Combining Parallel Genetic Algorithms and Machine Learning to Improve the Research of Optimal Vaccination Protocols

M. Pennisi, G. Russo, F. Pappalardo
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引用次数: 4

Abstract

The developing of novel prophylactic and therapeutic vaccine candidates in the field of cancer immunology brought to very promising results against tumors, entitling full protection with reduced amount of the typical side effects of the actual conventional treatments. However, such treatments required a constant, life-long, administration procedure to keep protection. As both the period of protection and the relative number of administrations grow, the problem of finding the best administration protocol, in time and dosage, becomes more and more complex. Such a problem cannot be usually solved in in vivo experiments, as the costs in terms of time, money, and people would be prohibitive. We propose a hybrid approach that integrates machine learning and parallel genetic algorithms to enhance the research in silico of optimal administration protocols for a cancer vaccine. A neural network is used to improve both crossover and mutation operators. Preliminary results suggest that the use of such could bring to better administration protocols using a similar computational effort.
结合并行遗传算法和机器学习改进最优疫苗接种方案的研究
在癌症免疫学领域,新型预防和治疗性候选疫苗的开发带来了非常有希望的抗肿瘤效果,可以充分保护肿瘤,同时减少实际常规治疗的典型副作用。然而,这种治疗需要持续的、终生的管理程序来保持保护。随着保护期和相对给药次数的增加,在时间和剂量上寻找最佳给药方案的问题变得越来越复杂。这样的问题通常不能在体内实验中解决,因为在时间、金钱和人员方面的成本将是令人望而却步的。我们提出了一种结合机器学习和并行遗传算法的混合方法,以加强对癌症疫苗最佳给药方案的计算机研究。利用神经网络对交叉算子和变异算子进行改进。初步结果表明,使用这种方法可以使用类似的计算工作带来更好的管理协议。
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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