Deprecated: $wgMWOAuthSharedUserIDs=false is deprecated, set $wgMWOAuthSharedUserIDs=true, $wgMWOAuthSharedUserSource='local' instead [Called from MediaWiki\HookContainer\HookContainer::run in /var/www/html/w/includes/HookContainer/HookContainer.php at line 135] in /var/www/html/w/includes/Debug/MWDebug.php on line 372
Computer aided diagnosis system for early lung cancer detection - MaRDI portal

Computer aided diagnosis system for early lung cancer detection (Q1736738)

From MaRDI portal





scientific article; zbMATH DE number 7042302
Language Label Description Also known as
English
Computer aided diagnosis system for early lung cancer detection
scientific article; zbMATH DE number 7042302

    Statements

    Computer aided diagnosis system for early lung cancer detection (English)
    0 references
    0 references
    0 references
    0 references
    0 references
    26 March 2019
    0 references
    Summary: Lung cancer continues to rank as the leading cause of cancer deaths worldwide. One of the most promising techniques for early detection of cancerous cells relies on sputum cell analysis. This was the motivation behind the design and the development of a new computer aided diagnosis (CAD) system for early detection of lung cancer based on the analysis of sputum color images. The proposed CAD system encompasses four main processing steps. First is the preprocessing step which utilizes a Bayesian classification method using histogram analysis. Then, in the second step, mean shift segmentation is applied to segment the nuclei from the cytoplasm. The third step is the feature analysis. In this step, geometric and chromatic features are extracted from the nucleus region. These features are used in the diagnostic process of the sputum images. Finally, the diagnosis is completed using an artificial neural network and support vector machine (SVM) for classifying the cells into benign or malignant. The performance of the system was analyzed based on different criteria such as sensitivity, specificity and accuracy. The evaluation was carried out using Receiver Operating Characteristic (ROC) curve. The experimental results demonstrate the efficiency of the SVM classifier over other classifiers, with 97\% sensitivity and accuracy as well as a significant reduction in the number of false positive and false negative rates.
    0 references
    compute-aided diagnosis
    0 references
    sputum images
    0 references
    lung cancer detection
    0 references
    Bayesian theorem
    0 references
    mean shift segmentation
    0 references
    feature extraction
    0 references
    neural network
    0 references
    support vector machine
    0 references
    0 references
    0 references
    0 references
    0 references

    Identifiers

    0 references
    0 references
    0 references
    0 references
    0 references
    0 references
    0 references