采用混合蚁群/粒子群算法训练神经网络进行周围神经再生的神经移植物选择

Matthew Conforth, Y. Meng, C. Valmikinathan, Xiaojun Yu
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引用次数: 8

摘要

确定组织工程中最成功的应用策略通常是令人困惑的,有各种各样的选择和变量可用,可以适合理想的移植物或支架。应用移植物修复周围神经损伤的复杂性是多方面的,有许多变量影响再生过程,从而影响再生的成功。在这里,我们开发了一个基于群体智能的人工神经网络(SWIRL)来预测神经移植成功的结果,从而提供了在特定情况下神经移植成功能力的关键信息。识别了30多个自变量,并将其用作训练网络和估计结果的特征。采用临界再生长度、实际长度与临界长度之比等具体参数来评价和估计神经移植的成功。使用SWIRL,我们估计任何神经移植物再生的成功率约为92.59%。这个系统可以用一组固定的变量来估计可能的最佳结果,或者用多种可用的选择来确定可能的最佳组合,帮助研究人员高效、合乎道德地进行实验和检验假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nerve graft selection for peripheral nerve regeneration using neural networks trained by a hybrid ACO/PSO method
Identification of the most successful strategy for applications in tissue engineering is often confusing, with a wide variety of options and variables available, that can fit into an ideal graft or scaffold. The complexity of the problem is multifold in application of grafts for regeneration of peripheral nerve injuries, with many variables that affect the regeneration process and thereby the success of regeneration. Here, we develop a Swarm Intelligence based artificial neural network (SWIRL) to predict the outcome of success of a nerve graft, thus providing critical information on the ability of a nerve graft to succeed under certain circumstances. Over 30 independent variables were identified and used as features for training the network and estimation of outcomes. Specific parameters such as the critical regeneration length and the ratio of the actual length to critical length were used in the evaluation and estimation of the success of the nerve grafts. Using the SWIRL, we estimate the success of regeneration of any nerve grafts to approximately 92.59 % accuracy. This system could allow for the estimation of the best possible outcome with a fixed set of variables or identification of best possible combinations with the multitude of options available, aiding researchers to perform experiments and test hypothesis efficiently and ethically.
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