A comparative analysis of different augmentations for brain images.

IF 2.6 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Medical & Biological Engineering & Computing Pub Date : 2024-10-01 Epub Date: 2024-05-24 DOI:10.1007/s11517-024-03127-7
Shilpa Bajaj, Manju Bala, Mohit Angurala
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Abstract

Deep learning (DL) requires a large amount of training data to improve performance and prevent overfitting. To overcome these difficulties, we need to increase the size of the training dataset. This can be done by augmentation on a small dataset. The augmentation approaches must enhance the model's performance during the learning period. There are several types of transformations that can be applied to medical images. These transformations can be applied to the entire dataset or to a subset of the data, depending on the desired outcome. In this study, we categorize data augmentation methods into four groups: Absent augmentation, where no modifications are made; basic augmentation, which includes brightness and contrast adjustments; intermediate augmentation, encompassing a wider array of transformations like rotation, flipping, and shifting in addition to brightness and contrast adjustments; and advanced augmentation, where all transformation layers are employed. We plan to conduct a comprehensive analysis to determine which group performs best when applied to brain CT images. This evaluation aims to identify the augmentation group that produces the most favorable results in terms of improving model accuracy, minimizing diagnostic errors, and ensuring the robustness of the model in the context of brain CT image analysis.

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不同脑图像增强技术的对比分析
深度学习(DL)需要大量的训练数据来提高性能和防止过拟合。为了克服这些困难,我们需要增加训练数据集的规模。这可以通过在小数据集上进行增强来实现。增强方法必须在学习期间提高模型的性能。有几种类型的变换可应用于医学图像。这些变换可以应用于整个数据集,也可以应用于数据子集,具体取决于所需的结果。在本研究中,我们将数据增强方法分为四类:无增强,即不做任何修改;基本增强,包括亮度和对比度调整;中级增强,除亮度和对比度调整外,还包括旋转、翻转和移位等更广泛的转换;高级增强,即采用所有转换层。我们计划进行一项综合分析,以确定哪一组在应用于脑部 CT 图像时表现最佳。这项评估的目的是找出在提高模型准确性、减少诊断误差和确保模型在脑 CT 图像分析中的稳健性方面产生最有利结果的增强组。
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来源期刊
Medical & Biological Engineering & Computing
Medical & Biological Engineering & Computing 医学-工程:生物医学
CiteScore
6.00
自引率
3.10%
发文量
249
审稿时长
3.5 months
期刊介绍: Founded in 1963, Medical & Biological Engineering & Computing (MBEC) continues to serve the biomedical engineering community, covering the entire spectrum of biomedical and clinical engineering. The journal presents exciting and vital experimental and theoretical developments in biomedical science and technology, and reports on advances in computer-based methodologies in these multidisciplinary subjects. The journal also incorporates new and evolving technologies including cellular engineering and molecular imaging. MBEC publishes original research articles as well as reviews and technical notes. Its Rapid Communications category focuses on material of immediate value to the readership, while the Controversies section provides a forum to exchange views on selected issues, stimulating a vigorous and informed debate in this exciting and high profile field. MBEC is an official journal of the International Federation of Medical and Biological Engineering (IFMBE).
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