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

机译:早期口腔舌癌课程复发预测的机器学习应用:基于Web的预后工具

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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.
机译:早期口腔舌鳞状细胞癌(OTSCC)复发危险的估计仍然是头部和颈部肿瘤领域的挑战。我们研究了人工神经网络(ANNS)的使用来预测早期OTSCC的复发。还开发了一种可用于公共使用的基于网络的工具。训练前馈神经网络以预测早期ΔCC的招核复发。训练有素的网络用于评估几种预后参数(年龄,性别,T阶段,世卫组织学级,侵袭深度,肿瘤萌芽,侵袭性最差,侵袭侵袭和淋巴细胞宿主反应)。我们的神经网络模型确定了肿瘤萌芽和侵袭深度,作为预测招待复发的最重要的预测因素。神经网络的准确性为92.7%,高于Logistic回归模型(86.5%)。我们的在线工具提供88.2%的精度,灵敏度为71.2%和98.9%。总之,ANN似乎提供了一种独特的决策支持,预测复发性,从而增加了早期OTSCC管理的价值。据我们所知,这是第一次应用ANN用于预测早期ETOSCC的复发,并提供基于Web的工具。

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