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Head and neck cancer metastasis prediction via artificial neural networks

机译:通过人工神经网络预测头颈癌转移

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Cancers in head and neck tends to spread to nearby lymph nodes. Lymph nodes trap the spreading tumor cells but then the tumor starts to grow in these nodes and then spread further. Our project is aimed to (1) predict the secondary regions of lymph nodes where a given primary tumor can metastasize, and (2) to generalize a pattern for lymph nodes metastasis of head and neck cancer by using artificial neural networks (ANN). The raw data for the analysis is provided by Dr. Lincoln Gray, Acta Otolaryngologica 2000, of 130 cases of pathologically-positive oral squamous cell carcinoma (SCC) from UK. Seven primary sites for tumors are identified: 1) buccal mucosa, 2) tongue, 3) retromolar trigone, 4) floor of mouth, 5) ventral tongue, 6) oropharynx, 7) lower alveolus. Ten secondary regions of lymph nodes metastasis are observed: five regions each on the same/opposite side (ipsilateral/contralateral) as the primary tumor site. In our oral squamous cell carcinoma study using ANN, we explore data analysis approach with two ANN methods: (1) a supervised multilayer feed forward back propagation (back-prop) method, and (2) an unsupervised self organizing map (SOM) method. This experience provides insight into implementation of ANN and directions to future investigation. The results from back-prop are comparable to that using multidimensional scaling (MDS) with respect to prediction of lymph nodes that have highest percentage of being metastasized, while SOM requires further work to identify clustering for individual primary cancer as well as next level of lymph node metastases.
机译:头颈癌倾向于扩散到附近的淋巴结。淋巴结捕获扩散的肿瘤细胞,但随后肿瘤开始在这些淋巴结中生长,然后进一步扩散。我们的项目旨在(1)预测可转移给定原发肿瘤的淋巴结的次级区域,以及(2)使用人工神经网络(ANN)概括头颈癌淋巴结转移的模式。分析的原始数据由2000年耳鼻咽喉科的Lincoln Gray博士提供,来自英国的130例病理阳性的口腔鳞状细胞癌(SCC)。确定了七个主要的肿瘤部位:1)颊粘膜,2)舌头,3)磨牙后三角骨,4)口底,5)腹侧舌,6)口咽,7)下牙槽。观察到十个淋巴结转移的次要区域:五个区域,每个区域与原发性肿瘤部位在同一侧/对侧(同侧/对侧)。在我们使用ANN的口腔鳞状细胞癌研究中,我们探索了两种ANN方法的数据分析方法:(1)有监督的多层前馈反向传播(back-prop)方法,以及(2)无监督的自组织图(SOM)方法。这项经验可帮助您深入了解ANN的实施情况以及未来调查的方向。在预测具有最高转移百分比的淋巴结的预测方面,反向支撑的结果与使用多维缩放(MDS)的结果相当,而SOM需要进一步的工作来确定单个原发癌以及下一级别淋巴结的聚类淋巴结转移。

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