TY - JOUR
T1 - An early-biomarker algorithm predicts lethal graft-versus-host disease and survival
AU - Hartwell, Matthew J.
AU - Özbek, Umut
AU - Holler, Ernst
AU - Renteria, Anne S.
AU - Major-Monfried, Hannah
AU - Reddy, Pavan
AU - Aziz, Mina
AU - Hogan, William J.
AU - Ayuk, Francis
AU - Efebera, Yvonne A.
AU - Hexner, Elizabeth O.
AU - Bunworasate, Udomsak
AU - Qayed, Muna
AU - Ordemann, Rainer
AU - Wölfl, Matthias
AU - Mielke, Stephan
AU - Pawarode, Attaphol
AU - Chen, Yi-Bin
AU - Devine, Steven
AU - Harris, Andrew C.
AU - Jagasia, Madan
AU - Kitko, Carrie L.
AU - Litzow, Mark R.
AU - Kröger, Nicolaus
AU - Locatelli, Franco
AU - Morales, George
AU - Nakamura, Ryotaro
AU - Reshef, Ran
AU - Rösler, Wolf
AU - Weber, Daniela
AU - Wudhikarn, Kitsada
AU - Yanik, Gregory A.
AU - Levine, John E.
AU - Ferrara, James L.M.
PY - 2017
Y1 - 2017
N2 - BACKGROUND. No laboratory test can predict the risk of nonrelapse mortality (NRM) or severe graft-versus-host disease (GVHD) after hematopoietic cellular transplantation (HCT) prior to the onset of GVHD symptoms. METHODS. Patient blood samples on day 7 after HCT were obtained from a multicenter set of 1,287 patients, and 620 samples were assigned to a training set. We measured the concentrations of 4 GVHD biomarkers (ST2, REG3α, TNFR1, and IL-2Rα) and used them to model 6-month NRM using rigorous cross-validation strategies to identify the best algorithm that defined 2 distinct risk groups. We then applied the final algorithm in an independent test set (n = 309) and validation set (n = 358). RESULTS. A 2-biomarker model using ST2 and REG3α concentrations identified patients with a cumulative incidence of 6-month NRM of 28% in the high- risk group and 7% in the low- risk group (P < 0.001). The algorithm performed equally well in the test set (33% vs. 7%, P < 0.001) and the multicenter validation set (26% vs. 10%, P < 0.001). Sixteen percent, 17%, and 20% of patients were at high risk in the training, test, and validation sets, respectively. GVHD-related mortality was greater in high-risk patients (18% vs. 4%, P < 0.001), as was severe gastrointestinal GVHD (17% vs. 8%, P < 0.001). The same algorithm can be successfully adapted to define 3 distinct risk groups at GVHD onset. CONCLUSION. A biomarker algorithm based on a blood sample taken 7 days after HCT can consistently identify a group of patients at high risk for lethal GVHD and NRM.
AB - BACKGROUND. No laboratory test can predict the risk of nonrelapse mortality (NRM) or severe graft-versus-host disease (GVHD) after hematopoietic cellular transplantation (HCT) prior to the onset of GVHD symptoms. METHODS. Patient blood samples on day 7 after HCT were obtained from a multicenter set of 1,287 patients, and 620 samples were assigned to a training set. We measured the concentrations of 4 GVHD biomarkers (ST2, REG3α, TNFR1, and IL-2Rα) and used them to model 6-month NRM using rigorous cross-validation strategies to identify the best algorithm that defined 2 distinct risk groups. We then applied the final algorithm in an independent test set (n = 309) and validation set (n = 358). RESULTS. A 2-biomarker model using ST2 and REG3α concentrations identified patients with a cumulative incidence of 6-month NRM of 28% in the high- risk group and 7% in the low- risk group (P < 0.001). The algorithm performed equally well in the test set (33% vs. 7%, P < 0.001) and the multicenter validation set (26% vs. 10%, P < 0.001). Sixteen percent, 17%, and 20% of patients were at high risk in the training, test, and validation sets, respectively. GVHD-related mortality was greater in high-risk patients (18% vs. 4%, P < 0.001), as was severe gastrointestinal GVHD (17% vs. 8%, P < 0.001). The same algorithm can be successfully adapted to define 3 distinct risk groups at GVHD onset. CONCLUSION. A biomarker algorithm based on a blood sample taken 7 days after HCT can consistently identify a group of patients at high risk for lethal GVHD and NRM.
KW - GvHD
KW - GvHD
UR - http://hdl.handle.net/10807/230024
U2 - 10.1172/JCI.INSIGHT.89798
DO - 10.1172/JCI.INSIGHT.89798
M3 - Article
SN - 2379-3708
VL - 2
SP - 1
EP - 10
JO - JCI insight
JF - JCI insight
ER -