Deep Learning Technology-based Model to Identify Benign and Pro-B Acute Lymphoblastic Leukemia (ALL): Xception + LIME

Nayeon Kim
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Abstract

Leukemia is a type of cancer that occurs when abnormal blood cells take place in the bone marrow. Leukemia can either be acute (fastly growing) or chronic (slowly growing) and it is considered as one of the most commonly diagnosed cancers for children younger than the age of 15 or adults older than the age of 55. Leukemia can be diagnosed through various types of tests and depending on the aggressiveness of the disease, the treatment may differ. To provide a low-cost, time-efficient solution, this study employs the deep learning technique to train the Xception, VGG16, VGG19, and MobileNet models to optimize the accuracy of medical image detection. Through medical imaging, the trained model is able to detect anomalies in the dataset and identify whether the given data is a benign acute lymphoblastic leukemia (ALL) or a Pro-B ALL. Overall, this VGG16 showed the most optimal performance in terms of accuracy and precision, producing a 98.5% accuracy in detecting abnormal regions from the dataset. This study also further used XAI technique and a deep convolutional neural network to visualize the results of anomalies. As a result, this paper concluded that both deep learning and machine learning techniques are yet to replace human resources and intelligence as the heatmap and the LIME portrayal identified different regions as abnormal parts, therefore proving the inconsistency of deep learning technology.
基于深度学习技术的急性淋巴细胞白血病(ALL)识别模型:例外+ LIME
白血病是一种因骨髓中出现异常血细胞而发生的癌症。白血病可以是急性(快速生长)或慢性(缓慢生长),它被认为是15岁以下儿童或55岁以上成年人最常诊断的癌症之一。白血病可以通过各种类型的测试来诊断,根据疾病的侵袭性,治疗可能会有所不同。为了提供一种低成本、高效的解决方案,本研究采用深度学习技术对Xception、VGG16、VGG19和MobileNet模型进行训练,以优化医学图像检测的准确性。通过医学成像,训练后的模型能够检测数据集中的异常情况,并确定给定数据是良性急性淋巴细胞白血病(ALL)还是Pro-B ALL。总体而言,该VGG16在准确性和精密度方面表现出最优的性能,从数据集中检测异常区域的准确率达到98.5%。本研究还进一步使用了XAI技术和深度卷积神经网络来可视化异常结果。因此,本文得出的结论是,深度学习和机器学习技术尚未取代人力资源和智能,因为热图和LIME的写照将不同的区域识别为异常部分,从而证明了深度学习技术的不一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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