Handling the predictive uncertainty of convolutional neural network in medical image analysis: a review

Yasanthi Malika Hirimutugoda, Thusari P. Silva, Nimalka M. Wagarachchi
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引用次数: 0

Abstract

: Certainty is a significant part of disease detection, involving various kinds of imaging and machine learning (ML) methodologies. More precisely than other ML methods, a convolutional neural network (CNN) can classify images. As its parameters are deterministic, it cannot indicate the level of uncertainty in its predictions. Predictions made by predetermined CNNs may yield inaccurate findings, and there is no evaluation of confidence in these results. These outcomes may have harmful effects and lack trustworthiness. Uncertainty quantification (UQ) is critical to evaluating confidence in prediction. The noise, illumination, segmentation, and edge issues common to medical images also impact pre-trained CNN algorithms and lead to uncertain outcomes. This review aims to investigate the main inherent uncertainty issue in CNN and what form of UQ method can be applied with CNN to the task of medical image classification. This research proposes a novel approach by combining the superior properties of the Bayesian approach and fusion methods to reduce the uncertainty in CNN models. This study concludes that, despite a number of unresolved technical and scientific issues, various types of fusion approaches have improved the clinical validity for diagnosing and analytical purposes, and it is a field of study that has the capacity to grow significantly in the years to come.
卷积神经网络在医学图像分析中的预测不确定性处理综述
确定性是疾病检测的重要组成部分,涉及各种成像和机器学习(ML)方法。与其他ML方法相比,卷积神经网络(CNN)可以更精确地对图像进行分类。由于它的参数是确定的,它不能表明其预测的不确定程度。由预先确定的cnn做出的预测可能会产生不准确的结果,而且这些结果没有可信度评估。这些结果可能会产生有害影响,而且缺乏可信度。不确定性量化(UQ)是评估预测置信度的关键。医学图像中常见的噪声、照明、分割和边缘问题也会影响预训练的CNN算法,并导致不确定的结果。本文旨在探讨CNN固有的主要不确定性问题,以及什么样的UQ方法可以应用于CNN的医学图像分类任务。本研究提出了一种结合贝叶斯方法和融合方法的优点来降低CNN模型不确定性的新方法。本研究的结论是,尽管存在许多尚未解决的技术和科学问题,但各种类型的融合方法已经提高了诊断和分析目的的临床有效性,并且这是一个研究领域,在未来几年有能力显着增长。
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CiteScore
2.30
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