Literature DB >> 32414853

Validation of the revised myeloma comorbidity index and other comorbidity scores in a multicenter German study group multiple myeloma trial.

Sandra Maria Dold1,2,3, Mandy-Deborah Möller1,3, Gabriele Ihorst4, Christian Langer5, Wolfram Pönisch6, Lars-Olof Mügge7,8, Stefan Knop9, Johannes Jung1,3, Christine Greil1,3, Ralph Wäsch1,3, Monika Engelhardt1,3.   

Abstract

Entities:  

Year:  2021        PMID: 32414853      PMCID: PMC7928005          DOI: 10.3324/haematol.2020.254235

Source DB:  PubMed          Journal:  Haematologica        ISSN: 0390-6078            Impact factor:   9.941


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In the past decade, the survival of patients with multiple myeloma (MM) has improved significantly. This encouraging progress has been driven by deeper biological insights, implementation of more sensitive diagnostic tests leading to earlier diagnosis, access to more effective therapies and better supportive care.[1] MM typically affects elderly patients, who are less likely to endure treatment and who have a less favorable long-term prognosis. [2] Moreover, accompanying diseases may complicate anti-myeloma treatment.[1] In general, comorbidities have been shown to influence cancer patients' general health status, limit their physical condition, and worsen their progression-free and overall survival.[3,4] Therefore, with the growing number of elderly (and frail) MM patients, reliable tools to assess patients' vulnerability, as expressed by chronic conditions and limitations in daily activities, are wanted to guide us through today’s multiple possible therapeutic options.[5,6] Historically, treatment decisions for symptomatic MM patients were age-based. Ideally nowadays disease biology and fitness, including patients' Karnofsky Performance Status (KPS) or Eastern Cooperative Oncology Group Performance Status (ECOG-PS), are considered when assessing therapeutic options.[5] However, KPS and ECOG-PS are often overestimated and may not reflect patients’ entire functional status.[4,6] We and others have learnt from re-scoring cancer patients that initially estimated KPS and ECOG-PS scores, measured by physicians and health staff, are often claimed to be much better than those determined by objective definition and the patientsactual fitness status. In a prior analysis, we rescored the KPS in approximately 500 MM patients who had appeared, according to the physicians' initial estimate, almost uncompromised with a median score of 90%, but on re-scoring had scores 30% lower than initially presumed.[4,6] More objective parameters to assess patients' PS and fitness are therefore warranted. Moreover, since elderly MM patients are often excluded from clinical trials due to strict inclusion criteria,[7] trial results typically reflect <10% of 'real-world patients' and are less well transferable to elderly patients.[8,9] In this context, the International Myeloma Working Group (IMWG), European Myeloma Network (EMN) and others (Deutsche Studiengruppe Multiples Myelom [DSMM], German-Speaking Myeloma Multicenter Group [GMMG], Intergroupe Francophone du Myélome [IFM], Hemato-Oncology Foundation for Adults in the Netherlands [HOVON], Scandinavian and UK study groups) recommended that physical condition and comorbidities should be included in therapy decisions. [5,10,11] Risk scores for MM have included diseaserelated risks (scores of the International Staging System and its Revision [ISS/R-ISS], lactate dehydrogenase concentration, cytogenetics and, recently, comorbidity screening tests (Revised Myeloma Comorbidity Index [RMCI], IMWG-frailty score and others).[5,11-13] Prior test[14] and repeated independent validation analyses[4,15] established the IMWG-frailty score and R-MCI in MM,[6,11-13] and enable the objective designation of fit, intermediatefit and frail groups of patients with substantially different progression-free and overall survival rates. The intention of this multicenter analysis was the prospective validation of the R-MCI and comorbidity scores in five EMN/DSMM study sites (Universities of Freiburg [UKF], Würzburg [UW], Ulm [UU], Jena [UJ], and Leipzig [UL]). The external centers we chose for this multicenter analysis had to be: (i) equally large as ours (i.e., UKF); (ii) treat similar numbers of MM patients; and (iii) use identical DSMM study protocols. Of the centers we visited, the UW, UU, UJ and UL met these criteria. The aims of the study were to assess possible differences in: (i) patient and disease characteristics; (ii) comorbidity scores (RMCI, IMWG-frailty score, Charlson Comorbidity Index [CCI]); and (iii) simple, functional fitness tests (Tables 1 and 2). The evaluation of whether comorbidity scores and a brief selection of fitness tests allow more precise detection of group variations in different centers, rather than that determined via patients’ characteristics such as age and stage alone, was performed because previously postulated as highly relevant.[11,16]
Table 1.

Baseline characteristics of the entire cohort of patients and of the Freiburg versus multicenter cohorts.

Table 2.

Revised Myeloma Comorbidity Index classification and parameters for the entire cohort of patients, and the Freiburg and multicenter cohorts.

Distribution of fitness status according to the different comorbidity scores in the different cohorts. (A) According to the Revised Myeloma Comorbidity Score (R-MCI), 33% of the entire cohort (n=284) were fit, 56% were intermediate-fit and 11% were frail. (B) According to the Charlson Comorbidity Index (CCI), 41% of the entire cohort (n=284) were fit, 51% were intermediate-fit and 8% were frail. (C) According to the International Myeloma Working Group (IMWG) frailty score, 27% of the entire cohort (n=284) were fit, 38% were intermediate-fit and 35% were frail. (D) According to the R-MCI, 27% of the Freiburg cohort were fit, 61% were intermediate-fit and 12% were frail. The corresponding percentages for the multicenter cohort were 62%, 34% and 4%. (E) According to the CCI, 43% of the Freiburg cohort were fit, 53% were intermediate-fit and 4% were frail. The corresponding percentages for the multicenter cohort were 33%, 44% and 23%. (F) The IMWG frailty score determined that 26% of the Freiburg cohort were fit, 33% were intermediate-fit and 41% were frail. The corresponding percentages for the multicenter cohort were 31%, 60% and 9%. Baseline characteristics of the entire cohort of patients and of the Freiburg versus multicenter cohorts. This prospective, multicenter assessment was performed in 284 consecutive MM patients at the time of initial diagnosis or first presentation at five DSMM/EMN centers between July 2015 and March 2016. The cohort was assessed as a whole and in a subgroup analysis, in which the UKF cohort (n=232) was compared to the multicenter cohort (UW, UU, UJ, UL; n=52). Age, gender, disease characteristics, R-MCI, IMWG-frailty score, CCI and functional geriatric tests were assessed. Frailty, determined via: (i) KPS <70%; (ii) physician-rated fitness grade 5 or 6 (=dismal); (iii) timed-up-and-go-test (TUGT) >10 seconds; and/or (iv) instrumental activities of daily living (IADL) ≤4, as described elsewhere,[12,13,17] was scored as no/mild with 0/1, moderate with 2, or severe with >2 of parameters (i) – (iv) (Table 1). Due to logistics, allowing a time-restricted assessment in the external EMN/DSMM centers (UW, UU, UJ, UL: 1 week each), the multicenter cohort reflected primarily outpatients and the UKF cohort both in- and outpatients. The assessment was consistently performed by the same person (SMD).[6,12,13] Detailed methods and the definition of risk scores are described in Online Supplementary Tables S1 and S2. Revised Myeloma Comorbidity Index classification and parameters for the entire cohort of patients, and the Freiburg and multicenter cohorts. The patients’ characteristics of the entire cohort (n=284) and both the UKF (n=232) and multicenter (n=52) cohorts were typical for tertiary centers and fairly similar. Advanced MM stages, according to the Durie & Salmon staging system and the ISS, and renal function (assessed by the estimated glomerular filtration rate) were somewhat more favorable in the multicenter cohort than in the UKF one. Age, KPS, bone marrow plasma cells and cytogenetics were comparable in the two groups (Table 1). In all 284 MM patients, the R-MCI, IMWG-frailty score, CCI and other functional tests (Table 1) were expeditiously assessable. The R-MCI confirmed that patients in the multicenter cohort were fitter than those in the UKF cohort with a mean score of 3 versus 4, respectively. In contrast, according to the IMWG-frailty score, there was no difference, with a mean of 1 in both cohorts. It is noteworthy that the IMWG-frailty score and CCI were increased in this prospective analysis compared to the prior IMWG description,[11] confirming our previous, prospective validation analysis of the R-MCI and IMWGfrailty score.[12] Frailty and functional tests confirmed that patients were fitter in the multicenter cohort than in the UKF cohort with regards to severe frailty (6% vs. 19%), and mean activities of daily living (ADL) score (6 vs. 5), IADL score (8 vs. 7), physician-rated fitness (2 vs. 3) and TUGT results (10 s vs. 12 s; respectively) (Table 1). We also assessed and compared the patients’ characteristics and functional differences in the three R-MCI subgroups of fit (R-MCI 0-3), intermediate-fit (R-MCI 4-6) and frail (R-MCI 7-9) patients of the entire, UKF and multicenter cohorts (Table 2). We considered patients’ characteristics (age, KPS), MM risk factors (renal function, bone marrow plasma cells), frailty scores and functional fitness tests separately for intermediate-fit and frail patients as compared to fit patients. This confirmed that single R-MCI components and the R-MCI itself were of relevance to defining risks in both the UKF and multicenter cohorts.[6,12] Comparison of the fit, intermediate-fit and frail R-MCI subgroups in the multicenter vs. UKF cohorts confirmed that there more fitter (62% vs. 27%) and fewer frail patients (4% vs. 12%) in the former than the latter cohort. The differences between the two cohorts were more impressive for risk scores (frailty, CCI, IMWG) and functional tests (ADL/IADL, physician-rated fitness, TUGT) than for age, KPS, renal function or bone marrow plasma cell results (Table 2). We also compared the frequencies of fit, intermediatefit and frail patients identified directly via the R-MCI, CCI and IMWG-frailty score (Figure 1A-F): according to the R-MCI, 33% of the entire cohort were considered fit, 56% intermediate-fit and 11% frail (Figure 1A). Similarly, according to the CCI, 41% were fit, 51% intermediate-fit and 8% frail (Figure 1B), whereas according to the IMWG-frailty score, 27% were fit, 38% intermediate-fit and 35% frail (Figure 1C). The allocation into fit, intermediate- fit and frail patients was consequently comparable via the R-MCI and CCI, whereas the IMWG-frailty score identified fewer intermediate-fit and more frail patients (Figure 1A-C).[3,11,13]
Figure 1.

Distribution of fitness status according to the different comorbidity scores in the different cohorts. (A) According to the Revised Myeloma Comorbidity Score (R-MCI), 33% of the entire cohort (n=284) were fit, 56% were intermediate-fit and 11% were frail. (B) According to the Charlson Comorbidity Index (CCI), 41% of the entire cohort (n=284) were fit, 51% were intermediate-fit and 8% were frail. (C) According to the International Myeloma Working Group (IMWG) frailty score, 27% of the entire cohort (n=284) were fit, 38% were intermediate-fit and 35% were frail. (D) According to the R-MCI, 27% of the Freiburg cohort were fit, 61% were intermediate-fit and 12% were frail. The corresponding percentages for the multicenter cohort were 62%, 34% and 4%. (E) According to the CCI, 43% of the Freiburg cohort were fit, 53% were intermediate-fit and 4% were frail. The corresponding percentages for the multicenter cohort were 33%, 44% and 23%. (F) The IMWG frailty score determined that 26% of the Freiburg cohort were fit, 33% were intermediate-fit and 41% were frail. The corresponding percentages for the multicenter cohort were 31%, 60% and 9%.

When comparing the R-MCI, CCI and IMWG-frailty score allocations in the UKF versus multicenter cohorts (Figure 1D-F), the R-MCI identified more fitter patients (27% vs. 62%, respectively) and fewer intermediate-fit and frail patients in the multicenter cohort (Figure 1D). According to the CCI assessment, the differences between the UKF and multicenter cohorts were least marked for fit and intermediate-fit patients with 43% versus 33% and 52% versus 44%, respectively, but substantial for frail patients with the allocation being 4% versus 23%, respectively. Via the CCI, more multicenter than UKF patients were unsustainably defined as frail (Figure 1E), which did not reflect the results of the patients’ characteristics (Table 1A and B) or the R-MCI-defined group differences (Figure 1D). When comparing subgroups of fit, intermediate and frail patients via the IMWG-frailty score (Figure 1F), we observed a similar proportion of fit patients in the UKF versus multicenter cohorts (26% vs. 31%), fewer intermediate- fit patients (33% vs. 60%) and more frail patients (41% vs. 9%, respectively), with the largest proportion of UKF patients being misguidedly assigned to the frail subgroup. Since the allocations via the IMWG-frailty score in the UKF versus multicenter cohorts were very different from those via the R-MCI and CCI, a difference which had already been perceivable in the comparison of the entire cohort of MM patients (Figure 1A-C), we postulate that the IMWG-frailty score overestimates frail patients when prospectively assessed (as here). This was most apparent when the proportions of frail patients defined by the different scores were compared, since this proportion was four times greater with the IMWG-frailty score than with the R-MCI in the UKF group (41% vs. 12%, respectively) (Figure 1C and E) and, again in the UKF group, ten times greater with the IMWG-frailty score than with the CCI (41% vs. 4%, respectively) (Figure 1D and E). Since IMWG-frailty scores in the UKF and in the multicenter cohorts did not differ (mean: 1) and the CCI was higher in the latter (2 vs. 3, respectively) (Table 1), the R-MCI was of interest and verified cohort differences (4 vs. 3, respectively). Moreover, the R-MCI was in line with all functional/frailty tests (Table 1). Thus, the R-MCI and functional fitness tests confirmed greater fitness in the multicenter cohort than in the UKF cohort, and the comparative analysis of results from five DSMM/EMN myeloma centers showed that a risk score and functional assessment may indeed help to better define patients’ differences. Fitter patients in the multicenter compared to the UKF cohort were best clarified via R-MCI and only this score was consistently in line with frailty, ADL/IADL, physician-rated fitness and TUGT results. The strength of this study was the prospective assessment in the five EMN/DSMM centers. Furthermore, frailty and functional assessments were done by the same skilled person in all centers, which excluded differences in handling the patients’ assessment and data acquisition. The R-MCI was compared with the IMWG-frailty score, CCI and fitness tests, the former including a few comorbid conditions that are readily obtainable from the collection of the medical history and were obtained from the multivariate risk analysis of a large prospective sample. [6,12,13,18,19] Additional advantages of the R-MCI are that it: (i) allows more accurate assessment of physical conditions than via clinical judgment, age or KPS/ECOG alone; (ii) precisely divides patients into fit, intermediate-fit and frail patients with different progression-free and overall survival risks;[12,13,18,19] (iii) allows the inclusion of biological risks, namely cytogenetics; and (iv) consistently divides risk groups of R-MCI 0-3 (=fit), 4-6 (=intermediate-fit) and R-MCI 7-9 (=frail) patients, irrespective of age and treatment (i.e. <65/≥65; <70/≥70; or <75/≥75 years, and with/without novel agents or with/without transplantation; as reported elsewhere[12,13,18,19]) A limitation of the present study was the application of different anti-myeloma therapies (typically bortezomib, cyclophosphamide, dexamethasone or bortezomib, lenalidomide, dexamethasone). It is, however, worth noting that in prior analyses, we demonstrated that the RMCI distinguished highly significant risk groups despite different anti-myeloma treatments,[12,13] a finding confirmed by others.[5,11,20] Another criticism that could be raised concerns the limited number of patients in the multicenter cohort, which was a consequence of our time-restricted assessment in each of the external EMN/DSMM centers (Würzburg, Ulm, Jena and Leipzig). Our results do, therefore, warrant even larger confirmatory analyses. In conclusion, based on existing recommendations, the R-MCI can be applied in routine clinical care, multicenter analyses and future clinical trials. It may also be used in research to compare risk profiles of MM cohorts, to adjust for imbalanced risk profiles and to provide a basis to establish new clinical or biological prognostic factors.[6] We use the R-MCI for both clinical trial and non-trial patients and in our MM-tumor assessment, in which the R-MCI is immediately scored by those who see and treat the patient. In the future, the R-MCI may help to support treatment decisions, improve treatment tolerability and avoid toxicity.[21] Since any prospective comorbidity, frailty and disability evaluation in MM can be time-consuming, we have implemented the R-MCI within a web-based technology application ().[6] Moreover, with the present study we have verified that comorbidity score analyses can be similarly and swiftly performed at other centers, that these scores add to the description of a population of patients, compared to that provided by the patients’ characteristics alone (Table 1), and that the scores may show substantial differences between centers (Table 2). The comparative analysis of different comorbidity scores (R-MCI, CCI, IMWG-frailty score) in the entire cohort is best illustrated in Figure 1AC, in which the application of different scores resulted in substantial differences in proportions of fit versus frail MM patients. This was of interest because one might have postulated, contrarily, that the entire prospective MM cohort with 284 patients would have consisted of very similar proportions of fit, intermediate-fit and frail patients with each score. This difference between proportions, namely between fit versus frail patients, was most striking when the Freiburg and multicenter cohorts were compared (Figure 1D-F). We therefore demonstrate that the R-MCI is a useful tool to assess the fitness status of MM patients and can be implemented into MM care at different centers. It was prospectively compared to two other comorbidity scores often used in MM; i.e., the IMWG frailty score, which has the CCI implemented therein. With five multivariate risk factors (vs. age, ADL, IADL and CCI [this last with 18 factors that need to be assessed]), the R-MCI is convenient to use.
  21 in total

Review 1.  Patient-centered practice in elderly myeloma patients: an overview and consensus from the European Myeloma Network (EMN).

Authors:  Alessandra Larocca; Sandra Maria Dold; Sonja Zweegman; Evangelos Terpos; Ralph Wäsch; Mattia D'Agostino; Sophia Scheubeck; Hartmut Goldschmidt; Francesca Gay; Michele Cavo; Heinz Ludwig; Christian Straka; Sara Bringhen; Holger W Auner; Jo Caers; Martin Gramatzki; Massimo Offidani; Meletios A Dimopoulos; Hermann Einsele; Mario Boccadoro; Pieter Sonneveld; Monika Engelhardt
Journal:  Leukemia       Date:  2018-04-25       Impact factor: 11.528

2.  Geriatric assessment predicts survival and toxicities in elderly myeloma patients: an International Myeloma Working Group report.

Authors:  Antonio Palumbo; Sara Bringhen; Maria-Victoria Mateos; Alessandra Larocca; Thierry Facon; Shaji K Kumar; Massimo Offidani; Philip McCarthy; Andrea Evangelista; Sagar Lonial; Sonja Zweegman; Pellegrino Musto; Evangelos Terpos; Andrew Belch; Roman Hajek; Heinz Ludwig; A Keith Stewart; Philippe Moreau; Kenneth Anderson; Hermann Einsele; Brian G M Durie; Meletios A Dimopoulos; Ola Landgren; Jesus F San Miguel; Paul Richardson; Pieter Sonneveld; S Vincent Rajkumar
Journal:  Blood       Date:  2015-01-27       Impact factor: 22.113

3.  A new method of classifying prognostic comorbidity in longitudinal studies: development and validation.

Authors:  M E Charlson; P Pompei; K L Ales; C R MacKenzie
Journal:  J Chronic Dis       Date:  1987

4.  Daratumumab plus Lenalidomide and Dexamethasone for Untreated Myeloma.

Authors:  Thierry Facon; Shaji Kumar; Torben Plesner; Robert Z Orlowski; Philippe Moreau; Nizar Bahlis; Supratik Basu; Hareth Nahi; Cyrille Hulin; Hang Quach; Hartmut Goldschmidt; Michael O'Dwyer; Aurore Perrot; Christopher P Venner; Katja Weisel; Joseph R Mace; Noopur Raje; Michel Attal; Mourad Tiab; Margaret Macro; Laurent Frenzel; Xavier Leleu; Tahamtan Ahmadi; Christopher Chiu; Jianping Wang; Rian Van Rampelbergh; Clarissa M Uhlar; Rachel Kobos; Ming Qi; Saad Z Usmani
Journal:  N Engl J Med       Date:  2019-05-30       Impact factor: 91.245

5.  Daratumumab plus Bortezomib, Melphalan, and Prednisone for Untreated Myeloma.

Authors:  María-Victoria Mateos; Meletios A Dimopoulos; Michele Cavo; Kenshi Suzuki; Andrzej Jakubowiak; Stefan Knop; Chantal Doyen; Paulo Lucio; Zsolt Nagy; Polina Kaplan; Ludek Pour; Mark Cook; Sebastian Grosicki; Andre Crepaldi; Anna M Liberati; Philip Campbell; Tatiana Shelekhova; Sung-Soo Yoon; Genadi Iosava; Tomoaki Fujisaki; Mamta Garg; Christopher Chiu; Jianping Wang; Robin Carson; Wendy Crist; William Deraedt; Huong Nguyen; Ming Qi; Jesus San-Miguel
Journal:  N Engl J Med       Date:  2017-12-12       Impact factor: 91.245

Review 6.  Personalized therapy in multiple myeloma according to patient age and vulnerability: a report of the European Myeloma Network (EMN).

Authors:  Antonio Palumbo; Sara Bringhen; Heinz Ludwig; Meletios A Dimopoulos; Joan Bladé; Maria V Mateos; Laura Rosiñol; Mario Boccadoro; Michele Cavo; Henk Lokhorst; Sonja Zweegman; Evangelos Terpos; Faith Davies; Christoph Driessen; Peter Gimsing; Martin Gramatzki; Roman Hàjek; Hans E Johnsen; Fernando Leal Da Costa; Orhan Sezer; Andrew Spencer; Meral Beksac; Gareth Morgan; Hermann Einsele; Jesus F San Miguel; Pieter Sonneveld
Journal:  Blood       Date:  2011-08-12       Impact factor: 22.113

Review 7.  Management of elderly and frail elderly cancer patients: the importance of comprehensive geriatrics assessment and the need for guidelines.

Authors:  Marco Ruiz; Tom Reske; Charles Cefalu; John Estrada
Journal:  Am J Med Sci       Date:  2013-07       Impact factor: 2.378

Review 8.  How I treat fragile myeloma patients.

Authors:  Alessandra Larocca; Antonio Palumbo
Journal:  Blood       Date:  2015-08-31       Impact factor: 22.113

9.  A concise revised Myeloma Comorbidity Index as a valid prognostic instrument in a large cohort of 801 multiple myeloma patients.

Authors:  Monika Engelhardt; Anne-Saskia Domm; Sandra Maria Dold; Gabriele Ihorst; Heike Reinhardt; Alexander Zober; Stefanie Hieke; Corine Baayen; Stefan Jürgen Müller; Hermann Einsele; Pieter Sonneveld; Ola Landgren; Martin Schumacher; Ralph Wäsch
Journal:  Haematologica       Date:  2017-02-02       Impact factor: 9.941

10.  Structured assessment of frailty in multiple myeloma as a paradigm of individualized treatment algorithms in cancer patients at advanced age.

Authors:  Monika Engelhardt; Gabriele Ihorst; Jesus Duque-Afonso; Ulrich Wedding; Ernst Spät-Schwalbe; Valentin Goede; Gerald Kolb; Reinhard Stauder; Ralph Wäsch
Journal:  Haematologica       Date:  2020-04-02       Impact factor: 9.941

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Authors:  Monika Engelhardt; Gabriele Ihorst; Martin Schumacher; Michael Rassner; Laura Gengenbach; Mandy Möller; Khalid Shoumariyeh; Jakob Neubauer; Juliane Farthmann; Georg Herget; Ralph Wäsch
Journal:  BMC Cancer       Date:  2021-02-17       Impact factor: 4.430

2.  Clinical characteristics and outcome of multiple myeloma patients with concomitant COVID-19 at Comprehensive Cancer Centers in Germany.

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Journal:  Haematologica       Date:  2020-07-30       Impact factor: 9.941

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