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Embracing Heterogeneity in The Multicenter Stroke Preclinical Assessment Network (SPAN) Trial

Authors :
Andreia Morais
Joseph J. Locascio
Lauren H. Sansing
Jessica Lamb
Karisma Nagarkatti
Takahiko Imai
Klaus van Leyen
Jaroslaw Aronowski
James I. Koenig
Francesca Bosetti
Patrick Lyden
Cenk Ayata
Patrick D. Lyden
David C. Hess
Pradip K. Kamat
Mohammad Badruzzaman Khan
Krishnan Dhandapani
Ali S. Arbab
Shahneela Siddiqui
Cameron Smith
Mohammad Nisar
Enrique C. Leira
Anil K. Chauhan
Nirav Dhanesha
Rakesh B. Patel
Mariia Kumskova
Daniel Thedens
Kai Wang
Tao Qin
Xuyan Jin
Taylan Denis Erdogan
Lili Yu
Joseph B. Mandeville
William Taylor Kimberly
Jonah Patrick Weigand Whittier
Eng Lo
Ken Arai
Klaus Van Leyen
Fahmeed Hyder
Jelena M. Mihailovic
Basavaraju G. Sanganahalli
Sebastian Diaz-Perez
Sofia E. Velazquez
Hannah E. Beatty
Conor Johnson
Alison L. Herman
Ligia S. B. Boisserand
Emma Immakavar
Raymond C. Koehler
Ted Dawson
Valina Dawson
Yanrong Shi
Brooklyn Avery
Steven Lannon
Adnan Bibic
Kazi Akhter
Senthilkumar S. Karuppagounder
Louise D. McCullough
Lidiya Obertas
Andrew Goh
Shuning Huang
Anjali Chauhan
Source :
Stroke.
Publication Year :
2023

Abstract

The Stroke Preclinical Assessment Network (SPAN) is a multicenter preclinical trial platform using rodent models of transient focal cerebral ischemia to address translational failure in experimental stroke. In addition to centralized randomization and blinding and large samples, SPAN aimed to introduce heterogeneity to simulate the heterogeneity embodied in clinical trials for robust conclusions. Here, we report the heterogeneity introduced by allowing the 6 SPAN laboratories to vary most of the biological and experimental model variables and the impact of this heterogeneity on middle cerebral artery occlusion (MCAo) performance. We included the modified intention-to-treat population of the control mouse cohort of the first SPAN trial (n=421) and examined the biological and procedural independent variables and their covariance. We then determined their impact on the dependent variables cerebral blood flow drop during MCAo, time to achieve MCAo, and total anesthesia duration using multivariable analyses. We found heterogeneity in biological and procedural independent variables introduced mainly by the site. Consequently, all dependent variables also showed heterogeneity among the sites. Multivariable analyses with the site as a random effect variable revealed filament choice as an independent predictor of cerebral blood flow drop after MCAo. Comorbidity, sex, use of laser Doppler flow to monitor cerebral blood flow, days after trial onset, and maintaining anesthesia throughout the MCAo emerged as independent predictors of time to MCAo. Total anesthesia duration was predicted by most independent variables. We present with high granularity the heterogeneity introduced by the biological and model selections by the testing sites in the first trial of cerebroprotection in rodent transient filament MCAo by SPAN. Rather than trying to homogenize all variables across all sites, we embraced the heterogeneity to better approximate clinical trials. Awareness of the heterogeneity, its sources, and how it impacts the study performance may further improve the study design and statistical modeling for future multicenter preclinical trials.

Details

ISSN :
15244628
Database :
OpenAIRE
Journal :
Stroke
Accession number :
edsair.doi.dedup.....f659344b670d29ae7ba3de319dbc2dcf