Abstract

Single-cell network profiling (SCNP) data generated from multi-parametric flow cytometry analysis of bone marrow (BM) and peripheral blood (PB) samples collected from patients >55 years old with non-M3 AML were used to train and validate a diagnostic classifier (DXSCNP) for predicting response to standard induction chemotherapy (complete response [CR] or CR with incomplete hematologic recovery [CRi] versus resistant disease [RD]). SCNP-evaluable patients from four SWOG AML trials were randomized between Training (N = 74 patients with CR, CRi or RD; BM set = 43; PB set = 57) and Validation Analysis Sets (N = 71; BM set = 42, PB set = 53). Cell survival, differentiation, and apoptosis pathway signaling were used as potential inputs for DXSCNP. Five DXSCNP classifiers were developed on the SWOG Training set and tested for prediction accuracy in an independent BM verification sample set (N = 24) from ECOG AML trials to select the final classifier, which was a significant predictor of CR/CRi (area under the receiver operating characteristic curve AUROC = 0.76, p = 0.01). The selected classifier was then validated in the SWOG BM Validation Set (AUROC = 0.72, p = 0.02). Importantly, a classifier developed using only clinical and molecular inputs from the same sample set (DXCLINICAL2) lacked prediction accuracy: AUROC = 0.61 (p = 0.18) in the BM Verification Set and 0.53 (p = 0.38) in the BM Validation Set. Notably, the DXSCNP classifier was still significant in predicting response in the BM Validation Analysis Set after controlling for DXCLINICAL2 (p = 0.03), showing that DXSCNP provides information that is independent from that provided by currently used prognostic markers. Taken together, these data show that the proteomic classifier may provide prognostic information relevant to treatment planning beyond genetic mutations and traditional prognostic factors in elderly AML.

Highlights

  • In “elderly” AML populations, the complete remission (CR) rate in response to standard-dose cytarabine (Ara-C)-based induction chemotherapy ranges from 35 to 50% depending on the study, while the rate of treatment-related mortality (TRM) ranges from 15–20% [1], [2]

  • The current study presents the development and validation of a Single-cell network profiling (SCNP) classifier (DXSCNP) for the prediction of response to Ara-C-based induction chemotherapy in elderly (> 55 year old) patients with newly diagnosed AML

  • The study used cryopreserved pretreatment bone marrow (BM) and peripheral blood (PB) samples collected from two groups of AML patients: patients enrolled in SWOG studies and patients enrolled in ECOG studies

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Summary

Introduction

In “elderly” AML populations (typically defined by age >55 or >65 years), the complete remission (CR) rate in response to standard-dose cytarabine (Ara-C)-based induction chemotherapy ranges from 35 to 50% depending on the study, while the rate of treatment-related mortality (TRM) ranges from 15–20% [1], [2]. Considerable effort has gone into creating models based on clinical parameters, cytogenetics and molecular testing to predict response [2], [5]. Technologies such as FISH and rapid molecular testing aim at making established diagnostic methods (such as cytogenetics and detection of leukemogenic mutations) which can assist in the risk classification and prognostication of AML available to patients earlier in the diagnostic process. In community practice and non-academic treatment centers where a considerable proportion of elderly AML patients are treated, cytogenetic and molecular test results are not always available at the time of the initiation of induction therapy [6]due to a longer turn-around time between sample acquisition and availability of results

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