Journal of Shanghai University >
Modeling and algorithm implementation of dietary nutrition optimization for diabetic patients
Received date: 2016-09-22
Online published: 2018-08-31
A diabetic's nutritional diet program designed according to the patient's condition is a premise for effective control of blood glucose. In view of the demand of individualized nutrition therapy for diabetes patients, a multi-objective optimization model is established to meet the requirements of patients with different genders, heights, weights, ages and blood glucose levels. The model and the algorithm are validated in a specific experiment. The results show that nutrition of designed recipes is balanced, and weights of the ingredients are reasonable so that nutritional needs of the patients can be met. The model and the algorithm are effective and feasible, with improved precision of diabetes nutrition recipe design.
KONG Weijian, WANG Yongfang, TONG Zilei, ZHANG Hongguang . Modeling and algorithm implementation of dietary nutrition optimization for diabetic patients[J]. Journal of Shanghai University, 2018 , 24(4) : 583 -591 . DOI: 10.12066/j.issn.1007-2861.1842
| [1] | Franz M J . Diabetes nutrition therapy: effectiveness, macronutrients, eating patterns and weight management[J]. The American Journal of the Medical Sciences, 2016,351(4):374-379. |
| [2] | Mayer V L, Mc Donough K, Seligman H , et al. Food insecurity, coping strategies and glucose control in low-income patients with diabetes[J]. Public Health Nutrition, 2015,19(6):1103-1111. |
| [3] | Zhang H, Zhao W Y. Lai R D . Effect of nutrition therapy of improved food exchange serving based on glycemic load for diabetic patients in Community[J]. Hainan Medical Journal, 2012,23(1):18-20. |
| [4] | 綦翠华 . 《营养配餐》之食品交换份法的思考[J]. 科技视界, 2014,8(15):14-15. |
| [5] | 张蕾, 王高平 . 共同进化遗传算法在临床营养决策中的应用[J]. 计算机应用, 2007,27(S2):193-194. |
| [6] | Cui L, Wang G P . Clustering problem based on ant colony algorithm and it's application in dietary nutrition decision supporting system[C] // IEEE International Symposium on IT in Medicine and Education. 2008: 397-400. |
| [7] | Pei Z K, Liu Z . Nutritional diet decision using multi-objective difference evolutionary algorithm[C] // IEEE International Conference on Computational Intelligence and Natural Computing. 2009: 77-80. |
| [8] | Wang G P, Sun Y P, Chen Y Y . Constrained multi-objective evolutionary algorithm for application decision-making in nutrition[C] // International Conference on Computer and Communication Technologies in Agriculture Engineering. 2010: 173-176. |
| [9] | 刘宏畅 . 改进遗传算法在营养配餐系统中的应用[D]. 北京: 北京工业大学, 2015. |
| [10] | Guan F F, Liu W, Zhang F Q , et al. Effect of diet therapy on serum trace elements in type 2 diabetes patients[J]. Chinese Journal of Clinical Nutrition, 2005,13(6):364-367. |
| [11] | 中国营养学会. 中国居民膳食营养素参考摄入量 [M]. 北京: 科学出版社, 2014: 23-168. |
| [12] | 杨月欣, 王光亚, 潘兴昌 . 中国食物成分表 [M]. 2版. 北京: 北京大学医学出版社, 2009: 153-430. |
| [13] | Deb K, Pratap A, Agarwal S , et al. A fast and elitist multiobjective genetic algorithm: NSGA-Ⅱ[J] IEEE Transactions on Evolutionary Computation, 2002,6(2):182-197. |
| [14] | Kannan S, Baskar S, Mc Calley J D , et al. Application of NSGA-Ⅱ algorithm to generation expansion planning[J]. IEEE Transactions on Power Systems, 2009,24(1):454-461. |
| [15] | Murugan P, Kannan S, Baskar S , et al. NSGA-Ⅱ algorithm for multi-objective generation expansion planning problem[J]. Electric Power Systems Research, 2009,79(4):622-628. |
| [16] | D'souza R G L, Sekaran K C, Kandasamy A . Improved NSGA-Ⅱ based on a novel ranking scheme[J]. Journal of Computing, 2010,2(2):91-95. |
| [17] | Yusoff Y, Ngadiman M S, Zain A M . Overview of NSGA-Ⅱ for optimizing machining process parameters[J]. Procedia Engineering, 2011,15:3978-3983. |
| [18] | Kaushik A, Vidyarthi D P . An energy-efficient reliable grid scheduling model using NSGA-Ⅱ[J]. Engineering with Computers, 2016,32(3):355-376. |
| [19] | 焦广宇, 蒋卓勤 . 临床营养学 [M]. 2 版. 北京: 人民卫生出版社, 2009: 200-217. |
/
| 〈 |
|
〉 |