Literature DB >> 32174316

Deep learning-based segmentation of breast masses in dedicated breast CT imaging: Radiomic feature stability between radiologists and artificial intelligence.

Marco Caballo1, Domenico R Pangallo2, Ritse M Mann1, Ioannis Sechopoulos3.   

Abstract

A deep learning (DL) network for 2D-based breast mass segmentation in unenhanced dedicated breast CT images was developed and validated, and its robustness in radiomic feature stability and diagnostic performance compared to manual annotations of multiple radiologists was investigated. 93 mass-like lesions were extensively augmented and used to train the network (n = 58 masses), which was then tested (n = 35 masses) against manual ground truth of a qualified breast radiologist with experience in breast CT imaging using the Conformity coefficient (with a value equal to 1 indicating a perfect performance). Stability and diagnostic power of 672 radiomic descriptors were investigated between the computerized segmentation, and 4 radiologists' annotations for the 35 test set cases. Feature stability and diagnostic performance in the discrimination between benign and malignant cases were quantified using intraclass correlation (ICC) and multivariate analysis of variance (MANOVA), performed for each segmentation case (4 radiologists and DL algorithm). DL-based segmentation resulted in a Conformity of 0.85 ± 0.06 against the annotated ground truth. For the stability analysis, although modest agreement was found among the four annotations performed by radiologists (Conformity 0.78 ± 0.03), over 90% of all radiomic features were found to be stable (ICC>0.75) across multiple segmentations. All MANOVA analyses were statistically significant (p ≤ 0.05), with all dimensions equal to 1, and Wilks' lambda ≤0.35. In conclusion, DL-based mass segmentation in dedicated breast CT images can achieve high segmentation performance, and demonstrated to provide stable radiomic descriptors with comparable discriminative power in the classification of benign and malignant tumors to expert radiologist annotation.
Copyright © 2020 The Authors. Published by Elsevier Ltd.. All rights reserved.

Entities:  

Keywords:  Breast CT; Breast cancer diagnosis; Convolutional neural networks; Deep learning; Radiomics

Mesh:

Year:  2020        PMID: 32174316     DOI: 10.1016/j.compbiomed.2020.103629

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  8 in total

Review 1.  Methods for the segmentation and classification of breast ultrasound images: a review.

Authors:  Ademola E Ilesanmi; Utairat Chaumrattanakul; Stanislav S Makhanov
Journal:  J Ultrasound       Date:  2021-01-11

2.  A Convolutional Neural Network Based on Ultrasound Images of Primary Breast Masses: Prediction of Lymph-Node Metastasis in Collaboration With Classification of Benign and Malignant Tumors.

Authors:  Chunxiao Li; Yuanfan Guo; Liqiong Jia; Minghua Yao; Sihui Shao; Jing Chen; Yi Xu; Rong Wu
Journal:  Front Physiol       Date:  2022-06-02       Impact factor: 4.755

3.  Automated segmentation of the fractured vertebrae on CT and its applicability in a radiomics model to predict fracture malignancy.

Authors:  Taeyong Park; Min A Yoon; Young Chul Cho; Su Jung Ham; Yousun Ko; Sehee Kim; Heeryeol Jeong; Jeongjin Lee
Journal:  Sci Rep       Date:  2022-04-25       Impact factor: 4.996

4.  Multi-marker quantitative radiomics for mass characterization in dedicated breast CT imaging.

Authors:  Marco Caballo; Domenico R Pangallo; Wendelien Sanderink; Andrew M Hernandez; Su Hyun Lyu; Filippo Molinari; John M Boone; Ritse M Mann; Ioannis Sechopoulos
Journal:  Med Phys       Date:  2020-12-10       Impact factor: 4.071

5.  Incorporating radiomics into clinical trials: expert consensus endorsed by the European Society of Radiology on considerations for data-driven compared to biologically driven quantitative biomarkers.

Authors:  Laure Fournier; Lena Costaridou; Luc Bidaut; Nicolas Michoux; Frederic E Lecouvet; Lioe-Fee de Geus-Oei; Ronald Boellaard; Daniela E Oprea-Lager; Nancy A Obuchowski; Anna Caroli; Wolfgang G Kunz; Edwin H Oei; James P B O'Connor; Marius E Mayerhoefer; Manuela Franca; Angel Alberich-Bayarri; Christophe M Deroose; Christian Loewe; Rashindra Manniesing; Caroline Caramella; Egesta Lopci; Nathalie Lassau; Anders Persson; Rik Achten; Karen Rosendahl; Olivier Clement; Elmar Kotter; Xavier Golay; Marion Smits; Marc Dewey; Daniel C Sullivan; Aad van der Lugt; Nandita M deSouza
Journal:  Eur Radiol       Date:  2021-01-25       Impact factor: 5.315

6.  Fully automated segmentation in temporal bone CT with neural network: a preliminary assessment study.

Authors:  Jiang Wang; Yi Lv; Junchen Wang; Furong Ma; Yali Du; Xin Fan; Menglin Wang; Jia Ke
Journal:  BMC Med Imaging       Date:  2021-11-09       Impact factor: 1.930

7.  A deep learning approach for anterior cruciate ligament rupture localization on knee MR images.

Authors:  Cheng Qu; Heng Yang; Cong Wang; Chongyang Wang; Mengjie Ying; Zheyi Chen; Kai Yang; Jing Zhang; Kang Li; Dimitris Dimitriou; Tsung-Yuan Tsai; Xudong Liu
Journal:  Front Bioeng Biotechnol       Date:  2022-09-30

8.  Computer-aided diagnosis of masses in breast computed tomography imaging: deep learning model with combined handcrafted and convolutional radiomic features.

Authors:  Marco Caballo; Andrew M Hernandez; Su Hyun Lyu; Jonas Teuwen; Ritse M Mann; Bram van Ginneken; John M Boone; Ioannis Sechopoulos
Journal:  J Med Imaging (Bellingham)       Date:  2021-03-29
  8 in total

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