival (OS) was the most frequent outcome (118 terms, 44%). Survival terms were totally defined for 113 end points (42%) in 65 articles (52%). Accurate information about analysis was retrieved for 73 end points (27%) in 40 articles (32%). The less well-defined information was the number of patients at risk (55%). The reliability was good (κ = 0.72). Finally, according to the key points, optimal reporting was found in 33 end points (12%) or 10 publications. Conclusion A majority of articles failed to provide a complete reporting of survival end points, thus adding another source of uncontrolled variability.


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