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2022-04-28T08:25:31.000Z

Novel risk score for predicting early relapse in patients with multiple myeloma

Apr 28, 2022
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Learning objective: After reading this article, learners will be able to describe a new prognostic tool that can stratify patients according to their risk of early relapse after transplantation.

Test your knowledge! Take our quick quiz before and after you read this article to find out if you improved your knowledge. Results help us to improve content and continually provide open-access education.

Early relapse following autologous hematopoietic stem cell transplant (auto-HSCT) is associated with a poor prognosis, as are high-risk cytogenetic features and failure to achieve a complete response.1 Previously, the Center for International Blood and Marrow Transplant Research (CIBMTR) and GIMEMA groups have created methods for predicting which patients are at risk of early relapse, which take into account factors such as bone marrow plasma cell content, cytogenetic risk, and albumin levels. Both of these methods split patients between high-, intermediate-, and low-risk scores, and overall survival and progression-free survival (PFS) were the endpoints. However, the PFS of each category wasn’t readily distinguishable immediately following auto-HSCT.1

During the 48th Annual Meeting of the European Society for Blood and Marrow Transplantation (EBMT), Beksac1 discussed taking this further to develop a scoring system to predict early relapse following auto-HSCT for patients with multiple myeloma (MM) in the EBMT database who were treated with 200 mg/m2 melphalan (Mel200) or 140 mg/m2 melphalan (Mel140).

Study design

From the EBMT database, 14,367 patients who had undergone auto-HSCT were selected and separated into a training cohort and a testing cohort.

The training cohort, also called cohort 1, consisted of 7,228 patients who underwent auto-HSCT between 2014 and 2017 and were conditioned with Mel200.

Possible factors analyzed for the prognostic model included the following:

  • Age
  • Sex
  • International Staging System (ISS)
  • Disease status
  • Karnofsky score at auto-HSCT
  • Duration between time of diagnosis and auto-HSCT

The testing cohort was divided into two external validation sets:

  • Cohort 2: Patients transplanted and treated with Mel200 between 2018 and 2019 (n = 5,616)
  • Cohort 3: Patients transplanted and treated with Mel140 between 2014 and 2019 (n = 1,523)

Results

The characteristics of cohorts 1 and 2 were almost identical; therefore, of these, only cohort 1 is shown in Table 1. Cohort 3 differed from the other two across multiple categories, including performance status and interval between diagnosis and auto-HSCT. In all cohorts, 11.7% of patients presented with high-risk cytogenetics, and the majority of patients had at least a partial response or better at time of transplantation.

Table 1. Comparison of cohorts*

Characteristic, %

Cohort 1:
Mel200 2014−2017

Cohort 3:
Mel140 2014−2019

p value

Sex

 

 

0.990

              Male

60.5

58.1

 

              Female

39.5

41.9

 

Age, years

 

 

0.958

              40−50

13.0

5.7

 

              50−60

39.5

18.2

 

              60−70

47.5

76.1

 

Time from diagnosis to auto-HSCT

 

 

0.046

              <6 months

42.1

36.8

 

              6−12 months

57.9

63.2

 

Disease status at auto-HSCT

 

 

<0.001

              CR

20.3

19.0

 

              VGPR

43.1

42.9

 

              PR

32.5

33.5

 

              SD/MR

2.5

2.6

 

              Rel/prog/prim refrac

1.6

1.9

 

ISS

 

 

0.178

              I

40.1

24.0

 

              II

34.4

30.5

 

              III

25.5

45.4

 

Karnofsky score at auto-HSCT

 

 

<0.001

              ≤70

5.5

8.1

 

              80

19.8

27.3

 

              90

40.9

40.7

 

              100

33.8

24.0

 

High-risk cytogenetics

 

 

<0.001

              No/unknown

88.3

88.3

 

              Yes

11.7

11.7

 

Tandem auto

 

 

<0.001

              No

88.2

83.9

 

              Yes

1.8

16.1

 

auto-HSCT, autologous hematopoietic stem cell transplant; CR, complete response; ISS, International Staging System; Mel140, 140 mg/m2 melphalan; Mel200, 200 mg/m2 melphalan; MR, minimal response; PR, partial response; prim refrac, primary refractory; prog, progression; rel, relapse; SD, stable disease; VGPR, very good partial response.
*Adapted from Beksac.1
The characteristics of cohorts 1 and 2 were almost identical; therefore, of these, only cohort 1 is shown.

Early relapse and PFS at 12 months are shown in Table 2 and are similar between groups.

Table 2. Cumulative incidence of early relapse and 12-month PFS*

Cohort

Early relapse, %

PFS, %

1: Training

14.7

84.1

2: Validation

11.6

88.2

3: Validation

16.9

80.3

PFS, progression free survival.
*Adapted from Beksac.1

Using Cox proportional hazard analysis, a scoring system was created with a score of 0−4. This score was created by assigning points according to each factors’ hazard ratio (HR), with higher points in factors associated with a higher risk of progression, i.e., higher HR. As shown in Figure 1, the sum of the score points is equal to the risk score, with the exception of scores ≥4, which give a risk score of 4.

Figure 1. Score calculation*

auto-HSCT, autologous hematopoietic stem cell transplantation; CR, complete response; HR, hazard ratio; ISS, International Staging System; MR, minimal response; PR, partial response; prog, progression; rel, relapse; SD, stable disease; VGPR, very good partial response.
*Adapted from Beksac.1

PFS was measured for each risk score within the three cohorts and was found to be significantly associated. The risk of relapse increased by 56% for every additional point in the score. In Table 3, the association between the score and the percentage of patients with early failure is shown across the three cohorts. The number of patients who experienced early failure increased in the subgroups with higher scores in all cohorts, showing the potential of this new scoring system as a prognostic factor.

Table 3. Score and early failure distribution across EBMT cohorts*

Patients, %

Score 0

Score 1

Score 2

Score 3

Score 4

Cohort 1 (Mel200 Training)

24

34

30

10

3

              Early failure

8.3

12.8

21.1

25.1

42.9

Cohort 2 (Mel200 Validation)

25

36

29

8

2

              Early failure

6.4

11.1

16.2

21.6

35.1

Cohort 3 (Mel140 Validation)

15

25

38

17

5

              Early failure

11

18.7

17.2

27.4

43.8

EBMT, European Society for Blood and Marrow Transplantation; Mel140, 140 mg/m2 melphalan; Mel200, 200 mg/m2 melphalan.
*Adapted from Beksac.1
Based on Kaplan-Meier estimates at 12 months.

High-risk patients were evaluated separately, but the same trend was seen in this subgroup as before, with higher scores of the model being associated with a decreased 12-month PFS. The score was found to be predictive of early- and long-term survival (PFS and overall survival probability at 05 years).

To evaluate the sensitivity and specificity of this scoring system to predict early relapse, a dichotomized score was used.

  • For patients with scores >1, this system has a specificity of 62% and a sensitivity of 60%.
  • For patients with scores >3, the specificity improved to 98%, and the sensitivity was 7%.

Conclusion

This novel scoring system was developed using the EBMT database of >14,000 patients and uses readily accessible information, such as the disease status or the ISS stage, to calculate the final score, which facilitates its application in the clinic. Patients are split into five categories according to their risk of early relapse after HSCT, and a significant association was seen between the score value and survival outcomes. This score can be widely implemented since it was calculated using data from patients who received different induction and conditioning regimens and included patients undergoing tandem transplantation.

Expert Opinion

Using the EBMT score model, <5% of patients experienced a relapse and allowed for the prediction of not just early relapse but also 3-year overall survival. Currently, the EBMT model is based on ISS performance due to its high predictive ability; however, the hope is to replace this with the revised ISS or even MRD assessment and guidance, which would provide greater value in larger patient cohorts.

  1. Beksac M. An early post-transplant relapse prediction score in multiple myeloma patients: a large cohort study from chronic malignancies working party of EBMT. Oral abstract #OS01-04. 48th Annual Meeting of the European Society for Blood and Marrow Transplantation. Mar 21, 2022; Virtual.

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