胸部计算机断层扫描的气道分割在肺部疾病诊断中起着至关重要的作用。与手动分割相比,基于U-NET体系结构的计算机辅助气道分割更有效,更准确。在本文中,我们采用了由骰子损失功能训练的U $^2 $ -NET,以基于ATM'22提供的299次培训CT扫描,对多站点CT扫描的气道树进行建模。从训练中将派生的显着性概率图应用于验证数据以提取相应的气道树。该观察结果表明,大多数分割的气道树从准确性和连通性的角度表现出色。将诸如非航空区域标签和去除之类的改进应用于某些获得的气道树模型,以显示二进制结果的最大组成部分。
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自动化的腹部多器官分割是计算机辅助诊断腹部器官相关疾病的至关重要但具有挑战性的任务。尽管许多深度学习模型在许多医学图像分割任务中取得了显着的成功,但由于腹部器官的不同大小以及它们之间的含糊界限,腹部器官的准确分割仍然具有挑战性。在本文中,我们提出了一个边界感知网络(BA-NET),以分段CT扫描和MRI扫描进行腹部器官。该模型包含共享编码器,边界解码器和分割解码器。两个解码器都采用了多尺度的深度监督策略,这可以减轻可变器官尺寸引起的问题。边界解码器在每个量表上产生的边界概率图被用作提高分割特征图的注意。我们评估了腹部多器官细分(AMOS)挑战数据集的BA-NET,并获得了CT扫描的多器官分割的平均骰子分数为89.29 $ \%$,平均骰子得分为71.92 $ \%$ \%$ \% MRI扫描。结果表明,在两个分割任务上,BA-NET优于NNUNET。
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在这项工作中,我们介绍了我们提出的方法,该方法是使用SWIN UNETR和基于U-NET的深神经网络体系结构从CT扫描中分割肺动脉的方法。六个型号,基于SWIN UNETR的三个型号以及基于3D U-NET的三个模型,使用加权平均值来制作最终的分割掩码。我们的团队通过这种方法获得了84.36%的多级骰子得分。我们的工作代码可在以下链接上提供:https://github.com/akansh12/parse2022。这项工作是Miccai Parse 2022挑战的一部分。
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Automatic segmentation of kidney and kidney tumour in Computed Tomography (CT) images is essential, as it uses less time as compared to the current gold standard of manual segmentation. However, many hospitals are still reliant on manual study and segmentation of CT images by medical practitioners because of its higher accuracy. Thus, this study focuses on the development of an approach for automatic kidney and kidney tumour segmentation in contrast-enhanced CT images. A method based on Convolutional Neural Network (CNN) was proposed, where a 3D U-Net segmentation model was developed and trained to delineate the kidney and kidney tumour from CT scans. Each CT image was pre-processed before inputting to the CNN, and the effect of down-sampled and patch-wise input images on the model performance was analysed. The proposed method was evaluated on the publicly available 2021 Kidney and Kidney Tumour Segmentation Challenge (KiTS21) dataset. The method with the best performing model recorded an average training Dice score of 0.6129, with the kidney and kidney tumour Dice scores of 0.7923 and 0.4344, respectively. For testing, the model obtained a kidney Dice score of 0.8034, and a kidney tumour Dice score of 0.4713, with an average Dice score of 0.6374.
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Segmentation of lung tissue in computed tomography (CT) images is a precursor to most pulmonary image analysis applications. Semantic segmentation methods using deep learning have exhibited top-tier performance in recent years. This paper presents a fully automatic method for identifying the lungs in three-dimensional (3D) pulmonary CT images, which we call it Lung-Net. We conjectured that a significant deeper network with inceptionV3 units can achieve a better feature representation of lung CT images without increasing the model complexity in terms of the number of trainable parameters. The method has three main advantages. First, a U-Net architecture with InceptionV3 blocks is developed to resolve the problem of performance degradation and parameter overload. Then, using information from consecutive slices, a new data structure is created to increase generalization potential, allowing more discriminating features to be extracted by making data representation as efficient as possible. Finally, the robustness of the proposed segmentation framework was quantitatively assessed using one public database to train and test the model (LUNA16) and two public databases (ISBI VESSEL12 challenge and CRPF dataset) only for testing the model; each database consists of 700, 23, and 40 CT images, respectively, that were acquired with a different scanner and protocol. Based on the experimental results, the proposed method achieved competitive results over the existing techniques with Dice coefficient of 99.7, 99.1, and 98.8 for LUNA16, VESSEL12, and CRPF datasets, respectively. For segmenting lung tissue in CT images, the proposed model is efficient in terms of time and parameters and outperforms other state-of-the-art methods. Additionally, this model is publicly accessible via a graphical user interface.
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新的SARS-COV-2大流行病也被称为Covid-19一直在全世界蔓延,导致生活猖獗。诸如CT,X射线等的医学成像在通过呈现器官功能的视觉表示来诊断患者时起着重要作用。然而,对于任何分析这种扫描的放射科学家是一种乏味且耗时的任务。新兴的深度学习技术展示了它的优势,在分析诸如Covid-19等疾病和病毒的速度更快的诊断中有助于帮助。在本文中,提出了一种基于自动化的基于深度学习的模型CoVID-19层级分割网络(CHS-Net),其用作语义层次分段器,以通过使用两个级联的CT医学成像来识别来自肺轮廓的Covid-19受感染的区域剩余注意力撤销U-NET(RAIU-Net)模型。 Raiu-net包括具有频谱空间和深度关注网络(SSD)的剩余成立U-Net模型,该网络(SSD)是由深度可分离卷积和混合池(MAX和频谱池)的收缩和扩展阶段开发的,以有效地编码和解码语义和不同的分辨率信息。 CHS-NET接受了分割损失函数的培训,该损失函数是二进制交叉熵损失和骰子损失的平均值,以惩罚假阴性和假阳性预测。将该方法与最近提出的方法进行比较,并使用标准度量评估,如准确性,精度,特异性,召回,骰子系数和jaccard相似度以及与Gradcam ++和不确定性地图的模型预测的可视化解释。随着广泛的试验,观察到所提出的方法优于最近提出的方法,并有效地将Covid-19受感染的地区进行肺部。
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Accurate airway extraction from computed tomography (CT) images is a critical step for planning navigation bronchoscopy and quantitative assessment of airway-related chronic obstructive pulmonary disease (COPD). The existing methods are challenging to sufficiently segment the airway, especially the high-generation airway, with the constraint of the limited label and cannot meet the clinical use in COPD. We propose a novel two-stage 3D contextual transformer-based U-Net for airway segmentation using CT images. The method consists of two stages, performing initial and refined airway segmentation. The two-stage model shares the same subnetwork with different airway masks as input. Contextual transformer block is performed both in the encoder and decoder path of the subnetwork to finish high-quality airway segmentation effectively. In the first stage, the total airway mask and CT images are provided to the subnetwork, and the intrapulmonary airway mask and corresponding CT scans to the subnetwork in the second stage. Then the predictions of the two-stage method are merged as the final prediction. Extensive experiments were performed on in-house and multiple public datasets. Quantitative and qualitative analysis demonstrate that our proposed method extracted much more branches and lengths of the tree while accomplishing state-of-the-art airway segmentation performance. The code is available at https://github.com/zhaozsq/airway_segmentation.
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准确的几何表示对于开发有限元模型至关重要。尽管通常只有很少的数据在准确细分精美特征,例如缝隙和薄结构方面,虽然只有很少的数据就有良好的深度学习分割方法。随后,分段的几何形状需要劳动密集型手动修改,以达到可用于模拟目的的质量。我们提出了一种使用转移学习来重复使用分段差的数据集的策略,并结合了交互式学习步骤,其中数据对数据进行微调导致解剖上精确的分割适合模拟。我们使用改良的多平台UNET,该UNET使用下髋关节分段和专用损耗函数进行预训练,以学习间隙区域和后处理,以纠正由于旋转不变性而在对称类别上的微小不准确性。我们证明了这种可靠但概念上简单的方法,采用了临床验证的髋关节扫描扫描的临床验证结果。代码和结果3D模型可在以下网址提供:\ url {https://github.com/miccai2022-155/autoseg}
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Covid-19已成为全球大流行,仍然对公众产生严重的健康风险。 CT扫描中肺炎病变的准确和有效的细分对于治疗决策至关重要。我们提出了一种使用循环一致生成的对冲网络(循环GaN)的新型无监督方法,其自动化和加速病变描绘过程。工作流程包括肺体积分割,“合成”健康肺一代,感染和健康的图像减法,以及二元病变面膜创造。首先使用预先训练的U-Net划定肺体积,并作为后续网络的输入。开发了循环GaN,以产生来自受感染的肺图像的合成的“健康”肺CT图像。之后,通过从“受感染的”肺CT图像中减去合成的“健康”肺CT图像来提取肺炎病变。然后将中值过滤器和K-Means聚类应用于轮廓的病变。在两个公共数据集(冠状遗传酶和Radiopedia)上验证了自动分割方法。骰子系数分别达到0.748和0.730,用于冠状遗传酶和RadioPedia数据集。同时,对冠纳卡酶数据集的病变分割性的精度和灵敏度为0.813和0.735,以及用于Radiopedia数据集的0.773和0.726。性能与现有的监督分割网络和以前无监督的特性相当。提出的无监督分割方法在自动Covid-19病变描绘中实现了高精度和效率。分割结果可以作为进一步手动修改的基线和病变诊断的质量保证工具。此外,由于其无人自化的性质,结果不受医师经验的影响,否则对监督方法至关重要。
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用于图像分割的深卷卷卷神经网络不会明确学习标签结构,并且可能会在类似树状结构(例如气道或血管)分割的圆柱形结构中产生不正确的结构(例如,具有断开的圆柱形结构)的分割。在本文中,我们提出了一种新型的标签改进方法,以从初始分割中纠正此类错误,并隐含地包含有关标签结构的信息。该方法具有两个新颖的部分:1)生成合成结构误差的模型,以及2)产生合成分割(带有误差)的标签外观仿真网络,其外观与实际初始分段相似。使用这些合成分割和原始图像,对标签改进网络进行了训练,以纠正错误并改善初始分割。该方法对两个分割任务进行了验证:来自胸部计算机断层扫描(CT)扫描和大脑3D CT血管造影(CTA)图像的脑血管分割的气道分割。在这两种应用中,我们的方法都大大优于标准的3D U-NET和其他先前的改进方法。当使用其他未标记的数据进行模型培训时,改进甚至更大。在消融研究中,我们证明了所提出方法的不同组成部分的值。
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大型策划数据集是必要的,但是注释医学图像是一个耗时,费力且昂贵的过程。因此,最近的监督方法着重于利用大量未标记的数据。但是,这样做是一项具有挑战性的任务。为了解决这个问题,我们提出了一种新的3D Cross伪监督(3D-CPS)方法,这是一种基于NNU-NET的半监督网络体系结构,采用交叉伪监督方法。我们设计了一种新的基于NNU-NET的预处理方法,并在推理阶段采用强制间距设置策略来加快推理时间。此外,我们将半监督的损耗重量设置为与每个时期的线性扩展,以防止在早期训练过程中模型从低质量的伪标签中。我们提出的方法在MICCAI Flare2022验证集(20例)上,平均骰子相似系数(DSC)为0.881,平均归一化表面距离(NSD)为0.913。
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由于不规则的形状,正常和感染组织之间的各种尺寸和无法区分的边界,仍然是一种具有挑战性的任务,可以准确地在CT图像上进行Covid-19的感染病变。在本文中,提出了一种新的分段方案,用于通过增强基于编码器 - 解码器架构的不同级别的监督信息和融合多尺度特征映射来感染Covid-19。为此,提出了深入的协作监督(共同监督)计划,以指导网络学习边缘和语义的特征。更具体地,首先设计边缘监控模块(ESM),以通过将边缘监督信息结合到初始阶段的下采样的初始阶段来突出显示低电平边界特征。同时,提出了一种辅助语义监督模块(ASSM)来加强通过将掩码监督信息集成到稍后阶段来加强高电平语义信息。然后,通过使用注意机制来扩展高级和低电平特征映射之间的语义间隙,开发了一种注意融合模块(AFM)以融合不同级别的多个规模特征图。最后,在四个各种Covid-19 CT数据集上证明了所提出的方案的有效性。结果表明,提出的三个模块都是有希望的。基于基线(RESUNT),单独使用ESM,ASSM或AFM可以分别将骰子度量增加1.12 \%,1.95 \%,1.63 \%,而在我们的数据集中,通过将三个模型结合在一起可以上升3.97 \% 。与各个数据集的现有方法相比,所提出的方法可以在某些主要指标中获得更好的分段性能,并可实现最佳的泛化和全面的性能。
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由于复杂的腹部内形状和腹部器官之间的复杂形状和外观变化,从不同模态的CT成像中进行的准确且健壮的腹部多器官分割是一项具有挑战性的任务。在本文中,我们提出了一个具有分层空间特征调制的概率多器官分割网络,以捕获灵活的器官语义变体,并将学习的变体注入不同的特征图尺度,以进行指导分割。更具体地说,我们通过条件变异自动编码器设计一个输入分解模块,以在低维潜在空间和模型富有器官语义变化上学习器官特异性分布,该分布在输入图像上进行条件。 -NET解码器通过空间特征转换从层次上进行分层,该特征转换能够将变化转换为空间特征映射调制并指导细尺度分割的条件仿射转换参数。提出的方法对公开可用的腹部可用数据集进行了培训,并在其他两个开放数据集上进行了评估,即100个挑战/病理测试,从腹部腹部1K完全监督的腹部器官细分基准和90例TCIA+&BTCV数据集中进行了90例病例。使用这些数据集用于四个腹部器官,肾脏,脾脏和胰腺,肾脏分数提高了7.3%,胰腺的骰子得分提高了7.7%,而胰腺的骰子得分提高了7.3%,而胰腺的较高速度比强度快7倍,较高的7倍基线分割方法(NNUNET和COTR)。
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Convolutional Neural Networks (CNNs) have been recently employed to solve problems from both the computer vision and medical image analysis fields. Despite their popularity, most approaches are only able to process 2D images while most medical data used in clinical practice consists of 3D volumes. In this work we propose an approach to 3D image segmentation based on a volumetric, fully convolutional, neural network. Our CNN is trained end-to-end on MRI volumes depicting prostate, and learns to predict segmentation for the whole volume at once. We introduce a novel objective function, that we optimise during training, based on Dice coefficient. In this way we can deal with situations where there is a strong imbalance between the number of foreground and background voxels. To cope with the limited number of annotated volumes available for training, we augment the data applying random non-linear transformations and histogram matching. We show in our experimental evaluation that our approach achieves good performances on challenging test data while requiring only a fraction of the processing time needed by other previous methods.
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医疗图像分割通常需要在单个图像上分割多个椭圆对象。这包括除其他任务外,还分割了诸如轴向CTA切片的主动脉之类的容器。在本文中,我们提出了一种一般方法,用于改善这些任务中神经网络的语义分割性能,并验证我们在主动脉分割任务中的方法。我们使用两个神经网络的级联反应,其中一个基于U-NET体系结构执行粗糙的分割,另一个对输入的极性图像转换执行了最终分割。粗糙分割的连接组件分析用于构建极性变换,并且使用磁滞阈值融合了对同一图像的多个转换的预测。我们表明,这种方法可以改善主动脉分割性能,而无需复杂的神经网络体系结构。此外,我们表明我们的方法可以提高稳健性和像素级的回忆,同时根据最新的状态实现细分性能。
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Glioblastomas是最具侵略性的快速生长的主要脑癌,起源于大脑的胶质细胞。准确鉴定恶性脑肿瘤及其子区域仍然是医学图像分割中最具挑战性问题之一。脑肿瘤分割挑战(Brats)是自动脑胶质细胞瘤分割算法的流行基准,自于其启动。在今年的挑战中,Brats 2021提供了2,000名术前患者的最大多参数(MPMRI)数据集。在本文中,我们提出了两个深度学习框架的新聚合,即在术前MPMRI中的自动胶质母细胞瘤识别的Deepseg和NNU-Net。我们的集合方法获得了92.00,87.33和84.10和Hausdorff距离为3.81,8.91和16.02的骰子相似度分数,用于增强肿瘤,肿瘤核心和全肿瘤区域,单独进行。这些实验结果提供了证据表明它可以在临床上容易地应用,从而助攻脑癌预后,治疗计划和治疗反应监测。
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肺癌是最致命的癌症之一,部分诊断和治疗取决于肿瘤的准确描绘。目前是最常见的方法的人以人为本的分割,须遵守观察者间变异性,并且考虑到专家只能提供注释的事实,也是耗时的。最近展示了有前途的结果,自动和半自动肿瘤分割方法。然而,随着不同的研究人员使用各种数据集和性能指标验证了其算法,可靠地评估这些方法仍然是一个开放的挑战。通过2018年IEEE视频和图像处理(VIP)杯竞赛创建的计算机断层摄影扫描(LOTUS)基准测试的肺起源肿瘤分割的目标是提供唯一的数据集和预定义的指标,因此不同的研究人员可以开发和以统一的方式评估他们的方法。 2018年VIP杯始于42个国家的全球参与,以获得竞争数据。在注册阶段,有129名成员组成了来自10个国家的28个团队,其中9个团队将其达到最后阶段,6队成功完成了所有必要的任务。简而言之,竞争期间提出的所有算法都是基于深度学习模型与假阳性降低技术相结合。三种决赛选手开发的方法表明,有希望的肿瘤细分导致导致越来越大的努力应降低假阳性率。本次竞争稿件概述了VIP-Cup挑战,以及所提出的算法和结果。
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This paper presents our solution for the 2nd COVID-19 Severity Detection Competition. This task aims to distinguish the Mild, Moderate, Severe, and Critical grades in COVID-19 chest CT images. In our approach, we devise a novel infection-aware 3D Contrastive Mixup Classification network for severity grading. Specifcally, we train two segmentation networks to first extract the lung region and then the inner lesion region. The lesion segmentation mask serves as complementary information for the original CT slices. To relieve the issue of imbalanced data distribution, we further improve the advanced Contrastive Mixup Classification network by weighted cross-entropy loss. On the COVID-19 severity detection leaderboard, our approach won the first place with a Macro F1 Score of 51.76%. It significantly outperforms the baseline method by over 11.46%.
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最近关于Covid-19的研究表明,CT成像提供了评估疾病进展和协助诊断的有用信息,以及帮助理解疾病。有越来越多的研究,建议使用深度学习来使用胸部CT扫描提供快速准确地定量Covid-19。兴趣的主要任务是胸部CT扫描的肺和肺病变的自动分割,确认或疑似Covid-19患者。在这项研究中,我们使用多中心数据集比较12个深度学习算法,包括开源和内部开发的算法。结果表明,合并不同的方法可以提高肺部分割,二元病变分割和多种子病变分割的总体测试集性能,从而分别为0.982,0.724和0.469的平均骰子分别。将得到的二元病变分段为91.3ml的平均绝对体积误差。通常,区分不同病变类型的任务更加困难,分别具有152mL的平均绝对体积差,分别为整合和磨碎玻璃不透明度为0.369和0.523的平均骰子分数。所有方法都以平均体积误差进行二元病变分割,该分段优于人类评估者的视觉评估,表明这些方法足以用于临床实践中使用的大规模评估。
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Medical image segmentation is an actively studied task in medical imaging, where the precision of the annotations is of utter importance towards accurate diagnosis and treatment. In recent years, the task has been approached with various deep learning systems, among the most popular models being U-Net. In this work, we propose a novel strategy to generate ensembles of different architectures for medical image segmentation, by leveraging the diversity (decorrelation) of the models forming the ensemble. More specifically, we utilize the Dice score among model pairs to estimate the correlation between the outputs of the two models forming each pair. To promote diversity, we select models with low Dice scores among each other. We carry out gastro-intestinal tract image segmentation experiments to compare our diversity-promoting ensemble (DiPE) with another strategy to create ensembles based on selecting the top scoring U-Net models. Our empirical results show that DiPE surpasses both individual models as well as the ensemble creation strategy based on selecting the top scoring models.
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