利用 EfficientNet 和先进的数据增强技术进行深度学习,增强基于图像的胃肠道疾病诊断。

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-11-12 DOI:10.1186/s12880-024-01479-y
A M J Md Zubair Rahman, R Mythili, K Chokkanathan, T R Mahesh, K Vanitha, Temesgen Engida Yimer
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引用次数: 0

摘要

早期发现和诊断胃肠道疾病,如溃疡性结肠炎、息肉和食管炎,对于及时治疗至关重要。传统的成像技术通常依赖于人工判读,而人工判读存在变异性,可能缺乏精确性。目前的方法利用传统的深度学习模型,虽然在一定程度上有效,但由于疾病表现错综复杂、变化微妙,这些模型在医学影像数据集上往往存在过度拟合和泛化问题。这些模型通常没有充分利用迁移学习或高级数据增强的潜力,导致性能不尽如人意,尤其是在数据变异性较高的多样化现实世界场景中。本研究采用 EfficientNetB5 架构,结合先进的数据增强策略,推出了一种稳健的模型。该模型专为胃肠道疾病图像中存在的高变异性和复杂细节而量身定制。通过将迁移学习与最大池化和广泛正则化相结合,该模型旨在提高诊断准确率并减少过拟合。通过采用先进的正则化和增强技术,该模型的测试准确率达到了 98.89%,超过了传统方法。训练过程中水平翻转和动态缩放的应用大大提高了模型的泛化能力,0.230 的低测试损失和所有类别的高精度指标就是证明。所提出的深度学习框架在从图像数据对胃肠道疾病进行自动分类方面表现出了卓越的性能。本研究通过创新技术解决了现有模型的主要局限性,有助于增强医学影像诊断过程,从而有可能实现更准确、更及时的疾病干预。
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Enhancing image-based diagnosis of gastrointestinal tract diseases through deep learning with EfficientNet and advanced data augmentation techniques.

The early detection and diagnosis of gastrointestinal tract diseases, such as ulcerative colitis, polyps, and esophagitis, are crucial for timely treatment. Traditional imaging techniques often rely on manual interpretation, which is subject to variability and may lack precision. Current methodologies leverage conventional deep learning models that, while effective to an extent, often suffer from overfitting and generalization issues on medical image datasets due to the intricate and subtle variations in disease manifestations. These models typically do not fully utilize the potential of transfer learning or advanced data augmentation, leading to less-than-optimal performance, especially in diverse real-world scenarios where data variability is high. This study introduces a robust model using the EfficientNetB5 architecture combined with a sophisticated data augmentation strategy. The model is tailored for the high variability and intricate details present in gastrointestinal tract disease images. By integrating transfer learning with maximal pooling and extensive regularization, the model aims to enhance diagnostic accuracy and reduce overfitting. The proposed model achieved a test accuracy of 98.89%, surpassing traditional methods by incorporating advanced regularization and augmentation techniques. The application of horizontal flipping and dynamic scaling during training significantly improved the model's ability to generalize, evidenced by a low-test loss of 0.230 and high precision metrics across all classes. The proposed deep learning framework demonstrates superior performance in the automated classification of gastrointestinal diseases from image data. By addressing key limitations of existing models through innovative techniques, this study contributes to the enhancement of diagnostic processes in medical imaging, potentially leading to more accurate and timely disease interventions.

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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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