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

被引:0
|
作者
Rasheed Omobolaji Alabi
Mohammed Elmusrati
Iris Sawazaki-Calone
Luiz Paulo Kowalski
Caj Haglund
Ricardo D. Coletta
Antti A. Mäkitie
Tuula Salo
Ilmo Leivo
Alhadi Almangush
机构
[1] University of Vaasa,Department of Industrial Digitalization, School of Technology and Innovations
[2] Western Parana State University,Oral Pathology and Oral Medicine, Dentistry School
[3] A.C. Camargo Cancer Center,Department of Head and Neck Surgery and Otorhinolaryngology
[4] University of Helsinki,Research Programs Unit, Translational Cancer Biology
[5] University of Helsinki and Helsinki University Hospital,Department of Surgery
[6] University of Campinas,Department of Oral Diagnosis, School of Dentistry
[7] University of Helsinki and Helsinki University Hospital,Department of Otorhinolaryngology – Head and Neck Surgery
[8] University of Helsinki,Research Programme in Systems Oncology, Faculty of Medicine
[9] Karolinska Institutet and Karolinska University Hospital,Division of Ear, Nose and Throat Diseases, Department of Clinical Sciences, Intervention and Technology
[10] University of Helsinki,Department of Pathology
[11] University of Helsinki,Department of Oral and Maxillofacial Diseases
[12] University of Oulu and Oulu University Hospital,Cancer and Translational Medicine Research Unit, Medical Research Center Oulu
[13] University of Turku,Institute of Biomedicine, Pathology
[14] University of Misurata,Faculty of Dentistry
来源
Virchows Archiv | 2019年 / 475卷
关键词
Oral tongue cancer; Artificial neural network; Machine learning; Locoregional recurrence; Prediction;
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学科分类号
摘要
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.
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页码:489 / 497
页数:8
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