首页> 外文会议>Engineering in Medicine and Biology Society, 1998. Proceedings of the 20th Annual International Conference of the IEEE >Pre- and post-operative predictions of recurrence in patients with cancer of the oesophago-gastric junction using radial basis function artificial neural networks
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Pre- and post-operative predictions of recurrence in patients with cancer of the oesophago-gastric junction using radial basis function artificial neural networks

机译:径向基函数人工神经网络预测食管胃交界处癌症患者的术前和术后复发

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Pre-operative data from 103 patients undergoing potentially curative resection of adenocarcinoma of the oesophago-gastric junction were collected prospectively and analysed by a radial basis function artificial neural network system. A separate neural structure was designed for use with selected additional post-operative parameters. Output variables for both systems were recurrence at 12, 18 and 24 months. Prediction specificities, using pre-operative data alone, were 60%, 62% and 60%, respectively. Inclusion of post-operative parameters improved the specificity to 72.7% at 12 months, 66% at 18 months and 62.2% at 24 months, while the sensitivity of prediction at 18 months reached 90% and at two years 93%. There was a strong correlation between the predictive value of pre- and post-operative findings in individual patients at each time period (correlation coefficient=0.6333, p>0.0001; 0.4873, p=0.0083; 0.266, p=0.0025). This study demonstrates that artificial neural networks are able to reliably predict, even with limited clinical pre-operative information, patients who are destined to fail when treated by surgery alone. This approach may have a role in assisting clinicians to achieve more appropriate selection of patients for surgery and neo-adjuvant therapy.
机译:通过径向基础函数人工神经网络系统预先收集来自经历卵巢胃结腺癌腺癌腺癌患者的103名患者的术前数据。设计了一个单独的神经结构,设计用于选定的额外的术后参数。两个系统的输出变量在12,18和24个月内复发。使用单独使用预手术数据的预测特异性分别为60%,62%和60%。将术后参数包含在12个月内提高了72.7%的特异性,在18个月内为66%和24个月的62.2%,而预测的敏感度为18个月,达到90%,达到93%。在每次患者的每个患者中,在每个时间患者的预测值与术后结果的预测值之间存在良好的相关性(相关系数= 0.6333,p> 0.0001; 0.4873,P = 0.0083; 0.266,P = 0.0025)。本研究表明,即使具有有限的临床前术信息信息,人工神经网络能够可靠地预测,即在单独的手术治疗时注定失败的患者。这种方法可能在协助临床医生方面具有促进患者的手术和新辅助治疗的患者。

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