Literature DB >> 33946333

Radiomics and Artificial Intelligence Analysis with Textural Metrics Extracted by Contrast-Enhanced Mammography in the Breast Lesions Classification.

Roberta Fusco1, Adele Piccirillo2, Mario Sansone2, Vincenza Granata1, Maria Rosaria Rubulotta1, Teresa Petrosino1, Maria Luisa Barretta1, Paolo Vallone1, Raimondo Di Giacomo3, Emanuela Esposito3, Maurizio Di Bonito4, Antonella Petrillo1.   

Abstract

The aim of the study was to estimate the diagnostic accuracy of textural features extracted by dual-energy contrast-enhanced mammography (CEM) images, by carrying out univariate and multivariate statistical analyses including artificial intelligence approaches. In total, 80 patients with known breast lesion were enrolled in this prospective study according to regulations issued by the local Institutional Review Board. All patients underwent dual-energy CEM examination in both craniocaudally (CC) and double acquisition of mediolateral oblique (MLO) projections (early and late). The reference standard was pathology from a surgical specimen for malignant lesions and pathology from a surgical specimen or fine needle aspiration cytology, core or Tru-Cut needle biopsy, and vacuum assisted breast biopsy for benign lesions. In total, 104 samples of 80 patients were analyzed. Furthermore, 48 textural parameters were extracted by manually segmenting regions of interest. Univariate and multivariate approaches were performed: non-parametric Wilcoxon-Mann-Whitney test; receiver operating characteristic (ROC), linear classifier (LDA), decision tree (DT), k-nearest neighbors (KNN), artificial neural network (NNET), and support vector machine (SVM) were utilized. A balancing approach and feature selection methods were used. The univariate analysis showed low accuracy and area under the curve (AUC) for all considered features. Instead, in the multivariate textural analysis, the best performance considering the CC view (accuracy (ACC) = 0.75; AUC = 0.82) was reached with a DT trained with leave-one-out cross-variation (LOOCV) and balanced data (with adaptive synthetic (ADASYN) function) and a subset of three robust textural features (MAD, VARIANCE, and LRLGE). The best performance (ACC = 0.77; AUC = 0.83) considering the early-MLO view was reached with a NNET trained with LOOCV and balanced data (with ADASYN function) and a subset of ten robust features (MEAN, MAD, RANGE, IQR, VARIANCE, CORRELATION, RLV, COARSNESS, BUSYNESS, and STRENGTH). The best performance (ACC = 0.73; AUC = 0.82) considering the late-MLO view was reached with a NNET trained with LOOCV and balanced data (with ADASYN function) and a subset of eleven robust features (MODE, MEDIAN, RANGE, RLN, LRLGE, RLV, LZLGE, GLV_GLSZM, ZSV, COARSNESS, and BUSYNESS). Multivariate analyses using pattern recognition approaches, considering 144 textural features extracted from all three mammographic projections (CC, early MLO, and late MLO), optimized by adaptive synthetic sampling and feature selection operations obtained the best results (ACC = 0.87; AUC = 0.90) and showed the best performance in the discrimination of benign and malignant lesions.

Entities:  

Keywords:  artificial intelligence; breast; contrast-enhanced digital mammography; radiomics

Year:  2021        PMID: 33946333     DOI: 10.3390/diagnostics11050815

Source DB:  PubMed          Journal:  Diagnostics (Basel)        ISSN: 2075-4418


  42 in total

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4.  Contrast-enhanced spectral mammography versus MRI: Initial results in the detection of breast cancer and assessment of tumour size.

Authors:  E M Fallenberg; C Dromain; F Diekmann; F Engelken; M Krohn; J M Singh; B Ingold-Heppner; K J Winzer; U Bick; D M Renz
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5.  Low energy mammogram obtained in contrast-enhanced digital mammography (CEDM) is comparable to routine full-field digital mammography (FFDM).

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6.  STEP: spatiotemporal enhancement pattern for MR-based breast tumor diagnosis.

Authors:  Yuanjie Zheng; Sarah Englander; Sajjad Baloch; Evangelia I Zacharaki; Yong Fan; Mitchell D Schnall; Dinggang Shen
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7.  Scientific Impact Recognition Award: Molecular breast imaging: a review of the Mayo Clinic experience.

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8.  Molecular breast imaging: use of a dual-head dedicated gamma camera to detect small breast tumors.

Authors:  Carrie B Hruska; Stephen W Phillips; Dana H Whaley; Deborah J Rhodes; Michael K O'Connor
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Review 10.  Pattern Recognition Approaches for Breast Cancer DCE-MRI Classification: A Systematic Review.

Authors:  Roberta Fusco; Mario Sansone; Salvatore Filice; Guglielmo Carone; Daniela Maria Amato; Carlo Sansone; Antonella Petrillo
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  6 in total

1.  Prediction of Breast Cancer Histological Outcome by Radiomics and Artificial Intelligence Analysis in Contrast-Enhanced Mammography.

Authors:  Antonella Petrillo; Roberta Fusco; Elio Di Bernardo; Teresa Petrosino; Maria Luisa Barretta; Annamaria Porto; Vincenza Granata; Maurizio Di Bonito; Annarita Fanizzi; Raffaella Massafra; Nicole Petruzzellis; Francesca Arezzo; Luca Boldrini; Daniele La Forgia
Journal:  Cancers (Basel)       Date:  2022-04-25       Impact factor: 6.575

2.  Radiomics and Machine Learning Analysis Based on Magnetic Resonance Imaging in the Assessment of Colorectal Liver Metastases Growth Pattern.

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Journal:  Diagnostics (Basel)       Date:  2022-04-29

3.  An update on radiomics techniques in primary liver cancers.

Authors:  Vincenza Granata; Roberta Fusco; Sergio Venazio Setola; Igino Simonetti; Diletta Cozzi; Giulia Grazzini; Francesca Grassi; Andrea Belli; Vittorio Miele; Francesco Izzo; Antonella Petrillo
Journal:  Infect Agent Cancer       Date:  2022-03-04       Impact factor: 2.965

4.  EOB-MR Based Radiomics Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases.

Authors:  Vincenza Granata; Roberta Fusco; Federica De Muzio; Carmen Cutolo; Sergio Venanzio Setola; Federica Dell'Aversana; Alessandro Ottaiano; Guglielmo Nasti; Roberta Grassi; Vincenzo Pilone; Vittorio Miele; Maria Chiara Brunese; Fabiana Tatangelo; Francesco Izzo; Antonella Petrillo
Journal:  Cancers (Basel)       Date:  2022-02-27       Impact factor: 6.639

5.  Contrast MR-Based Radiomics and Machine Learning Analysis to Assess Clinical Outcomes following Liver Resection in Colorectal Liver Metastases: A Preliminary Study.

Authors:  Vincenza Granata; Roberta Fusco; Federica De Muzio; Carmen Cutolo; Sergio Venanzio Setola; Federica Dell' Aversana; Alessandro Ottaiano; Antonio Avallone; Guglielmo Nasti; Francesca Grassi; Vincenzo Pilone; Vittorio Miele; Luca Brunese; Francesco Izzo; Antonella Petrillo
Journal:  Cancers (Basel)       Date:  2022-02-22       Impact factor: 6.639

6.  Radiomic and Artificial Intelligence Analysis with Textural Metrics Extracted by Contrast-Enhanced Mammography and Dynamic Contrast Magnetic Resonance Imaging to Detect Breast Malignant Lesions.

Authors:  Roberta Fusco; Elio Di Bernardo; Adele Piccirillo; Maria Rosaria Rubulotta; Teresa Petrosino; Maria Luisa Barretta; Mauro Mattace Raso; Paolo Vallone; Concetta Raiano; Raimondo Di Giacomo; Claudio Siani; Franca Avino; Giosuè Scognamiglio; Maurizio Di Bonito; Vincenza Granata; Antonella Petrillo
Journal:  Curr Oncol       Date:  2022-03-13       Impact factor: 3.677

  6 in total

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