Literature DB >> 17697569

Neural network-based computer-aided diagnosis in distinguishing malignant from benign solitary pulmonary nodules by computed tomography.

Hui Chen1, Xiao-Hua Wang, Da-Qing Ma, Bin-Rong Ma.   

Abstract

BACKGROUND: Computer-aided diagnosis (CAD) of lung cancer is the subject of many current researches. Statistical methods and artificial neural networks have been applied to more quantitatively characterize solitary pulmonary nodules (SPNs). In this study, we developed a CAD scheme based on an artificial neural network to distinguish malignant from benign SPNs on thin-section computed tomography (CT) images, and investigated how the CAD scheme can help radiologists with different levels of experience make diagnostic decisions.
METHODS: Two hundred thin-section CT images of SPNs with proven diagnoses (135 small peripheral lung cancers and 65 benign nodules) were analyzed. Three clinical features and nine CT signs of each case were studied by radiologists, and the indices of qualitative diagnosis were quantified. One hundred and forty nodules were selected randomly to form training samples, on which the neural network model was built. The remaining 60 nodules, forming test samples, were presented to 9 radiologists with 3 - 20 years of clinical experience, accompanied by standard reference images. The radiologists were asked to determine whether a nodule was malignant or benign first without and then with CAD output. Diagnostic performance was evaluated by receiver operating characteristic (ROC) analysis.
RESULTS: CAD outputs on test samples had higher agreement with pathological diagnoses (Kappa = 0.841, P < 0.001). Compared with diagnostic results without CAD output, the average area under the ROC curve with CAD output was 0.96 (P < 0.001) for junior radiologists, 0.94 (P = 0.014) for secondary radiologists and 0.96 (P = 0.221) for senior radiologists, respectively. The differences in diagnostic performance with CAD output among the three levels of radiologists were not statistically significant (P = 0.584, 0.920 and 0.707, respectively).
CONCLUSIONS: This CAD scheme based on an artificial neural network could improve diagnostic performance and assist radiologists in distinguishing malignant from benign SPNs on thin-section CT images.

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Year:  2007        PMID: 17697569

Source DB:  PubMed          Journal:  Chin Med J (Engl)        ISSN: 0366-6999            Impact factor:   2.628


  9 in total

Review 1.  After Detection: The Improved Accuracy of Lung Cancer Assessment Using Radiologic Computer-aided Diagnosis.

Authors:  Guy J Amir; Harold P Lehmann
Journal:  Acad Radiol       Date:  2015-11-23       Impact factor: 3.173

2.  Improved pulmonary nodule classification utilizing quantitative lung parenchyma features.

Authors:  Samantha K N Dilger; Johanna Uthoff; Alexandra Judisch; Emily Hammond; Sarah L Mott; Brian J Smith; John D Newell; Eric A Hoffman; Jessica C Sieren
Journal:  J Med Imaging (Bellingham)       Date:  2015-09-01

Review 3.  CAD (computed-aided detection) and CADx (computer aided diagnosis) systems in identifying and characterising lung nodules on chest CT: overview of research, developments and new prospects.

Authors:  F Fraioli; G Serra; R Passariello
Journal:  Radiol Med       Date:  2010-01-15       Impact factor: 3.469

4.  Accuracy of clinicians and models for estimating the probability that a pulmonary nodule is malignant.

Authors:  Alex A Balekian; Gerard A Silvestri; Suzanne M Simkovich; Peter J Mestaz; Gillian D Sanders; Jamie Daniel; Jackie Porcel; Michael K Gould
Journal:  Ann Am Thorac Soc       Date:  2013-12

Review 5.  The utilisation of convolutional neural networks in detecting pulmonary nodules: a review.

Authors:  Andrew Murphy; Matthew Skalski; Frank Gaillard
Journal:  Br J Radiol       Date:  2018-06-19       Impact factor: 3.039

6.  The relationships of the pulmonary arteries to lung lesions aid in differential diagnosis using computed tomography.

Authors:  Chien-Heng Lin; Tsai-Chung Li; Po-Pang Tsai; Wei-Ching Lin
Journal:  Biomedicine (Taipei)       Date:  2015-06-09

7.  Lung cancer prediction using neural network ensemble with histogram of oriented gradient genomic features.

Authors:  Emmanuel Adetiba; Oludayo O Olugbara
Journal:  ScientificWorldJournal       Date:  2015-02-23

8.  Application of gene expression programming and neural networks to predict adverse events of radical hysterectomy in cervical cancer patients.

Authors:  Maciej Kusy; Bogdan Obrzut; Jacek Kluska
Journal:  Med Biol Eng Comput       Date:  2013-10-18       Impact factor: 2.602

Review 9.  The Added Effect of Artificial Intelligence on Physicians' Performance in Detecting Thoracic Pathologies on CT and Chest X-ray: A Systematic Review.

Authors:  Dana Li; Lea Marie Pehrson; Carsten Ammitzbøl Lauridsen; Lea Tøttrup; Marco Fraccaro; Desmond Elliott; Hubert Dariusz Zając; Sune Darkner; Jonathan Frederik Carlsen; Michael Bachmann Nielsen
Journal:  Diagnostics (Basel)       Date:  2021-11-26
  9 in total

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