Myelodysplastic syndromes (MDS)1 are included in the World Health Organization (WHO) classification of the myeloid neoplasms2 together with myeloproliferative neoplasms (MPN), myelodys-plastic/myeloproliferative neoplasms (MDS/MPN) and acute myeloid leukemia (AML).
Classifications of myelodysplastic syndromes
MDS were defined and classified in 1982 by the FAB group.3 The FAB classification included five categories: refractory anemia (RA), RA with ring sideroblasts (RARS), RA with excess of blasts (RAEB), RAEB “in transformation” (RAEB-t), and chronic myelomonocytic leukemia (CMML). This latter is now considered as a myelodysplastic/myelo-proliferative neoplasm, while RAEB-t is now classified as AML.4 Figure 1A provides a Kaplan-Meier analysis of overall survival in MDS patients classified according to the FAB classification. It is apparent that, from a prognostic point of view, this classification was essentially able to identify two risk groups based on the absence or presence of blast excess.
In 2001 the World Health Organization (WHO) classification was developed.5 This classification,6 carries relevant prognostic information. Figure 1B provides a Kaplan-Meier analysis of overall survival in MDS patients classified according to the 2008 WHO classification. It is apparent that, among patients without an excess of marrow blasts, the presence of bone marrow multilineage dysplasia is associated with a significantly worse prognosis compared to unilineage dysplasia. Despite some concern regarding the reproducibility of the assessment of multilineage dysplasia, its prognostic value was confirmed in different independent cohorts of patients in both retrospective7 and prospective8 studies, clearly indicating that this parameter must be included in the prognostic evaluation of MDS patients. Survival curves of Figure 1 support the conclusion that nowadays clinical decision making in MDS cannot rely upon the FAB classification and must be based on the WHO classification.9
Prognostic scoring systems for myelodysplastic syndromes
To overcome the limitations of the FAB classification, Greenberg and co-workers developed the International Prognostic Scoring System (IPSS).10 Although widely adopted, this scoring system does not consider the severity of anemia, in particular transfusion dependency,1 which represents one of the most important negative prognostic factors in MDS. Furthermore, it underestimates the negative impact of poor cytogenetics, especially relative to blast count.
The introduction of the WHO classification, excluding patients with 20% blasts or more and those with CMML from the category of MDS, considerably modified the composition of the MDS population and demanded a refinement of prognostic factors in patients diagnosed according to the WHO criteria. We found that WHO categories, cytogenetic pattern and transfusion dependency were the most powerful prognostic indicators, and developed a prognostic model that accounted for these parameters.11 This WHO classification-based prognostic scoring system (WPSS) was found to be able to classify patients into five risk groups showing different survivals and probabilities of leukemic evolution. Figure 2A provides survival curves of MDS patients stratified according to their WPSS risk. The WPSS was based on a time dependent model and, therefore, is a dynamic scoring system that can be applied to predict survival and leukemia progression at any time during follow up, and can, therefore, be used to implement risk-adapted treatment strategies.12 Figure 2B provides time-dependent Kaplan-Meier curves.
More recently, Kantarjian and co-workers13 also highlighted the limitations of the IPSS and analyzed 1,915 patients to propose and validate a new risk model for MDS. This model (MD Anderson Prognostic Scoring System, MPSS) refines the prognostic precision of the IPSS and is applicable to all patients with primary or secondary MDS and to those with CMML. However, the MPSS ignores the WHO classification and includes a bone marrow blast range up to 29% (i.e., up to values currently considered as diagnostic of AML). In addition, it takes into account poor cytogenetic abnormalities exclusively.
Novel MDS-related prognostic factors: the coming era of somatic mutations of genes involved in the pathogenesis of myeloid neoplasms
Clearly there are several other MDS-related prognostic factors that might be used for prognostication, including flow cytometry parameters.14–17
Bone marrow biopsy provides extremely useful diagnostic and prognostic information regarding cellularity, fibrosis, and CD34-positive cell topography.18 Bone marrow fibrosis identifies a distinct subgroup of MDS with multi-lineage dysplasia, high transfusion requirement and poor prognosis, while the presence of CD34 cell clusters is an independent risk factor for progression to acute leukemia.18 Bone marrow fibrosis can be included into the WPSS.12
However, the available evidence indicates that advances in our ability to define the prognosis of the individual patient with MDS will likely be made possible by a better understanding of the molecular basis of these neoplasms. Somatic mutations of TET2 represent a marker of clonal proliferation in MDS,19 but do not appear to be associated with any WHO category or to have prognostic relevance.20 By contrast, mutations of EZH221 or ASXL122 are found in patients with advanced disease, and point mutations of TP5323 or IDH1/IDH224 appear to be associated with leukemic evolution. Recently, Ebert and co-workers25 have studied the clinical impact of point mutations in a cohort of 438 patients with MDS. They found that mutations of RUNX1, TP53, and ASXL1 (present in 26.3% of samples) were independent predictors of decreased survival. These observations suggest that incorporation of somatic mutations may add important information to the risk stratification systems currently used in clinical practice. It is also possible that multilineage dysplasia, a morphological parameter that is extremely important from a prognostic point of view as shown in Figure 1B, can be better defined using molecular criteria.
Prognostic relevance of comorbidities in MDS patients
Most patients with MDS are elderly and typically have comorbid diseases.26,27 Several scoring models are currently available for taking into account comorbidity in a clinical setting. Their leit motiv is that the overall survival of patient populations decreases as the burden of comorbid illness increases, but, as underlined by Geraci et al.,28 most of them fail to provide information on the underlying mechanisms, e.g. on how a given comorbidity leads to reduced survival.
The aim of our study which is reported in this issue of the Journal29 was to develop a scoring model that accounts for comorbidities commonly found in MDS patients and to establish how these comorbid conditions affect survival. The findings of this study indicate that cardiac disease is the most important comorbid condition from a prognostic point of view, and that the negative interaction between this comorbid condition and severe anemia has a profound impact on survival of MDS patients, particularly in the lower risk groups according to disease-related criteria. In higher risk groups, in fact, severe anemia more likely signifies clonally advanced and biologically more aggressive disease.30
In addition, the MDS-specific comorbidity index (MDS-CI) considerably improves the prognostic stratification of MDS patients classified according to the WPSS. For instance, the median survival of patients belonging to the WPSS intermediate risk group may range from about one to more than eight years based on MDS-CI. Thus, our current approach to risk stratification in MDS includes assessment of WPSS to account for disease-related prognostic factors, MDS-CI to account for extra-hematologic comorbidities specifically related to MDS, and the hematopoietic cell transplantation (HCT)-specific comorbidity index (HCT-CI)31 for decision making concerning allogeneic transplantation.
Risk assessment in myelodysplastic/myeloproliferative neoplasms: the case of chronic myelomonocytic leukemia
Myelodysplastic/myeloproliferative neoplasms comprise chronic myelomonocytic leukemia, atypical chronic myeloid leukemia (BCR-ABL1 negative), juvenile myelomonocytic leukemia (JMML), and myelodysplas-tic/myeloproliferative neoplasms, unclassifiable.4 Attempts to define prognostic models have been made in CMML and JMML,32 and here I will consider the former condition.
In the 2008 WHO classification, CMML is subdivided into two categories: a) CMML-1, a condition with less than 5% blasts (including promonocytes) in the peripheral blood and less than 10% in the bone marrow; b) CMML-2, a condition with 5–19% blasts in the peripheral blood or 10–19% in the bone marrow, or in any case associated with the presence of Auer rods.
Some years ago, a study at the MD Anderson showed that anemia, presence of circulating immature myeloid cells, absolute lymphocyte count, and percentage of marrow blasts were independent prognostic factors in CMML, and these parameters were used to generate a prognostic score.33 More recently, these authors showed that the MPSS is a useful risk assessment tool not only for MDS but also for CMML.34
In this issue of the journal, Sanz and co-workers35 report on a study aimed to evaluate the prognostic impact of cytogenetic abnormalities in 414 patients with CMML included in the database of the Spanish Registry of Myelodysplastic Syndromes. Three cytogenetic risk categories were identified: low risk (normal karyotype or loss of Y chromosome as a single anomaly), high risk (presence of trisomy 8 or abnormalities of chromosome 7, or complex karyotype), and intermediate risk (all other abnormalities). Additional prognostic factors for survival included anemia, leukocytosis, thrombocytopenia and blast excess, while the only factor independently associated with leukemic transformation was leukocytosis. Validating these observations in different patient populations and then translating them into a scoring system may provide clinicians with a useful prognostic model. A recent study indicates that somatic mutations of a number of genes including TET2, CBL, KRAS, NRAS, JAK2, and RUNX1 are found in most patients with CMML, suggesting that they may also have prognostic relevance.36
Conclusions
Analysis of the available evidence clearly indicates that three parameters retain independent prognostic relevance in MDS and CMML: 1) hemoglobin level; 2) proportion of marrow blasts; and 3) cytogenetic abnormalities. Severe anemia may derive from ineffective erythropoiesis (excessive apoptosis of immature red cells) in low-risk MDS, where it can interact with cardiac disease, or from impaired erythroid differentiation in high-risk MDS and CMML. Defining the molecular basis of both mechanisms of anemia might allow novel molecular prognostic markers and perhaps innovative therapeutic tools. Blast excess indicates impaired differentiation of hematopoietic progenitors and, therefore, reflects bone marrow failure. Finally, cytogenetic abnormalities reflect different genetic mechanisms responsible for clonal proliferation and leukemic transformation.
In MDS, the distinction between unilineage (in most instances erythroid) and multilineage dysplasia is of crucial importance for risk assessment, and hopefully will be soon made easier by molecular parameters.
Footnotes
- Mario Cazzola is Professor of Hematology at the University of Pavia Medical School and Head, Division of Hematology, Fondazione IRCCS Policlinico San Matteo, Pavia, Italy. His studies on myelodysplastic syndromes and myeloproliferative neoplasms are supported by AIRC (Associazione Italiana per la Ricerca sul Cancro) and Fondazione Cariplo, Milan, Italy.
- Related Original Article on pages 375 and 441
- Financial and other disclosures provided by the author using the ICMJE (www.icmje.org) Uniform Format for Disclosure of Competing Interests are available with the full text of this paper at www.haematologica.org.
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