Keyword search (4,163 papers available)

"Breast cancer" Keyword-tagged Publications:

Title Authors PubMed ID
1 Characterizing forearm skeletal muscle composition and function in breast cancer-related lymphedema using B-mode ultrasonography Whyte J; Towers A; Boily M; Rosenthall L; Rivaz H; Kilgour RD; 41674486
PERFORM
2 3D bioheat transfer mapping reveals nanomagnetic particles effectiveness in radiofrequency hyperthermia breast cancer treatment comparing to experimental study Kavousi M; Saadatmand E; Masoumbeigi M; Mahdavi R; Riyahi Alam N; 39557504
PHYSICS
3 Evolution of chromosome-arm aberrations in breast cancer through genetic network rewiring Kuzmin E; Baker TM; Lesluyes T; Monlong J; Abe KT; Coelho PP; Schwartz M; Del Corpo J; Zou D; Morin G; Pacis A; Yang Y; Martinez C; Barber J; Kuasne H; Li R; Bourgey M; Fortier AM; Davison PG; Omeroglu A; Guiot MC; Morris Q; Kleinman CL; Huang S; Gingras AC; Ragoussis J; Bourque G; Van Loo P; Park M; 38517886
BIOLOGY
4 Compatible-domain Transfer Learning for Breast Cancer Classification with Limited Annotated Data Shamshiri MA; Krzyzak A; Kowal M; Korbicz J; 36758326
ENCS
5 Behavioural, physical, and psychological predictors of cortisol and C-reactive protein in breast cancer survivors: A longitudinal study Lambert M; Sabiston CM; Wrosch C; Brunet J; 34589720
PSYCHOLOGY
6 Creating doorways: finding meaning and growth through art therapy in the face of life-threatening illness Reilly RC; Lee V; Laux K; Robitaille A; 34487868
CONCORDIA
7 Acceptability of a structured diet and exercise weight loss intervention in breast cancer survivors living with an overweight condition or obesity: A qualitative analysis. Beckenstein H, Slim M, Kim H, Plourde H, Kilgour R, Cohen TR 33491338
PERFORM
8 Examining the effect of a brief psychoeducation intervention based on self-regulation model on sexual satisfaction for women with breast cancer: A randomized controlled trial Abedini M; Olfati F; Oveisi S; Bahrami N; Astrologo L; Chan YH; 32526688
PSYCHOLOGY
9 An investigation into socio-demographic-, health-, and cancer-related factors associated with cortisol and C-reactive protein levels in breast cancer survivors: a longitudinal study. Lambert M, Sabiston CM, Wrosch C, Brunet J 32488733
PSYCHOLOGY
10 The Complex Subtype-Dependent Role of Connexin 43 (GJA1) in Breast Cancer. Busby M, Hallett MT, Plante I 29495625
BIOLOGY

 

Title:Compatible-domain Transfer Learning for Breast Cancer Classification with Limited Annotated Data
Authors:Shamshiri MAKrzyzak AKowal MKorbicz J
Link:https://pubmed.ncbi.nlm.nih.gov/36758326/
DOI:10.1016/j.compbiomed.2023.106575
Publication:Computers in biology and medicine
Keywords:Breast cancerClassificationConvolution neural networkDeep learningMedical image analysisSegmentationTransfer Learning
PMID:36758326 Category: Date Added:2023-02-10
Dept Affiliation: ENCS
1 Department of Computer Science and Software Engineering, Concordia University, Montreal, H3G 1M8, Canada. Electronic address: m_hamshi@encs.concordia.ca.
2 Department of Computer Science and Software Engineering, Concordia University, Montreal, H3G 1M8, Canada.
3 Institute of Control and Computation Engineering, University of Zielona Góra, Zielona Góra, Poland.

Description:

Microscopic analysis of breast cancer images is the primary task in diagnosing cancer malignancy. Recent attempts to automate this task have employed deep learning models whose success has depended on large volumes of data, while acquiring annotated data in biomedical domains is time-consuming and may not always be feasible. A typical strategy to address this is to apply transfer learning using pre-trained models on a large natural image database (e.g., ImageNet) instead of training a model from scratch. This approach, however, has not been effective in several previous studies due to fundamental differences between natural and medical images. In this study, for the first time we proposed the idea of using a compatible data set of histopathological images to classify breast cancer cytological biopsy specimens. Despite intrinsic differences between histopathological and cytological images, we demonstrate that the features learned by deep networks during the pre-training procedure are compatible with those obtained throughout fine-tuning process. To thoroughly investigate this assertion, we explore three different strategies for training as well as two different approaches for fine-tuning deep learning models. By comparing the obtained results with those of previous state-of-the-art research conducted on the same data set, we demonstrate that the proposed method boasts of improved classification accuracy by 6% to 17% compared to the studies which were based on traditional machine learning techniques, and also enhanced accuracy by roughly 7% compared to those who utilized deep learning methods, eventually achieving 98.73% validation accuracy and 94.55% test accuracy. Exploring different training scenarios also revealed that using a compatible dataset has helped to elevate the classification accuracy by 3.0% compared to the typical approach of using ImageNet. Experimental results show that our approach, despite using a very small number of training images, has achieved performance comparable to that of experienced pathologists and has the potential to be applied in clinical settings.





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