Alaiad Ahmad, Migdady Aya, Al-Khatib Ra'ed M, Alzoubi Omar, Zitar Raed Abu, Abualigah Laith
Department of Computer Information Systems, Jordan University of Science and Technology, Irbid 22110, Jordan.
Department of Computer Sciences, Yarmouk University, Irbid 21163, Jordan.
J Imaging. 2023 Mar 8;9(3):64. doi: 10.3390/jimaging9030064.
Automated deep learning is promising in artificial intelligence (AI). However, a few applications of automated deep learning networks have been made in the clinical medical fields. Therefore, we studied the application of an open-source automated deep learning framework, Autokeras, for detecting smear blood images infected with malaria parasites. Autokeras is able to identify the optimal neural network to perform the classification task. Hence, the robustness of the adopted model is due to it not needing any prior knowledge from deep learning. In contrast, the traditional deep neural network methods still require more construction to identify the best convolutional neural network (CNN). The dataset used in this study consisted of 27,558 blood smear images. A comparative process proved the superiority of our proposed approach over other traditional neural networks. The evaluation results of our proposed model achieved high efficiency with impressive accuracy, reaching 95.6% when compared with previous competitive models.
自动化深度学习在人工智能(AI)领域颇具前景。然而,自动化深度学习网络在临床医学领域的应用却为数不多。因此,我们研究了一种开源自动化深度学习框架Autokeras在检测感染疟原虫的血液涂片图像中的应用。Autokeras能够识别执行分类任务的最优神经网络。因此,所采用模型的稳健性在于它不需要任何深度学习的先验知识。相比之下,传统的深度神经网络方法仍需要更多构建工作来识别最佳卷积神经网络(CNN)。本研究使用的数据集包含27558张血液涂片图像。一个对比过程证明了我们提出的方法优于其他传统神经网络。我们提出的模型的评估结果实现了高效且具有令人印象深刻的准确率,与之前的竞争模型相比达到了95.6%。