论文标题

使用自动编码器学习的有效通道近似二进制信号检测任务的高效观察者

Approximating the Hotelling Observer with Autoencoder-Learned Efficient Channels for Binary Signal Detection Tasks

论文作者

Granstedt, Jason L., Zhou, Weimin, Anastasio, Mark A.

论文摘要

倡导对图像质量(IQ)的客观评估进行医学成像系统的分析和优化。获得此类智商指标的一种方法是通过数学观察者。根据信号检测任务的定义,贝叶斯理想观察者是最佳的,但通常既棘手又非线性。作为替代方案,线性观察者有时用于基于任务的图像质量评估。最佳线性观察者是酒店观察者(HO)。计算HO的计算成本随图像大小增加而增加,从而降低了所需数据的维度。通道化方法已为此目的流行,许多竞争方法可用于计算有效的渠道。在这项工作中,提出了一种使用自动编码器(AE)学习通道的新方法。 AE是一种人工神经网络(ANN),经常被用来学习数据的简洁表示以降低维度。修改传统的AE损失函数以关注与任务相关的信息,可以开发有效的AE通道。对这些AE通道进行了训练和测试,并在各种信号形状和背景上进行了测试,以评估其性能。在实验中,AE学习的通道具有竞争力,并且经常超过其他最先进的方法来近似HO。对于具有少量训练图像和信号图像噪声估算的数据集,性能增长最大。总体而言,AE被证明具有与最先进的方法的竞争力,用于为HO生成有效的渠道,并且可以在小数据集上具有出色的性能。

The objective assessment of image quality (IQ) has been advocated for the analysis and optimization of medical imaging systems. One method of obtaining such IQ metrics is through a mathematical observer. The Bayesian ideal observer is optimal by definition for signal detection tasks, but is frequently both intractable and non-linear. As an alternative, linear observers are sometimes used for task-based image quality assessment. The optimal linear observer is the Hotelling observer (HO). The computational cost of calculating the HO increases with image size, making a reduction in the dimensionality of the data desirable. Channelized methods have become popular for this purpose, and many competing methods are available for computing efficient channels. In this work, a novel method for learning channels using an autoencoder (AE) is presented. AEs are a type of artificial neural network (ANN) that are frequently employed to learn concise representations of data to reduce dimensionality. Modifying the traditional AE loss function to focus on task-relevant information permits the development of efficient AE-channels. These AE-channels were trained and tested on a variety of signal shapes and backgrounds to evaluate their performance. In the experiments, the AE-learned channels were competitive with and frequently outperformed other state-of-the-art methods for approximating the HO. The performance gains were greatest for the datasets with a small number of training images and noisy estimates of the signal image. Overall, AEs are demonstrated to be competitive with state-of-the-art methods for generating efficient channels for the HO and can have superior performance on small datasets.

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