Abstract 499

AHCT is standard therapy for relapsed or refractory HL. Published prognostic models for HL patients based on factors measured at the time of AHCT have been limited by small sample sizes. HL prognostic models based on information from diagnosis may be difficult to use for AHCT outcomes since diagnostic information is often not available to the tertiary transplant center or the tests were not uniformly performed by multiple referring physicians. Our goal was to develop a new prognostic model for PFS post-AHCT based on factors available at time of AHCT. We analyzed a cohort of 728 relapsed or refractory HL patients receiving an AHCT between 1996–2007, reported to the CIBMTR by 162 centers, who had complete data for all significant factors previously reported in prognostic models. Patient characteristics at diagnosis: 40% male, 52% stage III-IV, 57% B symptoms, 34% extranodal disease. Patient characteristics at AHCT: median (range) age 33 (7–74) years; 74% KPS≥90 pre-AHCT; 40% had ≥3 prior chemotherapy regimens; 36% chemo-sensitive relapse 27% CR2, 19% PR1, 12% chemo-resistant relapse, 6% primary refractory/resistant; median (range) time from diagnosis to AHCT 22 (3–368) months. Histologic types were: 74% nodular sclerosis, 14% mixed cellularity, 7% lymphocyte rich, 1% lymphocyte depleted, 4% other/unknown. High dose therapy regimens were primarily BEAM (71%) or CBV (13%). For the entire cohort, 3-year estimates of PFS and OS were 60% and 73%, respectively. Multivariate models for treatment failure (1-PFS) were built using a forward step-wise procedure with p<0.05 to enter the model. The following variables were considered: number of prior chemotherapy regimens; KPS; histology; B symptoms at diagnosis; disease status at AHCT; chemo-sensitivity at AHCT; serum LDH at AHCT; extranodal involvement any time prior to AHCT; size of largest mass prior to AHCT; time from diagnosis to AHCT. A random subset of patients was used for model development (n=337) and the model was validated in the remaining cases (n= 391). The final model is shown in the Table

Risk FactorRR (95% CI)PScore
# of prior chemotherapy regimens: (3,4,5) vs (0,1,2) 1.80 (1.31–2.47) 0.0003 
Extranodal involvement any time prior to AHCT: Yes vs No 1.77 (1.24–2.53) 0.0018 
KPS prior to AHCT: 0–80% vs 90–100% 1.47 (1.04–2.07) 0.0275 
HL chemo-sensitivity at AHCT: Resistant vs Sensitive 1.45 (1.01–2.07) 0.0440 
Risk FactorRR (95% CI)PScore
# of prior chemotherapy regimens: (3,4,5) vs (0,1,2) 1.80 (1.31–2.47) 0.0003 
Extranodal involvement any time prior to AHCT: Yes vs No 1.77 (1.24–2.53) 0.0018 
KPS prior to AHCT: 0–80% vs 90–100% 1.47 (1.04–2.07) 0.0275 
HL chemo-sensitivity at AHCT: Resistant vs Sensitive 1.45 (1.01–2.07) 0.0440 

Patients were assigned a risk group based on the prognostic score: High risk, (score = 4, 5, or 6); Intermediate risk, (score = 1, 2, or 3); and Low risk, (score = 0). Figure 1 shows the PFS curves for the model development, model verification and combined groups, respectively. This CIBMTR Prognostic Model identifies patients at low, intermediate and high risk for treatment failure (progression or death). These risk groups discriminate patients with good post-AHCT outcomes and those who may benefit from other therapies, such as allogeneic HCT. Prospective evaluation of different treatment strategies based on this prognostic model are needed on a national or international level.
Disclosures:

Hahn:Novartis: stock. Montoto:Genentech: Research Funding; Roche: Honoraria.

Author notes

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Asterisk with author names denotes non-ASH members.

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