Multi-energy CT material decomposition using Bayesian deep convolutional neural network with explicit penalty of uncertainty and bias.

Hao Gong, Shuai Leng, Francis Baffour, Lifeng Yu, Joel G Fletcher, Cynthia H McCollough
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Abstract

Convolutional neural network (CNN)-based material decomposition has the potential to improve image quality (visual appearance) and quantitative accuracy of material maps. Most methods use deterministic CNNs with mean-square-error loss to provide point-estimates of mass densities. Point estimates can be over-confident as the reliability of CNNs is frequently compromised by bias and two major uncertainties - data and model uncertainties originating from noise in inputs and train-test data dissimilarity, respectively. Also, mean-square-error lacks explicit control of uncertainty and bias. To tackle these problems, a Bayesian dual-task CNN (BDT-CNN) with explicit penalization of uncertainty and bias was developed. It is a probabilistic CNN that concurrently conducts material classification and quantification and allows for pixel-wise modeling of bias, data uncertainty, and model uncertainty. CNN was trained with images of physical and simulated tissue-mimicking inserts at varying mass densities. Hydroxyapatite (nominal density 400mg/cc) and blood (nominal density 1095mg/cc) inserts were placed in different-sized body phantoms (30 - 45cm) and used to evaluate mean-absolute-bias (MAB) in predicted mass densities across different images at routine- and half-routine-dose. Patient CT exams were collected to assess generalizability of BDT-CNN in the presence of anatomical background. Noise insertion was used to simulate patient exams at half- and quarter-routine-dose. The deterministic dual-task CNN was used as baseline. In phantoms, BDT-CNN improved consistency of insert delineation, especially edges, and reduced overall bias (average MAB for hydroxyapatite: BDT-CNN 5.4mgHA/cc, baseline 11.0mgHA/cc and blood: BDT-CNN 8.9mgBlood/cc, baseline 14.0mgBlood/cc). In patient images, BDT-CNN improved detail preservation, lesion conspicuity, and structural consistency across different dose levels.

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基于贝叶斯深度卷积神经网络的多能CT材料分解,具有明确的不确定性和偏差惩罚。
基于卷积神经网络(CNN)的材料分解具有提高图像质量(视觉外观)和材料图定量准确性的潜力。大多数方法使用具有均方误差损失的确定性cnn来提供质量密度的点估计。点估计可能会过度自信,因为cnn的可靠性经常受到偏差和两个主要不确定性的影响——分别来自输入噪声和训练测试数据不相似性的数据和模型不确定性。此外,均方误差缺乏对不确定性和偏差的明确控制。为了解决这些问题,开发了一种明确惩罚不确定性和偏见的贝叶斯双任务CNN (BDT-CNN)。它是一种概率CNN,同时进行材料分类和量化,并允许对偏差、数据不确定性和模型不确定性进行逐像素建模。CNN使用不同质量密度的物理和模拟组织模拟插入图像进行训练。将羟基磷灰石(标称密度400mg/cc)和血液(标称密度1095mg/cc)插入不同大小的体模(30 - 45cm)中,用于评估常规剂量和半常规剂量下不同图像预测质量密度的平均绝对偏差(MAB)。收集患者CT检查以评估在解剖学背景下BDT-CNN的普遍性。噪声插入用于模拟患者在一半和四分之一常规剂量下的检查。以确定性双任务CNN为基准。在模型中,BDT-CNN提高了插入物描绘的一致性,特别是边缘,并减少了总体偏置(羟基磷灰石的平均MAB: BDT-CNN 5.4mgHA/cc,基线11.0mgHA/cc,血液:BDT-CNN 8.9mgBlood/cc,基线14.0mgBlood/cc)。在患者图像中,BDT-CNN在不同剂量水平下改善了细节保存、病变显著性和结构一致性。
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