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Artificial neural network for prediction of lymph node metastases in gastric cancer: a phase II diagnostic study.

机译:人工神经网络预测胃癌淋巴结转移:II期诊断研究。

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BACKGROUND: Extension of lymphadenectomy in gastric cancer is controversial, and preoperative diagnosis of lymph node metastases (LNM) is difficult. Therefore, knowledge-based systems such as the Maruyama computer program (MCP) are being developed. MCP shows good prognostic value for the compartments; however, for different lymph node groups (LNG) there are a large number of false positives. The aim of this study was to evaluate artificial neural networks (ANN) for predicting LNM in patients with gastric cancer and to compare the predictive power with that of MCP. METHODS: A total of 135 consecutive patients who underwent D2 gastrectomy were included. We applied a single-layer perceptron to the data of 4302 patients from the National Cancer Center, Tokyo, and compared the results with those from the MCP. RESULTS: Prediction of N(+) or N0 with ANN-1 (Borrmann classification, T category, and tumor size and location) had an accuracy of 79%. The predictive value for LNM in each of the LNG varied: ANN-1, 64% to 86%; MCP, 42% to 70%. We constructed another ANN by using the additional parameter of metastases in LNG 3 as an example of sentinel node. The accuracy of this ANN was 93%. CONCLUSIONS: Using an ANN, LNM in each LNG can be accurately predicted. Additional knowledge about one lymph node improves the results.
机译:背景:在胃癌中扩大淋巴结清扫术存在争议,术前诊断淋巴结转移(LNM)困难。因此,正在开发基于知识的系统,例如丸山计算机程序(MCP)。 MCP显示出良好的预后价值。但是,对于不同的淋巴结组(LNG),存在大量的假阳性。这项研究的目的是评估用于预测胃癌患者LNM的人工神经网络(ANN),并将其与MCP的预测能力进行比较。方法:总共包括135例接受D2胃切除术的连续患者。我们将单层感知器应用于东京国立癌症中心的4302名患者的数据,并将结果与​​MCP的结果进行了比较。结果:使用ANN-1预测N(+)或N0(Borrmann分类,T类以及肿瘤的大小和位置)的准确性为79%。每个LNG中LNM的预测值各不相同:ANN-1为64%至86%; ANN-1为64%至86%。 MCP,从42%升至70%。我们使用LNG 3中转移的附加参数作为前哨节点的示例,构建了另一个ANN。该人工神经网络的准确性为93%。结论:使用人工神经网络,可以准确预测每个液化天然气中的液化天然气。有关一个淋巴结的其他知识可以改善结果。

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