Evaluation of the precision and accuracy in the classification of breast histopathology images using the MobileNetV3 model.

Kenneth DeVoe, Gary Takahashi, Ebrahim Tarshizi, Allan Sacker
Author Information
  1. Kenneth DeVoe: Shiley-Marcos School of Engineering, Applied Artificial Intelligence MS Program, University of San Diego, 5998 Alcal�� Park, San Diego, CA 92110, USA.
  2. Gary Takahashi: Shiley-Marcos School of Engineering, Applied Artificial Intelligence MS Program, University of San Diego, 5998 Alcal�� Park, San Diego, CA 92110, USA.
  3. Ebrahim Tarshizi: Shiley-Marcos School of Engineering, Applied Artificial Intelligence MS Program, University of San Diego, 5998 Alcal�� Park, San Diego, CA 92110, USA.
  4. Allan Sacker: Department of Pathology, Providence St. Vincent Medical Center, 9205 SW Barnes Road, Portland, OR 97225, USA.

Abstract

Accurate surgical pathological assessment of breast biopsies is essential to the proper management of breast lesions. Identifying histological features, such as nuclear pleomorphism, increased mitotic activity, cellular atypia, patterns of architectural disruption, as well as invasion through basement membranes into surrounding stroma and normal structures, including invasion of vascular and lymphatic spaces, help to classify lesions as malignant. This visual assessment is repeated on numerous slides taken at various sections through the resected tumor, each at different magnifications. Computer vision models have been proposed to assist human pathologists in classification tasks such as these. Using MobileNetV3, a convolutional architecture designed to achieve high accuracy with a compact parameter footprint, we attempted to classify breast cancer images in the BreakHis_v1 breast pathology dataset to determine the performance of this model out-of-the-box. Using transfer learning to take advantage of ImageNet embeddings without special feature extraction, we were able to correctly classify histopathology images broadly as benign or malignant with 0.98 precision, 0.97 recall, and an F1 score of 0.98. The ability to classify into histological subcategories was varied, with the greatest success being with classifying ductal carcinoma (accuracy 0.95), and the lowest success being with lobular carcinoma (accuracy 0.59). Multiclass ROC assessment of performance as a multiclass classifier yielded AUC values ���0.97 in both benign and malignant subsets. In comparison with previous efforts, using older and larger convolutional network architectures with feature extraction pre-processing, our work highlights that modern, resource-efficient architectures can classify histopathological images with accuracy that at least matches that of previous efforts, without the need for labor-intensive feature extraction protocols. Suggestions to further refine the model are discussed.

Keywords

References

  1. PLoS One. 2023 Jun 29;18(6):e0287786 [PMID: 37384779]
  2. Surg Pathol Clin. 2018 Mar;11(1):17-42 [PMID: 29413655]
  3. Nat Med. 2019 Aug;25(8):1301-1309 [PMID: 31308507]
  4. J Pathol Inform. 2024 Feb 01;15:100363 [PMID: 38405160]
  5. Stat Med. 1998 Apr 30;17(8):857-72 [PMID: 9595616]
  6. J Pers Med. 2022 Sep 01;12(9): [PMID: 36143229]
  7. IEEE Trans Biomed Eng. 2016 Jul;63(7):1455-62 [PMID: 26540668]
  8. PLoS One. 2017 Jun 1;12(6):e0177544 [PMID: 28570557]
  9. BMC Med Inform Decis Mak. 2019 Oct 22;19(1):198 [PMID: 31640686]
  10. Comput Biol Med. 2023 Feb;153:106554 [PMID: 36646021]
  11. Mol Oncol. 2010 Jun;4(3):192-208 [PMID: 20452298]
  12. Sci Data. 2023 Apr 21;10(1):231 [PMID: 37085533]
  13. Am J Pathol. 2019 Sep;189(9):1686-1698 [PMID: 31199919]
  14. Cancer. 1992 Mar 15;69(6):1408-14 [PMID: 1540878]
  15. J Pathol Inform. 2016 Jul 26;7:29 [PMID: 27563488]
  16. J Big Data. 2021;8(1):53 [PMID: 33816053]
  17. JAMA. 2003 Mar 19;289(11):1421-4 [PMID: 12636465]

Word Cloud

Created with Highcharts 10.0.0breastclassifyaccuracy0imagesassessmentmalignantMobileNetV3modelfeatureextractionlesionshistologicalinvasionclassificationUsingconvolutionalcancerpathologyperformancewithouthistopathologybenign98precision97successcarcinomapreviouseffortsusingarchitecturesAccuratesurgicalpathologicalbiopsiesessentialpropermanagementIdentifyingfeaturesnuclearpleomorphismincreasedmitoticactivitycellularatypiapatternsarchitecturaldisruptionwellbasementmembranessurroundingstromanormalstructuresincludingvascularlymphaticspaceshelpvisualrepeatednumerousslidestakenvarioussectionsresectedtumordifferentmagnificationsComputervisionmodelsproposedassisthumanpathologiststasksarchitecturedesignedachievehighcompactparameterfootprintattemptedBreakHis_v1datasetdetermineout-of-the-boxtransferlearningtakeadvantageImageNetembeddingsspecialablecorrectlybroadlyrecallF1scoreabilitysubcategoriesvariedgreatestclassifyingductal95lowestlobular59MulticlassROCmulticlassclassifieryieldedAUCvalues���0subsetscomparisonolderlargernetworkpre-processingworkhighlightsmodernresource-efficientcanhistopathologicalleastmatchesneedlabor-intensiveprotocolsSuggestionsrefinediscussedEvaluationBreakHisBreastClinicalConvolutionalneuralnetworksHistology

Similar Articles

Cited By