Machine learning application for prediction of locoregional recurrences in early oral tongue cancer: a Web-based prognostic tool

Estimation of risk of recurrence in early-stage oral tongue squamous cell carcinoma (OTSCC) remains a challenge in the field of head and neck oncology. We examined the use of artificial neural networks (ANNs) to predict recurrences in early-stage OTSCC. A Web-based tool available for public use was also developed. A feedforward neural network was trained for prediction of locoregional recurrences in early OTSCC. The trained network was used to evaluate several prognostic parameters (age, gender, T stage, WHO histologic grade, depth of invasion, tumor budding, worst pattern of invasion, perineural invasion, and lymphocytic host response). Our neural network model identified tumor budding and depth of invasion as the most important prognosticators to predict locoregional recurrence. The accuracy of the neural network was 92.7%, which was higher than that of the logistic regression model (86.5%). Our online tool provided 88.2% accuracy, 71.2% sensitivity, and 98.9% specificity. In conclusion, ANN seems to offer a unique decision-making support predicting recurrences and thus adding value for the management of early OTSCC. To the best of our knowledge, this is the first study that applied ANN for prediction of recurrence in early OTSCC and provided a Web-based tool.

[1]  S. Tai,et al.  Risks and clinical implications of perineural invasion in T1‐2 oral tongue squamous cell carcinoma , 2012, Head & neck.

[2]  A. Kazemnejad,et al.  Application of Artificial Neural Network in Predicting the Survival Rate of Gastric Cancer Patients , 2011, Iranian journal of public health.

[3]  Xi Yang,et al.  Prognostic impact of perineural invasion in early stage oral tongue squamous cell carcinoma: Results from a prospective randomized trial. , 2018, Surgical oncology.

[4]  T. Salo,et al.  The prognostic value of histopathological grading systems in oral squamous cell carcinomas. , 2015, Oral diseases.

[5]  K. Markou,et al.  The role of perineural invasion in treatment decisions for oral cancer patients: A review of the literature. , 2017, Journal of cranio-maxillo-facial surgery : official publication of the European Association for Cranio-Maxillo-Facial Surgery.

[6]  Akbar Fotouhi,et al.  Assessment of gastric cancer survival: using an artificial hierarchical neural network. , 2008, Pakistan journal of biological sciences : PJBS.

[7]  M. Pirinen,et al.  Tumour budding in oral squamous cell carcinoma: a meta-analysis , 2017, British Journal of Cancer.

[8]  M. Bullock,et al.  The histologic risk model is a useful and inexpensive tool to assess risk of recurrence and death in stage I or II squamous cell carcinoma of tongue and floor of mouth , 2018, Modern Pathology.

[9]  MJ Callaghan,et al.  Game Based Learning for Teaching Electrical and Electronic Engineering , 2014 .

[10]  Fuzzy System and Data Mining - Proceedings of FSDM 2015 [Shanghai, China, December 12-15, 2015] , 2016, FSDM.

[11]  Noam Harpaz,et al.  Artificial neural networks distinguish among subtypes of neoplastic colorectal lesions. , 2002, Gastroenterology.

[12]  J. Shah,et al.  Early stage squamous cell cancer of the oral tongue—clinicopathologic features affecting outcome , 2012, Cancer.

[13]  Fazel Amiri The effect of type of marginal land use on the production of biomass and plant diversity. , 2008, Pakistan journal of biological sciences : PJBS.

[14]  J. Lo,et al.  Outcome analysis of patients with acute pancreatitis by using an artificial neural network. , 2002, Academic radiology.

[15]  L. Spelt,et al.  Artificial neural networks--a method for prediction of survival following liver resection for colorectal cancer metastases. , 2013, European journal of surgical oncology : the journal of the European Society of Surgical Oncology and the British Association of Surgical Oncology.

[16]  Ian H. Witten,et al.  Data mining: practical machine learning tools and techniques, 3rd Edition , 1999 .

[17]  Alhadi Almangush,et al.  For early-stage oral tongue cancer, depth of invasion and worst pattern of invasion are the strongest pathological predictors for locoregional recurrence and mortality , 2015, Virchows Archiv.

[18]  Farid Zayeri,et al.  Determining of prognostic factors in gastric cancer patients using artificial neural networks. , 2010, Asian Pacific journal of cancer prevention : APJCP.

[19]  Nasser M. Nasrabadi,et al.  Pattern Recognition and Machine Learning , 2006, Technometrics.

[20]  T. Salo,et al.  Prognostic evaluation of oral tongue cancer: means, markers and perspectives (II). , 2010, Oral oncology.

[21]  Javad Faradmal,et al.  Comparison of the performance of log-logistic regression and artificial neural networks for predicting breast cancer relapse. , 2014, Asian Pacific journal of cancer prevention : APJCP.

[22]  อนิรุธ สืบสิงห์,et al.  Data Mining Practical Machine Learning Tools and Techniques , 2014 .

[23]  A. Kazemnejad,et al.  Comparison of artificial neural network and binary logistic regression for determination of impaired glucose tolerance/diabetes. , 2010, Eastern Mediterranean health journal = La revue de sante de la Mediterranee orientale = al-Majallah al-sihhiyah li-sharq al-mutawassit.

[24]  Paulo J. G. Lisboa,et al.  A review of evidence of health benefit from artificial neural networks in medical intervention , 2002, Neural Networks.

[25]  James J. Park,et al.  Advances in Computer Science and its Applications , 2020 .

[26]  Ankur Bansal,et al.  Development of a New Outcome Prediction Model in Early-stage Squamous Cell Carcinoma of the Oral Cavity Based on Histopathologic Parameters With Multivariate Analysis: The Aditi-Nuzhat Lymph-node Prediction Score (ANLPS) System , 2017, The American journal of surgical pathology.

[27]  D. Raben,et al.  Poor prognosis in patients with stage I and II oral tongue squamous cell carcinoma , 2008, Cancer.

[28]  V. Kosma,et al.  A simple novel prognostic model for early stage oral tongue cancer. , 2015, International journal of oral and maxillofacial surgery.

[29]  S. Singh,et al.  Application of Artificial Neural Networks in Modern Drug Discovery Chapter – 6 published in Artificial Neural Network for Drug Design, Delivery and Disposition , 2015 .

[30]  Jigneshkumar L Patel,et al.  Applications of artificial neural networks in medical science. , 2007, Current clinical pharmacology.

[31]  T. Salo,et al.  Prognostic biomarkers for oral tongue squamous cell carcinoma: a systematic review and meta-analysis , 2017, British Journal of Cancer.

[32]  R. Weber,et al.  Depth of invasion as a predictor of nodal disease and survival in patients with oral tongue squamous cell carcinoma , 2018, Head & neck.

[33]  M. Zheng,et al.  A model to predict 3‐month mortality risk of acute‐on‐chronic hepatitis B liver failure using artificial neural network , 2013, Journal of viral hepatitis.

[34]  T. Salo,et al.  Prognostic evaluation of oral tongue cancer: means, markers and perspectives (I). , 2010, Oral oncology.

[35]  Tadaaki Kirita,et al.  Tumor budding and adjacent tissue at the invasive front correlate with delayed neck metastasis in clinical early‐stage tongue squamous cell carcinoma , 2018, Journal of surgical oncology.