Leukocyte classification for acute lymphoblastic leukemia timely diagnosis by interpretable artificial neural network

A. Sbrollini, Selene Tomassini, Ruba Sharaan, M. Morettini, A. Dragoni, L. Burattini
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Abstract

Leukemia is a blood cancer characterized by leukocyte overproduction. Clinically, the reference for acute lymphoblastic leukemia diagnosis is a blood biopsy that allows obtain microscopic images of leukocytes, whose early-stage classification into leukemic (LEU) and healthy (HEA) may be disease predictor. Thus, the aim of this study is to propose an interpretable artificial neural network (ANN) for leukocyte classification to timely diagnose acute lymphoblastic leukemia. The “ALL_IDB2” dataset was used. It contains 260 microscopic images showing leukocytes acquired from 130 LEU and 130 HEA subjects. Each microscopic image shows a single leukocyte that was characterized by 8 morphological and 4 statistical features. An ANN was developed to distinguish microscopic images acquired from LEU and HEA subjects, considering 12 features as inputs and the local-interpretable model-agnostic explanatory (LIME) algorithm as an interpretable post-processing algorithm. The ANN was evaluated by the leave-one-out cross-validation procedure. The performance of our ANN is promising, presenting a testing area under the curve of the receiver operating characteristic equal to 87%. Being implemented using standard features and having LIME as a post-processing algorithm, it is clinically interpretable. Therefore, our ANN seems to be a reliable instrument for leukocyte classification to timely diagnose acute lymphoblastic leukemia, guaranteeing a high clinical interpretability level.
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可解释人工神经网络在急性淋巴细胞白血病白细胞分类中的应用
白血病是一种以白细胞过多为特征的血癌。临床上,急性淋巴细胞白血病诊断的参考是血液活检,可以获得白细胞的显微镜图像,其早期分为白血病(LEU)和健康(HEA)可能是疾病的预测指标。因此,本研究的目的是提出一种可解释的人工神经网络(ANN)用于白细胞分类,以及时诊断急性淋巴细胞白血病。使用“ALL_IDB2”数据集。它包含260个显微镜图像,显示了130个LEU和130个HEA受试者的白细胞。每张显微图像显示单个白细胞具有8个形态学特征和4个统计学特征。将12个特征作为输入,采用局部可解释模型不可知论解释(LIME)算法作为可解释的后处理算法,开发了一种神经网络来区分LEU和HEA受试者的显微图像。人工神经网络通过留一交叉验证程序进行评估。我们的人工神经网络的性能是有希望的,在接收机工作特性曲线下的测试区域等于87%。由于使用标准特征实现,并使用LIME作为后处理算法,因此具有临床可解释性。因此,我们的人工神经网络似乎是一种可靠的白细胞分类工具,可以及时诊断急性淋巴细胞白血病,保证了较高的临床可解释性。
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0.40
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发文量
25
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