A Comparative Study of Convolutional Neural Network in Detecting Blast Cells for Diagnose Acute Myeloid Leukemia

Ahmad Badruzzaman, Aniati Murni Arymurhty
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Abstract

Understanding blood plays a crucial role in obtaining information for monitoring health conditions and diagnosis of hematologic diseases such as acute myeloid leukemia. It is characterized by irregular expansion of immature white blood cells called blast cells in the blood and bone marrow. To diagnose acute myeloid leukemia, a sample of bone marrow is necessary to be examined under a microscope through bone marrow examination. As for minimizing human subjectivity and automating medical screening, this study performed image classification for detecting blast cells in leukocytes from microscopic images. We compared a well-established convolutional neural network architecture such as ResNet, ResNeXt, and EfficientNetV2. The model’s performance assessment was done by two evaluation levels which are at a macro level and per class level. The experiment results show ResNet architecture with 18 layers (ResNet 18) outperforms the remaining models at both levels. Furthermore, as the architecture utilizes residual learning, ResNet and ResNeXt models converge faster than EfficientNetV2 at the training phase. In addition, ResNet architecture with 50 layers (ResNet 50) outperforms the remaining models specifically at blast cell identification in case of medical screening. Therefore, this study concludes that ResNet 50 is the best model to detect blast cells under this condition. However, EfficientNetV2 shows a promising potential at a macro level to classify leukocytes in general. We expect this study to become a preliminary study to develop a convolution neural network architecture specifically to detect blast cells in leukocytes.
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卷积神经网络在诊断急性髓性白血病中检测爆炸细胞的比较研究
了解血液在获取监测健康状况和诊断急性髓性白血病等血液病的信息方面起着至关重要的作用。急性髓性白血病的特征是血液和骨髓中被称为 "突变细胞 "的未成熟白细胞不规则增殖。要诊断急性髓性白血病,必须通过骨髓检查在显微镜下采集骨髓样本。为了最大限度地减少人类的主观性并使医疗筛查自动化,本研究进行了图像分类,以便从显微图像中检测白细胞中的爆炸细胞。我们对 ResNet、ResNeXt 和 EfficientNetV2 等成熟的卷积神经网络架构进行了比较。模型的性能评估通过两个评估级别进行,即宏观级别和每类级别。实验结果表明,具有 18 层的 ResNet 架构(ResNet 18)在这两个层面上都优于其他模型。此外,由于该架构利用残差学习,ResNet 和 ResNeXt 模型在训练阶段的收敛速度比 EfficientNetV2 更快。此外,具有 50 层的 ResNet 架构(ResNet 50)在医学筛查的爆炸细胞识别方面优于其他模型。因此,本研究得出结论,在这种情况下,ResNet 50 是检测爆炸细胞的最佳模型。不过,EfficientNetV2 在宏观层面上显示出了对一般白细胞进行分类的巨大潜力。我们希望本研究能成为开发专门用于检测白细胞中爆炸细胞的卷积神经网络架构的初步研究。
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