Computer-aided diagnosis of pulmonary nodules using a two-step approach for feature selection and classifier ensemble construction

Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accur...

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Published inArtificial intelligence in medicine Vol. 50; no. 1; pp. 43 - 53
Main Authors Lee, Michael C., Boroczky, Lilla, Sungur-Stasik, Kivilcim, Cann, Aaron D., Borczuk, Alain C., Kawut, Steven M., Powell, Charles A.
Format Journal Article
LanguageEnglish
Published Netherlands Elsevier B.V 01.09.2010
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Online AccessGet full text
ISSN0933-3657
1873-2860
1873-2860
DOI10.1016/j.artmed.2010.04.011

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Abstract Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accuracy. In this study, we describe a CADx system for pulmonary nodules using a two-step supervised learning system combining a GA with the random subspace method (RSM), with the aim of exploring algorithm design parameters and demonstrating improved classification performance over either the GA or RSM-based ensembles alone. We used a retrospective database of 125 pulmonary nodules (63 benign; 62 malignant) with CT volumes and clinical history. A total of 216 features were derived from the segmented image data and clinical history. Ensemble classifiers using RSM or GA-based feature selection were constructed and tested via leave-one-out validation with feature selection and classifier training executed within each iteration. We further tested a two-step approach using a GA ensemble to first assess the relevance of the features, and then using this information to control feature selection during a subsequent RSM step. The base classification was performed using linear discriminant analysis (LDA). The RSM classifier alone achieved a maximum leave-one-out Az of 0.866 (95% confidence interval: 0.794–0.919) at a subset size of s = 36 features. The GA ensemble yielded an Az of 0.851 (0.775–0.907). The proposed two-step algorithm produced a maximum Az value of 0.889 (0.823–0.936) when the GA ensemble was used to completely remove less relevant features from the second RSM step, with similar results obtained when the GA-LDA results were used to reduce but not eliminate the occurrence of certain features. After accounting for correlations in the data, the leave-one-out Az in the two-step method was significantly higher than in the RSM and the GA-LDA. We have developed a CADx system for evaluation of pulmonary nodule based on a two-step feature selection and ensemble classifier algorithm. We have shown that by combining classifier ensemble algorithms in this two-step manner, it is possible to predict the malignancy for solitary pulmonary nodules with a performance exceeding that of either of the individual steps.
AbstractList Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accuracy. In this study, we describe a CADx system for pulmonary nodules using a two-step supervised learning system combining a GA with the random subspace method (RSM), with the aim of exploring algorithm design parameters and demonstrating improved classification performance over either the GA or RSM-based ensembles alone. We used a retrospective database of 125 pulmonary nodules (63 benign; 62 malignant) with CT volumes and clinical history. A total of 216 features were derived from the segmented image data and clinical history. Ensemble classifiers using RSM or GA-based feature selection were constructed and tested via leave-one-out validation with feature selection and classifier training executed within each iteration. We further tested a two-step approach using a GA ensemble to first assess the relevance of the features, and then using this information to control feature selection during a subsequent RSM step. The base classification was performed using linear discriminant analysis (LDA). The RSM classifier alone achieved a maximum leave-one-out Az of 0.866 (95% confidence interval: 0.794-0.919) at a subset size of s=36 features. The GA ensemble yielded an Az of 0.851 (0.775-0.907). The proposed two-step algorithm produced a maximum Az value of 0.889 (0.823-0.936) when the GA ensemble was used to completely remove less relevant features from the second RSM step, with similar results obtained when the GA-LDA results were used to reduce but not eliminate the occurrence of certain features. After accounting for correlations in the data, the leave-one-out Az in the two-step method was significantly higher than in the RSM and the GA-LDA. We have developed a CADx system for evaluation of pulmonary nodule based on a two-step feature selection and ensemble classifier algorithm. We have shown that by combining classifier ensemble algorithms in this two-step manner, it is possible to predict the malignancy for solitary pulmonary nodules with a performance exceeding that of either of the individual steps.
Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accuracy. In this study, we describe a CADx system for pulmonary nodules using a two-step supervised learning system combining a GA with the random subspace method (RSM), with the aim of exploring algorithm design parameters and demonstrating improved classification performance over either the GA or RSM-based ensembles alone.OBJECTIVEAccurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accuracy. In this study, we describe a CADx system for pulmonary nodules using a two-step supervised learning system combining a GA with the random subspace method (RSM), with the aim of exploring algorithm design parameters and demonstrating improved classification performance over either the GA or RSM-based ensembles alone.We used a retrospective database of 125 pulmonary nodules (63 benign; 62 malignant) with CT volumes and clinical history. A total of 216 features were derived from the segmented image data and clinical history. Ensemble classifiers using RSM or GA-based feature selection were constructed and tested via leave-one-out validation with feature selection and classifier training executed within each iteration. We further tested a two-step approach using a GA ensemble to first assess the relevance of the features, and then using this information to control feature selection during a subsequent RSM step. The base classification was performed using linear discriminant analysis (LDA).METHODS AND MATERIALSWe used a retrospective database of 125 pulmonary nodules (63 benign; 62 malignant) with CT volumes and clinical history. A total of 216 features were derived from the segmented image data and clinical history. Ensemble classifiers using RSM or GA-based feature selection were constructed and tested via leave-one-out validation with feature selection and classifier training executed within each iteration. We further tested a two-step approach using a GA ensemble to first assess the relevance of the features, and then using this information to control feature selection during a subsequent RSM step. The base classification was performed using linear discriminant analysis (LDA).The RSM classifier alone achieved a maximum leave-one-out Az of 0.866 (95% confidence interval: 0.794-0.919) at a subset size of s=36 features. The GA ensemble yielded an Az of 0.851 (0.775-0.907). The proposed two-step algorithm produced a maximum Az value of 0.889 (0.823-0.936) when the GA ensemble was used to completely remove less relevant features from the second RSM step, with similar results obtained when the GA-LDA results were used to reduce but not eliminate the occurrence of certain features. After accounting for correlations in the data, the leave-one-out Az in the two-step method was significantly higher than in the RSM and the GA-LDA.RESULTSThe RSM classifier alone achieved a maximum leave-one-out Az of 0.866 (95% confidence interval: 0.794-0.919) at a subset size of s=36 features. The GA ensemble yielded an Az of 0.851 (0.775-0.907). The proposed two-step algorithm produced a maximum Az value of 0.889 (0.823-0.936) when the GA ensemble was used to completely remove less relevant features from the second RSM step, with similar results obtained when the GA-LDA results were used to reduce but not eliminate the occurrence of certain features. After accounting for correlations in the data, the leave-one-out Az in the two-step method was significantly higher than in the RSM and the GA-LDA.We have developed a CADx system for evaluation of pulmonary nodule based on a two-step feature selection and ensemble classifier algorithm. We have shown that by combining classifier ensemble algorithms in this two-step manner, it is possible to predict the malignancy for solitary pulmonary nodules with a performance exceeding that of either of the individual steps.CONCLUSIONSWe have developed a CADx system for evaluation of pulmonary nodule based on a two-step feature selection and ensemble classifier algorithm. We have shown that by combining classifier ensemble algorithms in this two-step manner, it is possible to predict the malignancy for solitary pulmonary nodules with a performance exceeding that of either of the individual steps.
Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accuracy. In this study, we describe a CADx system for pulmonary nodules using a two-step supervised learning system combining a GA with the random subspace method (RSM), with the aim of exploring algorithm design parameters and demonstrating improved classification performance over either the GA or RSM-based ensembles alone. We used a retrospective database of 125 pulmonary nodules (63 benign; 62 malignant) with CT volumes and clinical history. A total of 216 features were derived from the segmented image data and clinical history. Ensemble classifiers using RSM or GA-based feature selection were constructed and tested via leave-one-out validation with feature selection and classifier training executed within each iteration. We further tested a two-step approach using a GA ensemble to first assess the relevance of the features, and then using this information to control feature selection during a subsequent RSM step. The base classification was performed using linear discriminant analysis (LDA). The RSM classifier alone achieved a maximum leave-one-out Az of 0.866 (95% confidence interval: 0.794–0.919) at a subset size of s = 36 features. The GA ensemble yielded an Az of 0.851 (0.775–0.907). The proposed two-step algorithm produced a maximum Az value of 0.889 (0.823–0.936) when the GA ensemble was used to completely remove less relevant features from the second RSM step, with similar results obtained when the GA-LDA results were used to reduce but not eliminate the occurrence of certain features. After accounting for correlations in the data, the leave-one-out Az in the two-step method was significantly higher than in the RSM and the GA-LDA. We have developed a CADx system for evaluation of pulmonary nodule based on a two-step feature selection and ensemble classifier algorithm. We have shown that by combining classifier ensemble algorithms in this two-step manner, it is possible to predict the malignancy for solitary pulmonary nodules with a performance exceeding that of either of the individual steps.
Abstract Objective Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accuracy. In this study, we describe a CADx system for pulmonary nodules using a two-step supervised learning system combining a GA with the random subspace method (RSM), with the aim of exploring algorithm design parameters and demonstrating improved classification performance over either the GA or RSM-based ensembles alone. Methods and materials We used a retrospective database of 125 pulmonary nodules (63 benign; 62 malignant) with CT volumes and clinical history. A total of 216 features were derived from the segmented image data and clinical history. Ensemble classifiers using RSM or GA-based feature selection were constructed and tested via leave-one-out validation with feature selection and classifier training executed within each iteration. We further tested a two-step approach using a GA ensemble to first assess the relevance of the features, and then using this information to control feature selection during a subsequent RSM step. The base classification was performed using linear discriminant analysis (LDA). Results The RSM classifier alone achieved a maximum leave-one-out Az of 0.866 (95% confidence interval: 0.794–0.919) at a subset size of s = 36 features. The GA ensemble yielded an Az of 0.851 (0.775–0.907). The proposed two-step algorithm produced a maximum Az value of 0.889 (0.823–0.936) when the GA ensemble was used to completely remove less relevant features from the second RSM step, with similar results obtained when the GA-LDA results were used to reduce but not eliminate the occurrence of certain features. After accounting for correlations in the data, the leave-one-out Az in the two-step method was significantly higher than in the RSM and the GA-LDA. Conclusions We have developed a CADx system for evaluation of pulmonary nodule based on a two-step feature selection and ensemble classifier algorithm. We have shown that by combining classifier ensemble algorithms in this two-step manner, it is possible to predict the malignancy for solitary pulmonary nodules with a performance exceeding that of either of the individual steps.
Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on methods for combining genetic algorithm (GA) feature selection with ensemble classifier systems in an effort to increase classification accuracy. In this study, we describe a CADx system for pulmonary nodules using a two-step supervised learning system combining a GA with the random subspace method (RSM), with the aim of exploring algorithm design parameters and demonstrating improved classification performance over either the GA or RSM-based ensembles alone. We used a retrospective database of 125 pulmonary nodules (63 benign; 62 malignant) with CT volumes and clinical history. A total of 216 features were derived from the segmented image data and clinical history. Ensemble classifiers using RSM or GA-based feature selection were constructed and tested via leave-one-out validation with feature selection and classifier training executed within each iteration. We further tested a two-step approach using a GA ensemble to first assess the relevance of the features, and then using this information to control feature selection during a subsequent RSM step. The base classification was performed using linear discriminant analysis (LDA). The RSM classifier alone achieved a maximum leave-one-out Az of 0.866 (95% confidence interval: 0.794-0.919) at a subset size of s =36 features. The GA ensemble yielded an Az of 0.851 (0.775-0.907). The proposed two-step algorithm produced a maximum Az value of 0.889 (0.823-0.936) when the GA ensemble was used to completely remove less relevant features from the second RSM step, with similar results obtained when the GA-LDA results were used to reduce but not eliminate the occurrence of certain features. After accounting for correlations in the data, the leave-one-out Az in the two-step method was significantly higher than in the RSM and the GA-LDA. We have developed a CADx system for evaluation of pulmonary nodule based on a two-step feature selection and ensemble classifier algorithm. We have shown that by combining classifier ensemble algorithms in this two-step manner, it is possible to predict the malignancy for solitary pulmonary nodules with a performance exceeding that of either of the individual steps.
Author Boroczky, Lilla
Cann, Aaron D.
Kawut, Steven M.
Lee, Michael C.
Powell, Charles A.
Sungur-Stasik, Kivilcim
Borczuk, Alain C.
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  givenname: Aaron D.
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BackLink https://www.ncbi.nlm.nih.gov/pubmed/20570118$$D View this record in MEDLINE/PubMed
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Cites_doi 10.1016/j.artmed.2004.12.002
10.1016/j.inffus.2004.04.003
10.1002/(SICI)1097-0258(19980515)17:9<1033::AID-SIM784>3.0.CO;2-Z
10.1109/TMI.2005.852048
10.1109/MCAS.2006.1688199
10.3322/CA.2007.0010
10.1007/11494683_34
10.1109/TIT.1962.1057692
10.1118/1.2207129
10.1016/0893-6080(94)90099-X
10.1148/radiology.214.3.r00mr22823
10.1097/00004728-200207000-00017
10.1162/neco.1991.3.1.79
10.1016/0031-3203(93)90120-L
10.1148/radiographics.20.1.g00ja0343
10.1148/radiol.2333031018
10.1118/1.598228
10.1016/B978-0-08-050684-5.50020-3
10.1016/j.artmed.2008.03.002
10.1118/1.2179750
10.1109/TSMC.1973.4309314
10.1148/radiology.186.2.8421743
10.1016/j.artmed.2007.05.002
10.1007/s100440200011
10.1016/S0531-5131(03)00283-8
10.1109/21.44046
10.1259/bjr/30281702
10.1109/34.667881
10.1016/0167-8655(89)90037-8
10.1109/42.24861
10.1016/S0031-3203(99)00223-X
10.1109/TC.1972.5008926
10.1007/3-540-45164-1_12
ContentType Journal Article
Copyright 2010 Elsevier B.V.
Elsevier B.V.
Copyright (c) 2010 Elsevier B.V. All rights reserved.
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ISSN 0933-3657
1873-2860
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IsPeerReviewed true
IsScholarly true
Issue 1
Keywords Random subspace
Feature selection
Linear discriminant analysis
Pulmonary nodules
Computer-aided diagnosis
Genetic algorithms
Language English
License https://www.elsevier.com/tdm/userlicense/1.0
Copyright (c) 2010 Elsevier B.V. All rights reserved.
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References Way, Hadjiiski, Sahiner, Chan, Cascade, Kazerooni (bib4) 2006; 33
Kuncheva, Bezdek, Duin (bib9) 2001; 34
Suzuki, Li, Sone, Doi (bib5) 2005; 24
Pranckeviciene, Somorjai, Baumgartner, Jeon (bib21) Nov 2005; 35
Tsymbal, Pechenizkiy, Cunningham (bib16) 2005
Bertoni, Folgieri, Valentini (bib22) 2004
Lee, Nelson (bib39) 2008; 43
Bishop (bib36) 1995
Amadasun, King (bib34) 1989; 19
Erasmus, Connolly, McAdams, Roggli (bib23) 2000; 20
Wiemker, Rogalla, Blaffert, Sifri, Hay, Shah (bib26) 2005; 78
Boroczky, Lee, Zhao, Agnihotri, Powell, Borczuk (bib10) 2007; 2
Dunne K, Cunningham P, Azuaje F. Solutions to instability problems with sequential wrapper-based approaches to feature selection (technical note). Department of Computer Science, Trinity College, University of Dublin; 2002. Jan. Report No.: TCD-CS-2002-28.
Kuncheva (bib7) 2004
Wiemker R, Rogalla P, Hein P, Blaffert T, Rosch P. Computer-aided segmentation of pulmonary nodules: automated vasculature cutoff in thin- and thick-slice CT. In: Lemke HU, Vannier MW, Inamura K, Doi K, Reiber JHC, editors. International Congress Series. CARS 2003. Computer Assisted Radiology and Surgery. Proceedings of the 17th International Congress and Exhibition (June 25–28, 2003, London UK), 1256; 2003. p. 965–70. doi:10.1016/S0531-5131(03)00283-8.
Siedlecki, Sklansky (bib6) 1989; 10
Li, Doi (bib44) 2006; 33
Metz, Herman, Shen (bib45) 1998; 17
Hu (bib28) 1962; 8
Xu, Lee, Boroczky, Cann, Borczuk, Kawut (bib25) 2009
Li, Sone, Abe, Macmahon, Doi (bib24) 2004; 233
Eshelman L. The CHC adaptive search algorithm: how to have a safe search when engaging in nontraditional genetic recombination. In: Spitz, Bruce M, editor. Foundations of Genetic Algorithms (July 15–18, 1990, Indiana University, Bloomington, Indiana). San Mateo, CA: Morgan Kaufmann.
Tsymbal, Pechenizkiy, Cunningham (bib15) 2005; 6
Polikar (bib43) 2006; 6
Haralick, Shanmuga, Dinstein (bib33) 1973; SMC-3
Guerra-Salcedo, Whitley (bib14) 1999
Cunningham P, Carney J. Diversity versus quality in classification ensembles based on feature selection. In: Lopez de Mantaras R, Plaza E, editors. Lecture Notes in Artificial Intelligence 1810: Machine Learning: ECML 2000 11th European Conference on Machine Learning (May 31–June 2, 2000, Barcelona, Spain). Heidelberg, Germany: Springer; 2000. p. 109–16.
Ho (bib12) 1998; 20
Tsymbal, Cunningham, Pechenizkiy, Puuronen (bib17) 2003
Duda, Hart, Stork (bib40) 2001
Granlund (bib30) 1972; C 21
Kido, Kuriyama, Higashiyama, Kasugai, Kuroda (bib31) 2002; 26
Rogova (bib42) 1994; 7
Jemal, Siegel, Ward, Hao, Xu, Murray (bib1) 2008; 58
Sahiner, Chan, Petrick, Helvie, Goodsitt (bib32) 1998; 25
Jacobs, Jordan, Nowlan, Hinton (bib41) 1991; 3
Skurichina, Duin (bib13) 2002; 5
Pranckeviciene, Baumgartner, Somorjai (bib20) 2005; 3541
Guerra-Salcedo C, Whitley DL. Genetic search for feature subset selection: a comparison between CHC and GENESIS. In: Koza, John R, Banzhaf, Wolfgang, Chellapilla, Kumar, Deb, Kalyanmoym Dorigo, Marco, Fogel, David B, Garzon, Max H, Goldberg, David E, Iba, Hitoshi, Riolo, Rick L, editors. Genetic Programming 1998: Proceedings of the Third Annual Conference (July 22–25, 1998, University of Wisconsin, Madison, Wisconsin). San Francisco, CA: Morgan Kaufmann.
Galvez, Canton (bib29) 1993; 26
Mougiakakou, Valavanis, Nikita, Nikita (bib46) 2007; 41
Nakamura, Yoshida, Engelmann, MacMahon, Katsuragawa, Ishida (bib3) 2000; 214
Kittler, Hatef, Duin, Matas (bib8) 1998; 20
Gurney (bib2) 1993; 186
Opitz (bib18) 1999
Chen, Daponte, Fox (bib35) 1989; 8
Li (10.1016/j.artmed.2010.04.011_bib44) 2006; 33
Metz (10.1016/j.artmed.2010.04.011_bib45) 1998; 17
Siedlecki (10.1016/j.artmed.2010.04.011_bib6) 1989; 10
Erasmus (10.1016/j.artmed.2010.04.011_bib23) 2000; 20
Amadasun (10.1016/j.artmed.2010.04.011_bib34) 1989; 19
Opitz (10.1016/j.artmed.2010.04.011_bib18) 1999
Lee (10.1016/j.artmed.2010.04.011_bib39) 2008; 43
Kido (10.1016/j.artmed.2010.04.011_bib31) 2002; 26
Chen (10.1016/j.artmed.2010.04.011_bib35) 1989; 8
Jacobs (10.1016/j.artmed.2010.04.011_bib41) 1991; 3
10.1016/j.artmed.2010.04.011_bib11
Ho (10.1016/j.artmed.2010.04.011_bib12) 1998; 20
Polikar (10.1016/j.artmed.2010.04.011_bib43) 2006; 6
Suzuki (10.1016/j.artmed.2010.04.011_bib5) 2005; 24
Skurichina (10.1016/j.artmed.2010.04.011_bib13) 2002; 5
10.1016/j.artmed.2010.04.011_bib19
Wiemker (10.1016/j.artmed.2010.04.011_bib26) 2005; 78
Hu (10.1016/j.artmed.2010.04.011_bib28) 1962; 8
Duda (10.1016/j.artmed.2010.04.011_bib40) 2001
Bishop (10.1016/j.artmed.2010.04.011_bib36) 1995
10.1016/j.artmed.2010.04.011_bib37
10.1016/j.artmed.2010.04.011_bib38
Xu (10.1016/j.artmed.2010.04.011_bib25) 2009
Guerra-Salcedo (10.1016/j.artmed.2010.04.011_bib14) 1999
Tsymbal (10.1016/j.artmed.2010.04.011_bib17) 2003
Bertoni (10.1016/j.artmed.2010.04.011_bib22) 2004
Way (10.1016/j.artmed.2010.04.011_bib4) 2006; 33
Nakamura (10.1016/j.artmed.2010.04.011_bib3) 2000; 214
Tsymbal (10.1016/j.artmed.2010.04.011_bib16) 2005
Haralick (10.1016/j.artmed.2010.04.011_bib33) 1973; SMC-3
Boroczky (10.1016/j.artmed.2010.04.011_bib10) 2007; 2
Granlund (10.1016/j.artmed.2010.04.011_bib30) 1972; C 21
Pranckeviciene (10.1016/j.artmed.2010.04.011_bib20) 2005; 3541
Galvez (10.1016/j.artmed.2010.04.011_bib29) 1993; 26
Kuncheva (10.1016/j.artmed.2010.04.011_bib9) 2001; 34
Sahiner (10.1016/j.artmed.2010.04.011_bib32) 1998; 25
Jemal (10.1016/j.artmed.2010.04.011_bib1) 2008; 58
Kuncheva (10.1016/j.artmed.2010.04.011_bib7) 2004
Li (10.1016/j.artmed.2010.04.011_bib24) 2004; 233
Tsymbal (10.1016/j.artmed.2010.04.011_bib15) 2005; 6
10.1016/j.artmed.2010.04.011_bib27
Mougiakakou (10.1016/j.artmed.2010.04.011_bib46) 2007; 41
Gurney (10.1016/j.artmed.2010.04.011_bib2) 1993; 186
Kittler (10.1016/j.artmed.2010.04.011_bib8) 1998; 20
Pranckeviciene (10.1016/j.artmed.2010.04.011_bib21) 2005; 35
Rogova (10.1016/j.artmed.2010.04.011_bib42) 1994; 7
References_xml – year: 2009
  ident: bib25
  article-title: Comparison of image features calculated in different dimensions for computer-aided diagnosis of lung nodules
  publication-title: SPIE Medical Imaging 2009: Computer-Aided Diagnosis (February 8–12, 2009, Lake Buena Vista, Florida)
– volume: 43
  start-page: 61
  year: 2008
  end-page: 74
  ident: bib39
  article-title: Supervised pattern recognition for the prediction of contrast-enhancement appearance in brain tumors from multivariate magnetic resonance imaging and spectroscopy
  publication-title: Artificial Intelligence in Medicine
– volume: 35
  start-page: 215
  year: Nov 2005
  end-page: 226
  ident: bib21
  article-title: Identification of signatures in biomedical spectra using domain knowledge
  publication-title: Artificial Intelligence in Medicine
– volume: 6
  start-page: 21
  year: 2006
  end-page: 45
  ident: bib43
  article-title: Ensemble based systems in decision making
  publication-title: IEEE Circuits and Systems Magazine
– volume: 233
  start-page: 793
  year: 2004
  end-page: 798
  ident: bib24
  article-title: Malignant versus benign nodules at CT screening for lung cancer: comparison of thin-section CT findings
  publication-title: Radiology
– volume: 33
  start-page: 2323
  year: 2006
  end-page: 2337
  ident: bib4
  article-title: Computer-aided diagnosis of pulmonary nodules on CT scans: Segmentation and classification using 3D active contours
  publication-title: Medical Physics
– start-page: 379
  year: 1999
  end-page: 384
  ident: bib18
  article-title: Feature selection for ensembles
  publication-title: Proceedings of the 16th National Conference on Artificial Intelligence (July 18–22, 1999, Orlando, Florida)
– volume: 26
  start-page: 573
  year: 2002
  end-page: 578
  ident: bib31
  article-title: Fractal analysis of small peripheral pulmonary nodules in thin-section CT—evaluation of the lung-nodule interfaces
  publication-title: Journal of Computer Assisted Tomography
– volume: 7
  start-page: 777
  year: 1994
  end-page: 781
  ident: bib42
  article-title: Combining the results of several neural network classifiers
  publication-title: Neural Networks
– reference: Cunningham P, Carney J. Diversity versus quality in classification ensembles based on feature selection. In: Lopez de Mantaras R, Plaza E, editors. Lecture Notes in Artificial Intelligence 1810: Machine Learning: ECML 2000 11th European Conference on Machine Learning (May 31–June 2, 2000, Barcelona, Spain). Heidelberg, Germany: Springer; 2000. p. 109–16.
– volume: 17
  start-page: 1033
  year: 1998
  end-page: 1053
  ident: bib45
  article-title: Maximum likelihood estimation of receiver operating characteristic (ROC) curves from continuously-distributed data
  publication-title: Statistics in Medicine
– volume: 58
  start-page: 71
  year: 2008
  end-page: 96
  ident: bib1
  article-title: Cancer statistics
  publication-title: Ca-a Cancer Journal for Clinicians
– volume: 78
  start-page: S46
  year: 2005
  end-page: S56
  ident: bib26
  article-title: Aspects of computer-aided detection (CAD) and volumetry of pulmonary nodules using multislice CT
  publication-title: British Journal of Radiology
– year: 2001
  ident: bib40
  article-title: Pattern classification
– start-page: 877
  year: 2005
  end-page: 882
  ident: bib16
  article-title: Sequential genetic search for ensemble feature selection
  publication-title: Proceedings of the Nineteenth International Joint Conference on Artificial Intelligence (July 30–August 5, 2005, Edinburgh, Scotland)
– volume: 2
  start-page: S362
  year: 2007
  end-page: S364
  ident: bib10
  article-title: Computer-aided diagnosis for lung cancer using a classifier ensemble
  publication-title: International Journal of Computer Assisted Radiology and Surgery
– start-page: 13
  year: 1999
  end-page: 17
  ident: bib14
  article-title: Feature selection mechanisms for ensemble creation: a genetic search perspective
  publication-title: AAAI-99 and GECCO-99 Workshop on Data Mining with Evolutionary Algorithms: Research Directions
– volume: 10
  start-page: 335
  year: 1989
  end-page: 347
  ident: bib6
  article-title: A note on genetic algorithms for large-scale feature-selection
  publication-title: Pattern Recognition Letters
– volume: 41
  start-page: 25
  year: 2007
  end-page: 37
  ident: bib46
  article-title: Differential diagnosis of CT focal liver lesions using texture features, feature selection and ensemble driven classifiers
  publication-title: Artificial Intelligence in Medicine
– volume: 214
  start-page: 823
  year: 2000
  end-page: 830
  ident: bib3
  article-title: Computerized analysis of the likelihood of malignancy in solitary pulmonary nodules with use of artificial neural networks
  publication-title: Radiology
– reference: Guerra-Salcedo C, Whitley DL. Genetic search for feature subset selection: a comparison between CHC and GENESIS. In: Koza, John R, Banzhaf, Wolfgang, Chellapilla, Kumar, Deb, Kalyanmoym Dorigo, Marco, Fogel, David B, Garzon, Max H, Goldberg, David E, Iba, Hitoshi, Riolo, Rick L, editors. Genetic Programming 1998: Proceedings of the Third Annual Conference (July 22–25, 1998, University of Wisconsin, Madison, Wisconsin). San Francisco, CA: Morgan Kaufmann.
– reference: Dunne K, Cunningham P, Azuaje F. Solutions to instability problems with sequential wrapper-based approaches to feature selection (technical note). Department of Computer Science, Trinity College, University of Dublin; 2002. Jan. Report No.: TCD-CS-2002-28.
– volume: 5
  start-page: 121
  year: 2002
  end-page: 135
  ident: bib13
  article-title: Bagging, boosting and the random subspace method for linear classifiers
  publication-title: Pattern Analysis and Applications
– start-page: 124
  year: 2003
  end-page: 129
  ident: bib17
  article-title: Search strategies for ensemble feature selection in medical diagnostics
  publication-title: Proceedings of the 16th IEEE Symposium on Computer-Based Medical Systems (June 26–27, 2003, New York, NY)
– reference: Eshelman L. The CHC adaptive search algorithm: how to have a safe search when engaging in nontraditional genetic recombination. In: Spitz, Bruce M, editor. Foundations of Genetic Algorithms (July 15–18, 1990, Indiana University, Bloomington, Indiana). San Mateo, CA: Morgan Kaufmann.
– year: 2004
  ident: bib7
  article-title: Combining pattern classifiers: methods and algorithms
– volume: C 21
  start-page: 195
  year: 1972
  end-page: 201
  ident: bib30
  article-title: Fourier preprocessing for hand print character recognition
  publication-title: IEEE Transactions on Computers
– volume: 186
  start-page: 405
  year: 1993
  end-page: 413
  ident: bib2
  article-title: Determining the likelihood of malignancy in solitary pulmonary nodules with Bayesian analysis. Part I. Theory
  publication-title: Radiology
– year: 1995
  ident: bib36
  article-title: Neural networks for pattern recognition
– volume: 26
  start-page: 667
  year: 1993
  end-page: 681
  ident: bib29
  article-title: Normalization and shape-recognition of 3-dimensional objects by 3D moments
  publication-title: Pattern Recognition
– volume: 25
  start-page: 516
  year: 1998
  end-page: 526
  ident: bib32
  article-title: Computerized characterization of masses on mammograms: the rubber band straightening transform and texture analysis
  publication-title: Medical Physics
– volume: 3
  start-page: 79
  year: 1991
  end-page: 87
  ident: bib41
  article-title: Adaptive mixtures of local experts
  publication-title: Neural Computation
– volume: 20
  start-page: 226
  year: 1998
  end-page: 239
  ident: bib8
  article-title: On combining classifiers
  publication-title: IEEE Transactions on Pattern Analysis and Machine Intelligence
– volume: 33
  start-page: 868
  year: 2006
  end-page: 875
  ident: bib44
  article-title: Reduction of bias and variance for evaluation of computer-aided diagnostic schemes
  publication-title: Medical Physics
– volume: 6
  start-page: 83
  year: 2005
  end-page: 98
  ident: bib15
  article-title: Diversity in search strategies for ensemble feature selection
  publication-title: Information Fusion
– reference: Wiemker R, Rogalla P, Hein P, Blaffert T, Rosch P. Computer-aided segmentation of pulmonary nodules: automated vasculature cutoff in thin- and thick-slice CT. In: Lemke HU, Vannier MW, Inamura K, Doi K, Reiber JHC, editors. International Congress Series. CARS 2003. Computer Assisted Radiology and Surgery. Proceedings of the 17th International Congress and Exhibition (June 25–28, 2003, London UK), 1256; 2003. p. 965–70. doi:10.1016/S0531-5131(03)00283-8.
– volume: 24
  start-page: 1138
  year: 2005
  end-page: 1150
  ident: bib5
  article-title: Computer-aided diagnostic scheme for distinction between benign and malignant nodules in thoracic low-dose CT by use of massive training artificial neural network
  publication-title: IEEE Transactions on Medical Imaging
– start-page: 29
  year: 2004
  end-page: 35
  ident: bib22
  article-title: Feature selection combined with random subspace ensemble for gene expression based diagnosis of malignancy
  publication-title: Biological and Artificial Intelligence Environments: Proceedings of the 15th Italian Workshop on Neural Nets (September 14–17, 2004, Perugia, Italy)
– volume: 8
  start-page: 179
  year: 1962
  end-page: 187
  ident: bib28
  article-title: Visual pattern recognition by moment invariants
  publication-title: IEEE Transactions on Information Theory
– volume: 20
  start-page: 832
  year: 1998
  end-page: 844
  ident: bib12
  article-title: The random subspace method for constructing decision forests
  publication-title: IEEE Transactions on Pattern Analysis and Machine Intelligence
– volume: SMC-3
  start-page: 610
  year: 1973
  end-page: 621
  ident: bib33
  article-title: Textural features for image classification
  publication-title: IEEE Transactions on Systems Man and Cybernetics
– volume: 19
  start-page: 1264
  year: 1989
  end-page: 1274
  ident: bib34
  article-title: Textural features corresponding to textural properties
  publication-title: IEEE Transactions on Systems Man and Cybernetics
– volume: 34
  start-page: 299
  year: 2001
  end-page: 314
  ident: bib9
  article-title: Decision templates for multiple classifier fusion: an experimental comparison
  publication-title: Pattern Recognition
– volume: 20
  start-page: 43
  year: 2000
  end-page: 58
  ident: bib23
  article-title: Solitary pulmonary nodules. Part I. Morphologic evaluation for differentiation of benign and malignant lesions
  publication-title: Radiographics
– volume: 3541
  start-page: 336
  year: 2005
  end-page: 345
  ident: bib20
  article-title: Using domain knowledge in the random subspace method: application to the classification of biomedical spectra
  publication-title: Multiple Classifier Systems
– volume: 8
  start-page: 133
  year: 1989
  end-page: 142
  ident: bib35
  article-title: Fractal feature analysis and classification in medical imaging
  publication-title: IEEE Transactions on Medical Imaging
– year: 1995
  ident: 10.1016/j.artmed.2010.04.011_bib36
– volume: 35
  start-page: 215
  year: 2005
  ident: 10.1016/j.artmed.2010.04.011_bib21
  article-title: Identification of signatures in biomedical spectra using domain knowledge
  publication-title: Artificial Intelligence in Medicine
  doi: 10.1016/j.artmed.2004.12.002
– ident: 10.1016/j.artmed.2010.04.011_bib38
– volume: 20
  start-page: 832
  issue: August
  year: 1998
  ident: 10.1016/j.artmed.2010.04.011_bib12
  article-title: The random subspace method for constructing decision forests
  publication-title: IEEE Transactions on Pattern Analysis and Machine Intelligence
– volume: 6
  start-page: 83
  year: 2005
  ident: 10.1016/j.artmed.2010.04.011_bib15
  article-title: Diversity in search strategies for ensemble feature selection
  publication-title: Information Fusion
  doi: 10.1016/j.inffus.2004.04.003
– year: 2009
  ident: 10.1016/j.artmed.2010.04.011_bib25
  article-title: Comparison of image features calculated in different dimensions for computer-aided diagnosis of lung nodules
– volume: 17
  start-page: 1033
  issue: May
  year: 1998
  ident: 10.1016/j.artmed.2010.04.011_bib45
  article-title: Maximum likelihood estimation of receiver operating characteristic (ROC) curves from continuously-distributed data
  publication-title: Statistics in Medicine
  doi: 10.1002/(SICI)1097-0258(19980515)17:9<1033::AID-SIM784>3.0.CO;2-Z
– volume: 24
  start-page: 1138
  issue: September
  year: 2005
  ident: 10.1016/j.artmed.2010.04.011_bib5
  article-title: Computer-aided diagnostic scheme for distinction between benign and malignant nodules in thoracic low-dose CT by use of massive training artificial neural network
  publication-title: IEEE Transactions on Medical Imaging
  doi: 10.1109/TMI.2005.852048
– ident: 10.1016/j.artmed.2010.04.011_bib19
– volume: 6
  start-page: 21
  year: 2006
  ident: 10.1016/j.artmed.2010.04.011_bib43
  article-title: Ensemble based systems in decision making
  publication-title: IEEE Circuits and Systems Magazine
  doi: 10.1109/MCAS.2006.1688199
– volume: 58
  start-page: 71
  issue: March–April
  year: 2008
  ident: 10.1016/j.artmed.2010.04.011_bib1
  article-title: Cancer statistics
  publication-title: Ca-a Cancer Journal for Clinicians
  doi: 10.3322/CA.2007.0010
– year: 2001
  ident: 10.1016/j.artmed.2010.04.011_bib40
– volume: 3541
  start-page: 336
  year: 2005
  ident: 10.1016/j.artmed.2010.04.011_bib20
  article-title: Using domain knowledge in the random subspace method: application to the classification of biomedical spectra
  publication-title: Multiple Classifier Systems
  doi: 10.1007/11494683_34
– volume: 8
  start-page: 179
  year: 1962
  ident: 10.1016/j.artmed.2010.04.011_bib28
  article-title: Visual pattern recognition by moment invariants
  publication-title: IEEE Transactions on Information Theory
  doi: 10.1109/TIT.1962.1057692
– volume: 33
  start-page: 2323
  issue: July
  year: 2006
  ident: 10.1016/j.artmed.2010.04.011_bib4
  article-title: Computer-aided diagnosis of pulmonary nodules on CT scans: Segmentation and classification using 3D active contours
  publication-title: Medical Physics
  doi: 10.1118/1.2207129
– volume: 7
  start-page: 777
  year: 1994
  ident: 10.1016/j.artmed.2010.04.011_bib42
  article-title: Combining the results of several neural network classifiers
  publication-title: Neural Networks
  doi: 10.1016/0893-6080(94)90099-X
– start-page: 124
  year: 2003
  ident: 10.1016/j.artmed.2010.04.011_bib17
  article-title: Search strategies for ensemble feature selection in medical diagnostics
– start-page: 877
  year: 2005
  ident: 10.1016/j.artmed.2010.04.011_bib16
  article-title: Sequential genetic search for ensemble feature selection
– volume: 214
  start-page: 823
  issue: March
  year: 2000
  ident: 10.1016/j.artmed.2010.04.011_bib3
  article-title: Computerized analysis of the likelihood of malignancy in solitary pulmonary nodules with use of artificial neural networks
  publication-title: Radiology
  doi: 10.1148/radiology.214.3.r00mr22823
– volume: 26
  start-page: 573
  issue: July–August
  year: 2002
  ident: 10.1016/j.artmed.2010.04.011_bib31
  article-title: Fractal analysis of small peripheral pulmonary nodules in thin-section CT—evaluation of the lung-nodule interfaces
  publication-title: Journal of Computer Assisted Tomography
  doi: 10.1097/00004728-200207000-00017
– volume: 3
  start-page: 79
  year: 1991
  ident: 10.1016/j.artmed.2010.04.011_bib41
  article-title: Adaptive mixtures of local experts
  publication-title: Neural Computation
  doi: 10.1162/neco.1991.3.1.79
– volume: 26
  start-page: 667
  issue: May
  year: 1993
  ident: 10.1016/j.artmed.2010.04.011_bib29
  article-title: Normalization and shape-recognition of 3-dimensional objects by 3D moments
  publication-title: Pattern Recognition
  doi: 10.1016/0031-3203(93)90120-L
– volume: 2
  start-page: S362
  issue: June
  year: 2007
  ident: 10.1016/j.artmed.2010.04.011_bib10
  article-title: Computer-aided diagnosis for lung cancer using a classifier ensemble
  publication-title: International Journal of Computer Assisted Radiology and Surgery
– volume: 20
  start-page: 43
  issue: January–February
  year: 2000
  ident: 10.1016/j.artmed.2010.04.011_bib23
  article-title: Solitary pulmonary nodules. Part I. Morphologic evaluation for differentiation of benign and malignant lesions
  publication-title: Radiographics
  doi: 10.1148/radiographics.20.1.g00ja0343
– volume: 233
  start-page: 793
  issue: December
  year: 2004
  ident: 10.1016/j.artmed.2010.04.011_bib24
  article-title: Malignant versus benign nodules at CT screening for lung cancer: comparison of thin-section CT findings
  publication-title: Radiology
  doi: 10.1148/radiol.2333031018
– year: 2004
  ident: 10.1016/j.artmed.2010.04.011_bib7
– volume: 25
  start-page: 516
  issue: April
  year: 1998
  ident: 10.1016/j.artmed.2010.04.011_bib32
  article-title: Computerized characterization of masses on mammograms: the rubber band straightening transform and texture analysis
  publication-title: Medical Physics
  doi: 10.1118/1.598228
– ident: 10.1016/j.artmed.2010.04.011_bib37
  doi: 10.1016/B978-0-08-050684-5.50020-3
– volume: 43
  start-page: 61
  issue: May
  year: 2008
  ident: 10.1016/j.artmed.2010.04.011_bib39
  article-title: Supervised pattern recognition for the prediction of contrast-enhancement appearance in brain tumors from multivariate magnetic resonance imaging and spectroscopy
  publication-title: Artificial Intelligence in Medicine
  doi: 10.1016/j.artmed.2008.03.002
– volume: 33
  start-page: 868
  issue: April
  year: 2006
  ident: 10.1016/j.artmed.2010.04.011_bib44
  article-title: Reduction of bias and variance for evaluation of computer-aided diagnostic schemes
  publication-title: Medical Physics
  doi: 10.1118/1.2179750
– start-page: 29
  year: 2004
  ident: 10.1016/j.artmed.2010.04.011_bib22
  article-title: Feature selection combined with random subspace ensemble for gene expression based diagnosis of malignancy
– volume: SMC-3
  start-page: 610
  year: 1973
  ident: 10.1016/j.artmed.2010.04.011_bib33
  article-title: Textural features for image classification
  publication-title: IEEE Transactions on Systems Man and Cybernetics
  doi: 10.1109/TSMC.1973.4309314
– volume: 186
  start-page: 405
  issue: February
  year: 1993
  ident: 10.1016/j.artmed.2010.04.011_bib2
  article-title: Determining the likelihood of malignancy in solitary pulmonary nodules with Bayesian analysis. Part I. Theory
  publication-title: Radiology
  doi: 10.1148/radiology.186.2.8421743
– volume: 41
  start-page: 25
  issue: September
  year: 2007
  ident: 10.1016/j.artmed.2010.04.011_bib46
  article-title: Differential diagnosis of CT focal liver lesions using texture features, feature selection and ensemble driven classifiers
  publication-title: Artificial Intelligence in Medicine
  doi: 10.1016/j.artmed.2007.05.002
– volume: 5
  start-page: 121
  issue: June
  year: 2002
  ident: 10.1016/j.artmed.2010.04.011_bib13
  article-title: Bagging, boosting and the random subspace method for linear classifiers
  publication-title: Pattern Analysis and Applications
  doi: 10.1007/s100440200011
– start-page: 379
  year: 1999
  ident: 10.1016/j.artmed.2010.04.011_bib18
  article-title: Feature selection for ensembles
– ident: 10.1016/j.artmed.2010.04.011_bib27
  doi: 10.1016/S0531-5131(03)00283-8
– start-page: 13
  year: 1999
  ident: 10.1016/j.artmed.2010.04.011_bib14
  article-title: Feature selection mechanisms for ensemble creation: a genetic search perspective
– volume: 19
  start-page: 1264
  issue: September–October
  year: 1989
  ident: 10.1016/j.artmed.2010.04.011_bib34
  article-title: Textural features corresponding to textural properties
  publication-title: IEEE Transactions on Systems Man and Cybernetics
  doi: 10.1109/21.44046
– volume: 78
  start-page: S46
  year: 2005
  ident: 10.1016/j.artmed.2010.04.011_bib26
  article-title: Aspects of computer-aided detection (CAD) and volumetry of pulmonary nodules using multislice CT
  publication-title: British Journal of Radiology
  doi: 10.1259/bjr/30281702
– volume: 20
  start-page: 226
  issue: March
  year: 1998
  ident: 10.1016/j.artmed.2010.04.011_bib8
  article-title: On combining classifiers
  publication-title: IEEE Transactions on Pattern Analysis and Machine Intelligence
  doi: 10.1109/34.667881
– volume: 10
  start-page: 335
  issue: November
  year: 1989
  ident: 10.1016/j.artmed.2010.04.011_bib6
  article-title: A note on genetic algorithms for large-scale feature-selection
  publication-title: Pattern Recognition Letters
  doi: 10.1016/0167-8655(89)90037-8
– volume: 8
  start-page: 133
  issue: June
  year: 1989
  ident: 10.1016/j.artmed.2010.04.011_bib35
  article-title: Fractal feature analysis and classification in medical imaging
  publication-title: IEEE Transactions on Medical Imaging
  doi: 10.1109/42.24861
– volume: 34
  start-page: 299
  issue: February
  year: 2001
  ident: 10.1016/j.artmed.2010.04.011_bib9
  article-title: Decision templates for multiple classifier fusion: an experimental comparison
  publication-title: Pattern Recognition
  doi: 10.1016/S0031-3203(99)00223-X
– volume: C 21
  start-page: 195
  year: 1972
  ident: 10.1016/j.artmed.2010.04.011_bib30
  article-title: Fourier preprocessing for hand print character recognition
  publication-title: IEEE Transactions on Computers
  doi: 10.1109/TC.1972.5008926
– ident: 10.1016/j.artmed.2010.04.011_bib11
  doi: 10.1007/3-540-45164-1_12
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Snippet Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous research has reported on...
Abstract Objective Accurate classification methods are critical in computer-aided diagnosis (CADx) and other clinical decision support systems. Previous...
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elsevier
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StartPage 43
SubjectTerms Algorithms
Artificial Intelligence
Classification
Classifiers
Computer-aided diagnosis
Construction
Data Mining
Databases as Topic
Decision Support Systems, Clinical
Decision Support Techniques
Diagnosis
Discriminant Analysis
Feature selection
Female
Genetic algorithms
Humans
Internal Medicine
Linear discriminant analysis
Linear Models
Lung Diseases - diagnostic imaging
Lung Neoplasms - diagnostic imaging
Male
Medical Informatics
New York
Nodules
Other
Pattern Recognition, Automated
Predictive Value of Tests
Prognosis
Pulmonary nodules
Radiographic Image Interpretation, Computer-Assisted
Random subspace
Retrospective Studies
Solitary Pulmonary Nodule - diagnostic imaging
Tomography, X-Ray Computed
Title Computer-aided diagnosis of pulmonary nodules using a two-step approach for feature selection and classifier ensemble construction
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https://dx.doi.org/10.1016/j.artmed.2010.04.011
https://www.ncbi.nlm.nih.gov/pubmed/20570118
https://www.proquest.com/docview/748938989
https://www.proquest.com/docview/787060686
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