Recognizing basal cell carcinoma on smartphone-captured digital histopathology images with a deep neural network
- PMID: 31017653
- DOI: 10.1111/bjd.18026
Recognizing basal cell carcinoma on smartphone-captured digital histopathology images with a deep neural network
Abstract
Background: Pioneering effort has been made to facilitate the recognition of pathology in malignancies based on whole-slide images (WSIs) through deep learning approaches. It remains unclear whether we can accurately detect and locate basal cell carcinoma (BCC) using smartphone-captured images.
Objectives: To develop deep neural network frameworks for accurate BCC recognition and segmentation based on smartphone-captured microscopic ocular images (MOIs).
Methods: We collected a total of 8046 MOIs, 6610 of which had binary classification labels and the other 1436 had pixelwise annotations. Meanwhile, 128 WSIs were collected for comparison. Two deep learning frameworks were created. The 'cascade' framework had a classification model for identifying hard cases (images with low prediction confidence) and a segmentation model for further in-depth analysis of the hard cases. The 'segmentation' framework directly segmented and classified all images. Sensitivity, specificity and area under the curve (AUC) were used to evaluate the overall performance of BCC recognition.
Results: The MOI- and WSI-based models achieved comparable AUCs around 0·95. The 'cascade' framework achieved 0·93 sensitivity and 0·91 specificity. The 'segmentation' framework was more accurate but required more computational resources, achieving 0·97 sensitivity, 0·94 specificity and 0·987 AUC. The runtime of the 'segmentation' framework was 15·3 ± 3·9 s per image, whereas the 'cascade' framework took 4·1 ± 1·4 s. Additionally, the 'segmentation' framework achieved 0·863 mean intersection over union.
Conclusions: Based on the accessible MOIs via smartphone photography, we developed two deep learning frameworks for recognizing BCC pathology with high sensitivity and specificity. This work opens a new avenue for automatic BCC diagnosis in different clinical scenarios. What's already known about this topic? The diagnosis of basal cell carcinoma (BCC) is labour intensive due to the large number of images to be examined, especially when consecutive slide reading is needed in Mohs surgery. Deep learning approaches have demonstrated promising results on pathological image-related diagnostic tasks. Previous studies have focused on whole-slide images (WSIs) and leveraged classification on image patches for detecting and localizing breast cancer metastases. What does this study add? Instead of WSIs, microscopic ocular images (MOIs) photographed from microscope eyepieces using smartphone cameras were used to develop neural network models for recognizing BCC automatically. The MOI- and WSI-based models achieved comparable areas under the curve around 0·95. Two deep learning frameworks for recognizing BCC pathology were developed with high sensitivity and specificity. Recognizing BCC through a smartphone could be considered a future clinical choice.
© 2019 British Association of Dermatologists.
Comment in
-
Smartphones, artificial intelligence and digital histopathology take on basal cell carcinoma diagnosis.Br J Dermatol. 2020 Mar;182(3):540-541. doi: 10.1111/bjd.18374. Epub 2019 Aug 19. Br J Dermatol. 2020. PMID: 31429070 No abstract available.
Similar articles
-
Whole-slide margin control through deep learning in Mohs micrographic surgery for basal cell carcinoma.Exp Dermatol. 2021 May;30(5):733-738. doi: 10.1111/exd.14306. Epub 2021 Mar 3. Exp Dermatol. 2021. PMID: 33656186
-
Deep learning-based semantic segmentation of non-melanocytic skin tumors in whole-slide histopathological images.Exp Dermatol. 2023 Jun;32(6):831-839. doi: 10.1111/exd.14782. Epub 2023 Apr 5. Exp Dermatol. 2023. PMID: 37017196
-
Detection and subtyping of basal cell carcinoma in whole-slide histopathology using weakly-supervised learning.Med Image Anal. 2024 Apr;93:103063. doi: 10.1016/j.media.2023.103063. Epub 2023 Dec 17. Med Image Anal. 2024. PMID: 38194735
-
Deep learning for colon cancer histopathological images analysis.Comput Biol Med. 2021 Sep;136:104730. doi: 10.1016/j.compbiomed.2021.104730. Epub 2021 Aug 4. Comput Biol Med. 2021. PMID: 34375901 Review.
-
Automatic Segmentation of Multiple Organs on 3D CT Images by Using Deep Learning Approaches.Adv Exp Med Biol. 2020;1213:135-147. doi: 10.1007/978-3-030-33128-3_9. Adv Exp Med Biol. 2020. PMID: 32030668 Review.
Cited by
-
A Low-Cost High-Performance Data Augmentation for Deep Learning-Based Skin Lesion Classification.BME Front. 2022 Apr 26;2022:9765307. doi: 10.34133/2022/9765307. eCollection 2022. BME Front. 2022. PMID: 37850173 Free PMC article.
-
Self-supervised learning mechanism for identification of eyelid malignant melanoma in pathologic slides with limited annotation.Front Med (Lausanne). 2022 Sep 27;9:976467. doi: 10.3389/fmed.2022.976467. eCollection 2022. Front Med (Lausanne). 2022. PMID: 36237543 Free PMC article.
-
A Deep Learning Approach for Histopathological Diagnosis of Onychomycosis: Not Inferior to Analogue Diagnosis by Histopathologists.Acta Derm Venereol. 2021 Aug 31;101(8):adv00532. doi: 10.2340/00015555-3893. Acta Derm Venereol. 2021. PMID: 34405243 Free PMC article.
-
Mini review on skin biopsy: traditional and modern techniques.Front Med (Lausanne). 2025 Mar 5;12:1476685. doi: 10.3389/fmed.2025.1476685. eCollection 2025. Front Med (Lausanne). 2025. PMID: 40109731 Free PMC article. Review.
-
Deep learning with transfer learning in pathology. Case study: classification of basal cell carcinoma.Rom J Morphol Embryol. 2021 Oct-Dec;62(4):1017-1028. doi: 10.47162/RJME.62.4.14. Rom J Morphol Embryol. 2021. PMID: 35673821 Free PMC article.
References
-
- Goldenberg G, Karagiannis T, Palmer JB et al. Incidence and prevalence of basal cell carcinoma (BCC) and locally advanced BCC (LABCC) in a large commercially insured population in the United States: a retrospective cohort study. J Am Acad Dermatol 2016; 75:957-66.
-
- Shi Y, Jia R, Fan X. Ocular basal cell carcinoma: a brief literature review of clinical diagnosis and treatment. Onco Targets Ther 2017; 10:2483-9.
-
- Ghaznavi F, Evans A, Madabhushi A, Feldman M. Digital imaging in pathology: whole-slide imaging and beyond. Annu Rev Pathol 2013; 8:331-59.
-
- Gurcan MN, Boucheron LE, Can A et al. Histopathological image analysis: a review. IEEE Rev Biomed Eng 2009; 2:147-71.
-
- Weaver DL, Krag DN, Manna EA et al. Comparison of pathologist-detected and automated computer-assisted image analysis detected sentinel lymph node micrometastases in breast cancer. Mod Pathol 2003; 16:1159-63.
Publication types
MeSH terms
Grants and funding
LinkOut - more resources
Full Text Sources
Other Literature Sources
Medical