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Artificial intelligence model driven by transfer learning for image-based medical diagnosis

Published: 01 January 2022 Publication History

Abstract

Artificial intelligent (AI) systems for clinical-decision support are an important tool in clinical routine. It has become a crucial diagnostic tool with adequate reliability and interpretability in disease diagnosis and monitoring. Undoubtedly, these models are faced with insufficient data challenges for training, which often directly determines the model’s performance. In order word, insufficient data for model training leads to inefficiency in the model built. To overcome this problem, we propose an AI-driven model by transfer learning in accurate diagnosis for medical decision support. Our approach leverages the shortage of data with a pretrained model by training the neural network with a fraction of the new dataset. For this purpose, we utilized the VGG19 network as the backbone network to support our model in integrating known features with the newly learned features for accurate diagnosis and decision making. Integrating this trained model speeds up the training phase and improve the performance of the proposed model. Experimental results show that the proposed model is effective and efficient in diagnosing different medical diseases. As such, we anticipated that this diagnosis tool will ultimately aid in facilitating early treatment of these treatable diseases, which will improve clinical out-comes.

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        Published In

        cover image Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology
        Journal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology  Volume 43, Issue 4
        2022
        1429 pages

        Publisher

        IOS Press

        Netherlands

        Publication History

        Published: 01 January 2022

        Author Tags

        1. Optical coherence tomography (OCT)
        2. choroidal neovascularization (CNV)
        3. diabetic macular edema (DME)
        4. age-related macular degeneration (AMD)
        5. convolutional neural networks (CNN)
        6. artificial intelligence (AI)

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