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Autokeras Approach: A Robust Automated Deep Learning Network for Diagnosis Disease Cases in Medical Images

Ahmad Alaiad, Aya Migdady, Ra’ed M. Al-Khatib, Omar H. AL‐Zoubi, Raed Abu Zitar, Laith Abualigah

2023Journal of Imaging20 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Artificial intelligenceDeep learningComputer scienceConvolutional neural networkRobustness (evolution)Machine learningArtificial neural networkDeep neural networksPattern recognition (psychology)ChemistryGeneBiochemistryDigital Imaging for Blood DiseasesCOVID-19 diagnosis using AIAI in cancer detection
Autokeras Approach: A Robust Automated Deep Learning Network for Diagnosis Disease Cases in Medical Images | Litcius