Assessment of systemic and gastrointestinal tissue damage biomarkers for GVHD risk stratification

评估全身和胃肠道组织损伤生物标志物以进行 GVHD 风险分层

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作者:Aaron Etra, Stephanie Gergoudis, George Morales, Nikolaos Spyrou, Jay Shah, Steven Kowalyk, Francis Ayuk, Janna Baez, Chantiya Chanswangphuwana, Yi-Bin Chen, Hannah Choe, Zachariah DeFilipp, Isha Gandhi, Elizabeth Hexner, William J Hogan, Ernst Holler, Urvi Kapoor, Carrie L Kitko, Sabrina Kraus, Jun

Abstract

We used a rigorous PRoBE (prospective-specimen collection, retrospective-blinded-evaluation) study design to compare the ability of biomarkers of systemic inflammation and biomarkers of gastrointestinal (GI) tissue damage to predict response to corticosteroid treatment, the incidence of clinically severe disease, 6-month nonrelapse mortality (NRM), and overall survival in patients with acute graft-versus-host disease (GVHD). We prospectively collected serum samples of newly diagnosed GVHD patients (n = 730) from 19 centers, divided them into training (n = 352) and validation (n = 378) cohorts, and measured TNFR1, TIM3, IL6, ST2, and REG3α via enzyme-linked immunosorbent assay. Performances of the 4 strongest algorithms from the training cohort (TNFR1 + TIM3, TNFR1 + ST2, TNFR1 + REG3α, and ST2 + REG3α) were evaluated in the validation cohort. The algorithm that included only biomarkers of systemic inflammation (TNFR1 + TIM3) had a significantly smaller area under the curve (AUC; 0.57) than the AUCs of algorithms that contained ≥1 GI damage biomarker (TNFR1 + ST2, 0.70; TNFR1 + REG3α, 0.73; ST2 + REG3α, 0.79; all P < .001). All 4 algorithms were able to predict short-term outcomes such as response to systemic corticosteroids and severe GVHD, but the inclusion of a GI damage biomarker was needed to predict long-term outcomes such as 6-month NRM and survival. The algorithm that included 2 GI damage biomarkers was the most accurate of the 4 algorithms for all endpoints.

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