基于分布式估计的脑图像异常分割。

Evangelia I Zacharaki, Anastasios Bezerianos
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引用次数: 18

摘要

本文的目的是介绍一种新的半监督方案,用于医学图像的异常检测和分割。半监督学习不需要病理建模,因此允许高度自动化。在异常检测中,如果一个向量不符合从正常数据中得到的概率分布,那么它就被认为是异常的。然而,由于数据维度大,概率密度函数的估计通常是不可行的。为了克服这一挑战,我们将每张图像视为局部连贯图像分区(重叠块)的网络。在分布式估计算法的基础上,构造并最大化了每个分区异常估计的严格凹似然函数,并将局部估计融合为满足一致性约束的全局最优估计。似然函数由一个模型和一个数据项组成,并被表述为一个二次规划问题。该方法应用于糖尿病患者的模拟脑梗死和发育不良等脑病理的自动分割,以及真实病变的自动分割。使用接收器工作特征分析的方法评估表明,与统计参数映射(SPM)进行的两组分析相比,该方法在图像分割方面有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormality segmentation in brain images via distributed estimation.

The aim of this paper is to introduce a novel semisupervised scheme for abnormality detection and segmentation in medical images. Semisupervised learning does not require pathology modeling and, thus, allows high degree of automation. In abnormality detection, a vector is characterized as anomalous if it does not comply with the probability distribution obtained from normal data. The estimation of the probability density function, however, is usually not feasible due to large data dimensionality. In order to overcome this challenge, we treat every image as a network of locally coherent image partitions (overlapping blocks). We formulate and maximize a strictly concave likelihood function estimating abnormality for each partition and fuse the local estimates into a globally optimal estimate that satisfies the consistency constraints, based on a distributed estimation algorithm. The likelihood function consists of a model and a data term and is formulated as a quadratic programming problem. The method is applied for automatically segmenting brain pathologies, such as simulated brain infarction and dysplasia, as well as real lesions in diabetes patients. The assessment of the method using receiver operating characteristic analysis demonstrates improvement in image segmentation over two-group analysis performed with Statistical Parametric Mapping (SPM).

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来源期刊
IEEE Transactions on Information Technology in Biomedicine
IEEE Transactions on Information Technology in Biomedicine 工程技术-计算机:跨学科应用
自引率
0.00%
发文量
1
审稿时长
4.8 months
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