Microarray-based classifiers and prognosis models identify subgroups with distinct clinical outcomes and high risk of AML transformation of myelodysplastic syndrome

KI Mills, A Kohlmann, PM Williams… - Blood, The Journal …, 2009 - ashpublications.org
KI Mills, A Kohlmann, PM Williams, L Wieczorek, W Liu, R Li, W Wei, DT Bowen, H Loeffler…
Blood, The Journal of the American Society of Hematology, 2009ashpublications.org
The diagnosis of myelodysplastic syndrome (MDS) currently relies primarily on the
morphologic assessment of the patient's bone marrow and peripheral blood cells. Moreover,
prognostic scoring systems rely on observer-dependent assessments of blast percentage
and dysplasia. Gene expression profiling could enhance current diagnostic and prognostic
systems by providing a set of standardized, objective gene signatures. Within the Microarray
Innovations in LEukemia study, a diagnostic classification model was investigated to …
The diagnosis of myelodysplastic syndrome (MDS) currently relies primarily on the morphologic assessment of the patient's bone marrow and peripheral blood cells. Moreover, prognostic scoring systems rely on observer-dependent assessments of blast percentage and dysplasia. Gene expression profiling could enhance current diagnostic and prognostic systems by providing a set of standardized, objective gene signatures. Within the Microarray Innovations in LEukemia study, a diagnostic classification model was investigated to distinguish the distinct subclasses of pediatric and adult leukemia, as well as MDS. Overall, the accuracy of the diagnostic classification model for subtyping leukemia was approximately 93%, but this was not reflected for the MDS samples giving only approximately 50% accuracy. Discordant samples of MDS were classified either into acute myeloid leukemia (AML) or “none-of-the-targets” (neither leukemia nor MDS) categories. To clarify the discordant results, all submitted 174 MDS samples were externally reviewed, although this did not improve the molecular classification results. However, a significant correlation was noted between the AML and “none-of-the-targets” categories and prognosis, leading to a prognostic classification model to predict for time-dependent probability of leukemic transformation. The prognostic classification model accurately discriminated patients with a rapid transformation to AML within 18 months from those with more indolent disease.
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