用神经网络预测近视屈光手术的结果

4open Pub Date : 2019-01-01 DOI:10.1051/fopen/2019024
M. Balidis, I. Papadopoulou, Dimitris Malandris, Z. Zachariadis, Dimitrios Sakellaris, T. Vakalis, S. Asteriadis, P. Tranos, E. Loukovitis, M. Poulos, Z. Gatzioufas, G. Anogeianakis
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引用次数: 2

摘要

简介:屈光手术(RS)在过去的几十年里取得了巨大的进步,使用的方法和技术在安全性、有效性、成本效益和屈光结果的可预测性方面都达到了严格的标准。尽管如此,仍有不可忽视的比例的RS需要纠正性再治疗。此外,外科医生应该能够事先告知患者矫正RS的必要性。本文解决了这些关于近视的问题,并探讨了使用神经网络作为预测RS结果问题的解决方案。方法:采用计算机查询方法,选取2010年1月至2017年7月期间采用PRK、LASEK、Epi-LASIK、LASIK手术进行RS的患者,调查与RS相关的13个因素。将前向和后向传播中使用的权重强制为二值,对数据进行归一化处理;每个整数用一个12位的串行码表示,这样在预处理阶段之后,所有13个参数的数据值向量被编码成1 × (13 × 12) = 1 × 156大小的二进制向量。在预处理阶段之后,使用Matlab的Ivqnet函数随机创建8个独立的学习向量量化(LVQ)网络,每个网络以(0个撤退类)或(1个正确类)响应一个查询。然后对8个lvq的结果进行平均,以便对网络的性能进行最佳估计,同时使用神经网络的投票程序来得出结果。结果:我们的算法能够以统计显著的方式预测(如Cohen的Kappa测试结果0.7595所证明)初始RS后需要再治疗,具有良好的灵敏度(0.8756)和特异性(0.9286)。结论:结果使我们对使用神经网络预测结果并最终规划RS的未来持乐观态度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using neural networks to predict the outcome of refractive surgery for myopia
Introduction: Refractive Surgery (RS), has advanced immensely in the last decades, utilizing methods and techniques that fulfill stringent criteria for safety, efficacy, cost-effectiveness, and predictability of the refractive outcome. Still, a non-negligible percentage of RS require corrective retreatment. In addition, surgeons should be able to advise their patients, beforehand, as to the probability that corrective RS will be necessary. The present article addresses these issues with regard to myopia and explores the use of Neural Networks as a solution to the problem of the prediction of the RS outcome. Methods: We used a computerized query to select patients who underwent RS with any of the available surgical techniques (PRK, LASEK, Epi-LASIK, LASIK) between January 2010 and July 2017 and we investigated 13 factors which are related to RS. The data were normalized by forcing the weights used in the forward and backward propagations to be binary; each integer was represented by a 12-bit serial code, so that following this preprocessing stage, the vector of the data values of all 13 parameters was encoded in a binary vector of 1 × (13 × 12) = 1 × 156 size. Following the preprocessing stage, eight independent Learning Vector Quantization (LVQ) networks were created in random way using the function Ivqnet of Matlab, each one of them responding to one query with (0 retreat class) or (1 correct class). The results of the eight LVQs were then averaged to permit a best estimate of the network’s performance while a voting procedure by the neural nets was used to arrive at the outcome Results: Our algorithm was able to predict in a statistically significant way (as evidenced by Cohen’s Kappa test result of 0.7595) the need for retreatment after initial RS with good sensitivity (0.8756) and specificity (0.9286). Conclusion: The results permit us to be optimistic about the future of using neural networks for the prediction of the outcome and, eventually, the planning of RS.
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