1. A gene-expression-based signature predicts survival in adults with T-cell lymphoblastic lymphoma: a multicenter study.
- Author
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Tian XP, Xie D, Huang WJ, Ma SY, Wang L, Liu YH, Zhang X, Huang HQ, Lin TY, Rao HL, Li M, Liu F, Zhang F, Zhong LY, Liang L, Lan XL, Li J, Liao B, Li ZH, Tang QL, Liang Q, Shao CK, Zhai QL, Cheng RF, Sun Q, Ru K, Gu X, Lin XN, Yi K, Shuang YR, Chen XD, Dong W, Sang W, Sun C, Liu H, Zhu ZG, Rao J, Guo QN, Zhou Y, Meng XL, Zhu Y, Hu CL, Jiang YR, Zhang Y, Gao HY, He WJ, Xia ZJ, Pan XY, Lan H, Li GW, Liu L, Bao HZ, Song LY, Kang TB, and Cai QQ
- Subjects
- Adult, Disease-Free Survival, Female, Humans, Male, Middle Aged, Nomograms, Precursor T-Cell Lymphoblastic Leukemia-Lymphoma genetics, Retrospective Studies, Precursor T-Cell Lymphoblastic Leukemia-Lymphoma pathology, Transcriptome
- Abstract
We aimed to establish a discriminative gene-expression-based classifier to predict survival outcomes of T-cell lymphoblastic lymphoma (T-LBL) patients. After exploring global gene-expression profiles of progressive (n = 22) vs. progression-free (n = 28) T-LBL patients, 43 differentially expressed mRNAs were identified. Then an eleven-gene-based classifier was established using LASSO Cox regression based on NanoString quantification. In the training cohort (n = 169), high-risk patients stratified using the classifier had significantly lower progression-free survival (PFS: hazards ratio 4.123, 95% CI 2.565-6.628; p < 0.001), disease-free survival (DFS: HR 3.148, 95% CI 1.857-5.339; p < 0.001), and overall survival (OS: HR 3.790, 95% CI 2.237-6.423; p < 0.001) compared with low-risk patients. The prognostic accuracy of the classifier was validated in the internal testing (n = 84) and independent validation cohorts (n = 360). A prognostic nomogram consisting of five independent variables including the classifier, lactate dehydrogenase levels, ECOG-PS, central nervous system involvement, and NOTCH1/FBXW7 status showed significantly greater prognostic accuracy than each single variable alone. The addition of a five-miRNA-based signature further enhanced the accuracy of this nomogram. Furthermore, patients with a nomogram score ≥154.2 significantly benefited from the BFM protocol. In conclusion, our nomogram comprising the 11-gene-based classifier may make contributions to individual prognosis prediction and treatment decision-making.
- Published
- 2020
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