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Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods

Yıl 2025, Cilt: 8 Sayı: 1, 94 - 101, 15.01.2025
https://doi.org/10.34248/bsengineering.1528581

Öz

The importance of oral and dental health closely affects other vital organs. In this study, CNN-based transfer learning models are built on histopathologic and intraoral images with benign and malignant lesions. Histopathologic and intraoral images from two different sources have benign or malignant classes of lesions in the mouth. EfficientNetB7, ResNet50, VGG16, and VGG19, Xception, ConvNextBase, and MobileNetV2 were used as transfer learning methods. Model training was performed with 80%-20% train test separation and 20% validation separation on the train set. Accuracy (Acc), Precision (Prec), Recall (Rec), and F1-score (F1) metrics were used to evaluate the model. In histopathologocial images, ResNet50 was ahead with 0.8125 Acc and 0.8525 F1. In intraoral images, ConvNextBase with 0.84 Acc, and 0.80 F1 was found to be more accurate.

Etik Beyan

Ethics committee approval was not required for this study because of there was no study on animals or humans.

Proje Numarası

None

Kaynakça

  • Babu PA, Rai AK, Ramesh JVN, Nithyasri A, Sangeetha S, Kshirsagar PR, Rajendran A, Rajaram A, Dilipkumar S. 2024. An explainable deep learning approach for oral cancer detection. J Electr Eng Technol., 19: 1837–1848.
  • Bakare YB, Kumarasamy M, 2021. Histopathologıcal image analysis for oral cancer classification by support vector machine. Int J Adv Signal Image Sci, 7: 1–10.
  • Bal F, Kayaalp F, 2023. A novel deep learning-based hybrid method for the determination of productivity of agricultural products: apple case study. IEEE access, 11:7808–7821.
  • Başarslan MS, Kayaalp F, 2023. MBi-GRUMCONV: A novel Multi Bi-GRU and Multi CNN-Based deep learning model for social media sentiment analysis. J Cloud Comput, 12: 1-16.
  • Chandrashekar HS. Geetha A, Kiran S, Murali MS, Dinesh BR, Nanditha, 2021. Oral images dataset, URL: https://data.mendeley.com/datasets/mhjyrn35p4/2 (accessed date 13 April, 2024)
  • Chang SW, Abdul-Kareem S, Merican AF, Zain RB. 2013. Oral cancer prognosis based on clinicopathologic and genomic markers using a hybrid of feature selection and machine learning methods. BMC Bioinform, 14: 1-15.
  • Chollet F. 2017. Xception: Deep Learning with depthwise separable convolutions. IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Honolulu, HI, USA, pp: 1800–1807.
  • Chu CS, Lee NP, Adeoye J, Thomson P, Choi SW. 2020. Machine learning and treatment outcome prediction for oral cancer. J Oral Pathol Med, 49: 977-985.
  • Dawud AM, Yurtkan K, Oztoprak H, 2019. Application of deep learning in neuroradiology: brain haemorrhage classification using transfer learning. Comput Intell Neurosci, 2019: 4629859
  • de Lima LM, de Assis MCFR, Soares JP, Grão-Velloso TR, de Barros LAP, Camisasca DR, Krohling RA, 2023. Importance of complementary data to histopathological image analysis of oral leukoplakia and carcinoma using deep neural networks. Intell Med 3: 258–266.
  • Dinesh Y, Ramalingam K, Ramani P, Deepak RM, 2023. Machine learning in the detection of oral lesions with clinical intraoral images. Cureus 15:e44018
  • Dong K, Zhou C, Ruan Y, Li Y, 2020. MobileNetV2 model for image classification. 2nd International Conference on Information Technology and Computer Application (ITCA), December 18-20, Guangzhou, China, pp: 476–480.
  • Gilik A, Ogrenci AS, Ozmen A. Air quality prediction using CNN+LSTM-based hybrid deep learning architecture. Environ Sci Pollut Res 29: 11920–11938 2022.
  • Goswami B, Bhuyan MK, Alfarhood S, Safran M, 2024. Classification of oral cancer into pre-cancerous stages from white light images using LightGBM algorithm. IEEE Access, 12: 31626–31639.
  • He K, Zhang X, Ren S, Sun J. 2016. Deep residual learning for image recognition. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Las Vegas, 17-20 March, NV, USA, pp: 770-778.
  • Jeyaraj PR, Samuel N, 2019. Computer-assisted medical image classification for early diagnosis of oral cancer employing deep learning algorithm. J Cancer Res Clin Oncol, 145: 829–837.
  • Kabakus AT, Erdogmus P, 2022. An experimental comparison of the widely used pre‐trained deep neural networks for image classification tasks towards revealing the promise of transfer‐learning. Concurr Comput Pract Ex, 34: e7216.
  • Kayaalp F, Basarslan MS, Polat K, 2018. TSCBAS: A novel correlation based attribute selection method and application on telecommunications churn analysis. International Conference on Artificial Intelligence and Data Processing (IDAP), 28-30 September, Malatya, Tükiye, pp: 1–5.
  • Koonce B. 2021a EfficientNet. In convolutional neural networks with swift for tensorflow. Apress Berkeley, CA, USA, 1st ed., pp: 109–123
  • Koonce B. 2021b. VGG Network. convolutional neural networks with swift for tensorflow. Apress Berkeley, CA, USA, 1st ed., pp: 35-50
  • Lu C, Lewis Jr, JS, Dupont WD, Plummer Jr, WD, Janowczyk A, Madabhushi, A. 2017. An oral cavity squamous cell carcinoma quantitative histomorphometric-based image classifier of nuclear morphology can risk stratify patients for disease-specific survival. Mod Pathol, 30: 1655-1665.
  • Muthu Rama Krishnan M, Shah P, Chakraborty C. 2012 Statistical analysis of textural features for improved classification of oral histopathological images. J Med Syst 36: 865–881.
  • Öztürk T, Turgut Z, Akgün G, Köse C. 2022. Machine learning-based intrusion detection for SCADA systems in healthcare. Netw Model Anal Health Inform Bioinform, 11: 47.
  • Ribeiro-de-Assis MCF, Soares JP, de Lima LM, de Barros LAP, Grão-Velloso TR, Krohling RA, Camisasca DR. 2023 NDB-UFES: An oral cancer and leukoplakia dataset composed of histopathological images and patient data. Data Brief, 48: 109128.
  • Shavlokhova V, Sandhu, S, Flechtenmacher C, Koveshazi, I Neumeier F, Padrón-Laso V, Jonke Ž, Saravi B, Vollmer M, Vollmer A. 2021. Deep learning on oral squamous cell carcinoma ex vivo fluorescent confocal microscopy data: a feasibility study. J. Clin. Med. 10:5326
  • Song B, Sunny S, Li S, Gurushanth K., Mendonca P, Mukhia N, Liang R, 2021. Bayesian deep learning for reliable oral cancer image classification. Biomed Opt Express, 12: 6422-6430.
  • Warin K, Limprasert W, Suebnukarn S, Jinaporntham S, Jantana P, 2021. Automatic classification and detection of oral cancer in photographic images using deep learning algorithms. J Oral Pathol Med, 50: 911–918.
  • Welikala, RA, Remagnino P, Lim JH, Chan CS, Rajendran S, Kallarakkal TG, Zain RB, Jayasinghe RD, Rimal J, Kerr AR, Amtha R, Patil K, Tilakaratne WM, Gibson J, Cheong SC, Barman SA. 2020. Automated detection and classification of oral lesions using deep learning for early detection of oral cancer. IEEE Access, 8: 132677–132693.
  • Woo S, Debnath S, Hu R, Chen X, Liu Z, Kweon IS, Xie, S. 2023. ConvNeXt V2: Co-Designing and scaling convnets with masked autoencoders. Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), June 11-15 Vancouver, BC, Canada, pp: 16133–16142.
  • Zavrak S, Yilmaz S, 2023. Email spam detection using hierarchical attention hybrid deep learning method. Expert Syst Appl, 233: 120977.

Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods

Yıl 2025, Cilt: 8 Sayı: 1, 94 - 101, 15.01.2025
https://doi.org/10.34248/bsengineering.1528581

Öz

The importance of oral and dental health closely affects other vital organs. In this study, CNN-based transfer learning models are built on histopathologic and intraoral images with benign and malignant lesions. Histopathologic and intraoral images from two different sources have benign or malignant classes of lesions in the mouth. EfficientNetB7, ResNet50, VGG16, and VGG19, Xception, ConvNextBase, and MobileNetV2 were used as transfer learning methods. Model training was performed with 80%-20% train test separation and 20% validation separation on the train set. Accuracy (Acc), Precision (Prec), Recall (Rec), and F1-score (F1) metrics were used to evaluate the model. In histopathologocial images, ResNet50 was ahead with 0.8125 Acc and 0.8525 F1. In intraoral images, ConvNextBase with 0.84 Acc, and 0.80 F1 was found to be more accurate.

Etik Beyan

Ethics committee approval was not required for this study because of there was no study on animals or humans.

Destekleyen Kurum

Yok

Proje Numarası

None

Teşekkür

yok

Kaynakça

  • Babu PA, Rai AK, Ramesh JVN, Nithyasri A, Sangeetha S, Kshirsagar PR, Rajendran A, Rajaram A, Dilipkumar S. 2024. An explainable deep learning approach for oral cancer detection. J Electr Eng Technol., 19: 1837–1848.
  • Bakare YB, Kumarasamy M, 2021. Histopathologıcal image analysis for oral cancer classification by support vector machine. Int J Adv Signal Image Sci, 7: 1–10.
  • Bal F, Kayaalp F, 2023. A novel deep learning-based hybrid method for the determination of productivity of agricultural products: apple case study. IEEE access, 11:7808–7821.
  • Başarslan MS, Kayaalp F, 2023. MBi-GRUMCONV: A novel Multi Bi-GRU and Multi CNN-Based deep learning model for social media sentiment analysis. J Cloud Comput, 12: 1-16.
  • Chandrashekar HS. Geetha A, Kiran S, Murali MS, Dinesh BR, Nanditha, 2021. Oral images dataset, URL: https://data.mendeley.com/datasets/mhjyrn35p4/2 (accessed date 13 April, 2024)
  • Chang SW, Abdul-Kareem S, Merican AF, Zain RB. 2013. Oral cancer prognosis based on clinicopathologic and genomic markers using a hybrid of feature selection and machine learning methods. BMC Bioinform, 14: 1-15.
  • Chollet F. 2017. Xception: Deep Learning with depthwise separable convolutions. IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Honolulu, HI, USA, pp: 1800–1807.
  • Chu CS, Lee NP, Adeoye J, Thomson P, Choi SW. 2020. Machine learning and treatment outcome prediction for oral cancer. J Oral Pathol Med, 49: 977-985.
  • Dawud AM, Yurtkan K, Oztoprak H, 2019. Application of deep learning in neuroradiology: brain haemorrhage classification using transfer learning. Comput Intell Neurosci, 2019: 4629859
  • de Lima LM, de Assis MCFR, Soares JP, Grão-Velloso TR, de Barros LAP, Camisasca DR, Krohling RA, 2023. Importance of complementary data to histopathological image analysis of oral leukoplakia and carcinoma using deep neural networks. Intell Med 3: 258–266.
  • Dinesh Y, Ramalingam K, Ramani P, Deepak RM, 2023. Machine learning in the detection of oral lesions with clinical intraoral images. Cureus 15:e44018
  • Dong K, Zhou C, Ruan Y, Li Y, 2020. MobileNetV2 model for image classification. 2nd International Conference on Information Technology and Computer Application (ITCA), December 18-20, Guangzhou, China, pp: 476–480.
  • Gilik A, Ogrenci AS, Ozmen A. Air quality prediction using CNN+LSTM-based hybrid deep learning architecture. Environ Sci Pollut Res 29: 11920–11938 2022.
  • Goswami B, Bhuyan MK, Alfarhood S, Safran M, 2024. Classification of oral cancer into pre-cancerous stages from white light images using LightGBM algorithm. IEEE Access, 12: 31626–31639.
  • He K, Zhang X, Ren S, Sun J. 2016. Deep residual learning for image recognition. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR), Las Vegas, 17-20 March, NV, USA, pp: 770-778.
  • Jeyaraj PR, Samuel N, 2019. Computer-assisted medical image classification for early diagnosis of oral cancer employing deep learning algorithm. J Cancer Res Clin Oncol, 145: 829–837.
  • Kabakus AT, Erdogmus P, 2022. An experimental comparison of the widely used pre‐trained deep neural networks for image classification tasks towards revealing the promise of transfer‐learning. Concurr Comput Pract Ex, 34: e7216.
  • Kayaalp F, Basarslan MS, Polat K, 2018. TSCBAS: A novel correlation based attribute selection method and application on telecommunications churn analysis. International Conference on Artificial Intelligence and Data Processing (IDAP), 28-30 September, Malatya, Tükiye, pp: 1–5.
  • Koonce B. 2021a EfficientNet. In convolutional neural networks with swift for tensorflow. Apress Berkeley, CA, USA, 1st ed., pp: 109–123
  • Koonce B. 2021b. VGG Network. convolutional neural networks with swift for tensorflow. Apress Berkeley, CA, USA, 1st ed., pp: 35-50
  • Lu C, Lewis Jr, JS, Dupont WD, Plummer Jr, WD, Janowczyk A, Madabhushi, A. 2017. An oral cavity squamous cell carcinoma quantitative histomorphometric-based image classifier of nuclear morphology can risk stratify patients for disease-specific survival. Mod Pathol, 30: 1655-1665.
  • Muthu Rama Krishnan M, Shah P, Chakraborty C. 2012 Statistical analysis of textural features for improved classification of oral histopathological images. J Med Syst 36: 865–881.
  • Öztürk T, Turgut Z, Akgün G, Köse C. 2022. Machine learning-based intrusion detection for SCADA systems in healthcare. Netw Model Anal Health Inform Bioinform, 11: 47.
  • Ribeiro-de-Assis MCF, Soares JP, de Lima LM, de Barros LAP, Grão-Velloso TR, Krohling RA, Camisasca DR. 2023 NDB-UFES: An oral cancer and leukoplakia dataset composed of histopathological images and patient data. Data Brief, 48: 109128.
  • Shavlokhova V, Sandhu, S, Flechtenmacher C, Koveshazi, I Neumeier F, Padrón-Laso V, Jonke Ž, Saravi B, Vollmer M, Vollmer A. 2021. Deep learning on oral squamous cell carcinoma ex vivo fluorescent confocal microscopy data: a feasibility study. J. Clin. Med. 10:5326
  • Song B, Sunny S, Li S, Gurushanth K., Mendonca P, Mukhia N, Liang R, 2021. Bayesian deep learning for reliable oral cancer image classification. Biomed Opt Express, 12: 6422-6430.
  • Warin K, Limprasert W, Suebnukarn S, Jinaporntham S, Jantana P, 2021. Automatic classification and detection of oral cancer in photographic images using deep learning algorithms. J Oral Pathol Med, 50: 911–918.
  • Welikala, RA, Remagnino P, Lim JH, Chan CS, Rajendran S, Kallarakkal TG, Zain RB, Jayasinghe RD, Rimal J, Kerr AR, Amtha R, Patil K, Tilakaratne WM, Gibson J, Cheong SC, Barman SA. 2020. Automated detection and classification of oral lesions using deep learning for early detection of oral cancer. IEEE Access, 8: 132677–132693.
  • Woo S, Debnath S, Hu R, Chen X, Liu Z, Kweon IS, Xie, S. 2023. ConvNeXt V2: Co-Designing and scaling convnets with masked autoencoders. Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), June 11-15 Vancouver, BC, Canada, pp: 16133–16142.
  • Zavrak S, Yilmaz S, 2023. Email spam detection using hierarchical attention hybrid deep learning method. Expert Syst Appl, 233: 120977.
Toplam 30 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Biyomedikal Görüntüleme
Bölüm Research Articles
Yazarlar

Kaan Gümele 0009-0002-4262-0585

Muhammet Sinan Başarslan 0000-0002-7996-9169

Proje Numarası None
Yayımlanma Tarihi 15 Ocak 2025
Gönderilme Tarihi 5 Ağustos 2024
Kabul Tarihi 25 Kasım 2024
Yayımlandığı Sayı Yıl 2025 Cilt: 8 Sayı: 1

Kaynak Göster

APA Gümele, K., & Başarslan, M. S. (2025). Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods. Black Sea Journal of Engineering and Science, 8(1), 94-101. https://doi.org/10.34248/bsengineering.1528581
AMA Gümele K, Başarslan MS. Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods. BSJ Eng. Sci. Ocak 2025;8(1):94-101. doi:10.34248/bsengineering.1528581
Chicago Gümele, Kaan, ve Muhammet Sinan Başarslan. “Oral Cancer Classification With CNN Based State-of-the-Art Transfer Learning Methods”. Black Sea Journal of Engineering and Science 8, sy. 1 (Ocak 2025): 94-101. https://doi.org/10.34248/bsengineering.1528581.
EndNote Gümele K, Başarslan MS (01 Ocak 2025) Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods. Black Sea Journal of Engineering and Science 8 1 94–101.
IEEE K. Gümele ve M. S. Başarslan, “Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods”, BSJ Eng. Sci., c. 8, sy. 1, ss. 94–101, 2025, doi: 10.34248/bsengineering.1528581.
ISNAD Gümele, Kaan - Başarslan, Muhammet Sinan. “Oral Cancer Classification With CNN Based State-of-the-Art Transfer Learning Methods”. Black Sea Journal of Engineering and Science 8/1 (Ocak 2025), 94-101. https://doi.org/10.34248/bsengineering.1528581.
JAMA Gümele K, Başarslan MS. Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods. BSJ Eng. Sci. 2025;8:94–101.
MLA Gümele, Kaan ve Muhammet Sinan Başarslan. “Oral Cancer Classification With CNN Based State-of-the-Art Transfer Learning Methods”. Black Sea Journal of Engineering and Science, c. 8, sy. 1, 2025, ss. 94-101, doi:10.34248/bsengineering.1528581.
Vancouver Gümele K, Başarslan MS. Oral Cancer Classification with CNN Based State-of-the-art Transfer Learning Methods. BSJ Eng. Sci. 2025;8(1):94-101.

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