Ahmed Farid E
Department of Radiation Oncology, Leo W Jenkins Cancer Center, The Brody School of Medicine, East Carolina University, Greenville, NC 27858, USA.
Mol Cancer. 2005 Aug 6;4:29. doi: 10.1186/1476-4598-4-29.
ANNs are nonlinear regression computational devices that have been used for over 45 years in classification and survival prediction in several biomedical systems, including colon cancer. Described in this article is the theory behind the three-layer free forward artificial neural networks with backpropagation error, which is widely used in biomedical fields, and a methodological approach to its application for cancer research, as exemplified by colon cancer. Review of the literature shows that applications of these networks have improved the accuracy of colon cancer classification and survival prediction when compared to other statistical or clinicopathological methods. Accuracy, however, must be exercised when designing, using and publishing biomedical results employing machine-learning devices such as ANNs in worldwide literature in order to enhance confidence in the quality and reliability of reported data.
人工神经网络是非线性回归计算设备,在包括结肠癌在内的多个生物医学系统的分类和生存预测中已使用了45年以上。本文描述了具有反向传播误差的三层前馈人工神经网络背后的理论,该理论在生物医学领域广泛应用,还介绍了其在癌症研究中的应用方法,以结肠癌为例。文献综述表明,与其他统计或临床病理方法相比,这些网络的应用提高了结肠癌分类和生存预测的准确性。然而,在全球文献中设计、使用和发表采用人工神经网络等机器学习设备的生物医学结果时,必须谨慎行事,以增强对报告数据质量和可靠性的信心。