Doshi Riddhi Virendra, Badhiye Sagarkumar S, Pinjarkar Latika
Symbiosis Institute of Technology, Nagpur Campus, Symbiosis International (Deemed University), Pune, India.
J Imaging Inform Med. 2025 Jul 8. doi: 10.1007/s10278-025-01590-8.
Biomedical image classification is of paramount importance in enhancing diagnostic precision and improving patient outcomes across diverse medical disciplines. In recent years, the advent of deep learning methodologies has significantly transformed this domain by facilitating notable advancements in image analysis and classification endeavors. This paper provides a thorough overview of the application of deep learning techniques in biomedical image classification, encompassing various types of healthcare data, including medical images derived from modalities such as mammography, histopathology, and radiology. A detailed discourse on deep learning architectures, including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and advanced models such as generative adversarial networks (GANs), is presented. Additionally, we delineate the distinctions between supervised, unsupervised, and reinforcement learning approaches, along with their respective roles within the context of biomedical imaging. This study systematically investigates 50 deep learning methodologies employed in the healthcare sector, elucidating their effectiveness in various tasks, including disease detection, image segmentation, and classification. It particularly emphasizes models that have been trained on publicly available datasets, thereby highlighting the significant role of open-access data in fostering advancements in AI-driven healthcare innovations. Furthermore, this review accentuates the transformative potential of deep learning in the realm of biomedical image analysis and delineates potential avenues for future research within this rapidly evolving field.
生物医学图像分类对于提高诊断精度和改善各医学学科的患者治疗效果至关重要。近年来,深度学习方法的出现通过推动图像分析和分类工作取得显著进展,极大地改变了这一领域。本文全面概述了深度学习技术在生物医学图像分类中的应用,涵盖各种类型的医疗数据,包括来自乳腺摄影、组织病理学和放射学等模态的医学图像。文中详细论述了深度学习架构,包括卷积神经网络(CNN)、循环神经网络(RNN)以及生成对抗网络(GAN)等先进模型。此外,我们还阐述了监督学习、无监督学习和强化学习方法之间的区别,以及它们在生物医学成像背景下各自的作用。本研究系统地调查了医疗保健领域使用的50种深度学习方法,阐明了它们在包括疾病检测、图像分割和分类等各种任务中的有效性。特别强调了在公开可用数据集上训练的模型,从而突出了开放获取数据在促进人工智能驱动的医疗创新进展中的重要作用。此外,本综述强调了深度学习在生物医学图像分析领域的变革潜力,并描绘了这一快速发展领域未来研究的潜在途径。