Radiomics and radiogenomics in lung cancer: A review for the clinician.
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Prateek Prasanna | Anant Madabhushi | Soumya Ghose | Vamsidhar Velcheti | Rajat Thawani | Niha Beig | Michael McLane | A. Madabhushi | V. Velcheti | P. Prasanna | R. Thawani | N. Beig | S. Ghose | Michael Mclane | Niha G. Beig
[1] Robert J. Gillies,et al. Quantitative Computed Tomographic Descriptors Associate Tumor Shape Complexity and Intratumor Heterogeneity with Prognosis in Lung Adenocarcinoma , 2015, PloS one.
[2] O. Mawlawi,et al. Prognostic value and reproducibility of pretreatment CT texture features in stage III non-small cell lung cancer. , 2014, International journal of radiation oncology, biology, physics.
[3] Paul Kinahan,et al. Radiomics: Images Are More than Pictures, They Are Data , 2015, Radiology.
[4] Jin Mo Goo,et al. Computerized texture analysis of persistent part-solid ground-glass nodules: differentiation of preinvasive lesions from invasive pulmonary adenocarcinomas. , 2014, Radiology.
[5] Adrien Depeursinge,et al. Predicting adenocarcinoma recurrence using computational texture models of nodule components in lung CT. , 2015, Medical physics.
[6] L. Schwartz,et al. Defining a Radiomic Response Phenotype: A Pilot Study using targeted therapy in NSCLC , 2016, Scientific Reports.
[7] D. Sagi,et al. Gabor filters as texture discriminator , 1989, Biological Cybernetics.
[8] A. Ward,et al. Distinguishing radiation fibrosis from tumour recurrence after stereotactic ablative radiotherapy (SABR) for lung cancer: A quantitative analysis of CT density changes , 2013, Acta oncologica.
[9] Xia Li,et al. Combination of Radiological and Gray Level Co-occurrence Matrix Textural Features Used to Distinguish Solitary Pulmonary Nodules by Computed Tomography , 2013, Journal of Digital Imaging.
[10] Benjamin Haibe-Kains,et al. Radiomic feature clusters and Prognostic Signatures specific for Lung and Head & Neck cancer , 2015, Scientific Reports.
[11] Raymond H Mak,et al. Radiomic phenotype features predict pathological response in non-small cell lung cancer. , 2016, Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology.
[12] Robert M. Haralick,et al. Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..
[13] Omar S. Al-Kadi,et al. Texture Analysis of Aggressive and Nonaggressive Lung Tumor CE CT Images , 2008, IEEE Transactions on Biomedical Engineering.
[14] Hugo J. W. L. Aerts,et al. Radiomic‐Based Pathological Response Prediction from Primary Tumors and Lymph Nodes in NSCLC , 2017, Journal of thoracic oncology : official publication of the International Association for the Study of Lung Cancer.
[15] Heber MacMahon,et al. Variability of tumor area measurements for response assessment in malignant pleural mesothelioma. , 2013, Medical physics.
[16] A. Jemal,et al. Cancer statistics, 2011 , 2011, CA: a cancer journal for clinicians.
[17] Kyung Soo Lee,et al. Volume-Based Parameter of 18F-FDG PET/CT in Malignant Pleural Mesothelioma: Prediction of Therapeutic Response and Prognostic Implications , 2010, Annals of Surgical Oncology.
[18] B. Kramer,et al. Overdiagnosis in low-dose computed tomography screening for lung cancer. , 2014, JAMA internal medicine.
[19] Samuel H. Hawkins,et al. Reproducibility and Prognosis of Quantitative Features Extracted from CT Images. , 2014, Translational oncology.
[20] Massimo Bellomi,et al. CT Radiogenomic Characterization of EGFR, K-RAS, and ALK Mutations in Non-Small Cell Lung Cancer , 2015, European Radiology.
[21] Richard A. Robb,et al. Noninvasive Risk Stratification of Lung Adenocarcinoma using Quantitative Computed Tomography , 2014, Journal of thoracic oncology : official publication of the International Association for the Study of Lung Cancer.
[22] Rangaraj M. Rangayyan,et al. Gradient and texture analysis for the classification of mammographic masses , 2000, IEEE Transactions on Medical Imaging.
[23] Zaid J. Towfic,et al. The Lung Image Database Consortium (LIDC) data collection process for nodule detection and annotation , 2007, SPIE Medical Imaging.
[24] Ming Liu,et al. EGFR L858R mutation is associated with lung adenocarcinoma patients with dominant ground-glass opacity. , 2015, Lung cancer.
[25] Jing Zhang,et al. Performance comparison of artificial neural network and logistic regression model for differentiating lung nodules on CT scans , 2012, Expert Syst. Appl..
[26] Jacob D. Furst,et al. Wavelet-based texture classification of tissues in computed tomography , 2005, 18th IEEE Symposium on Computer-Based Medical Systems (CBMS'05).
[27] Xia Li,et al. Comparative evaluation of support vector machines for computer aided diagnosis of lung cancer in CT based on a multi-dimensional data set , 2013, Comput. Methods Programs Biomed..
[28] Xiuhua Guo,et al. Computer-Aided Diagnosis for Early-Stage Lung Cancer Based on Longitudinal and Balanced Data , 2013, PloS one.
[29] Raymond H Mak,et al. CT-based radiomic analysis of stereotactic body radiation therapy patients with lung cancer. , 2016, Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology.
[30] Ricardo A. M. Valentim,et al. Computer-aided detection (CADe) and diagnosis (CADx) system for lung cancer with likelihood of malignancy , 2016, BioMedical Engineering OnLine.
[31] O. Liesenfeld,et al. Lung cancer screening: utility of molecular applications in conjunction with low-dose computed tomography guidelines , 2016, Expert review of molecular diagnostics.
[32] Hong Zhao,et al. Texture Feature Analysis for Computer-Aided Diagnosis on Pulmonary Nodules , 2015, Journal of Digital Imaging.
[33] Alan D. Lopez,et al. Global, Regional, and National Cancer Incidence, Mortality, Years of Life Lost, Years Lived With Disability, and Disability-Adjusted Life-years for 32 Cancer Groups, 1990 to 2015: A Systematic Analysis for the Global Burden of Disease Study , 2017, JAMA oncology.
[34] Kyung Soo Lee,et al. Volume-based growth tumor kinetics as a prognostic biomarker for patients with EGFR mutant lung adenocarcinoma undergoing EGFR tyrosine kinase inhibitor therapy: a case control study , 2016, Cancer Imaging.
[35] W. Tsai,et al. Reproducibility of radiomics for deciphering tumor phenotype with imaging , 2016, Scientific Reports.
[36] Patrick Granton,et al. Radiomics: extracting more information from medical images using advanced feature analysis. , 2012, European journal of cancer.
[37] Ronald Boellaard,et al. Repeatability of Radiomic Features in Non-Small-Cell Lung Cancer [18F]FDG-PET/CT Studies: Impact of Reconstruction and Delineation , 2016, Molecular Imaging and Biology.
[38] Lauge Sørensen,et al. Quantitative Analysis of Pulmonary Emphysema Using Local Binary Patterns , 2010, IEEE Transactions on Medical Imaging.
[39] G. Collins,et al. Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD): The TRIPOD Statement , 2015, Annals of Internal Medicine.
[40] Simon Wan,et al. Tumor Heterogeneity and Permeability as Measured on the CT Component of PET/CT Predict Survival in Patients with Non–Small Cell Lung Cancer , 2013, Clinical Cancer Research.
[41] João Manuel R. S. Tavares,et al. Automatic 3D pulmonary nodule detection in CT images: A survey , 2016, Comput. Methods Programs Biomed..
[42] B. Fei,et al. Potential Application of Radiomics for Differentiating Solitary Pulmonary Nodules , 2016, OMICS journal of radiology.
[43] P. Lambin,et al. CT-based radiomic signature predicts distant metastasis in lung adenocarcinoma. , 2015, Radiotherapy and oncology : journal of the European Society for Therapeutic Radiology and Oncology.
[44] P. Lambin,et al. Machine Learning methods for Quantitative Radiomic Biomarkers , 2015, Scientific Reports.
[45] Anant Madabhushi,et al. Emerging Themes in Image Informatics and Molecular Analysis for Digital Pathology. , 2016, Annual review of biomedical engineering.
[46] Yiming Wu,et al. The Effect of Artificial Neural Network Model Combined with Six Tumor Markers in Auxiliary Diagnosis of Lung Cancer , 2012, Journal of Medical Systems.
[47] Samuel G Armato,et al. Lung Volume Measurements as a Surrogate Marker for Patient Response in Malignant Pleural Mesothelioma , 2013, Journal of thoracic oncology : official publication of the International Association for the Study of Lung Cancer.
[48] A. Madabhushi,et al. An integrated segmentation and shape‐based classification scheme for distinguishing adenocarcinomas from granulomas on lung CT , 2017, Medical physics.
[49] Georg Langs,et al. Mapping visual features to semantic profiles for retrieval in medical imaging , 2015, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[50] John F. Canny,et al. A Computational Approach to Edge Detection , 1986, IEEE Transactions on Pattern Analysis and Machine Intelligence.
[51] Chintan Parmar,et al. Associations Between Somatic Mutations and Metabolic Imaging Phenotypes in Non–Small Cell Lung Cancer , 2017, The Journal of Nuclear Medicine.
[52] Geoffrey G. Zhang,et al. Intrinsic dependencies of CT radiomic features on voxel size and number of gray levels , 2017, Medical physics.
[53] Wei Shen,et al. Multi-scale Convolutional Neural Networks for Lung Nodule Classification , 2015, IPMI.
[54] W. Nailon. Texture Analysis Methods for Medical Image Characterisation , 2010 .
[55] Gui Wei-hua,et al. Medical Images Edge Detection Based on Mathematical Morphology , 2005, 2005 IEEE Engineering in Medicine and Biology 27th Annual Conference.
[56] P Tiwari,et al. Computer-Extracted Texture Features to Distinguish Cerebral Radionecrosis from Recurrent Brain Tumors on Multiparametric MRI: A Feasibility Study , 2016, American Journal of Neuroradiology.
[57] Yanqi Huang,et al. Radiomics Signature: A Potential Biomarker for the Prediction of Disease-Free Survival in Early-Stage (I or II) Non-Small Cell Lung Cancer. , 2016, Radiology.
[58] Vicky Goh,et al. Are Pretreatment 18F-FDG PET Tumor Textural Features in Non–Small Cell Lung Cancer Associated with Response and Survival After Chemoradiotherapy? , 2013, The Journal of Nuclear Medicine.
[59] A. Devaraj,et al. Radiomics of pulmonary nodules and lung cancer. , 2017, Translational lung cancer research.
[60] Robert J. Gillies,et al. The effect of SUV discretization in quantitative FDG-PET Radiomics: the need for standardized methodology in tumor texture analysis , 2015, Scientific Reports.
[61] Di Dong,et al. Non-small cell lung cancer: quantitative phenotypic analysis of CT images as a potential marker of prognosis , 2016, Scientific Reports.
[62] Insuk Sohn,et al. Decoding Tumor Phenotypes for ALK, ROS1, and RET Fusions in Lung Adenocarcinoma Using a Radiomics Approach , 2015, Medicine.
[63] K. Miles,et al. Tumour heterogeneity in non-small cell lung carcinoma assessed by CT texture analysis: a potential marker of survival , 2012, European Radiology.
[64] Sotiris B. Kotsiantis,et al. Machine learning: a review of classification and combining techniques , 2006, Artificial Intelligence Review.
[65] E. V. van Beek,et al. Radiomics and its emerging role in lung cancer research, imaging biomarkers and clinical management: State of the art. , 2017, European journal of radiology.
[66] Shota Yamamoto,et al. ALK molecular phenotype in non-small cell lung cancer: CT radiogenomic characterization. , 2014, Radiology.
[67] Anant Madabhushi,et al. Co-registration of pre-operative CT with ex vivo surgically excised ground glass nodules to define spatial extent of invasive adenocarcinoma on in vivo imaging: a proof-of-concept study , 2017, European Radiology.
[68] Zaiyi Liu,et al. Effects of contrast-enhancement, reconstruction slice thickness and convolution kernel on the diagnostic performance of radiomics signature in solitary pulmonary nodule , 2016, Scientific Reports.
[69] H. Aerts,et al. Applications and limitations of radiomics , 2016, Physics in medicine and biology.
[70] Andre Dekker,et al. Radiomics: the process and the challenges. , 2012, Magnetic resonance imaging.
[71] P. Lambin,et al. Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach , 2014, Nature Communications.
[72] Prateek Prasanna,et al. Co-occurrence of Local Anisotropic Gradient Orientations (CoLlAGe): A new radiomics descriptor , 2016, Scientific Reports.
[73] C. Gatsonis,et al. Reduced Lung-Cancer Mortality with Low-Dose Computed Tomographic Screening , 2012 .