A Real-world Toxicity Atlas Shows that Adverse Events of Combination Therapies Commonly Result in Additive Interactions

Author:

Küçükosmanoglu Asli1ORCID,Scoarta Silvia1ORCID,Houweling Megan1ORCID,Spinu Nicoleta1ORCID,Wijnands Thomas1ORCID,Geerdink Niek1ORCID,Meskers Carolien1ORCID,Kanev Georgi K.1ORCID,Kiewiet Bert23ORCID,Kouwenhoven Mathilde4ORCID,Noske David1ORCID,Wurdinger Tom1ORCID,Pouwer Marianne5ORCID,Wolff Mark2ORCID,Westerman Bart A.1ORCID

Affiliation:

1. 1Department of Neurosurgery, Brain Tumor Center Amsterdam, Amsterdam University Medical Center, Cancer Center Amsterdam, Amsterdam, the Netherlands.

2. 2SAS, Cary, North Carolina.

3. 3ITsPeople, Zaltbommel, the Netherlands.

4. 4Department of Neurology, Brain Tumor Center Amsterdam, Amsterdam University Medical Center, Cancer Center Amsterdam, Amsterdam, the Netherlands.

5. 5Medstone Science, Almere, the Netherlands.

Abstract

Abstract Purpose: Combination therapies are a promising approach for improving cancer treatment, but it is challenging to predict their resulting adverse events in a real-world setting. Experimental Design: We provide here a proof-of-concept study using 15 million patient records from the FDA Adverse Event Reporting System (FAERS). Complex adverse event frequencies of drugs or their combinations were visualized as heat maps onto a two-dimensional grid. Adverse event frequencies were shown as colors to assess the ratio between individual and combined drug effects. To capture these patterns, we trained a convolutional neural network (CNN) autoencoder using 7,300 single-drug heat maps. In addition, statistical synergy analyses were performed on the basis of BLISS independence or χ2 testing. Results: The trained CNN model was able to decode patterns, showing that adverse events occur in global rather than isolated and unique patterns. Patterns were not likely to be attributed to disease symptoms given their relatively limited contribution to drug-associated adverse events. Pattern recognition was validated using trial data from ClinicalTrials.gov and drug combination data. We examined the adverse event interactions of 140 drug combinations known to be avoided in the clinic and found that near all of them showed additive rather than synergistic interactions, also when assessed statistically. Conclusions: Our study provides a framework for analyzing adverse events and suggests that adverse drug interactions commonly result in additive effects with a high level of overlap of adverse event patterns. These real-world insights may advance the implementation of new combination therapies in clinical practice.

Funder

Brain Tumour Charity

Amsterdam University Medical Centers

Health~Holland

KWF Kankerbestrijding

Publisher

American Association for Cancer Research (AACR)

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