Artificial neural networks approach to early lung cancer detection

Krzysztof Goryński, Izabela Safian, W. Grądzki, M. Marszałł, J. Krysiński, Sławomir Goryński, Anna Bitner, J. Romaszko, A. Buciński
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引用次数: 16

Abstract

Lung cancer is rated with the highest incidence and mortality every year compared with other forms of cancer, therefore early detection and diagnosis is essential. Artificial Neural Networks (ANNs) are “artificial intelligence” software which have been used to assess a few prognostic situations. In this study, a database containing 193 patients from Diagnostic and Monitoring of Tuberculosis and Illness of Lungs Ward in Kuyavia and Pomerania Centre of the Pulmonology (Bydgoszcz, Poland) was analysed using ANNs. Each patient was described using 48 factors (i.e. age, sex, data of patient history, results from medical examinations etc.) and, as an output value, the expected presence of lung cancer was established. All 48 features were retrospectively collected and the database was divided into a training set (n=97), testing set (n=48) and a validating set (n=48). The best prediction score of the ANN model (MLP 48-9-2) was above 0.99 of the area under a receiver operator characteristic (ROC) curve. The ANNs were able to correctly classify 47 out of 48 test cases. These data suggest that Artificial Neural Networks can be used in prognosis of lung cancer and could help the physician in diagnosis of patients with the suspicion of lung cancer.
人工神经网络在肺癌早期检测中的应用
与其他形式的癌症相比,肺癌每年的发病率和死亡率最高,因此早期发现和诊断至关重要。人工神经网络(ann)是一种“人工智能”软件,已被用于评估一些预测情况。在这项研究中,使用人工神经网络分析了库亚维亚和波美拉尼亚肺病中心(比得哥什,波兰)肺结核和肺病诊断和监测病房193名患者的数据库。每个患者使用48个因素(即年龄、性别、患者病史数据、医学检查结果等)进行描述,并作为输出值确定肺癌的预期存在。回顾性收集所有48个特征,并将数据库分为训练集(n=97)、测试集(n=48)和验证集(n=48)。人工神经网络模型(MLP 48-9-2)的最佳预测分数为受试者操作特征曲线下面积的0.99以上。人工神经网络能够正确分类48个测试用例中的47个。这些数据表明,人工神经网络可以用于肺癌的预后,并可以帮助医生对疑似肺癌患者进行诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Central European Journal of Medicine
Central European Journal of Medicine 医学-医学:内科
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4-8 weeks
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