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The Challenge of Choosing the Best Classification Method in Radiomic Analyses: Recommendations and Applications to Lung Cancer CT Images.
Corso, Federica; Tini, Giulia; Lo Presti, Giuliana; Garau, Noemi; De Angelis, Simone Pietro; Bellerba, Federica; Rinaldi, Lisa; Botta, Francesca; Rizzo, Stefania; Origgi, Daniela; Paganelli, Chiara; Cremonesi, Marta; Rampinelli, Cristiano; Bellomi, Massimo; Mazzarella, Luca; Pelicci, Pier Giuseppe; Gandini, Sara; Raimondi, Sara.
Afiliação
  • Corso F; Department of Experimental Oncology, IEO European Institute of Oncology IRCCS, via Adamello 16, 20139 Milan, Italy.
  • Tini G; Department of Mathematics (DMAT), Politecnico di Milano, via Edoardo Bonardi 9, 20133 Milan, Italy.
  • Lo Presti G; Centre for Analysis, Decision and Society (CADS), Human Technopole, via Cristina Belgioioso 171, 20157 Milan, Italy.
  • Garau N; Department of Experimental Oncology, IEO European Institute of Oncology IRCCS, via Adamello 16, 20139 Milan, Italy.
  • De Angelis SP; Medical Physics Unit, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
  • Bellerba F; Department of Electronics, Information and Bioengineering (DEIB), Politecnico di Milano, via Ponzio 34, 20133 Milan, Italy.
  • Rinaldi L; Division of Radiology, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
  • Botta F; Molecular and Pharmaco-Epidemiology Unit, Department of Experimental Oncology, IEO European Institute of Oncology IRCCS, via Adamello 16, 20139 Milan, Italy.
  • Rizzo S; Molecular and Pharmaco-Epidemiology Unit, Department of Experimental Oncology, IEO European Institute of Oncology IRCCS, via Adamello 16, 20139 Milan, Italy.
  • Origgi D; Radiation Research Unit, IEO European Institute of Oncology IRCCS, via Giuseppe Ripamonti 435, 20141 Milan, Italy.
  • Paganelli C; Department of Physics, University of Pavia, via Bassi 6, 27100 Pavia, Italy.
  • Cremonesi M; Medical Physics Unit, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
  • Rampinelli C; Clinica di Radiologia EOC, Istituto Imaging della Svizzera Italiana (IIMSI), via Tesserete 46, 6900 Lugano, Switzerland.
  • Bellomi M; Medical Physics Unit, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
  • Mazzarella L; Department of Electronics, Information and Bioengineering (DEIB), Politecnico di Milano, via Ponzio 34, 20133 Milan, Italy.
  • Pelicci PG; Radiation Research Unit, IEO European Institute of Oncology IRCCS, via Giuseppe Ripamonti 435, 20141 Milan, Italy.
  • Gandini S; Division of Radiology, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
  • Raimondi S; Division of Radiology, IEO European Institute of Oncology IRCCS, via Ripamonti 435, 20141 Milan, Italy.
Cancers (Basel) ; 13(12)2021 Jun 21.
Article em En | MEDLINE | ID: mdl-34205631
ABSTRACT
Radiomics uses high-dimensional sets of imaging features to predict biological characteristics of tumors and clinical outcomes. The choice of the algorithm used to analyze radiomic features and perform predictions has a high impact on the results, thus the identification of adequate machine learning methods for radiomic applications is crucial. In this study we aim to identify suitable approaches of analysis for radiomic-based binary predictions, according to sample size, outcome balancing and the features-outcome association strength. Simulated data were obtained reproducing the correlation structure among 168 radiomic features extracted from Computed Tomography images of 270 Non-Small-Cell Lung Cancer (NSCLC) patients and the associated to lymph node status. Performances of six classifiers combined with six feature selection (FS) methods were assessed on the simulated data using AUC (Area Under the Receiver Operating Characteristics Curves), sensitivity, and specificity. For all the FS methods and regardless of the association strength, the tree-based classifiers Random Forest and Extreme Gradient Boosting obtained good performances (AUC ≥ 0.73), showing the best trade-off between sensitivity and specificity. On small samples, performances were generally lower than in large-medium samples and with larger variations. FS methods generally did not improve performances. Thus, in radiomic studies, we suggest evaluating the choice of FS and classifiers, considering specific sample size, balancing, and association strength.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article