scholarly journals A Computer-Aided Pipeline for Automatic Lung Cancer Classification on Computed Tomography Scans

2018 ◽  
Vol 2018 ◽  
pp. 1-12 ◽  
Author(s):  
Emre Dandıl

Lung cancer is one of the most common cancer types. For the survival of the patient, early detection of lung cancer with the best treatment method is crucial. In this study, we propose a novel computer-aided pipeline on computed tomography (CT) scans for early diagnosis of lung cancer thanks to the classification of benign and malignant nodules. The proposed pipeline is composed of four stages. In preprocessing steps, CT images are enhanced, and lung volumes are extracted from the image with the help of a novel method called lung volume extraction method (LUVEM). The significance of the proposed pipeline is using LUVEM for extracting lung region. In nodule detection stage, candidate nodules are determined according to the circular Hough transform- (CHT-) based method. Then, lung nodules are segmented with self-organizing maps (SOM). In feature computation stage, intensity, shape, texture, energy, and combined features are used for feature extraction, and principal component analysis (PCA) is used for feature reduction step. In the final stage, probabilistic neural network (PNN) classifies benign and malign nodules. According to the experiments performed on our dataset, the proposed pipeline system can classify benign and malign nodules with 95.91% accuracy, 97.42% sensitivity, and 94.24% specificity. Even in cases of small-sized nodules (3–10 mm), the proposed system can determine the nodule type with 94.68% accuracy.

Author(s):  
Asmitha Shree R ◽  
Sajitha M ◽  
Subha S

Lung Cancer is considered as one of the deadliest diseases among other lung disorders and cancer types and is the leading cause of cancer deaths worldwide. Lung cancer is a curable disease if detected in its early stages that makes up 13% of all cancer diagnoses and 27% of all cancer deaths. The objective of this paper is mainly focused on categorizing the patients Computed Tomography (CT) lung images as normal or abnormal. The images are subjected to segmentation to focus on detecting the cancerous region to classify. Effective feature selection and feature extraction is made by applying Watershed Transform and Principal Component Analysis. The emphasis is on the feature extraction stage to yield a better classification performance. The classification of CT images as benign or malignant is done using Machine Learning based Neural Network.


Author(s):  
Salsabil A. El-Regaily ◽  
Mohammed A. Salem ◽  
Mohammed H. Abdel Aziz ◽  
Mohammed I. Roushdy

2014 ◽  
Vol 13 (1) ◽  
pp. 41 ◽  
Author(s):  
Macedo Firmino ◽  
Antônio H Morais ◽  
Roberto M Mendoça ◽  
Marcel R Dantas ◽  
Helio R Hekis ◽  
...  

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