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WGAN Latent Space Embeddings for Blast Identification in Childhood Acute Myeloid Leukaemia

机译:WAN WAN潜在空间嵌入儿童急性髓性白血病儿童急性爆炸鉴定

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Acute Myeloid Leukaemia (AML) is a rare type of childhood acute leukaemia. During treatment, the assessment of the number of cancer cells is particularly important to determine treatment response and consequently adapt the treatment scheme if necessary. Minimal Residual Disease (MRD) is a diagnostic measure based on Flow CytoMetry (FCM) data that captures the amount of blasts in a blood sample and is a clinical tool for planning patients' individual therapy, which requires reliable blast identification. In this work we propose a novel semi-supervised learning approach, which is acquired whenever large amounts of unlabeled data and only a small amount of annotated data is available. The proposed semi-supervised learning approach is based on Wasserstein Generative Adversarial Network (WGAN) latent space embeddings learned in an unsupervised fashion and a simple Fully connected Neural Network (FNN) trained on labeled data leveraging the learned embedding. We apply our proposed learning approach for semi-supervised classification of blasts vs. non-blasts. We compare our approach with two baseline approaches, 1) semi-supervised learning based on Principal Component Analysis (PCA) embedding, and 2) a deep FNN that is trained only on the annotated data without leveraging an embedding. Results suggest that our proposed semi-supervised WGAN embedding outperforms semi-supervised learning based on PCA embeddings and if only small amounts of annotated data is available it even outperforms an FNN classifier.
机译:急性髓性白血病(AML)是一种罕见的儿童急性白血病。在治疗过程中,癌细胞数量的评估对于确定治疗响应尤为重要,因此如有必要,适应治疗方案。最小的残留疾病(MRD)是基于流式细胞术(FCM)数据的诊断测量,其捕获血液样本中的爆炸量,是规划患者个体治疗的临床工具,这需要可靠的BLAST识别。在这项工作中,我们提出了一种新的半监督学习方法,每当大量未标记的数据并且只有少量注释数据获得。拟议的半监督学习方法是基于Wassersein生成的对冲网络(WAN)以无监督的方式学习的潜在空间嵌入,并且在标记数据上培训的简单完全连接的神经网络(FNN),利用所学习的嵌入。我们应用我们提出的爆炸与非爆炸分类的学习方法。我们将我们的方法与两个基线方法进行了比较,1)基于主成分分析(PCA)嵌入的半监督学习,并且2)仅在注释数据上培训的深FNN,而不会利用嵌入。结果表明,我们提出的半监督WGAN嵌入优于基于PCA嵌入的半监督学习,如果只提供少量注释数据,甚至优于FNN分类器。

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