Literature DB >> 31904568

Comparison of semi-automatic and deep learning-based automatic methods for liver segmentation in living liver transplant donors.

A Emre Kavur1, Naciye Sinem Gezer2, Mustafa Barış2, Yusuf Şahin3, Savaş Özkan4, Bora Baydar4, Ulaş Yüksel1, Çağlar Kılıkçıer5, Şahin Olut3, Gözde Bozdağı Akar4, Gözde Ünal3, Oğuz Dicle2, M Alper Selver6.   

Abstract

PURPOSE: To compare the accuracy and repeatability of emerging machine learning based (i.e. deep) automatic segmentation algorithms with those of well-established semi-automatic (interactive) methods for determining liver volume in living liver transplant donors at computerized tomography (CT) imaging.
METHODS: A total of 12 (6 semi-, 6 full-automatic) methods are evaluated. The semi-automatic segmentation algorithms are based on both traditional iterative models including watershed, fast marching, region growing, active contours and modern techniques including robust statistical segmenter and super-pixels. These methods entail some sort of interaction mechanism such as placing initialization seeds on images or determining a parameter range. The automatic methods are based on deep learning and they include three framework templates (DeepMedic, NiftyNet and U-Net) the first two of which are applied with default parameter sets and the last two involve adapted novel model designs. For 20 living donors (6 training and 12 test datasets), a group of imaging scientists and radiologists created ground truths by performing manual segmentations on contrast material-enhanced CT images. Each segmentation is evaluated using five metrics (i.e. volume overlap and relative volume errors, average/RMS/maximum symmetrical surface distances). The results are mapped to a scoring system and a final grade is calculated by taking their average. Accuracy and repeatability were evaluated using slice by slice comparisons and volumetric analysis. Diversity and complementarity are observed through heatmaps. Majority voting and Simultaneous Truth and Performance Level Estimation (STAPLE) algorithms are utilized to obtain the fusion of the individual results.
RESULTS: The top four methods are determined to be automatic deep models having 79.63, 79.46 and 77.15 and 74.50 scores. Intra-user score is determined as 95.14. Overall, deep automatic segmentation outperformed interactive techniques on all metrics. The mean volume of liver of ground truth is found to be 1409.93 mL ± 271.28 mL, while it is calculated as 1342.21 mL ± 231.24 mL using automatic and 1201.26 mL ± 258.13 mL using interactive methods, showing higher accuracy and less variation on behalf of automatic methods. The qualitative analysis of segmentation results showed significant diversity and complementarity enabling the idea of using ensembles to obtain superior results. The fusion of automatic methods reached 83.87 with majority voting and 86.20 using STAPLE that are only slightly less than fusion of all methods that achieved 86.70 (majority voting) and 88.74 (STAPLE).
CONCLUSION: Use of the new deep learning based automatic segmentation algorithms substantially increases the accuracy and repeatability for segmentation and volumetric measurements of liver. Fusion of automatic methods based on ensemble approaches exhibits best results almost without any additional time cost due to potential parallel execution of multiple models.

Mesh:

Year:  2020        PMID: 31904568      PMCID: PMC7075579          DOI: 10.5152/dir.2019.19025

Source DB:  PubMed          Journal:  Diagn Interv Radiol        ISSN: 1305-3825            Impact factor:   2.630


  27 in total

1.  Integrating segmentation methods from different tools into a visualization program using an object-based plug-in interface.

Authors:  Felix Fischer; M Alper Selver; Walter Hillen; Cüneyt Güzeliş
Journal:  IEEE Trans Inf Technol Biomed       Date:  2010-04-15

2.  Combination strategies in multi-atlas image segmentation: application to brain MR data.

Authors:  Xabier Artaechevarria; Arrate Munoz-Barrutia; Carlos Ortiz-de-Solorzano
Journal:  IEEE Trans Med Imaging       Date:  2009-02-18       Impact factor: 10.048

3.  Convolutional Neural Networks for Medical Image Analysis: Full Training or Fine Tuning?

Authors:  Nima Tajbakhsh; Jae Y Shin; Suryakanth R Gurudu; R Todd Hurst; Christopher B Kendall; Michael B Gotway
Journal:  IEEE Trans Med Imaging       Date:  2016-03-07       Impact factor: 10.048

4.  SegAN: Adversarial Network with Multi-scale L1 Loss for Medical Image Segmentation.

Authors:  Yuan Xue; Tao Xu; Han Zhang; L Rodney Long; Xiaolei Huang
Journal:  Neuroinformatics       Date:  2018-10

5.  Intra- and interoperator variability of lobar pulmonary volumes and emphysema scores in patients with chronic obstructive pulmonary disease and emphysema: comparison of manual and semi-automated segmentation techniques.

Authors:  Francesco Molinari; Tommaso Pirronti; Nicola Sverzellati; Stefano Diciotti; Michele Amato; Guglielmo Paolantonio; Luigia Gentile; George K Parapatt; Francesco D'Argento; Jan-Martin Kuhnigk
Journal:  Diagn Interv Radiol       Date:  2013 Jul-Aug       Impact factor: 2.630

6.  A generative model for image segmentation based on label fusion.

Authors:  Mert R Sabuncu; B T Thomas Yeo; Koen Van Leemput; Bruce Fischl; Polina Golland
Journal:  IEEE Trans Med Imaging       Date:  2010-06-17       Impact factor: 10.048

7.  Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning.

Authors:  Hoo-Chang Shin; Holger R Roth; Mingchen Gao; Le Lu; Ziyue Xu; Isabella Nogues; Jianhua Yao; Daniel Mollura; Ronald M Summers
Journal:  IEEE Trans Med Imaging       Date:  2016-02-11       Impact factor: 10.048

8.  Computerized liver volumetry on MRI by using 3D geodesic active contour segmentation.

Authors:  Hieu Trung Huynh; Ibrahim Karademir; Aytekin Oto; Kenji Suzuki
Journal:  AJR Am J Roentgenol       Date:  2014-01       Impact factor: 3.959

9.  Cost-effective, personalized, 3D-printed liver model for preoperative planning before laparoscopic liver hemihepatectomy for colorectal cancer metastases.

Authors:  Jan Sylwester Witowski; Michał Pędziwiatr; Piotr Major; Andrzej Budzyński
Journal:  Int J Comput Assist Radiol Surg       Date:  2017-01-31       Impact factor: 2.924

10.  Accuracy of preoperative CT liver volumetry in living donor hepatectomy and its clinical implications.

Authors:  Sanjay Goja; Sanjay Kumar Yadav; Amardeep Yadav; Tarun Piplani; Amit Rastogi; Prashant Bhangui; Sanjiv Saigal; Arvinder Singh Soin
Journal:  Hepatobiliary Surg Nutr       Date:  2018-06       Impact factor: 7.293

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  5 in total

Review 1.  A review on the use of artificial intelligence for medical imaging of the lungs of patients with coronavirus disease 2019.

Authors:  Rintaro Ito; Shingo Iwano; Shinji Naganawa
Journal:  Diagn Interv Radiol       Date:  2020-09       Impact factor: 2.630

2.  Multi-scale feature pyramid fusion network for medical image segmentation.

Authors:  Bing Zhang; Yang Wang; Caifu Ding; Ziqing Deng; Linwei Li; Zesheng Qin; Zhao Ding; Lifeng Bian; Chen Yang
Journal:  Int J Comput Assist Radiol Surg       Date:  2022-08-30       Impact factor: 3.421

3.  Practical utility of liver segmentation methods in clinical surgeries and interventions.

Authors:  Mohammed Yusuf Ansari; Alhusain Abdalla; Mohammed Yaqoob Ansari; Mohammed Ishaq Ansari; Byanne Malluhi; Snigdha Mohanty; Subhashree Mishra; Sudhansu Sekhar Singh; Julien Abinahed; Abdulla Al-Ansari; Shidin Balakrishnan; Sarada Prasad Dakua
Journal:  BMC Med Imaging       Date:  2022-05-24       Impact factor: 2.795

4.  Fully automated segmentation in temporal bone CT with neural network: a preliminary assessment study.

Authors:  Jiang Wang; Yi Lv; Junchen Wang; Furong Ma; Yali Du; Xin Fan; Menglin Wang; Jia Ke
Journal:  BMC Med Imaging       Date:  2021-11-09       Impact factor: 1.930

Review 5.  Machine Learning Applications in Solid Organ Transplantation and Related Complications.

Authors:  Jeremy A Balch; Daniel Delitto; Patrick J Tighe; Ali Zarrinpar; Philip A Efron; Parisa Rashidi; Gilbert R Upchurch; Azra Bihorac; Tyler J Loftus
Journal:  Front Immunol       Date:  2021-09-16       Impact factor: 7.561

  5 in total

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