Literature DB >> 27695156

Evaluation of a projection-domain lung nodule insertion technique in thoracic CT.

Chi Ma1, Baiyu Chen1, Chi Wan Koo1, Edwin A Takahashi1, Joel G Fletcher1, Cynthia H McCollough1, David L Levin1, Ronald S Kuzo1, Lyndsay D Viers1, Stephanie A Vincent Sheldon1, Shuai Leng1, Lifeng Yu1.   

Abstract

Task-based assessment of computed tomography (CT) image quality requires a large number of cases with ground truth. Inserting lesions into existing cases to simulate positive cases is a promising alternative approach. The aim of this study was to evaluate a recently-developed raw-data based lesion insertion technique in thoracic CT. Lung lesions were segmented from patient CT images, forward projected, and reinserted into the same patient CT projection data. In total, 32 nodules of various attenuations were segmented from 21 CT cases. Two experienced radiologists and 2 residents blinded to the process independently evaluated these inserted nodules in two sub-studies. First, the 32 inserted and the 32 original nodules were presented in a randomized order and each received a rating score from 1 to 10 (1=absolutely artificial to 10=absolutely realistic). Second, the inserted and the corresponding original lesions were presented side-by-side to each reader, who identified the inserted lesion and provided a confidence score (1=no confidence to 5=completely certain). For the randomized evaluation, discrimination of real versus artificial nodules was poor with areas under the receiver operative characteristic curves being 0.69 (95% CI: 0.58-0.78), 0.57 (95% CI: 0.46-0.68), and 0.62 (95% CI: 0.54-0.69) for the 2 radiologists, 2 residents, and all 4 readers, respectively. For the side-by-side evaluation, although all 4 readers correctly identified inserted lesions in 103/128 pairs, the confidence score was moderate (2.6). Our projection-domain based lung nodule insertion technique provides a robust method to artificially generate clinical cases that prove to be difficult to differentiate from real cases.

Entities:  

Keywords:  Image quality assessment; lesion insertion; lesion simulation; lung nodules; observer study; radiation dose reduction; thoracic CT

Year:  2016        PMID: 27695156      PMCID: PMC5045053          DOI: 10.1117/12.2217009

Source DB:  PubMed          Journal:  Proc SPIE Int Soc Opt Eng        ISSN: 0277-786X


  9 in total

1.  Simulation of liver lesions for pediatric CT.

Authors:  Chee L Hoe; Ehsan Samei; Donald P Frush; David M Delong
Journal:  Radiology       Date:  2005-12-21       Impact factor: 11.105

2.  A new software tool for removing, storing, and adding abnormalities to medical images for perception research studies.

Authors:  Mark T Madsen; Kevin S Berbaum; Andrew N Ellingson; Brad H Thompson; Brian F Mullan; Robert T Caldwell
Journal:  Acad Radiol       Date:  2006-03       Impact factor: 3.173

3.  Three-dimensional simulation of lung nodules for paediatric multidetector array CT.

Authors:  X Li; E Samei; D M Delong; R P Jones; A M Gaca; C L Hollingsworth; C M Maxfield; C W T Carrico; D P Frush
Journal:  Br J Radiol       Date:  2009-01-19       Impact factor: 3.039

4.  On estimating the difference limen in duration discrimination tasks: a comparison of the 2AFC and the reminder task.

Authors:  Einat Lapid; Rolf Ulrich; Thomas Rammsayer
Journal:  Percept Psychophys       Date:  2008-02

5.  Lung nodule detection performance in five observers on computed tomography (CT) with adaptive iterative dose reduction using three-dimensional processing (AIDR 3D) in a Japanese multicenter study: Comparison between ultra-low-dose CT and low-dose CT by receiver-operating characteristic analysis.

Authors:  Yukihiro Nagatani; Masashi Takahashi; Kiyoshi Murata; Mitsuru Ikeda; Tsuneo Yamashiro; Tetsuhiro Miyara; Hisanobu Koyama; Mitsuhiro Koyama; Yukihisa Sato; Hiroshi Moriya; Satoshi Noma; Noriyuki Tomiyama; Yoshiharu Ohno; Sadayuki Murayama
Journal:  Eur J Radiol       Date:  2015-04-02       Impact factor: 3.528

6.  A generic framework to simulate realistic lung, liver and renal pathologies in CT imaging.

Authors:  Justin Solomon; Ehsan Samei
Journal:  Phys Med Biol       Date:  2014-10-17       Impact factor: 3.609

Review 7.  ROC methodology in radiologic imaging.

Authors:  C E Metz
Journal:  Invest Radiol       Date:  1986-09       Impact factor: 6.016

8.  Lesion Insertion in Projection Domain for Computed Tomography Image Quality Assessment.

Authors:  Baiyu Chen; Zhicong Yu; Shuai Leng; Lifeng Yu; Cynthia McCollough
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2015-02-21

9.  Observer Performance in the Detection and Classification of Malignant Hepatic Nodules and Masses with CT Image-Space Denoising and Iterative Reconstruction.

Authors:  Joel G Fletcher; Lifeng Yu; Zhoubo Li; Armando Manduca; Daniel J Blezek; David M Hough; Sudhakar K Venkatesh; Gregory C Brickner; Joseph C Cernigliaro; Amy K Hara; Jeff L Fidler; David S Lake; Maria Shiung; David Lewis; Shuai Leng; Kurt E Augustine; Rickey E Carter; David R Holmes; Cynthia H McCollough
Journal:  Radiology       Date:  2015-05-26       Impact factor: 11.105

  9 in total
  4 in total

1.  Deep-learning-based model observer for a lung nodule detection task in computed tomography.

Authors:  Hao Gong; Qiyuan Hu; Andrew Walther; Chi Wan Koo; Edwin A Takahashi; David L Levin; Tucker F Johnson; Megan J Hora; Shuai Leng; Joel G Fletcher; Cynthia H McCollough; Lifeng Yu
Journal:  J Med Imaging (Bellingham)       Date:  2020-06-30

2.  Techniques for virtual lung nodule insertion: volumetric and morphometric comparison of projection-based and image-based methods for quantitative CT.

Authors:  Marthony Robins; Justin Solomon; Pooyan Sahbaee; Martin Sedlmair; Kingshuk Roy Choudhury; Aria Pezeshk; Berkman Sahiner; Ehsan Samei
Journal:  Phys Med Biol       Date:  2017-08-22       Impact factor: 3.609

3.  A virtual clinical trial using projection-based nodule insertion to determine radiologist reader performance in lung cancer screening CT.

Authors:  Lifeng Yu; Qiyuan Hu; Chi Wan Koo; Edwin A Takahashi; David L Levin; Tucker F Johnson; Megan J Hora; Shane Dirks; Baiyu Chen; Kyle McMillan; Shuai Leng; J G Fletcher; Cynthia H McCollough
Journal:  Proc SPIE Int Soc Opt Eng       Date:  2017-03-09

4.  Deep-learning model observer for a low-contrast hepatic metastases localization task in computed tomography.

Authors:  Hao Gong; Joel G Fletcher; Jay P Heiken; Michael L Wells; Shuai Leng; Cynthia H McCollough; Lifeng Yu
Journal:  Med Phys       Date:  2021-12-01       Impact factor: 4.506

  4 in total

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