不确定性cnn:一种增强医学图像分类性能的方法。

IF 2.6 4区 工程技术 Q1 Mathematics
Vasileios E Papageorgiou, Georgios Petmezas, Pantelis Dogoulis, Maxime Cordy, Nicos Maglaveras
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引用次数: 0

摘要

由于早期和准确诊断的迫切需要,在过去十年中,利用医学成像数据自动检测肿瘤已经引起了极大的关注。计算效率高的建模技术和增强的数据存储能力的进步推动了这种兴趣。然而,解释预测不确定性的方法在医学成像中仍然相对少见。不确定性量化(UQ)很重要,因为它有助于决策者衡量他们对预测的信心,并考虑模型输入的可变性。许多确定性深度学习(DL)方法已经发展成为可靠的医学成像工具,卷积神经网络(cnn)是最广泛使用的方法。在本文中,我们引入了一种基于低复杂度不确定性的医学图像分类CNN架构,特别关注肿瘤和心力衰竭(HF)的检测。模型的预测(任意)不确定性通过测试集增强技术进行量化,该技术生成每个测试图像的多个代理。这个过程可以为每个图像构建经验分布,从而可以计算平均值估计和可信区间。重要的是,该方法不仅提供了UQ,而且显著提高了模型的分类性能。本文首次证明了测试集增强可以显著提高医学图像的分类性能。所提出的DL模型使用三个数据集进行评估:(a)脑磁共振成像(MRI), (b)肺部计算机断层扫描(CT)扫描和(c)心脏MRI。模型的低复杂度设计增强了其对过拟合的鲁棒性,同时由于引入的体系结构减少了所需的计算资源,当遇到超出分布的数据时,它也很容易重新训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty CNNs: A path to enhanced medical image classification performance.

The automated detection of tumors using medical imaging data has garnered significant attention over the past decade due to the critical need for early and accurate diagnoses. This interest is fueled by advancements in computationally efficient modeling techniques and enhanced data storage capabilities. However, methodologies that account for the uncertainty of predictions remain relatively uncommon in medical imaging. Uncertainty quantification (UQ) is important as it helps decision-makers gauge their confidence in predictions and consider variability in the model inputs. Numerous deterministic deep learning (DL) methods have been developed to serve as reliable medical imaging tools, with convolutional neural networks (CNNs) being the most widely used approach. In this paper, we introduce a low-complexity uncertainty-based CNN architecture for medical image classification, particularly focused on tumor and heart failure (HF) detection. The model's predictive (aleatoric) uncertainty is quantified through a test-set augmentation technique, which generates multiple surrogates of each test image. This process enables the construction of empirical distributions for each image, which allows for the calculation of mean estimates and credible intervals. Importantly, this methodology not only provides UQ, but also significantly improves the model's classification performance. This paper represents the first effort to demonstrate that test-set augmentation can significantly improve the classification performance of medical images. The proposed DL model was evaluated using three datasets: (a) brain magnetic resonance imaging (MRI), (b) lung computed tomography (CT) scans, and (c) cardiac MRI. The low-complexity design of the model enhances its robustness against overfitting, while it is also easily re-trainable in case out-of-distribution data is encountered, due to the reduced computational resources required by the introduced architecture.

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来源期刊
Mathematical Biosciences and Engineering
Mathematical Biosciences and Engineering 工程技术-数学跨学科应用
CiteScore
3.90
自引率
7.70%
发文量
586
审稿时长
>12 weeks
期刊介绍: Mathematical Biosciences and Engineering (MBE) is an interdisciplinary Open Access journal promoting cutting-edge research, technology transfer and knowledge translation about complex data and information processing. MBE publishes Research articles (long and original research); Communications (short and novel research); Expository papers; Technology Transfer and Knowledge Translation reports (description of new technologies and products); Announcements and Industrial Progress and News (announcements and even advertisement, including major conferences).
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