Assessment methodologies and statistical issues for computer-aided diagnosis of lung nodules in computed tomography: contemporary research topics relevant to the lung image database consortium.
暂无分享,去创建一个
R. F. Wagner | G. McLennan | S. Armato | C. Metz | D. Gur | M. McNitt-Gray | L. Dodd | N. Petrick | H. Chan | B. Sahiner | J. Sayre | S. Beiden
[1] D. Ruppert. The Elements of Statistical Learning: Data Mining, Inference, and Prediction , 2004 .
[2] P. Albert,et al. A Cautionary Note on the Robustness of Latent Class Models for Estimating Diagnostic Error without a Gold Standard , 2004, Biometrics.
[3] Marcus A. Maloof,et al. A General Model for Finite-Sample Effects in Training and Testing of Competing Classifiers , 2003, IEEE Trans. Pattern Anal. Mach. Intell..
[4] Lori E. Dodd,et al. Partial AUC Estimation and Regression , 2003, Biometrics.
[5] Lori E. Dodd,et al. Semiparametric Regression for the Area Under the Receiver Operating Characteristic Curve , 2003 .
[6] Catherine A. Sugar,et al. Clustering for Sparsely Sampled Functional Data , 2003 .
[7] Dev P. Chakraborty. Proposed solution to the FROC problem and an invitation to collaborate , 2003, SPIE Medical Imaging.
[8] Alicia Samuels,et al. Cancer Statistics, 2003 , 2003, CA: a cancer journal for clinicians.
[9] Margaret S. Pepe,et al. Semiparametric Receiver Operating Characteristic Analysis to Evaluate Biomarkers for Disease , 2002 .
[10] R. F. Wagner,et al. Assessment of medical imaging and computer-assist systems: lessons from recent experience. , 2002, Academic radiology.
[11] Berkman Sahiner,et al. Breast cancer detection: evaluation of a mass-detection algorithm for computer-aided diagnosis -- experience in 263 patients. , 2002, Radiology.
[12] Dev Chakraborty,et al. Statistical power in observer-performance studies: comparison of the receiver operating characteristic and free-response methods in tasks involving localization. , 2002, Academic radiology.
[13] Robert Tibshirani,et al. The Elements of Statistical Learning: Data Mining, Inference, and Prediction, 2nd Edition , 2001, Springer Series in Statistics.
[14] Nico Karssemeijer,et al. Computer-Aided Diagnosis in Medical Imaging , 2001, IEEE Trans. Medical Imaging.
[15] R F Wagner,et al. Analysis of uncertainties in estimates of components of variance in multivariate ROC analysis. , 2001, Academic radiology.
[16] R. F. Wagner,et al. Components-of-variance models for random-effects ROC analysis: the case of unequal variance structures across modalities. , 2001, Academic radiology.
[17] Heang-Ping Chan,et al. Multiple-reader studies, digital mammography, computer-aided diagnosis, and the Holy Grail of imaging physics: II , 2001, SPIE Medical Imaging.
[18] Michael A. King,et al. Case sampling in LROC: a Monte Carlo analysis , 2001, SPIE Medical Imaging.
[19] Harold L. Kundel,et al. Evaluating imaging systems in the absence of truth: a comparison of ROC and mixture distribution analysis in computer-aided diagnosis in mammography , 2001, SPIE Medical Imaging.
[20] P S Albert,et al. Latent Class Modeling Approaches for Assessing Diagnostic Error without a Gold Standard: With Applications to p53 Immunohistochemical Assays in Bladder Tumors , 2001, Biometrics.
[21] L. Clarke,et al. National Cancer Institute initiative: Lung image database resource for imaging research. , 2001, Academic radiology.
[22] R. F. Wagner,et al. Continuous versus categorical data for ROC analysis: some quantitative considerations. , 2001, Academic radiology.
[23] L. Joseph,et al. Bayesian Approaches to Modeling the Conditional Dependence Between Multiple Diagnostic Tests , 2001, Biometrics.
[24] Sergey V. Beiden,et al. Multiple-reader studies, digital mammography, computer-aided diagnosis, and the Holy Grail of imaging physics: I , 2001, SPIE Medical Imaging.
[25] G. Rubin,et al. Data explosion: the challenge of multidetector-row CT. , 2000, European journal of radiology.
[26] K. Zou,et al. Two transformation models for estimating an ROC curve derived from continuous data , 2000 .
[27] N A Obuchowski,et al. Data analysis for detection and localization of multiple abnormalities with application to mammography. , 2000, Academic radiology.
[28] D P Chakraborty,et al. Data analysis for detection and localization of multiple abnormalities with application to mammography. , 2000, Academic radiology.
[29] Lubomir M. Hadjiiski,et al. Feature selection and classifier performance in computer-aided diagnosis: the effect of finite sample size. , 2000, Medical physics.
[30] M. Pepe. An Interpretation for the ROC Curve and Inference Using GLM Procedures , 2000, Biometrics.
[31] C. Rutter,et al. Bootstrap estimation of diagnostic accuracy with patient-clustered data. , 2000, Academic radiology.
[32] R. F. Wagner,et al. Components-of-variance models and multiple-bootstrap experiments: an alternative method for random-effects, receiver operating characteristic analysis. , 2000, Academic radiology.
[33] R. F. Wagner,et al. The problem of ROC analysis without truth: the EM algorithm and the information matrix , 2000, Medical Imaging.
[34] R G Swensson,et al. Using Localization Data from Image Interpretations to Improve Estimates of Performance Accuracy , 2000, Medical decision making : an international journal of the Society for Medical Decision Making.
[35] Dev P. Chakraborty,et al. The FROC, AFROC and DROC Variants of the ROC Analysis , 2000 .
[36] Agreement and Accuracy Mixture Distribution Analysis , 2000 .
[37] R. F. Wagner,et al. Classifier design for computer-aided diagnosis: effects of finite sample size on the mean performance of classical and neural network classifiers. , 1999, Medical physics.
[38] OS Miettinen,et al. Early Lung Cancer Action Project , 1999, The Lancet.
[39] O. Miettinen,et al. Early Lung Cancer Action Project: overall design and findings from baseline screening , 1999, The Lancet.
[40] X H Zhou,et al. Correcting for verification bias in studies of a diagnostic test's accuracy , 1998, Statistical methods in medical research.
[41] S. Hui,et al. Evaluation of diagnostic tests without gold standards , 1998, Statistical methods in medical research.
[42] Robert M. Nishikawa,et al. Variations in measured performance of CAD schemes due to database composition and scoring protocol , 1998, Medical Imaging.
[43] C. Metz,et al. Maximum likelihood estimation of receiver operating characteristic (ROC) curves from continuously-distributed data. , 1998, Statistics in medicine.
[44] Feng Li,et al. Mass screening for lung cancer with mobile spiral computed tomography scanner , 1998, The Lancet.
[45] Harold L. Kundel,et al. Comparing observer performance with mixture distribution analysis when there is no external gold standard , 1998, Medical Imaging.
[46] S D Walter,et al. Effects of dependent errors in the assessment of diagnostic test performance. , 1997, Statistics in medicine.
[47] C A Roe,et al. Dorfman-Berbaum-Metz method for statistical analysis of multireader, multimodality receiver operating characteristic data: validation with computer simulation. , 1997, Academic radiology.
[48] R. Wagner,et al. Science is alive and well at the Food and Drug Administration. , 1997, Radiology.
[49] H. Ohmatsu,et al. Peripheral lung cancer: screening and detection with low-dose spiral CT versus radiography. , 1996, Radiology.
[50] R. Swensson. Unified measurement of observer performance in detecting and localizing target objects on images. , 1996, Medical physics.
[51] M. Tan,et al. Random effects models in latent class analysis for evaluating accuracy of diagnostic tests. , 1996, Biometrics.
[52] A. Toledano,et al. Ordinal regression methodology for ROC curves derived from correlated data. , 1996, Statistics in medicine.
[53] D. Winchester,et al. The National Cancer Data Base report on lung cancer , 1996, Cancer.
[54] N A Obuchowski,et al. Multireader receiver operating characteristic studies: a comparison of study designs. , 1995, Academic radiology.
[55] M E Burt,et al. Incidence of local recurrence and second primary tumors in resected stage I lung cancer. , 1995, The Journal of thoracic and cardiovascular surgery.
[56] D. Naidich,et al. Helical computed tomography of the thorax. Clinical applications. , 1994, Radiologic clinics of North America.
[57] K. Berbaum,et al. Receiver operating characteristic rating analysis. Generalization to the population of readers and patients with the jackknife method. , 1992, Investigative radiology.
[58] M. Melamed,et al. The effect of surgical treatment on survival from early lung cancer. Implications for screening. , 1992, Chest.
[59] D. Chakraborty,et al. Free-response methodology: alternate analysis and a new observer-performance experiment. , 1990, Radiology.
[60] C B Begg,et al. Consensus Diagnoses and "Gold Standards" , 1990, Medical decision making : an international journal of the Society for Medical Decision Making.
[61] M. Bronskill,et al. Receiver Operator characteristic (ROC) Analysis without Truth , 1990, Medical decision making : an international journal of the Society for Medical Decision Making.
[62] D P Chakraborty,et al. Maximum likelihood analysis of free-response receiver operating characteristic (FROC) data. , 1989, Medical physics.
[63] M. Espeland,et al. Using latent class models to characterize and assess relative error in discrete measurements. , 1989, Biometrics.
[64] C E Metz,et al. Some practical issues of experimental design and data analysis in radiological ROC studies. , 1989, Investigative radiology.
[65] C B Begg,et al. A General Regression Methodology for ROC Curve Estimation , 1988, Medical decision making : an international journal of the Society for Medical Decision Making.
[66] B. McNeil,et al. Assessment of radiologic tests: control of bias and other design considerations. , 1988, Radiology.
[67] S D Walter,et al. Estimation of test error rates, disease prevalence and relative risk from misclassified data: a review. , 1988, Journal of clinical epidemiology.
[68] P. Robinson. The interpretation of diagnostic tests. , 1987, Nuclear medicine communications.
[69] C. Metz. ROC Methodology in Radiologic Imaging , 1986, Investigative radiology.
[70] P M Vacek,et al. The effect of conditional dependence on the evaluation of diagnostic tests. , 1985, Biometrics.
[71] R A Greenes,et al. Construction of Receiver Operating Characteristic Curves when Disease Verification Is Subject to Selection Bias , 1984, Medical decision making : an international journal of the Society for Medical Decision Making.
[72] C. Metz,et al. A New Approach for Testing the Significance of Differences Between ROC Curves Measured from Correlated Data , 1984 .
[73] H. Kundel,et al. The Effect of Verification on the Assessment of Imaging Techniques , 1983, Investigative radiology.
[74] R A Greenes,et al. Assessment of diagnostic tests when disease verification is subject to selection bias. , 1983, Biometrics.
[75] C. Metz. Basic principles of ROC analysis. , 1978, Seminars in nuclear medicine.
[76] John F. Hamilton,et al. A Free Response Approach To The Measurement And Characterization Of Radiographic Observer Performance , 1977, Other Conferences.
[77] C E Metz,et al. Observer performance in detecting multiple radiographic signals. Prediction and analysis using a generalized ROC approach. , 1976, Radiology.
[78] C. Metz,et al. Visual detection and localization of radiographic images. , 1975, Radiology.