Attention-Based Deep Learning Approach for Breast Cancer Histopathological Image Multi-Classification.

Lama A Aldakhil, Haifa F Alhasson, Shuaa S Alharbi
Author Information
  1. Lama A Aldakhil: Department of Information Technology, College of Computer, Qassim University, Buraydah 52571, Saudi Arabia. ORCID
  2. Haifa F Alhasson: Department of Information Technology, College of Computer, Qassim University, Buraydah 52571, Saudi Arabia. ORCID
  3. Shuaa S Alharbi: Department of Information Technology, College of Computer, Qassim University, Buraydah 52571, Saudi Arabia. ORCID

Abstract

Breast cancer diagnosis from histopathology images is often time consuming and prone to human error, impacting treatment and prognosis. Deep learning diagnostic methods offer the potential for improved accuracy and efficiency in breast cancer detection and classification. However, they struggle with limited data and subtle variations within and between cancer types. Attention mechanisms provide feature refinement capabilities that have shown promise in overcoming such challenges. To this end, this paper proposes the Efficient Channel Spatial Attention Network (ECSAnet), an architecture built on EfficientNetV2 and augmented with a convolutional block attention module (CBAM) and additional fully connected layers. ECSAnet was fine-tuned using the BreakHis dataset, employing Reinhard stain normalization and image augmentation techniques to minimize overfitting and enhance generalizability. In testing, ECSAnet outperformed AlexNet, DenseNet121, EfficientNetV2-S, InceptionNetV3, ResNet50, and VGG16 in most settings, achieving accuracies of 94.2% at 40×, 92.96% at 100×, 88.41% at 200×, and 89.42% at 400× magnifications. The results highlight the effectiveness of CBAM in improving classification accuracy and the importance of stain normalization for generalizability.

Keywords

References

  1. Cancers (Basel). 2021 Dec 04;13(23): [PMID: 34885225]
  2. Nat Med. 2021 May;27(5):775-784 [PMID: 33990804]
  3. Front Med. 2020 Aug;14(4):470-487 [PMID: 32728875]
  4. NPJ Breast Cancer. 2018 Sep 3;4:30 [PMID: 30182055]
  5. PLoS One. 2020 May 4;15(5):e0232127 [PMID: 32365142]
  6. IEEE Trans Biomed Eng. 2016 Jul;63(7):1455-62 [PMID: 26540668]
  7. Ann Oncol. 2022 Jan;33(1):89-98 [PMID: 34756513]
  8. PeerJ. 2019 Jan 28;7:e6201 [PMID: 30713814]
  9. Comput Biol Med. 2022 Oct;149:106073 [PMID: 36103745]
  10. Diagnostics (Basel). 2023 Jan 03;13(1): [PMID: 36611453]
  11. Artif Intell Med. 2018 Jun;88:14-24 [PMID: 29705552]
  12. Nature. 2015 May 28;521(7553):436-44 [PMID: 26017442]
  13. Cancers (Basel). 2020 Jul 24;12(8): [PMID: 32722111]

Grants

  1. QU-APC-2024-9/1/Qassim University

Word Cloud

Created with Highcharts 10.0.0cancerlearningbreastECSAnetBreastdiagnosisimagesDeepaccuracyclassificationAttentionconvolutionalCBAMstainnormalizationimagegeneralizabilityhistopathologyoftentimeconsumingpronehumanerrorimpactingtreatmentprognosisdiagnosticmethodsofferpotentialimprovedefficiencydetectionHoweverstrugglelimiteddatasubtlevariationswithintypesmechanismsprovidefeaturerefinementcapabilitiesshownpromiseovercomingchallengesendpaperproposesEfficientChannelSpatialNetworkarchitecturebuiltEfficientNetV2augmentedblockattentionmoduleadditionalfullyconnectedlayersfine-tunedusingBreakHisdatasetemployingReinhardaugmentationtechniquesminimizeoverfittingenhancetestingoutperformedAlexNetDenseNet121EfficientNetV2-SInceptionNetV3ResNet50VGG16settingsachievingaccuracies942%40×9296%100×8841%200×8942%400×magnificationsresultshighlighteffectivenessimprovingimportanceAttention-BasedLearningApproachCancerHistopathologicalImageMulti-Classificationtumorsneuralnetworksdeephistopathologicalclassifiertransfer

Similar Articles

Cited By