Department of Computer Science, Umm Al-Qura University, Makkah, Saudi Arabia.
Curr Med Imaging. 2023;19(7):734-748. doi: 10.2174/1573405619666221014113907.
The techniques differed in many of the literature on the detection of Acute Lymphocytic Leukemia from the blood smear pictures, as the cases of infection in the world and the Kingdom of Saudi Arabia were increasing and the causes of this disease were not known, especially for children, which is a serious and fatal disease.
Through this work we seek to contribute to discover the blood cells affected by Acute Lymphocytic Leukem and to find an effective and fast method and to have the correct diagnosis as the time factor is important in the diagnosis and the initiation of treatment. which is based on one of the deep learning techniques that specialize in very deep networks, the use of one of the CNNs is VGG16.
Detection scheme is implemented by pre-processing, feature extraction, model building, fine tuning method, classification are executed. By using VGG16 pre-trained, and using SVM and MLP classification algorithms in Machine Learning.
Our results are evaluated based on criteria, such as Accuracy, Precision, Recall, and F1-Score. The accuracy results for SVM classifier MLP of 77% accuracy at 0.001 learning rate and the accuracy for SVM classifier 75% at 0.005 learning rate. Whereas, the best accuracy result for VGG16 model was 92.27% at 0.003 learning rate. The best validation accuracy result was 85.62% at 0.001 learning rate.
由于世界和沙特阿拉伯的感染病例不断增加,且这种疾病的病因尚不清楚,尤其是儿童,因此,血液涂片图片中急性淋巴细胞白血病的检测技术在许多文献中存在差异。
通过这项工作,我们旨在发现受急性淋巴细胞白血病影响的血细胞,并找到一种有效快速的方法,以便进行正确的诊断,因为时间因素在诊断和开始治疗中非常重要。本研究基于专门研究深度网络的深度学习技术之一,使用了其中一种卷积神经网络 VGG16。
通过预处理、特征提取、模型构建、微调方法和分类来执行检测方案。使用预先训练的 VGG16,并在机器学习中使用 SVM 和 MLP 分类算法。
我们的结果是基于准确性、精度、召回率和 F1 分数等标准进行评估的。在学习率为 0.001 时,SVM 分类器 MLP 的准确率为 77%,SVM 分类器的准确率为 75%,学习率为 0.005。而 VGG16 模型的最佳准确率为 92.27%,学习率为 0.003。最佳验证准确率为 85.62%,学习率为 0.001。