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Application of Machine Learning for Automatic MRD Assessment in Paediatric Acute Myeloid Leukaemia

机译:机器学习在儿科急性髓性白血病中自动MRD评估的应用

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Acute Myeloid Leukaemia (AML) is a rare type of blood cancer in children. This disease originates from genetic alterations of hematopoetic progenitor cells, which are involved in the hematopoiesis process, and leads to the proliferation of undifferentiated (leukaemic) cells. Flow CytoMetry (FCM) measurements enable the assessment of the Minimal Residual Disease (MRD), a value which clinicians use as powerful predictor for treatment response and diagnostic tool for planning patients' individual therapy. In this work we propose machine learning applications for the automatic MRD assessment in AML. Recent approaches focus on child-hood Acute Lymphoblastic Leukaemia (ALL), more common in this population. We perform experiments regarding the performance of state-of-the-art algorithms and provide a novel GMM formulation to estimate leukaemic cell populations by learning background (non-cancer) populations only. Additionally, combination of backgrounds of different leukaemia types are evaluated regarding their ability to predict MRD in AML. The results suggest that background populations and combinations of these are suitable to assess MRD in AML.
机译:急性髓系白血病(AML)是儿童一种罕见的血液癌症。这种疾病源自从造血祖细胞,其参与造血过程的遗传改变,并导致未分化(白血病)细胞的增殖。流式细胞仪(FCM)测量使微小残留病(MRD),其中临床医生强大的预测治疗反应和规划病人的个体化治疗的诊断工具使用的评估价值。在这项工作中,我们提出了在AML自动MRD评估机器学习应用。最近方法的重点是儿童引擎盖急性淋巴细胞白血病(ALL),在这一人群中更为常见。我们执行关于的状态的最先进的算法的性能的实验和提供一种新颖的GMM制剂通过学习背景(非癌症)仅种群来估计白血病细胞群。此外,不同类型白血病的背景的组合进行评估对他们的预测MRD在AML能力。结果表明,背景人群和这些的组合是合适的,以评估在MRD AML。

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