Literature DB >> 23255744

Benefit of computer-aided detection analysis for the detection of subsolid and solid lung nodules on thin- and thick-section CT.

Myrna C B Godoy1, Tae Jung Kim, Charles S White, Luca Bogoni, Patricia de Groot, Charles Florin, Nancy Obuchowski, James S Babb, Marcos Salganicoff, David P Naidich, Vikram Anand, Sangmin Park, Ioannis Vlahos, Jane P Ko.   

Abstract

OBJECTIVE: The objective of our study was to evaluate the impact of computer-aided detection (CAD) on the identification of subsolid and solid lung nodules on thin- and thick-section CT.
MATERIALS AND METHODS: For 46 chest CT examinations with ground-glass opacity (GGO) nodules, CAD marks computed using thin data were evaluated in two phases. First, four chest radiologists reviewed thin sections (reader(thin)) for nodules and subsequently CAD marks (reader(thin) + CAD(thin)). After 4 months, the same cases were reviewed on thick sections (reader(thick)) and subsequently with CAD marks (reader(thick) + CAD(thick)). Sensitivities were evaluated. Additionally, reader(thick) sensitivity with assessment of CAD marks on thin sections was estimated (reader(thick) + CAD(thin)).
RESULTS: For 155 nodules (mean, 5.5 mm; range, 4.0-27.5 mm)-74 solid nodules, 22 part-solid (part-solid nodules), and 59 GGO nodules-CAD stand-alone sensitivity was 80%, 95%, and 71%, respectively, with three false-positives on average (0-12) per CT study. Reader(thin) + CAD(thin) sensitivities were higher than reader(thin) for solid nodules (82% vs 57%, p < 0.001), part-solid nodules (97% vs 81%, p = 0.0027), and GGO nodules (82% vs 69%, p < 0.001) for all readers (p < 0.001). Respective sensitivities for reader(thick), reader(thick) + CAD(thick), reader(thick) + CAD(thin) were 40%, 58% (p < 0.001), and 77% (p < 0.001) for solid nodules; 72%, 73% (p = 0.322), and 94% (p < 0.001) for part-solid nodules; and 53%, 58% (p = 0.008), and 79% (p < 0.001) for GGO nodules. For reader(thin), false-positives increased from 0.64 per case to 0.90 with CAD(thin) (p < 0.001) but not for reader(thick); false-positive rates were 1.17, 1.19, and 1.26 per case for reader(thick), reader(thick) + CAD(thick), and reader(thick) + CAD(thin), respectively.
CONCLUSION: Detection of GGO nodules and solid nodules is significantly improved with CAD. When interpretation is performed on thick sections, the benefit is greater when CAD marks are reviewed on thin rather than thick sections.

Mesh:

Year:  2013        PMID: 23255744     DOI: 10.2214/AJR.11.7532

Source DB:  PubMed          Journal:  AJR Am J Roentgenol        ISSN: 0361-803X            Impact factor:   3.959


  9 in total

1.  Performance of ultralow-dose CT with iterative reconstruction in lung cancer screening: limiting radiation exposure to the equivalent of conventional chest X-ray imaging.

Authors:  Adrian Huber; Julia Landau; Lukas Ebner; Yanik Bütikofer; Lars Leidolt; Barbara Brela; Michelle May; Johannes Heverhagen; Andreas Christe
Journal:  Eur Radiol       Date:  2016-01-26       Impact factor: 5.315

2.  A comparison of axial versus coronal image viewing in computer-aided detection of lung nodules on CT.

Authors:  Tae Iwasawa; Sumiaki Matsumoto; Takatoshi Aoki; Fumito Okada; Yoshihiro Nishimura; Hitoshi Yamagata; Yoshiharu Ohno
Journal:  Jpn J Radiol       Date:  2014-12-23       Impact factor: 2.374

3.  A method for evaluating the performance of computer-aided detection of pulmonary nodules in lung cancer CT screening: detection limit for nodule size and density.

Authors:  Hajime Kobayashi; Masaki Ohkubo; Akihiro Narita; Janaka C Marasinghe; Kohei Murao; Toru Matsumoto; Shusuke Sone; Shinichi Wada
Journal:  Br J Radiol       Date:  2017-01-03       Impact factor: 3.039

4.  A cloud-based computer-aided detection system improves identification of lung nodules on computed tomography scans of patients with extra-thoracic malignancies.

Authors:  Lorenzo Vassallo; Alberto Traverso; Michelangelo Agnello; Christian Bracco; Delia Campanella; Gabriele Chiara; Maria Evelina Fantacci; Ernesto Lopez Torres; Antonio Manca; Marco Saletta; Valentina Giannini; Simone Mazzetti; Michele Stasi; Piergiorgio Cerello; Daniele Regge
Journal:  Eur Radiol       Date:  2018-06-15       Impact factor: 5.315

Review 5.  Pulmonary quantitative CT imaging in focal and diffuse disease: current research and clinical applications.

Authors:  Mario Silva; Gianluca Milanese; Valeria Seletti; Alarico Ariani; Nicola Sverzellati
Journal:  Br J Radiol       Date:  2018-01-12       Impact factor: 3.039

Review 6.  Lung cancer screening: nodule identification and characterization.

Authors:  Ioannis Vlahos; Konstantinos Stefanidis; Sarah Sheard; Arjun Nair; Charles Sayer; Joanne Moser
Journal:  Transl Lung Cancer Res       Date:  2018-06

Review 7.  Lung nodule and cancer detection in computed tomography screening.

Authors:  Geoffrey D Rubin
Journal:  J Thorac Imaging       Date:  2015-03       Impact factor: 3.000

8.  Combination of computer extracted shape and texture features enables discrimination of granulomas from adenocarcinoma on chest computed tomography.

Authors:  Mahdi Orooji; Mehdi Alilou; Sagar Rakshit; Niha Beig; Mohammad Hadi Khorrami; Prabhakar Rajiah; Rajat Thawani; Jennifer Ginsberg; Christopher Donatelli; Michael Yang; Frank Jacono; Robert Gilkeson; Vamsidhar Velcheti; Philip Linden; Anant Madabhushi
Journal:  J Med Imaging (Bellingham)       Date:  2018-04-18

9.  Computer-Aided Diagnosis of Pulmonary Fibrosis Using Deep Learning and CT Images.

Authors:  Andreas Christe; Alan A Peters; Dionysios Drakopoulos; Johannes T Heverhagen; Thomas Geiser; Thomai Stathopoulou; Stergios Christodoulidis; Marios Anthimopoulos; Stavroula G Mougiakakou; Lukas Ebner
Journal:  Invest Radiol       Date:  2019-10       Impact factor: 6.016

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.