Fully automatic and accurate detection of lung nodules in CT images using a hybrid feature set.

PURPOSE: The aim of this study was to develop a novel technique for lung nodule detection using an optimized feature set. This feature set has been achieved after rigorous experimentation, which has helped in reducing the false positives significantly. METHOD: The proposed method starts with pre-processing, removing any present noise from input images, followed by lung segmentation using optimal thresholding. Then the image is enhanced using multi scale dot enhancement filtering prior to nodule detection and feature extraction. Finally, classification of lung nodules is achieved using Support Vector Machine (SVM) classifier. The feature set consists of intensity, shape (2D and 3D) and texture features, which have been selected to optimize the sensitivity and reduce false positives. In addition to SVM, some other supervised classifiers like K-Nearest-Neighbour (KNN), Decision Tree and Linear Discriminant Analysis (LDA) have also been used for performance comparison. The extracted features have also been compared class-wise to determine the most relevant features for lung nodule detection. The proposed system has been evaluated using 850 scans from Lung Image Database Consortium (LIDC) dataset and k-fold cross validation scheme. RESULTS: The overall sensitivity has been improved compared to the previous methods and false positives per scan have been reduced significantly. The achieved sensitivities at detection and classification stages are 94.20% and 98.15% respectively with only 2.19 false positives per scan. CONCLUSIONS: It is very difficult to achieve high performance metrics using only a single feature class therefore hybrid approach in feature selection remains a better choice. Choosing right set of features can improve the overall accuracy of the system by improving the sensitivity and reducing false positives. This article is protected by copyright. All rights reserved.

[1]  Usman Qamar,et al.  Pulmonary Nodules Detection and Classification Using Hybrid Features from Computerized Tomographic Images , 2016 .

[2]  Anthony P. Reeves,et al.  Three-dimensional segmentation and growth-rate estimation of small pulmonary nodules in helical CT images , 2003, IEEE Transactions on Medical Imaging.

[3]  Ying Wei,et al.  An adaptive lung nodule detection algorithm , 2009, 2009 Chinese Control and Decision Conference.

[4]  Dazhe Zhao,et al.  Computer aided detection of lung nodules based on voxel analysis utilizing support vector machines , 2009, 2009 International Conference on Future BioMedical Information Engineering (FBIE).

[5]  Hiram Madero Orozco,et al.  Lung Nodule Classification in CT Thorax Images Using Support Vector Machines , 2013, 2013 12th Mexican International Conference on Artificial Intelligence.

[6]  Aly A. Farag,et al.  Automatic Lung Segmentation of Volumetric Low-Dose CT Scans Using Graph Cuts , 2008, ISVC.

[7]  João Manuel R. S. Tavares,et al.  Automatic 3D pulmonary nodule detection in CT images: A survey , 2016, Comput. Methods Programs Biomed..

[8]  Anselmo Cardoso de Paiva,et al.  Methodology for automatic detection of lung nodules in computerized tomography images , 2010, Comput. Methods Programs Biomed..

[9]  Abbas Z. Kouzani,et al.  Random forest based lung nodule classification aided by clustering , 2010, Comput. Medical Imaging Graph..

[10]  Guang-ming Xian,et al.  An identification method of malignant and benign liver tumors from ultrasonography based on GLCM texture features and fuzzy SVM , 2010, Expert Syst. Appl..

[11]  S. Armato,et al.  Computerized detection of pulmonary nodules on CT scans. , 1999, Radiographics : a review publication of the Radiological Society of North America, Inc.

[12]  Geoffrey A. Solano,et al.  Lung cancer classification using genetic algorithm to optimize prediction models , 2014, IISA 2014, The 5th International Conference on Information, Intelligence, Systems and Applications.

[13]  O S Miettinen,et al.  Early lung cancer action project: a summary of the findings on baseline screening. , 2001, The oncologist.

[14]  Joyoni Dey,et al.  > Replace This Line with Your Paper Identification Number (double-click Here to Edit) < , 2022 .

[15]  Alexander Zien,et al.  Semi-Supervised Classification by Low Density Separation , 2005, AISTATS.

[16]  Tae-Sun Choi,et al.  Genetic programming-based feature transform and classification for the automatic detection of pulmonary nodules on computed tomography images , 2012, Inf. Sci..

[17]  Qiang Li,et al.  Selective enhancement filters for nodules, vessels, and airway walls in two- and three-dimensional CT scans. , 2003, Medical physics.

[18]  J. Rodgers,et al.  Thirteen ways to look at the correlation coefficient , 1988 .

[19]  Jamshid Dehmeshki,et al.  Shape-Based Computer-Aided Detection of Lung Nodules in Thoracic CT Images , 2009, IEEE Transactions on Biomedical Engineering.

[20]  M. Usman Akram,et al.  Lung Nodule Detection in CT Images using Neuro Fuzzy Classifier , 2013 .

[21]  Xin Meng,et al.  Shape “Break-and-Repair” Strategy and Its Application to Automated Medical Image Segmentation , 2011, IEEE Transactions on Visualization and Computer Graphics.

[22]  Eric A. Hoffman,et al.  Automatic lung segmentation for accurate quantitation of volumetric X-ray CT images , 2001, IEEE Transactions on Medical Imaging.

[23]  A. Jemal,et al.  Cancer statistics, 2015 , 2015, CA: a cancer journal for clinicians.

[24]  Bram van Ginneken,et al.  A large-scale evaluation of automatic pulmonary nodule detection in chest CT using local image features and k-nearest-neighbour classification , 2009, Medical Image Anal..

[25]  Max A. Viergever,et al.  On Combining Computer-Aided Detection Systems , 2011, IEEE Transactions on Medical Imaging.

[26]  M. Shoaib,et al.  Lung nodule detection using multi-resolution analysis , 2013, 2013 ICME International Conference on Complex Medical Engineering.

[27]  Marcos Salganicoff,et al.  Segmentation of pulmonary nodules of various densities with morphological approaches and convexity models , 2011, Medical Image Anal..

[28]  Aydin Akan,et al.  Classification of Pulmonary Nodules by Using Hybrid Features , 2013, Comput. Math. Methods Medicine.

[29]  J A Swets,et al.  Measuring the accuracy of diagnostic systems. , 1988, Science.

[30]  Francisco Herrera,et al.  A Survey on the Application of Genetic Programming to Classification , 2010, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[31]  R. M. Haralick,et al.  Textural features for image classification. IEEE Transaction on Systems, Man, and Cybernetics , 1973 .

[32]  Tae-Sun Choi,et al.  Automated pulmonary nodule detection based on three-dimensional shape-based feature descriptor , 2014, Comput. Methods Programs Biomed..

[33]  Chenwang Jin,et al.  HESSIAN-LoG : A NOVEL DOT ENHANCEMENT FILTER , 2013 .

[34]  C. Kavitha,et al.  A REVIEW ON COMPUTER AIDED DETECTION AND DIAGNOSIS OF LUNG CANCER NODULES , 2012, BIOINFORMATICS 2012.

[35]  Ayat Karrar,et al.  Computer Aided Detection of Large Lung Nodules using Chest Computer Tomography Images , 2012 .

[36]  Hong Zhao,et al.  Enhancement Filter for Computer-Aided Detection of Pulmonary Nodules on Thoracic CT images , 2006, Sixth International Conference on Intelligent Systems Design and Applications.