Literature DB >> 31739125

Overview of radiomics in breast cancer diagnosis and prognostication.

Alberto Stefano Tagliafico1, Michele Piana2, Daniela Schenone3, Rita Lai4, Anna Maria Massone2, Nehmat Houssami5.   

Abstract

Diagnosis of early invasive breast cancer relies on radiology and clinical evaluation, supplemented by biopsy confirmation. At least three issues burden this approach: a) suboptimal sensitivity and suboptimal positive predictive power of radiology screening and diagnostic approaches, respectively; b) invasiveness of biopsy with discomfort for women undergoing diagnostic tests; c) long turnaround time for recall tests. In the screening setting, radiology sensitivity is suboptimal, and when a suspicious lesion is detected and a biopsy is recommended, the positive predictive value of radiology is modest. Recent technological advances in medical imaging, especially in the field of artificial intelligence applied to image analysis, hold promise in addressing clinical challenges in cancer detection, assessment of treatment response, and monitoring disease progression. Radiomics include feature extraction from clinical images; these features are related to tumor size, shape, intensity, and texture, collectively providing comprehensive tumor characterization, the so-called radiomics signature of the tumor. Radiomics is based on the hypothesis that extracted quantitative data derives from mechanisms occurring at genetic and molecular levels. In this article we focus on the role and potential of radiomics in breast cancer diagnosis and prognostication.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Artificial intelligence; Breast cancer; Digital breast tomosynthesis; Magnetic resonance imaging; Prediction; Radiomics

Year:  2019        PMID: 31739125     DOI: 10.1016/j.breast.2019.10.018

Source DB:  PubMed          Journal:  Breast        ISSN: 0960-9776            Impact factor:   4.380


  37 in total

1.  A novel preoperative MRI-based radiomics nomogram outperforms traditional models for prognostic prediction in pancreatic ductal adenocarcinoma.

Authors:  Hui Qiu; Muchen Xu; Yan Wang; Xin Wen; Xueting Chen; Wanming Liu; Nie Zhang; Xin Ding; Longzhen Zhang
Journal:  Am J Cancer Res       Date:  2022-05-15       Impact factor: 5.942

2.  Quantitative assessment of acquisition imaging parameters on MRI radiomics features: a prospective anthropomorphic phantom study using a 3D-T2W-TSE sequence for MR-guided-radiotherapy.

Authors:  Jing Yuan; Cindy Xue; Gladys Lo; Oi Lei Wong; Yihang Zhou; Siu Ki Yu; Kin Yin Cheung
Journal:  Quant Imaging Med Surg       Date:  2021-05

Review 3.  Radiomics in radiation oncology for gynecological malignancies: a review of literature.

Authors:  Morgan Michalet; David Azria; Marion Tardieu; Hichem Tibermacine; Stéphanie Nougaret
Journal:  Br J Radiol       Date:  2021-05-07       Impact factor: 3.629

4.  A Machine Learning Model Based on PET/CT Radiomics and Clinical Characteristics Predicts ALK Rearrangement Status in Lung Adenocarcinoma.

Authors:  Cheng Chang; Xiaoyan Sun; Gang Wang; Hong Yu; Wenlu Zhao; Yaqiong Ge; Shaofeng Duan; Xiaohua Qian; Rui Wang; Bei Lei; Lihua Wang; Liu Liu; Maomei Ruan; Hui Yan; Ciyi Liu; Jie Chen; Wenhui Xie
Journal:  Front Oncol       Date:  2021-03-02       Impact factor: 6.244

5.  Artificial intelligence (AI) in breast cancer care - Leveraging multidisciplinary skills to improve care.

Authors:  Maria Joao Cardoso; Nehmat Houssami; Giuseppe Pozzi; Brigitte Séroussi
Journal:  Breast       Date:  2020-12-09       Impact factor: 4.380

Review 6.  Quantitative Imaging and Radiomics in Multiple Myeloma: A Potential Opportunity?

Authors:  Alberto Stefano Tagliafico; Alida Dominietto; Liliana Belgioia; Cristina Campi; Daniela Schenone; Michele Piana
Journal:  Medicina (Kaunas)       Date:  2021-01-21       Impact factor: 2.430

7.  Computed tomography-based radiomic model predicts radiological response following stereotactic body radiation therapy in early-stage non-small-cell lung cancer and pulmonary oligo-metastases.

Authors:  Ben Man Fei Cheung; Kin Sang Lau; Victor Ho Fun Lee; To Wai Leung; Feng-Ming Spring Kong; Mai Yee Luk; Kwok Keung Yuen
Journal:  Radiat Oncol J       Date:  2021-10-26

8.  Radiomics and Machine Learning with Multiparametric Breast MRI for Improved Diagnostic Accuracy in Breast Cancer Diagnosis.

Authors:  Isaac Daimiel Naranjo; Peter Gibbs; Jeffrey S Reiner; Roberto Lo Gullo; Caleb Sooknanan; Sunitha B Thakur; Maxine S Jochelson; Varadan Sevilimedu; Elizabeth A Morris; Pascal A T Baltzer; Thomas H Helbich; Katja Pinker
Journal:  Diagnostics (Basel)       Date:  2021-05-21

9.  A Machine Learning Ensemble Based on Radiomics to Predict BI-RADS Category and Reduce the Biopsy Rate of Ultrasound-Detected Suspicious Breast Masses.

Authors:  Matteo Interlenghi; Christian Salvatore; Veronica Magni; Gabriele Caldara; Elia Schiavon; Andrea Cozzi; Simone Schiaffino; Luca Alessandro Carbonaro; Isabella Castiglioni; Francesco Sardanelli
Journal:  Diagnostics (Basel)       Date:  2022-01-13

10.  Tumor Sphericity Predicts Response in Neoadjuvant Chemotherapy for Invasive Breast Cancer.

Authors:  Wen Li; David C Newitt; Bo La Yun; Ella F Jones; Vignesh Arasu; Lisa J Wilmes; Jessica Gibbs; Alex Anh-Tu Nguyen; Natsuko Onishi; John Kornak; Bonnie N Joe; Laura J Esserman; Nola M Hylton
Journal:  Tomography       Date:  2020-06
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