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Dice Overlap Measures for Objects of Unknown Number: Application to Lesion Segmentation. 未知数目对象的骰子重叠度量:在病灶分割中的应用。
Pub Date : 2018-01-01 Epub Date: 2018-02-17 DOI: 10.1007/978-3-319-75238-9_1
Ipek Oguz, Aaron Carass, Dzung L Pham, Snehashis Roy, Nagesh Subbana, Peter A Calabresi, Paul A Yushkevich, Russell T Shinohara, Jerry L Prince

The Dice overlap ratio is commonly used to evaluate the performance of image segmentation algorithms. While Dice overlap is very useful as a standardized quantitative measure of segmentation accuracy in many applications, it offers a very limited picture of segmentation quality in complex segmentation tasks where the number of target objects is not known a priori, such as the segmentation of white matter lesions or lung nodules. While Dice overlap can still be used in these applications, segmentation algorithms may perform quite differently in ways not reflected by differences in their Dice score. Here we propose a new set of evaluation techniques that offer new insights into the behavior of segmentation algorithms. We illustrate these techniques with a case study comparing two popular multiple sclerosis (MS) lesion segmentation algorithms: OASIS and LesionTOADS.

Dice重叠比通常用于评价图像分割算法的性能。虽然Dice重叠在许多应用中作为分割精度的标准化定量测量非常有用,但它在复杂的分割任务中提供了非常有限的分割质量图像,其中目标对象的数量是未知的,例如白质病变或肺结节的分割。虽然骰子重叠仍然可以在这些应用中使用,但分割算法可能以不同的方式执行,而不是通过骰子得分的差异来反映。在这里,我们提出了一套新的评估技术,为分割算法的行为提供了新的见解。我们通过比较两种流行的多发性硬化症(MS)病变分割算法OASIS和LesionTOADS的案例研究来说明这些技术。
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引用次数: 9
Pairwise, Ordinal Outlier Detection of Traumatic Brain Injuries. 创伤性脑损伤的成对正序离群点检测。
Pub Date : 2018-01-01 Epub Date: 2018-02-17 DOI: 10.1007/978-3-319-75238-9_9
Matt Higger, Martha Shenton, Sylvain Bouix

Because mild Traumatic Brain Injuries (mTBI) are heterogeneous, classification methods perform outlier detection from a model of healthy tissue. Such a model is challenging to construct. Instead, we utilize region-specific pairwise (person-to-person) comparisons. Each person-region is characterized by a distribution of Fractional Anisotropy and comparisons are made via Median, Mean, Bhattacharya and Kullback-Liebler distances. Additionally, we examine an ordinal decision rule which compares a subject's nth most atypical region to a healthy control's. Ordinal comparison is motivated by mTBI's heterogeneity; each mTBI has some set of damaged tissue which is not necessarily spatially consistent. These improvements correctly distinguish Persistent Post-Concussive Symptoms in a small dataset but achieve only a .74 AUC in identifying mTBI subjects with milder symptoms. Finally, we perform subject-specific simulations which characterize which injuries are detected and which are missed.

由于轻度脑外伤(mTBI)是异质性的,因此分类方法需要从健康组织模型中进行离群点检测。构建这样的模型具有挑战性。相反,我们利用特定区域的成对(人与人)比较。每个人-区域都以分数各向异性分布为特征,并通过中位数、平均值、巴塔查里亚距离和库尔贝克-李卜勒距离进行比较。此外,我们还研究了一种顺序决策规则,该规则将受试者的第 n 个最不典型区域与健康对照组的最不典型区域进行比较。序数比较的动机是 mTBI 的异质性;每个 mTBI 都有一些受损组织集,而这些受损组织集在空间上不一定是一致的。这些改进在一个小型数据集中正确区分了持续性撞击后症状,但在识别症状较轻的 mTBI 受试者方面,AUC 值仅为 0.74。最后,我们进行了针对特定受试者的模拟,以确定哪些损伤被检测到,哪些被遗漏。
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引用次数: 0
Joint Intensity Fusion Image Synthesis Applied to Multiple Sclerosis Lesion Segmentation. 关节强度融合图像合成在多发性硬化病灶分割中的应用。
Greg M Fleishman, Alessandra Valcarcel, Dzung L Pham, Snehashis Roy, Peter A Calabresi, Paul Yushkevich, Russell T Shinohara, Ipek Oguz

We propose a new approach to Multiple Sclerosis lesion segmentation that utilizes synthesized images. A new method of image synthesis is considered: joint intensity fusion (JIF). JIF synthesizes an image from a library of deformably registered and intensity normalized atlases. Each location in the synthesized image is a weighted average of the registered atlases; atlas weights vary spatially. The weights are determined using the joint label fusion (JLF) framework. The primary methodological contribution is the application of JLF to MRI signal directly rather than labels. Synthesized images are then used as additional features in a lesion segmentation task using the OASIS classifier, a logistic regression model on intensities from multiple modalities. The addition of JIF synthesized images improved the Dice-Sorensen coefficient (relative to manually drawn gold standards) of lesion segmentations over the standard model segmentations by 0.0462 ± 0.0050 (mean ± standard deviation) at optimal threshold over all subjects and 10 separate training/testing folds.

我们提出了一种利用合成图像对多发性硬化症病变进行分割的新方法。提出了一种新的图像合成方法:关节强度融合(JIF)。JIF从可变形注册和强度归一化图集库中合成图像。合成图像中的每个位置是注册地图集的加权平均值;地图集权重在空间上是不同的。使用联合标签融合(JLF)框架确定权重。主要的方法贡献是JLF直接应用于MRI信号,而不是标签。然后使用OASIS分类器将合成的图像用作病变分割任务中的附加特征,OASIS分类器是一种基于多模态强度的逻辑回归模型。加入JIF合成图像后,病灶分割的骰子-索伦森系数(相对于手工绘制的金标准)比标准模型分割在所有受试者和10个单独的训练/测试折叠的最佳阈值下提高了0.0462±0.0050(平均值±标准差)。
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引用次数: 0
Brain Cancer Imaging Phenomics Toolkit (brain-CaPTk): An Interactive Platform for Quantitative Analysis of Glioblastoma. 脑癌成像表型组学工具包(Brain - captk):胶质母细胞瘤定量分析的互动平台。
Pub Date : 2018-01-01 Epub Date: 2018-02-17 DOI: 10.1007/978-3-319-75238-9_12
Saima Rathore, Spyridon Bakas, Sarthak Pati, Hamed Akbari, Ratheesh Kalarot, Patmaa Sridharan, Martin Rozycki, Mark Bergman, Birkan Tunc, Ragini Verma, Michel Bilello, Christos Davatzikos

Quantitative research, especially in the field of radio(geno)mics, has helped us understand fundamental mechanisms of neurologic diseases. Such research is integrally based on advanced algorithms to derive extensive radiomic features and integrate them into diagnostic and predictive models. To exploit the benefit of such complex algorithms, their swift translation into clinical practice is required, currently hindered by their complicated nature. brain-CaPTk is a modular platform, with components spanning across image processing, segmentation, feature extraction, and machine learning, that facilitates such translation, enabling quantitative analyses without requiring substantial computational background. Thus, brain-CaPTk can be seamlessly integrated into the typical quantification, analysis and reporting workflow of a radiologist, underscoring its clinical potential. This paper describes currently available components of brain-CaPTk and example results from their application in glioblastoma.

定量研究,特别是在无线电(基因)组学领域,帮助我们了解神经系统疾病的基本机制。这种研究完全基于先进的算法,以获得广泛的放射学特征,并将其整合到诊断和预测模型中。为了利用这种复杂算法的好处,需要将其迅速转化为临床实践,目前由于其复杂性而受到阻碍。brain-CaPTk是一个模块化平台,具有跨越图像处理、分割、特征提取和机器学习的组件,可以促进这种翻译,实现定量分析,而无需大量的计算背景。因此,脑- captk可以无缝集成到放射科医生典型的量化、分析和报告工作流程中,凸显其临床潜力。本文介绍了目前可用的脑- captk成分及其在胶质母细胞瘤中的应用实例结果。
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引用次数: 50
Joint Intensity Fusion Image Synthesis Applied to Multiple Sclerosis Lesion Segmentation 关节强度融合图像合成在多发性硬化病灶分割中的应用
G. Fleishman, A. Valcarcel, D. Pham, Snehashis Roy, P. Calabresi, Paul Yushkevich, R. Shinohara, I. Oguz
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引用次数: 7
Multi-modal Registration Improves Group Discrimination in Pediatric Traumatic Brain Injury. 多模式登记提高儿童创伤性脑损伤的群体歧视。
Emily L Dennis, Faisal Rashid, Julio Villalon-Reina, Gautam Prasad, Joshua Faskowitz, Talin Babikian, Richard Mink, Christopher Babbitt, Jeffrey Johnson, Christopher C Giza, Robert F Asarnow, Paul M Thompson

Traumatic brain injury (TBI) can disrupt the white matter (WM) integrity in the brain, leading to functional and cognitive disruptions that may persist for years. There is considerable heterogeneity within the patient group, which complicates group analyses. Here we present improvements to a tract identification workflow, automated multi-atlas tract extraction (autoMATE), evaluating the effects of improved registration. Use of study-specific template improved group classification accuracy over the standard workflow. The addition of a multi-modal registration that includes information from diffusion weighted imaging (DWI), T1-weighted, and Fluid-Attenuated Inversion Recovery (FLAIR) further improved classification accuracy. We also examined whether particular tracts contribute more to group classification than others. Parts of the corpus callosum contributed most, and there were unexpected asymmetries between bilateral tracts.

创伤性脑损伤(TBI)可以破坏大脑白质(WM)的完整性,导致可能持续数年的功能和认知障碍。患者组内存在相当大的异质性,这使组分析变得复杂。在这里,我们提出了改进的通道识别工作流程,自动多图谱通道提取(自动化),评估改进注册的效果。与标准工作流程相比,使用特定于研究的模板提高了分组分类的准确性。加入多模态配准,包括来自扩散加权成像(DWI)、t1加权成像和流体衰减反演恢复(FLAIR)的信息,进一步提高了分类精度。我们还研究了特定束是否比其他束对群体分类贡献更大。胼胝体的部分贡献最大,双侧束之间存在意想不到的不对称。
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引用次数: 0
Segmentation of Gliomas in Pre-operative and Post-operative Multimodal Magnetic Resonance Imaging Volumes Based on a Hybrid Generative-Discriminative Framework. 基于混合生成-判别框架的术前和术后多模态磁共振成像卷中胶质瘤的分割。
Pub Date : 2016-10-01 Epub Date: 2017-04-12 DOI: 10.1007/978-3-319-55524-9_18
Ke Zeng, Spyridon Bakas, Aristeidis Sotiras, Hamed Akbari, Martin Rozycki, Saima Rathore, Sarthak Pati, Christos Davatzikos

We present an approach for segmenting both low- and high-grade gliomas in multimodal magnetic resonance imaging volumes. The proposed framework is an extension of our previous work [6,7], with an additional component for segmenting post-operative scans. The proposed approach is based on a hybrid generative-discriminative model. Firstly, a generative model based on a joint segmentation-registration framework is used to segment the brain scans into cancerous and healthy tissues. Secondly, a gradient boosting classification scheme is used to refine tumor segmentation based on information from multiple patients. We evaluated our approach in 218 cases during the training phase of the BRAin Tumor Segmentation (BRATS) 2016 challenge and report promising results. During the testing phase, the proposed approach was ranked among the top performing methods, after being additionally evaluated in 191 unseen cases.

我们提出了一种在多模态磁共振成像卷中分割低级别和高级别胶质瘤的方法。所提出的框架是我们之前工作[6,7]的扩展,增加了一个用于分割术后扫描图像的组件。所提出的方法基于生成-判别混合模型。首先,基于联合分割-注册框架的生成模型用于将脑部扫描图像分割为癌症组织和健康组织。其次,使用梯度提升分类方案,根据多名患者的信息完善肿瘤分割。在 BRAin Tumor Segmentation (BRATS) 2016 挑战赛的训练阶段,我们在 218 个案例中评估了我们的方法,并报告了令人鼓舞的结果。在测试阶段,在对 191 个未见病例进行额外评估后,我们提出的方法跻身表现最佳的方法之列。
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引用次数: 0
A Fast Approach to Automatic Detection of Brain Lesions. 一种快速自动检测脑损伤的方法。
Pub Date : 2016-01-01 Epub Date: 2017-04-12 DOI: 10.1007/978-3-319-55524-9_6
Subhranil Koley, Chandan Chakraborty, Caterina Mainero, Bruce Fischl, Iman Aganj

Template matching is a popular approach to computer-aided detection of brain lesions from magnetic resonance (MR) images. The outcomes are often sufficient for localizing lesions and assisting clinicians in diagnosis. However, processing large MR volumes with three-dimensional (3D) templates is demanding in terms of computational resources, hence the importance of the reduction of computational complexity of template matching, particularly in situations in which time is crucial (e.g. emergent stroke). In view of this, we make use of 3D Gaussian templates with varying radii and propose a new method to compute the normalized cross-correlation coefficient as a similarity metric between the MR volume and the template to detect brain lesions. Contrary to the conventional fast Fourier transform (FFT) based approach, whose runtime grows as O(N logN) with the number of voxels, the proposed method computes the cross-correlation in O(N). We show through our experiments that the proposed method outperforms the FFT approach in terms of computational time, and retains comparable accuracy.

模板匹配是从磁共振(MR)图像中计算机辅助检测脑损伤的一种流行方法。结果通常足以定位病变并协助临床医生诊断。然而,使用三维(3D)模板处理大型MR体积在计算资源方面要求很高,因此降低模板匹配的计算复杂性非常重要,特别是在时间至关重要的情况下(例如紧急笔划)。鉴于此,我们利用不同半径的三维高斯模板,提出了一种新的方法来计算归一化互相关系数作为MR体积与模板之间的相似度度量来检测脑损伤。传统的基于快速傅里叶变换(FFT)的方法的运行时间随体素数增长为O(N logN),与之相反,该方法在O(N)内计算相互关系。我们通过实验表明,所提出的方法在计算时间方面优于FFT方法,并保持相当的精度。
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引用次数: 5
GLISTRboost: Combining Multimodal MRI Segmentation, Registration, and Biophysical Tumor Growth Modeling with Gradient Boosting Machines for Glioma Segmentation. GLISTRboost:将多模态MRI分割、配准和生物物理肿瘤生长建模与梯度增强机相结合,用于胶质瘤分割。
Spyridon Bakas, Ke Zeng, Aristeidis Sotiras, Saima Rathore, Hamed Akbari, Bilwaj Gaonkar, Martin Rozycki, Sarthak Pati, Christos Davatzikos

We present an approach for segmenting low- and high-grade gliomas in multimodal magnetic resonance imaging volumes. The proposed approach is based on a hybrid generative-discriminative model. Firstly, a generative approach based on an Expectation-Maximization framework that incorporates a glioma growth model is used to segment the brain scans into tumor, as well as healthy tissue labels. Secondly, a gradient boosting multi-class classification scheme is used to refine tumor labels based on information from multiple patients. Lastly, a probabilistic Bayesian strategy is employed to further refine and finalize the tumor segmentation based on patient-specific intensity statistics from the multiple modalities. We evaluated our approach in 186 cases during the training phase of the BRAin Tumor Segmentation (BRATS) 2015 challenge and report promising results. During the testing phase, the algorithm was additionally evaluated in 53 unseen cases, achieving the best performance among the competing methods.

我们提出了一种在多模态磁共振成像体积中分割低级别和高级别胶质瘤的方法。该方法基于生成-判别混合模型。首先,采用基于期望最大化框架的生成方法,结合胶质瘤生长模型,将脑部扫描图像分割为肿瘤和健康组织标签。其次,基于多个患者的信息,采用梯度增强多类分类方案对肿瘤标签进行细化;最后,采用概率贝叶斯策略进一步完善和完成基于患者特异性强度统计的肿瘤分割。我们在脑肿瘤分割(BRATS) 2015挑战赛的训练阶段对186例病例进行了评估,并报告了令人鼓舞的结果。在测试阶段,该算法在53个未见情况下进行了额外评估,在竞争方法中获得了最佳性能。
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引用次数: 20
期刊
Brainlesion : glioma, multiple sclerosis, stroke and traumatic brain injuries. BrainLes (Workshop)
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