Literature DB >> 27908154

Mass detection in digital breast tomosynthesis: Deep convolutional neural network with transfer learning from mammography.

Ravi K Samala1, Heang-Ping Chan1, Lubomir Hadjiiski1, Mark A Helvie1, Jun Wei1, Kenny Cha1.   

Abstract

PURPOSE: Develop a computer-aided detection (CAD) system for masses in digital breast tomosynthesis (DBT) volume using a deep convolutional neural network (DCNN) with transfer learning from mammograms.
METHODS: A data set containing 2282 digitized film and digital mammograms and 324 DBT volumes were collected with IRB approval. The mass of interest on the images was marked by an experienced breast radiologist as reference standard. The data set was partitioned into a training set (2282 mammograms with 2461 masses and 230 DBT views with 228 masses) and an independent test set (94 DBT views with 89 masses). For DCNN training, the region of interest (ROI) containing the mass (true positive) was extracted from each image. False positive (FP) ROIs were identified at prescreening by their previously developed CAD systems. After data augmentation, a total of 45 072 mammographic ROIs and 37 450 DBT ROIs were obtained. Data normalization and reduction of non-uniformity in the ROIs across heterogeneous data was achieved using a background correction method applied to each ROI. A DCNN with four convolutional layers and three fully connected (FC) layers was first trained on the mammography data. Jittering and dropout techniques were used to reduce overfitting. After training with the mammographic ROIs, all weights in the first three convolutional layers were frozen, and only the last convolution layer and the FC layers were randomly initialized again and trained using the DBT training ROIs. The authors compared the performances of two CAD systems for mass detection in DBT: one used the DCNN-based approach and the other used their previously developed feature-based approach for FP reduction. The prescreening stage was identical in both systems, passing the same set of mass candidates to the FP reduction stage. For the feature-based CAD system, 3D clustering and active contour method was used for segmentation; morphological, gray level, and texture features were extracted and merged with a linear discriminant classifier to score the detected masses. For the DCNN-based CAD system, ROIs from five consecutive slices centered at each candidate were passed through the trained DCNN and a mass likelihood score was generated. The performances of the CAD systems were evaluated using free-response ROC curves and the performance difference was analyzed using a non-parametric method.
RESULTS: Before transfer learning, the DCNN trained only on mammograms with an AUC of 0.99 classified DBT masses with an AUC of 0.81 in the DBT training set. After transfer learning with DBT, the AUC improved to 0.90. For breast-based CAD detection in the test set, the sensitivity for the feature-based and the DCNN-based CAD systems was 83% and 91%, respectively, at 1 FP/DBT volume. The difference between the performances for the two systems was statistically significant (p-value < 0.05).
CONCLUSIONS: The image patterns learned from the mammograms were transferred to the mass detection on DBT slices through the DCNN. This study demonstrated that large data sets collected from mammography are useful for developing new CAD systems for DBT, alleviating the problem and effort of collecting entirely new large data sets for the new modality.

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Mesh:

Year:  2016        PMID: 27908154      PMCID: PMC5135717          DOI: 10.1118/1.4967345

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  33 in total

1.  Two-view and single-view tomosynthesis versus full-field digital mammography: high-resolution X-ray imaging observer study.

Authors:  Matthew G Wallis; Elin Moa; Federica Zanca; Karin Leifland; Mats Danielsson
Journal:  Radiology       Date:  2012-01-24       Impact factor: 11.105

2.  Computer-aided detection systems for breast masses: comparison of performances on full-field digital mammograms and digitized screen-film mammograms.

Authors:  Jun Wei; Lubomir M Hadjiiski; Berkman Sahiner; Heang-Ping Chan; Jun Ge; Marilyn A Roubidoux; Mark A Helvie; Chuan Zhou; Yi-Ta Wu; Chintana Paramagul; Yiheng Zhang
Journal:  Acad Radiol       Date:  2007-06       Impact factor: 3.173

3.  Computer-aided detection of masses in digital tomosynthesis mammography: comparison of three approaches.

Authors:  Heang-Ping Chan; Jun Wei; Yiheng Zhang; Mark A Helvie; Richard H Moore; Berkman Sahiner; Lubomir Hadjiiski; Daniel B Kopans
Journal:  Med Phys       Date:  2008-09       Impact factor: 4.071

4.  Effect of finite sample size on feature selection and classification: a simulation study.

Authors:  Ted W Way; Berkman Sahiner; Lubomir M Hadjiiski; Heang-Ping Chan
Journal:  Med Phys       Date:  2010-02       Impact factor: 4.071

5.  Mass detection in reconstructed digital breast tomosynthesis volumes with a computer-aided detection system trained on 2D mammograms.

Authors:  Guido van Schie; Matthew G Wallis; Karin Leifland; Mats Danielsson; Nico Karssemeijer
Journal:  Med Phys       Date:  2013-04       Impact factor: 4.071

Review 6.  The impact of mammographic screening on breast cancer mortality in Europe: a review of observational studies.

Authors:  Mireille Broeders; Sue Moss; Lennarth Nyström; Sisse Njor; Håkan Jonsson; Ellen Paap; Nathalie Massat; Stephen Duffy; Elsebeth Lynge; Eugenio Paci
Journal:  J Med Screen       Date:  2012       Impact factor: 2.136

7.  Analysis of computer-aided detection techniques and signal characteristics for clustered microcalcifications on digital mammography and digital breast tomosynthesis.

Authors:  Ravi K Samala; Heang-Ping Chan; Lubomir M Hadjiiski; Mark A Helvie
Journal:  Phys Med Biol       Date:  2016-09-20       Impact factor: 3.609

8.  Breast Cancer: Computer-aided Detection with Digital Breast Tomosynthesis.

Authors:  Lia Morra; Daniela Sacchetto; Manuela Durando; Silvano Agliozzo; Luca Alessandro Carbonaro; Silvia Delsanto; Barbara Pesce; Diego Persano; Giovanna Mariscotti; Vincenzo Marra; Paolo Fonio; Alberto Bert
Journal:  Radiology       Date:  2015-05-11       Impact factor: 11.105

9.  Deep Convolutional Neural Networks for Computer-Aided Detection: CNN Architectures, Dataset Characteristics and Transfer Learning.

Authors:  Hoo-Chang Shin; Holger R Roth; Mingchen Gao; Le Lu; Ziyue Xu; Isabella Nogues; Jianhua Yao; Daniel Mollura; Ronald M Summers
Journal:  IEEE Trans Med Imaging       Date:  2016-02-11       Impact factor: 10.048

10.  Time to diagnosis and performance levels during repeat interpretations of digital breast tomosynthesis: preliminary observations.

Authors:  Margarita L Zuley; Andriy I Bandos; Gordon S Abrams; Cathy Cohen; Christiane M Hakim; Jules H Sumkin; John Drescher; Howard E Rockette; David Gur
Journal:  Acad Radiol       Date:  2009-12-29       Impact factor: 3.173

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  43 in total

1.  Can Contrast-Enhanced Ultrasound Increase or Predict the Success Rate of Testicular Sperm Aspiration in Patients With Azoospermia?

Authors:  Heng Xue; Shou-Yang Wang; Li-Gang Cui; Kai Hong
Journal:  AJR Am J Roentgenol       Date:  2019-02-26       Impact factor: 3.959

Review 2.  Overview of deep learning in medical imaging.

Authors:  Kenji Suzuki
Journal:  Radiol Phys Technol       Date:  2017-07-08

Review 3.  Current Applications and Future Impact of Machine Learning in Radiology.

Authors:  Garry Choy; Omid Khalilzadeh; Mark Michalski; Synho Do; Anthony E Samir; Oleg S Pianykh; J Raymond Geis; Pari V Pandharipande; James A Brink; Keith J Dreyer
Journal:  Radiology       Date:  2018-06-26       Impact factor: 11.105

4.  A collection input based support tensor machine for lesion malignancy classification in digital breast tomosynthesis.

Authors:  Benjuan Yang; Yingjiang Wu; Zhiguo Zhou; Shulong Li; Genggeng Qin; Liyuan Chen; Jing Wang
Journal:  Phys Med Biol       Date:  2019-12-05       Impact factor: 3.609

5.  Virtual digital subtraction angiography using multizone patch-based U-Net.

Authors:  Ryusei Kimura; Atsushi Teramoto; Tomoyuki Ohno; Kuniaki Saito; Hiroshi Fujita
Journal:  Phys Eng Sci Med       Date:  2020-10-07

6.  Multi-task transfer learning deep convolutional neural network: application to computer-aided diagnosis of breast cancer on mammograms.

Authors:  Ravi K Samala; Heang-Ping Chan; Lubomir M Hadjiiski; Mark A Helvie; Kenny H Cha; Caleb D Richter
Journal:  Phys Med Biol       Date:  2017-11-10       Impact factor: 3.609

Review 7.  Deep learning beyond cats and dogs: recent advances in diagnosing breast cancer with deep neural networks.

Authors:  Jeremy R Burt; Neslisah Torosdagli; Naji Khosravan; Harish RaviPrakash; Aliasghar Mortazi; Fiona Tissavirasingham; Sarfaraz Hussein; Ulas Bagci
Journal:  Br J Radiol       Date:  2018-04-10       Impact factor: 3.039

8.  Digital breast tomosynthesis versus digital mammography: integration of image modalities enhances deep learning-based breast mass classification.

Authors:  Xin Li; Genggeng Qin; Qiang He; Lei Sun; Hui Zeng; Zilong He; Weiguo Chen; Xin Zhen; Linghong Zhou
Journal:  Eur Radiol       Date:  2019-11-05       Impact factor: 5.315

9.  Using Convolutional Neural Networks for Enhanced Capture of Breast Parenchymal Complexity Patterns Associated with Breast Cancer Risk.

Authors:  Aimilia Gastounioti; Andrew Oustimov; Meng-Kang Hsieh; Lauren Pantalone; Emily F Conant; Despina Kontos
Journal:  Acad Radiol       Date:  2018-02-01       Impact factor: 3.173

10.  Transfer Learning From Convolutional Neural Networks for Computer-Aided Diagnosis: A Comparison of Digital Breast Tomosynthesis and Full-Field Digital Mammography.

Authors:  Kayla Mendel; Hui Li; Deepa Sheth; Maryellen Giger
Journal:  Acad Radiol       Date:  2018-08-01       Impact factor: 3.173

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