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Automated classification of pulmonary nodules through a retrospective analysis of conventional CT and two-phase PET images in patients undergoing biopsy

Publish Year: 1398
Type: Journal paper
Language: English
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JR_JNMB-7-1_005

Index date: 3 July 2019

Automated classification of pulmonary nodules through a retrospective analysis of conventional CT and two-phase PET images in patients undergoing biopsy abstract

Objective(s): Positron emission tomography/computed tomography (PET/CT) examination is commonly used for the evaluation of pulmonary nodules since it provides both anatomical and functional information. However, given the dependence of this evaluation on physician’s subjective judgment, the results could be variable. The purpose of this study was to develop an automated scheme for the classification of pulmonary nodules using early and delayed phase PET/ CT and conventional CT images.Methods: We analysed 36 early and delayed phase PET/CT images in patients who underwent both PET/CT scan and lung biopsy, following bronchoscopy. In addition, conventional CT images at maximal inspiration were analysed. The images consisted of 18 malignant and 18 benign nodules. For the classification scheme, 25 types of shape and functional features were first calculated from the images. The random forest algorithm, which is a machine learning technique, was used for classification.Results: The evaluation of the characteristic features and classification accuracy was accomplished using collected images. There was a significant difference between the characteristic features of benign and malignant nodules with regard to standardised uptake value and texture. In terms of classification performance, 94.4% of the malignant nodules were identified correctly assuming that 72.2% of the benign nodules were diagnosed accurately. The accuracy rate of benign nodule detection by means of CT plus two-phase PET images was 44.4% and 11.1% higher than those obtained by CT images alone and CT plus early phase PET images, respectively.Conclusion: Based on the findings, the proposed method may be useful to improve the accuracy of malignancy analysis.

Automated classification of pulmonary nodules through a retrospective analysis of conventional CT and two-phase PET images in patients undergoing biopsy Keywords:

Automated classification of pulmonary nodules through a retrospective analysis of conventional CT and two-phase PET images in patients undergoing biopsy authors

Atsushi Teramoto

Fujita Health University

Masakazu Tsujimoto

Fujita Health University Hospital

Takahiro Inoue

School of Medicine, Fujita Health Hniversity

Tetsuya Tsukamoto

School of Medicine, Fujita Health University

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American cancer society, cancer facts and figures 2015. Available at: ...
Sone S, Takashima S, Li F, Yang Z, Honda T, ...
National Lung Screening Trial Research Team, Aberle DR, Adams AM, ...
Gould MK, Maclean CC, Kuschner WG, Rydzak CE, Owens DK. ...
Armato SG 3rd, Altman MB, Wilkie J, Sone S, Li ...
Way TW, Hadjiiski LM, Sahiner B, Chan HP, Cascade PN, ...
Zhang F, Song, Y, Cai W, Lee MZ, Zhou Y, ...
Madero Orozco H, Vergara Villegas OO, Cruz Sánchez VG, Ochoa ...
Shen W, Zhou M, Yang F, Yu D, Dong D, ...
Nie Y, Li Q, Li F, Pu Y, Appelbaum D, ...
MacMahon H, Naidich DP, Goo JM, Lee KS, Leung ANC, ...
Sim YT, Poon FW. Imaging of solitary pulmonary nodule-a clinical ...
Keyes JW Jr. SUV: standard uptake or silly useless value ...
Li Q, Sone S, Doi K. Selective enhancement filters for ...
Rangayyan RM, Ayres FJ. Gabor filter and phase portraits for ...
Yoshikawa R, Teramoto A, Matsubara T, Fujita H. Automated detection ...
Haralick RM, Shanmugam K, Dinstein I. Textural features for image ...
Breiman L. Random forests. Machine Learn. 2001;45(1):5-32. ...
Cohen J. Statistical power analysis for the behavioral sciences. 2nd ...
Krizhevsky A, Sutskever I, Hinton GE. Imagenet classification with deep ...
LeCun Y, Bengio Y, Hinton G. Deep learning. Nature. 2015;521(7553):436-44. ...
Teramoto A, Fujita H, Yamamuro O, Tamaki T. Automated detection ...
Teramoto A, Tsukamoto T, Kiriyama Y, Fujita H. Automated classification ...
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