LinSEM: Linearizing segmentation evaluation metrics for medical images.

Abstract:

:Numerous algorithms are available for segmenting medical images. Empirical discrepancy metrics are commonly used in measuring the similarity or difference between segmentations by algorithms and "true" segmentations. However, one issue with the commonly used metrics is that the same metric value often represents different levels of "clinical acceptability" for different objects depending on their size, shape, and complexity of form. An ideal segmentation evaluation metric should be able to reflect degrees of acceptability directly from metric values and be able to show the same acceptability meaning by the same metric value for objects of different shape, size, and form. Intuitively, metrics which have a linear relationship with degree of acceptability will satisfy these conditions of the ideal metric. This issue has not been addressed in the medical image segmentation literature. In this paper, we propose a method called LinSEM for linearizing commonly used segmentation evaluation metrics based on corresponding degrees of acceptability evaluated by an expert in a reader study. LinSEM consists of two main parts: (a) estimating the relationship between metric values and degrees of acceptability separately for each considered metric and object, and (b) linearizing any given metric value corresponding to a given segmentation of an object based on the estimated relationship. Since algorithmic segmentations do not usually cover the full range of variability of acceptability, we create a set (SS) of simulated segmentations for each object that guarantee such coverage by using image transformations applied to a set (ST) of true segmentations of the object. We then conduct a reader study wherein the reader assigns an acceptability score (AS) for each sample in SS, expressing the acceptability of the sample on a 1 to 5 scale. Then the metric-AS relationship is constructed for the object by using an estimation method. With the idea that the ideal metric should be linear with respect to acceptability, we can then linearize the metric value of any segmentation sample of the object from a set (SA) of actual segmentations to its linearized value by using the constructed metric-acceptability relationship curve. Experiments are conducted involving three metrics - Dice coefficient (DC), Jaccard index (JI), and Hausdorff Distance (HD) - on five objects: skin outer boundary of the head and neck (cervico-thoracic) body region superior to the shoulders, right parotid gland, mandible, cervical esophagus, and heart. Actual segmentations (SA) of these objects are generated via our Automatic Anatomy Recognition (AAR) method. Our results indicate that, generally, JI has a more linear relationship with acceptability before linearization than other metrics. LinSEM achieves significantly improved uniformity of meaning post-linearization across all tested objects and metrics, except in a few cases where the departure from linearity was insignificant. This improvement is generally the largest for DC and HD reaching 8-25% for many tested cases. Although some objects (such as right parotid gland and esophagus for DC and JI) are close in their meaning between themselves before linearization, they are distant in this meaning from other objects but are brought close to other objects after linearization. This suggests the importance of performing linearization considering all objects in a body region and body-wide.

journal_name

Med Image Anal

journal_title

Medical image analysis

authors

Li J,Udupa JK,Tong Y,Wang L,Torigian DA

doi

10.1016/j.media.2019.101601

subject

Has Abstract

pub_date

2020-02-01 00:00:00

pages

101601

eissn

1361-8415

issn

1361-8423

pii

S1361-8415(19)30140-9

journal_volume

60

pub_type

杂志文章
  • Automated classification of lung bronchovascular anatomy in CT using AdaBoost.

    abstract::Lung CAD systems require the ability to classify a variety of pulmonary structures as part of the diagnostic process. The purpose of this work was to develop a methodology for fully automated voxel-by-voxel classification of airways, fissures, nodules, and vessels from chest CT images using a single feature set and cl...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2007.03.004

    authors: Ochs RA,Goldin JG,Abtin F,Kim HJ,Brown K,Batra P,Roback D,McNitt-Gray MF,Brown MS

    更新日期:2007-06-01 00:00:00

  • Simulation of cardiac pathologies using an electromechanical biventricular model and XMR interventional imaging.

    abstract::Simulating cardiac electromechanical activity is of great interest for a better understanding of pathologies and for therapy planning. Design and validation of such models is difficult due to the lack of clinical data. XMR systems are a new type of interventional facility in which patients can be rapidly transferred b...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2005.05.003

    authors: Sermesant M,Rhode K,Sanchez-Ortiz GI,Camara O,Andriantsimiavona R,Hegde S,Rueckert D,Lambiase P,Bucknall C,Rosenthal E,Delingette H,Hill DL,Ayache N,Razavi R

    更新日期:2005-10-01 00:00:00

  • Respiratory motion models: a review.

    abstract::The problem of respiratory motion has proved a serious obstacle in developing techniques to acquire images or guide interventions in abdominal and thoracic organs. Motion models offer a possible solution to these problems, and as a result the field of respiratory motion modelling has become an active one over the past...

    journal_title:Medical image analysis

    pub_type: 杂志文章,评审

    doi:10.1016/j.media.2012.09.005

    authors: McClelland JR,Hawkes DJ,Schaeffter T,King AP

    更新日期:2013-01-01 00:00:00

  • Evaluation of automatic neonatal brain segmentation algorithms: the NeoBrainS12 challenge.

    abstract::A number of algorithms for brain segmentation in preterm born infants have been published, but a reliable comparison of their performance is lacking. The NeoBrainS12 study (http://neobrains12.isi.uu.nl), providing three different image sets of preterm born infants, was set up to provide such a comparison. These sets a...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2014.11.001

    authors: Išgum I,Benders MJ,Avants B,Cardoso MJ,Counsell SJ,Gomez EF,Gui L,Hűppi PS,Kersbergen KJ,Makropoulos A,Melbourne A,Moeskops P,Mol CP,Kuklisova-Murgasova M,Rueckert D,Schnabel JA,Srhoj-Egekher V,Wu J,Wang S,de Vries

    更新日期:2015-02-01 00:00:00

  • Unmixing dynamic PET images with variable specific binding kinetics.

    abstract::To analyze dynamic positron emission tomography (PET) images, various generic multivariate data analysis techniques have been considered in the literature, such as principal component analysis (PCA), independent component analysis (ICA), factor analysis and nonnegative matrix factorization (NMF). Nevertheless, these c...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2018.07.011

    authors: Cavalcanti YC,Oberlin T,Dobigeon N,Stute S,Ribeiro M,Tauber C

    更新日期:2018-10-01 00:00:00

  • Unsupervised boundary delineation of spinal neural foramina using a multi-feature and adaptive spectral segmentation.

    abstract::As a common disease in the elderly, neural foramina stenosis (NFS) brings a significantly negative impact on the quality of life due to its symptoms including pain, disability, fall risk and depression. Accurate boundary delineation is essential to the clinical diagnosis and treatment of NFS. However, existing clinica...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2016.10.009

    authors: He X,Zhang H,Landis M,Sharma M,Warrington J,Li S

    更新日期:2017-02-01 00:00:00

  • Abdominal multi-organ segmentation with organ-attention networks and statistical fusion.

    abstract::Accurate and robust segmentation of abdominal organs on CT is essential for many clinical applications such as computer-aided diagnosis and computer-aided surgery. But this task is challenging due to the weak boundaries of organs, the complexity of the background, and the variable sizes of different organs. To address...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2019.04.005

    authors: Wang Y,Zhou Y,Shen W,Park S,Fishman EK,Yuille AL

    更新日期:2019-07-01 00:00:00

  • SNR enhancement of highly-accelerated real-time cardiac MRI acquisitions based on non-local means algorithm.

    abstract::Real-time cardiac MRI appears as a promising technique to evaluate the mechanical function of the heart. However, ultra-fast MRI acquisitions come with an important signal-to-noise ratio (SNR) penalty, which drastically reduces the image quality. Hence, a real-time denoising approach would be desirable for SNR amelior...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2009.05.006

    authors: Naegel B,Cernicanu A,Hyacinthe JN,Tognolini M,Vallée JP

    更新日期:2009-08-01 00:00:00

  • Coupled parametric model for estimation of visual field tests based on OCT macular thickness maps, and vice versa, in glaucoma care.

    abstract::The current standard of care for glaucoma patients consists of functional assessment of vision via visual field (VF) testing, which is sensitive but subjective, time-consuming, and often unreliable. A new imaging technology, Fourier domain optical coherence tomography (OCT), is being introduced to assess the structura...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2011.05.012

    authors: Tsai A,Caprioli J,Shen LQ

    更新日期:2012-01-01 00:00:00

  • Attentive neural cell instance segmentation.

    abstract::Neural cell instance segmentation, which aims at joint detection and segmentation of every neural cell in a microscopic image, is essential to many neuroscience applications. The challenge of this task involves cell adhesion, cell distortion, unclear cell contours, low-contrast cell protrusion structures, and backgrou...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2019.05.004

    authors: Yi J,Wu P,Jiang M,Huang Q,Hoeppner DJ,Metaxas DN

    更新日期:2019-07-01 00:00:00

  • Automatic detection of over 100 anatomical landmarks in medical CT images: A framework with independent detectors and combinatorial optimization.

    abstract::An automatic detection method for 197 anatomically defined landmarks in computed tomography (CT) volumes is presented. The proposed method can handle missed landmarks caused by detection failure, a limited imaging range and other problems using a novel combinatorial optimization framework with a two-stage sampling alg...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2016.04.001

    authors: Hanaoka S,Shimizu A,Nemoto M,Nomura Y,Miki S,Yoshikawa T,Hayashi N,Ohtomo K,Masutani Y

    更新日期:2017-01-01 00:00:00

  • Piecewise-diffeomorphic image registration: application to the motion estimation between 3D CT lung images with sliding conditions.

    abstract::In this paper, we propose a new strategy for modelling sliding conditions when registering 3D images in a piecewise-diffeomorphic framework. More specifically, our main contribution is the development of a mathematical formalism to perform Large Deformation Diffeomorphic Metric Mapping registration with sliding condit...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2012.10.001

    authors: Risser L,Vialard FX,Baluwala HY,Schnabel JA

    更新日期:2013-02-01 00:00:00

  • Improvement of fully automated airway segmentation on volumetric computed tomographic images using a 2.5 dimensional convolutional neural net.

    abstract::We propose a novel airway segmentation method in volumetric chest computed tomography (CT) and evaluate its performance on multiple datasets. The segmentation is performed voxel-by-voxel by a 2.5D convolutional neural net (2.5D CNN) trained in a supervised manner. To enhance the accuracy of the segmented airway tree, ...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2018.10.006

    authors: Yun J,Park J,Yu D,Yi J,Lee M,Park HJ,Lee JG,Seo JB,Kim N

    更新日期:2019-01-01 00:00:00

  • Nonlinear multiscale regularisation in MR elastography: Towards fine feature mapping.

    abstract::Fine-featured elastograms may provide additional information of radiological interest in the context of in vivo elastography. Here a new image processing pipeline called ESP (Elastography Software Pipeline) is developed to create Magnetic Resonance Elastography (MRE) maps of viscoelastic parameters (complex modulus ma...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2016.05.012

    authors: Barnhill E,Hollis L,Sack I,Braun J,Hoskins PR,Pankaj P,Brown C,van Beek EJR,Roberts N

    更新日期:2017-01-01 00:00:00

  • Groupwise registration with global-local graph shrinkage in atlas construction.

    abstract::Graph-based groupwise registration methods are widely used in atlas construction. Given a group of images, a graph is built whose nodes represent the images, and whose edges represent a geodesic path between two nodes. The distribution of images on an image manifold is explored through edge traversal in a graph. The f...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2020.101711

    authors: Fu T,Yang J,Li Q,Ai D,Song H,Jiang Y,Wang Y,Frangi AF

    更新日期:2020-08-01 00:00:00

  • Dynamically constructed network with error correction for accurate ventricle volume estimation.

    abstract::Automated ventricle volume estimation (AVVE) on cardiac magnetic resonance (CMR) images is very important for clinical cardiac disease diagnosis. However, current AVVE methods ignore the error correction for the estimated volume. This results in clinically intolerable ventricle volume estimation error and further lead...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2020.101723

    authors: Luo G,Wang W,Tam C,Wang K,Cao S,Zhang H,Chen B,Li S

    更新日期:2020-08-01 00:00:00

  • Shape regression machine and efficient segmentation of left ventricle endocardium from 2D B-mode echocardiogram.

    abstract::We present a machine learning approach called shape regression machine (SRM) for efficient segmentation of an anatomic structure that exhibits a deformable shape in a medical image, e.g., left ventricle endocardial wall in an echocardiogram. The SRM achieves efficient segmentation via statistical learning of the inter...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2010.04.002

    authors: Zhou SK

    更新日期:2010-08-01 00:00:00

  • Automated size-specific dose estimates using deep learning image processing.

    abstract::An automated vendor-independent system for dose monitoring in computed tomography (CT) medical examinations involving ionizing radiation is presented in this paper. The system provides precise size-specific dose estimates (SSDE) following the American Association of Physicists in Medicine regulations. Our dose managem...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2020.101898

    authors: Juszczyk J,Badura P,Czajkowska J,Wijata A,Andrzejewski J,Bozek P,Smolinski M,Biesok M,Sage A,Rudzki M,Wieclawek W

    更新日期:2021-02-01 00:00:00

  • Rubik's Cube+: A self-supervised feature learning framework for 3D medical image analysis.

    abstract::Due to the development of deep learning, an increasing number of research works have been proposed to establish automated analysis systems for 3D volumetric medical data to improve the quality of patient care. However, it is challenging to obtain a large number of annotated 3D medical data needed to train a neural net...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2020.101746

    authors: Zhu J,Li Y,Hu Y,Ma K,Zhou SK,Zheng Y

    更新日期:2020-08-01 00:00:00

  • Self-similarity weighted mutual information: a new nonrigid image registration metric.

    abstract::Mutual information (MI) has been widely used as a similarity measure for rigid registration of multi-modal and uni-modal medical images. However, robust application of MI to deformable registration is challenging mainly because rich structural information, which are critical cues for successful deformable registration...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2013.12.003

    authors: Rivaz H,Karimaghaloo Z,Collins DL

    更新日期:2014-02-01 00:00:00

  • SDAE-GAN: Enable high-dimensional pathological images in liver cancer survival prediction with a policy gradient based data augmentation method.

    abstract::High-dimensional pathological images produced by Immunohistochemistry (IHC) methods consist of many pathological indexes, which play critical roles in cancer treatment planning. However, these indexes currently cannot be utilized in survival prediction because joining them with patients' clinicopathological features (...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2020.101640

    authors: Wu H,Gao R,Sheng YP,Chen B,Li S

    更新日期:2020-05-01 00:00:00

  • Accurate estimation of retinal vessel width using bagged decision trees and an extended multiresolution Hermite model.

    abstract::We present an algorithm estimating the width of retinal vessels in fundus camera images. The algorithm uses a novel parametric surface model of the cross-sectional intensities of vessels, and ensembles of bagged decision trees to estimate the local width from the parameters of the best-fit surface. We report comparati...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2013.07.006

    authors: Lupaşcu CA,Tegolo D,Trucco E

    更新日期:2013-12-01 00:00:00

  • IDRiD: Diabetic Retinopathy - Segmentation and Grading Challenge.

    abstract::Diabetic Retinopathy (DR) is the most common cause of avoidable vision loss, predominantly affecting the working-age population across the globe. Screening for DR, coupled with timely consultation and treatment, is a globally trusted policy to avoid vision loss. However, implementation of DR screening programs is chal...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2019.101561

    authors: Porwal P,Pachade S,Kokare M,Deshmukh G,Son J,Bae W,Liu L,Wang J,Liu X,Gao L,Wu T,Xiao J,Wang F,Yin B,Wang Y,Danala G,He L,Choi YH,Lee YC,Jung SH,Li Z,Sui X,Wu J,Li X,Zhou T,Toth J,Baran A,Kori A,Ch

    更新日期:2020-01-01 00:00:00

  • Classification of hemodynamics from dynamic-susceptibility-contrast magnetic resonance (DSC-MR) brain images using noiseless independent factor analysis.

    abstract::Dynamic-susceptibility-contrast (DSC) magnetic resonance imaging records signal changes on images when the injected contrast-agent particles pass through a human brain. The temporal signal changes on different brain tissues manifest distinct blood-supply patterns which are vital for the profound analysis of cerebral h...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2007.02.002

    authors: Chou YC,Teng MM,Guo WY,Hsieh JC,Wu YT

    更新日期:2007-06-01 00:00:00

  • An automated pipeline for cortical sulcal fundi extraction.

    abstract::In this paper, we propose a novel automated pipeline for extraction of sulcal fundi from triangulated cortical surfaces. This method consists of four consecutive steps. Firstly, we adopt a finite difference method to estimate principal curvatures, principal directions and curvature derivatives, along the principal dir...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2010.01.005

    authors: Li G,Guo L,Nie J,Liu T

    更新日期:2010-06-01 00:00:00

  • A symbolic environment for visualizing activated foci in functional neuroimaging datasets.

    abstract::This paper presents a symbolic visualization environment known as the Corner Cube environment, which was developed to facilitate rapid examination and comparison of activated foci defined by analyses of functional neuroimaging datasets. We have performed a comparative evaluation of this environment against maximum-int...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/s1361-8415(98)80020-0

    authors: Rehm K,Lakshminaryan K,Frutiger S,Schaper KA,Sumners DW,Strother SC,Anderson JR,Rottenberg DA

    更新日期:1998-09-01 00:00:00

  • Explainable cardiac pathology classification on cine MRI with motion characterization by semi-supervised learning of apparent flow.

    abstract::We propose a method to classify cardiac pathology based on a novel approach to extract image derived features to characterize the shape and motion of the heart. An original semi-supervised learning procedure, which makes efficient use of a large amount of non-segmented images and a small amount of images segmented man...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2019.06.001

    authors: Zheng Q,Delingette H,Ayache N

    更新日期:2019-08-01 00:00:00

  • Pseudo-healthy synthesis with pathology disentanglement and adversarial learning.

    abstract::Pseudo-healthy synthesis is the task of creating a subject-specific 'healthy' image from a pathological one. Such images can be helpful in tasks such as anomaly detection and understanding changes induced by pathology and disease. In this paper, we present a model that is encouraged to disentangle the information of p...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2020.101719

    authors: Xia T,Chartsias A,Tsaftaris SA

    更新日期:2020-08-01 00:00:00

  • Understanding the phase contrast optics to restore artifact-free microscopy images for segmentation.

    abstract::Phase contrast, a noninvasive microscopy imaging technique, is widely used to capture time-lapse images to monitor the behavior of transparent cells without staining or altering them. Due to the optical principle, phase contrast microscopy images contain artifacts such as the halo and shade-off that hinder image segme...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2011.12.006

    authors: Yin Z,Kanade T,Chen M

    更新日期:2012-07-01 00:00:00

  • Equilibrated warping: Finite element image registration with finite strain equilibrium gap regularization.

    abstract::In this paper, we propose a novel continuum finite strain formulation of the equilibrium gap regularization for image registration. The equilibrium gap regularization essentially penalizes any deviation from the solution of a hyperelastic body in equilibrium with arbitrary loads prescribed at the boundary. It thus rep...

    journal_title:Medical image analysis

    pub_type: 杂志文章

    doi:10.1016/j.media.2018.07.007

    authors: Genet M,Stoeck CT,von Deuster C,Lee LC,Kozerke S

    更新日期:2018-12-01 00:00:00