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一种基于最小二乘支持向量机的新型算法,用于提高细菌生长建模的准确性。

A Novel LSSVM Based Algorithm to Increase Accuracy of Bacterial Growth Modeling.

作者信息

Borujeni Masoud Salehi, Ghaderi-Zefrehei Mostafa, Ghanegolmohammadi Farzan, Ansari-Mahyari Saeid

机构信息

Electronics Department, Electrical and Computer Engineering Faculty, Semnan University, Semnan, Iran.

Department of Animal Science, Faculty of Agriculture, Yasouj University, Yasouj, Iran.

出版信息

Iran J Biotechnol. 2018 May 15;16(2):e1542. doi: 10.21859/ijb.1542. eCollection 2018 May.

Abstract

BACKGROUND

The recent progress and achievements in the advanced, accurate, and rigorously evaluated algorithms has revolutionized different aspects of the predictive microbiology including bacterial growth.

OBJECTIVES

In this study, attempts were made to develop a more accurate hybrid algorithm for predicting the bacterial growth curve which can also be applicable in predictive microbiology studies.

MATERIALS AND METHODS

Sigmoid functions, including Logistic and Gompertz, as well as least square support vector machine (LSSVM) based algorithms were employed to model the bacterial growth of the two important strains comprising and . Even though cross-validation is generally used for tuning the parameters in LSSVM, in this study, parameters tuning (,'' and '') of the LSSVM were optimized using non-dominated sorting genetic algorithm-II (NSGA-II), named as NSGA-II-LSSVM. Then, the results of each approach were compared with the mean absolute error (MAE) as well as the mean absolute percentage error (MAPE).

RESULTS

Applying LSSVM, it was resulted in a precise bacterial growth modeling compared to the sigmoid functions. Moreover, our results have indicated that NSGA-II-LSSVM was more accurate in terms of prediction than LSSVM method.

CONCLUSION

Application of the NSGA-II-LSSVM hybrid algorithm to predict precise values of '' and '' parameters in the bacterial growth modeling resulted in a better growth prediction. In fact, the power of NSGA-II for estimating optimal coefficients led to a better disclosure of the predictive potential of the LSSVM.

摘要

背景

先进、准确且经过严格评估的算法的最新进展和成就已经彻底改变了包括细菌生长在内的预测微生物学的各个方面。

目的

在本研究中,尝试开发一种更准确的混合算法来预测细菌生长曲线,该算法也可应用于预测微生物学研究。

材料与方法

采用包括逻辑斯蒂和冈珀茨在内的Sigmoid函数以及基于最小二乘支持向量机(LSSVM)的算法,对包含 和 的两种重要菌株的细菌生长进行建模。尽管交叉验证通常用于调整LSSVM中的参数,但在本研究中,使用非支配排序遗传算法-II(NSGA-II)对LSSVM的参数调整(“ ”、“ ”和“ ”)进行了优化,命名为NSGA-II-LSSVM。然后,将每种方法的结果与平均绝对误差(MAE)以及平均绝对百分比误差(MAPE)进行比较。

结果

与Sigmoid函数相比,应用LSSVM可实现精确的细菌生长建模。此外,我们的结果表明,在预测方面,NSGA-II-LSSVM比LSSVM方法更准确。

结论

应用NSGA-II-LSSVM混合算法预测细菌生长建模中“ ”和“ ”参数的精确值,可实现更好的生长预测。事实上,NSGA-II估计最优系数的能力导致对LSSVM预测潜力的更好揭示。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0be9/6371636/790f16e0caee/ijb-2018-02-e1542-g001.jpg

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