Submitted:
05 September 2025
Posted:
05 September 2025
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Abstract
Background: Angioimmunoblastic T‑cell lymphoma (AITL) and peripheral T‑cell lymphomas (PTCL), not otherwise specified (NOS), share overlapping histology and T‑follicular helper (TFH) biology but often show divergent outcomes and treatment needs. The clinical significance of KMT2A rearrangement (KMT2A‑r) in nodal PTCL remains undefined. We aimed to investigate the clinicogenomic features and prognostic impact of KMT2A-r in AITL and PTCL-NOS. Methods: We retrospectively analyzed consecutive patients diagnosed with AITL or PTCL‑NOS between 2021 and 2024 at two centers. All patients underwent 523‑gene DNA/RNA next-generation sequencing. Gene co‑variation and diagnostic splits were summarized using network and decision‑tree analyses. Results: Overall, 37 patients were included (AITL: 14; PTCL‑NOS: 23), with similar baseline clinical characteristics. In AITL, TFH markers were more frequently expressed, and RHOA mutations were enriched. KMT2A‑r occurred in 24% of cases without histology‑specific enrichment. AITL showed better 2‑year overall survival (OS) than PTCL‑NOS (70.7% vs. 38.8%; P=0.040) but similar progression-free survival (PFS). Univariate analysis revealed that KMT2A‑r, lactate dehydrogenase elevation, and bone‑marrow involvement predicted inferior PFS (Hazard ratio for KMT2A‑r: 2.56). Median PFS was 5.9 versus 12.5 months in the KMT2A‑r and non‑KMT2A‑r groups, respectively (P=0.039). Brentuximab vedotin (BV) plus cyclophosphamide, doxorubicin, and prednisone did not significantly improve OS or PFS overall; however, exploratory analysis indicated improved PFS in the KMT2A‑r subset. Conclusions: KMT2A‑r delineates an adverse‑risk biology in nodal PTCL, aligns with non‑TFH genomic hubs and markers of tumor burden, and may serve as a stratifier and hypothesis‑generating target for BV‑based strategies.
Keywords:
1. Introduction
2. Materials and Methods
2.1. Patient Selection
2.2. NGS
2.3. Therapy and Response Assessment
3. Results
3.1. Patient Cohort, Baseline Features, and Survival Outcomes
3.2. Impact of Genetic Alteration on Survival Outcomes
3.3. Interrelationship Among the Molecular Landscape
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AITL | Angioimmunoblastic T-cell lymphoma |
| PTCL-NOS | Peripheral T-cell lymphoma, not otherwise specified |
| NGS | Next-generation sequencing |
| FFPE | Formalin-fixed, paraffin-embedded |
| PCR | Polymerase chain reaction |
| DDR | DNA damage response |
| BV | Brentuximab vedotin |
| BV-CHP | Brentuximab vedotin plus cyclophosphamide, doxorubicin, and prednisone |
| ASCT | Autologous stem cell transplantation |
| TFH | T-follicular helper (cell) |
| LDH | Lactate dehydrogenase |
| ECOG PS | Eastern Cooperative Oncology Group performance status |
| ALCL | Anaplastic large cell lymphoma |
| EBER | EBV-encoded RNA in situ hybridization |
| IPI | International Prognostic Index |
| HR | Hazard ratio |
| CI | Confidence interval |
| PFS | Progression-free survival |
| OS | Overall survival |
| KMT2A-r | KMT2A rearrangement |
| CHP | Cyclophosphamide, doxorubicin, and prednisone |
| CR | Complete remission |
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| Variables |
Total (n=37) |
AITL (n=14) |
PTCL (n=23) |
P-value |
| Sex, N (%) | 0.64 | |||
| Female | 18 (48.6) | 8 (57.1) | 10 (43.5) | |
| Male | 19 (51.4) | 6 (42.9) | 13 (56.5) | |
| Diagnosed Age | 0.76 | |||
| ≤60 years | 21 (56.8) | 7 (50.0) | 14 (60.9) | |
| >60 years | 16 (43.2) | 7 (50.0) | 9 (39.1) | |
| Ann Arbor stage | 0.65 | |||
| I–II | 3 (8.1) | 2 (14.3) | 1 (4.3) | |
| III–IV | 34 (91.9) | 12 (85.7) | 22 (95.7) | |
| ECOG2 | 0.698 | |||
| <2 | 32 (86.5) | 13 (92.9) | 19 (82.6) | |
| ≥2 | 5 (13.5) | 1 (7.1) | 4 (17.4) | |
| Lactate dehydrogenase | 0.124 | |||
| Normal | 14 (37.8) | 8 (57.1) | 6 (26.1) | |
| Elevated | 23 (62.2) | 6 (42.9) | 17 (73.9) | |
| Extranodal site involvement | 0.76 | |||
| <2 | 16 (43.2) | 7 (50.0) | 9 (39.1) | |
| ≥2 | 21 (56.8) | 7 (50.0) | 14 (60.9) | |
| Bone marrow involvement | 0.417 | |||
| Negative | 22 (59.5) | 10 (71.4) | 12 (52.2) | |
| Positive | 15 (40.5) | 4 (28.6) | 11 (47.8) | |
| The International Prognostic Index for Non-Hodgkin’s lymphoma |
0.526 | |||
| Low or Low-Intermediate risk | 20 (54.1) | 9 (64.3) | 11 (47.8) | |
| High-Intermediate or High risk | 17 (45.9) | 5 (35.7) | 12 (52.2) | |
| T-follicular helper type | 0.168 | |||
| Negative | 32 (86.5) | 14 (100.0) | 18 (78.3) | |
| Positive | 5 (13.5) | 0 (0.0) | 5 (21.7) | |
| Frontline regimen | 0.699 | |||
| BV-CHP | 8 (21.6) | 2 (14.3) | 6 (26.1) | |
| CHOP/CHOEP | 17 (45.9) | 7 (50.0) | 10 (43.5) | |
| ProMACE-CytaBOM | 12 (32.4) | 5 (35.7) | 7 (30.4) | |
| ASCT | 0.083 | |||
| No | 26 (70.3%) | 7 (50.0%) | 19 (82.6%) | |
| Yes | 11 (29.7%) | 7 (50.0%) | 4 (17.4%) | |
| Immunophenotype | ||||
| Epstein–Barr virus-encoded RNAs | 0.14 | |||
| Negative | 12 (32.4) | 2 (14.3) | 10 (43.5) | |
| Positive | 25 (67.6) | 12 (85.7) | 13 (56.5) | |
| CD30 | 0.394 | |||
| Negative | 29 (80.6) | 9 (69.2) | 20 (87.0) | |
| Positive | 7 (19.4) | 4 (30.8) | 3 (13.0) | |
| CD10 | 0.001 | |||
| Negative | 26 (74.3) | 5 (38.5) | 21 (95.5) | |
| Positive | 9 (25.7) | 8 (61.5) | 1 (4.5) | |
| CD21 | 0.001 | |||
| Negative | 19 (54.3) | 1 (7.1) | 18 (85.7) | |
| Positive | 16 (45.7) | 13 (92.9) | 3 (14.3) | |
| CD23 | 0.011 | |||
| Negative | 10 (45.5) | 3 (21.4) | 7 (87.5) | |
| Positive | 12 (54.5) | 11 (78.6) | 1 (12.5) | |
| BCL6 | 0.004 | |||
| Negative | 13 (39.4) | 1 (7.1) | 12 (63.2) | |
| Positive | 20 (60.6) | 13 (92.9) | 7 (36.8) | |
| PD1 | 0.014 | |||
| Negative | 9 (25.7) | 0 (0.0) | 9 (42.9) | |
| Positive | 26 (74.3) | 14 (100.0) | 12 (57.1) | |
| Ki-67 proliferation index | 64.9±21.8 | 65.4±22.9 | 64.6±21.7 | 0.917 |
| Next-generation sequencing | ||||
| ATR | 0.288 | |||
| Unmutated | 21 (56.8) | 10 (71.4) | 11 (47.8) | |
| Mutated | 16 (43.2) | 4 (28.6) | 12 (52.2) | |
| KMT2A rearrangement | 0.132 | |||
| Negative | 28 (75.7) | 13 (92.9) | 15 (65.2) | |
| Positive | 9 (24.3) | 1 (7.1) | 8 (34.8) | |
| RHOA | 0.014 | |||
| Unmutated | 30 (81.1) | 8 (57.1) | 22 (95.7) | |
| Mutated | 7 (18.9) | 6 (42.9) | 1 (4.3) | |
| DNMT3A | 0.833 | |||
| Unmutated | 31 (83.8) | 11 (78.6) | 20 (87.0) | |
| Mutated | 6 (16.2) | 3 (21.4) | 3 (13.0) | |
| TCF7L2 | 0.698 | |||
| Unmutated | 32 (86.5) | 13 (92.9) | 19 (82.6) | |
| Mutated | 5 (13.5) | 1 (7.1) | 4 (17.4) | |
| IDH2 | 0.111 | |||
| Unmutated | 32 (86.5) | 10 (71.4) | 22 (95.7) | |
| Mutated | 5 (13.5) | 4 (28.6) | 1 (4.3) | |
| TP53 | 0.698 | |||
| Unmutated | 32 (86.5) | 13 (92.9) | 19 (82.6) | |
| Mutated | 5 (13.5) | 1 (7.1) | 4 (17.4) | |
| TET2 | >0.999 | |||
| Unmutated | 33 (89.2) | 12 (85.7) | 21 (91.3) | |
| Mutated | 4 (10.8) | 2 (14.3) | 2 (8.7) | |
| Variables | HR (95% CI) | P-value |
|---|---|---|
| PTCL-NOS vs. AITL | 2 (0.85, 4.68) | 0.111 |
| Female vs. Male | 0.52 (0.23, 1.14) | 0.102 |
| Age >60 years vs. ≤60 | 1.01 (0.47, 2.19) | 0.979 |
| Ann Arbor stage, III–IV vs. I–II | 3.14 (0.42, 23.4) | 0.263 |
| ECOG PS ≥2 vs. <2 | 2.62 (0.86, 8.03) | 0.092 |
| LDH elevation vs. normal | 3.1 (1.27, 7.58) | 0.013 |
| Extranodal site involvement, ≥2 vs. <2 | 1.57 (0.71, 3.49) | 0.266 |
| Bone marrow involvement, positive vs. negative | 2.98 (1.25, 7.08) | 0.014 |
| IPI score ≥3 vs. <3 | 1.74 (0.79, 3.82) | 0.167 |
| TFH phenotype, yes or no | 1.74 (0.65, 4.68) | 0.269 |
| Frontline regimen: BV-CHP vs. others | 0.56 (0.19, 1.61) | 0.28 |
| EBER positive vs. negative | 0.56 (0.25, 1.28) | 0.169 |
| ATR mutation vs. unmutated | 1.48 (0.68, 3.22) | 0.327 |
| KMT2A rearranged, yes vs. no | 2.56 (1.02, 6.45) | 0.046 |
| RHOA mutation vs. unmutated | 1.33 (0.53, 3.33) | 0.542 |
| DNMT3A mutation vs. unmutated | 2.28 (0.90, 5.81) | 0.083 |
| TCF7L2 mutation vs. unmutated | 1.23 (0.42, 3.61) | 0.705 |
| IDH2 mutation vs. unmutated | 2.05 (0.75, 5.56) | 0.16 |
| TP53 mutation vs. unmutated | 1.58 (0.54, 4.65) | 0.402 |
| TET2 mutation vs. unmutated | 1.79 (0.61, 5.30) | 0.29 |
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