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利用具有新型选择算子的改进自适应遗传算法预测人体成分。

Predicting human body composition using a modified adaptive genetic algorithm with a novel selection operator.

机构信息

College of Information Engineering, Dalian University, Dalian, Liaoning, China.

College of Information Engineering, Lingnan Normal University, Zhanjiang, Guangdong, China.

出版信息

PLoS One. 2020 Jul 16;15(7):e0235735. doi: 10.1371/journal.pone.0235735. eCollection 2020.

Abstract

BACKGROUND

Changes to human body composition reflect changes in health status to some extent. It has been recognized that these changes occur earlier than diseases. This means that a reasonable prediction of body composition helps to improve model users' health. To overcome the low accuracy and poor adaptability of existing human body composition prediction models and obtain higher efficiency, we proposed a novel method for predicting human body composition which uses a modified adaptive genetic algorithm (MAGA).

METHODS

Firstly, since there are many parameters for a human body composition model, and these parameters are associated, we designed a new parameter selection approach by combining the improved RReliefF method with the mRMR method. Following this, selected parameters were used to establish a model that fits body composition. Secondly, in order to accurately calculate the weight of parameters in this model, we proposed a solution which used a modified adaptive genetic algorithm, taking advantage of both roulette and optimum reservation strategies. This solution also has an improved selection operator. Thirdly, taking the percentage of body fat (PBF) as an example of body composition, we conducted experiments to compare performance between our algorithm and other algorithms.

RESULTS

Through our simulations, we demonstrated that the adaptability of the proposed model is 0.9921, the mean relative error is 0.05%, the mean square error is 1.3 and the correlation coefficient is 0.982. When compared with the indexes of other models, our model has the highest adaptability and the smallest error. Additionally, the suggested model, which has a training time of 28.58s and a running time of 2.84s, is faster than some models.

CONCLUSION

The PBF prediction model established by MAGA has high accuracy, stronger generalization ability and higher efficiency, which could provide a new method for human composition prediction.

摘要

背景

人体成分的变化在某种程度上反映了健康状况的变化。人们已经认识到,这些变化比疾病发生得更早。这意味着对身体成分进行合理的预测有助于改善模型使用者的健康状况。为了克服现有人体成分预测模型精度低、适应性差的问题,提高效率,我们提出了一种新的基于改进自适应遗传算法(MAGA)的人体成分预测方法。

方法

首先,由于人体成分模型的参数很多,且这些参数之间存在相关性,因此我们结合改进的 RReliefF 方法和 mRMR 方法设计了一种新的参数选择方法。然后,使用选择的参数建立适合人体成分的模型。其次,为了准确计算模型中参数的权重,我们提出了一种解决方案,该方案利用改进的自适应遗传算法,结合轮盘赌和最优保留策略。该解决方案还具有改进的选择算子。第三,以体脂百分比(PBF)为例进行人体成分实验,比较了我们的算法与其他算法的性能。

结果

通过模拟实验,证明了所提出模型的适应性为 0.9921,平均相对误差为 0.05%,平均平方误差为 1.3,相关系数为 0.982。与其他模型的指标相比,我们的模型具有最高的适应性和最小的误差。此外,所提出的模型训练时间为 28.58s,运行时间为 2.84s,比一些模型更快。

结论

MAGA 建立的 PBF 预测模型具有较高的准确性、较强的泛化能力和较高的效率,可为人体成分预测提供一种新方法。

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