无监督和监督损伤检测中不确定性估计的深度分位数回归。

Haleh Akrami, Anand A Joshi, Sergül Aydöre, Richard M Leahy
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引用次数: 0

摘要

尽管在多种应用中,深度学习方法在各种机器学习任务上的表现令人印象深刻,但它可能会产生过于自信的预测,特别是在有限的训练数据下。因此,量化不确定性在诸如病变检测和临床诊断等关键应用中尤为重要,在这些应用中,对不确定性的现实评估对于确定手术边缘、疾病状态和适当治疗至关重要。在这项工作中,我们提出了一种新的方法,使用分位数回归来量化监督和无监督病变检测问题中的任意不确定性。得到的置信区间可用于病灶检测和分割。在无监督设置中,我们将分位数回归与变分自编码器(VAE)相结合。VAE是在无损伤数据上进行训练的,因此当呈现带有损伤的图像时,它倾向于重建图像的无损伤版本。为了检测病变,我们比较输入(病变)和输出(无病变)图像。在这里,我们解决了量化由VAE重建的图像中的不确定性的问题,作为原则异常值或病变检测的基础。VAE将输出建模为具有均值和方差特征的条件独立高斯。不幸的是,在VAE中对均值和方差进行联合优化会导致众所周知的方差收缩或低估问题。在这里,我们描述了一种替代的分位数回归VAE (QR-VAE),它通过直接估计输入图像的条件分位数来避免这种方差收缩问题。使用估计的分位数,我们计算输入图像的条件均值和方差,然后通过假发现率校正的p值阈值检测异常值。在监督设置中,我们开发了二值分位数回归(BQR)用于监督病灶分割任务。我们展示了如何使用BQR以一种表征专家分歧的方式捕捉病变边界的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep Quantile Regression for Uncertainty Estimation in Unsupervised and Supervised Lesion Detection.

Deep Quantile Regression for Uncertainty Estimation in Unsupervised and Supervised Lesion Detection.

Deep Quantile Regression for Uncertainty Estimation in Unsupervised and Supervised Lesion Detection.

Deep Quantile Regression for Uncertainty Estimation in Unsupervised and Supervised Lesion Detection.

Despite impressive state-of-the-art performance on a wide variety of machine learning tasks in multiple applications, deep learning methods can produce over-confident predictions, particularly with limited training data. Therefore, quantifying uncertainty is particularly important in critical applications such as lesion detection and clinical diagnosis, where a realistic assessment of uncertainty is essential in determining surgical margins, disease status and appropriate treatment. In this work, we propose a novel approach that uses quantile regression for quantifying aleatoric uncertainty in both supervised and unsupervised lesion detection problems. The resulting confidence intervals can be used for lesion detection and segmentation. In the unsupervised setting, we combine quantile regression with the Variational AutoEncoder (VAE). The VAE is trained on lesion-free data, so when presented with an image with a lesion, it tends to reconstruct a lesion-free version of the image. To detect the lesion, we then compare the input (lesion) and output (lesion-free) images. Here we address the problem of quantifying uncertainty in the images that are reconstructed by the VAE as the basis for principled outlier or lesion detection. The VAE models the output as a conditionally independent Gaussian characterized by its mean and variance. Unfortunately, joint optimization of both mean and variance in the VAE leads to the well-known problem of shrinkage or underestimation of variance. Here we describe an alternative Quantile-Regression VAE (QR-VAE) that avoids this variance shrinkage problem by directly estimating conditional quantiles for the input image. Using the estimated quantiles, we compute the conditional mean and variance for the input image from which we then detect outliers by thresholding at a false-discovery-rate corrected p-value. In the supervised setting, we develop binary quantile regression (BQR) for the supervised lesion segmentation task. We show how BQR can be used to capture uncertainty in lesion boundaries in a manner that characterizes expert disagreement.

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