基于人工神经网络的白血病识别与预测集成深度学习模型

K. Jha, P. Das, H. Dutta
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引用次数: 1

摘要

白血病(ALL)是一种血癌,在全球范围内导致大量死亡。技术在决策制定方面正在进步,比如从人工检查转向自动(使用深度学习)检测。由于人工识别存在缺陷,通过对增强的增强图像或数据集进行深度集成学习的检测可以实现完美的识别。这里使用了来自Kaggle的两个不同的数据集。所提出的人工神经网络对集成分类器分类的数据产生最佳的准确率。该方法可以在高质量的数据集上提供100%的准确率。而对于质量较差的数据集,该方法也能提供96.3%的准确率。最佳情况数据集的运行时间为0.366137,而最坏情况数据集的运行时间为0.38861。均方误差为0.00911。它用两种类型的数据集进行分析,产生有效的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network-Based Leukaemia Identification and Prediction using Ensemble Deep Learning Model
Leukemia (ALL) is a type of blood cancer that causes a huge number of deaths throughout the Globe. Technology is advancing in decision making like moving from manual inspection to automatic (using deep learning) detection. As flaws persist in manual identification, detection through deep ensemble learning on enhanced augmented images or datasets led to flawless identification. Here two different datasets were used from Kaggle. The proposed artificial neural network on classified data by ensemble classifier led to the generation of best accuracy. The proposed method can provide 100% accuracy with a good quality dataset. Whereas with poor quality data set also proposed method can provide 96.3% of accuracy. Elapsed time for the best-case dataset is 0.366137 whereas 0.38861 for the worst-case dataset. The mean square error is 0.00911. It is analyzed with both types of datasets, producing efficient results.
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