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Active NON-SBIR/STTR RPGS NIH (US)

Bridging clinical trial and real-world data via machine learning to advance rheumatoid arthritis treatment strategies

$7.48M USD

Funder NATIONAL INSTITUTE OF ARTHRITIS AND MUSCULOSKELETAL AND SKIN DISEASES
Recipient Organization Brigham and Women'S Hospital
Country United States
Start Date Jul 01, 2022
End Date Jun 30, 2026
Duration 1,460 days
Number of Grantees 2
Roles Co-Investigator; Principal Investigator
Data Source NIH (US)
Grant ID 10339668
Grant Description

PROJECT SUMMARY/ABSTRACT Rheumatoid arthritis (RA) is the most common autoimmune joint disease with over 15 treatment options, reflecting both advances in therapy as well as the heterogenous response to therapy. After the first line therapy methotrexate (MTX), patients and their rheumatologist proceed on a trial-and-error approach to identify

the optimal treatment. A landmark randomized controlled clinical trial (RCT), RACAT, compared the effectiveness of triple therapy-MTX, sulfasalazine, and hydroxychloroquine vs MTX and a tumor necrosis factor inhibitor (TNFi). The RACAT subgroup analyses observed that some patients had a better response to one

treatment strategy vs the other. However, like most RCTs, it was underpowered to better characterize these subgroups. Real-world data (RWD), such as electronic health record (EHR) and registry data, have a larger sample size but lack the randomization and precise clinical measurements performed as part of clinical trials.

The objective of this proposal is to apply and rigorously test state-of-the-art methods that can combine the strengths of RCT and RWD to extend RCT findings. RACAT was a Veterans Affairs (VA) based clinical trial and thus many of their subjects also have EHR data in parallel, providing an ideal study design to test methods

to understand how well we can replicated RCT using RWD. In Aim 1, we test methods using semi-supervised machine learning methods to impute RACAT clinical endpoints using EHR data; the linked RACAT data will be used as the gold standard comparison. Next, we apply causal inference modeling comparing triple therapy vs

TNFi using EHR data with the imputed endpoints and validate results using the linked RACAT data. In Aim 2, we apply novel causal modeling methods that enable us to examine subgroup findings using RWD. We will identify subjects in the larger EHR and registries similar to RACAT subgroups, i.e. patients who benefitted

more from triple therapy vs TNFi or vice versa, and subjects who remained on TNFi throughout the trial and did well. These larger populations will provide improved power to study potential predictors of treatment response. Moreover, the integration of EHR data allows us to study a broader set of potential predictors not collected in

RCT or registry data. Our overarching hypothesis is that we will identify the clinical subgroups observed in RACAT with differing response to treatments within the larger populations of RA patients in EHR and registry. We will also identify novel predictors of response by using a broader set of clinical data available in EHR. This

study is significant because it will provide a blueprint for studies for extending RCT findings in datasets with linked RCT and RWD, applicable to many treatments and conditions. This study is innovative because of its approach to maximize the data available from RCTs with existing RWD using linked datasets, powering studies

to optimize RA therapy for different patients. This proposal also anticipates the growing ability of patients and institutions to access EHR data, enabling previously siloed datasets to become part of data-driven studies to advance clinical management of RA and other conditions.

All Grantees

Brigham and Women'S Hospital

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