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基于随机森林的亚健康状态预测与特征选择方法研究 被引量:8

RESEARCH ON RANDOM FOREST BASED SUB-HEALTH STATE PREDICTION AND FEATURE SELECTION METHOD
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摘要 亚健康状态是一种介于健康和疾病之间的低质量状态。研究的目的是要确定哪些因素或因素组合能够针对亚健康状态进行预测。临床流行病学调查,获取572个实际案例(其中,523宗均为亚健康状态,49宗为健康),在报告中包括了50种相关症状。应用随机森林分类技术进行基于临床数据分析的亚健康状态预测,正确分类率为91.28%。由50倍随机森林方法所得到的特征选择(症状),即疲劳、心悸、四肢肌无力、疲劳程度和悲观态度是重要的判别变量。相关实验结果显示了提出方法的可行性与高效性。 Sub-heahh state is a low-quality status between healthiness and disease. The aim of the study is to determine which factors and/ or combination of factors can predict sub-health state. In the paper, the authors carries out a clinical epidemiology survey and obtains 572 ca- ses (among them 523 are in sub-healthy state and the other 49 are in healthy state). There are 50 relevant symptoms included in report. They apply random forest categorization technique to predict the sub-health state based on clinical data analysis. They reach 91.28% for the correct classification rates. The feature selections by 50-time random forest method (symptoms) are as follows: Fatigue, Palpitation, Myasthenia of limbs, Degree of fatigue, and Pessimism are important discriminative variables. Relevant experiments prove the practicability and efficiency of the proposed method.
作者 王小强
出处 《计算机应用与软件》 CSCD 北大核心 2014年第1期296-298,307,共4页 Computer Applications and Software
关键词 亚健康状态 随机森林特征选择 状态预测 数学模型 Sub-health state Random forest Feature selection State prediction Mathematical model
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  • 1刘微,罗林开,王华珍.基于随机森林的基金重仓股预测[J].福州大学学报(自然科学版),2008,36(S1):134-139. 被引量:9
  • 2贾富仓,李华.基于随机森林的多谱磁共振图像分割[J].计算机工程,2005,31(10):159-161. 被引量:15
  • 3林成德,彭国兰.随机森林在企业信用评估指标体系确定中的应用[J].厦门大学学报(自然科学版),2007,46(2):199-203. 被引量:38
  • 4王涛,李舟军,胡小华,颜跃进,陈火旺.一种高效的数据流挖掘增量模糊决策树分类算法[J].计算机学报,2007,30(8):1244-1250. 被引量:18
  • 5Masso M, Vaisman. II: Accurate prediction of stability changes in protein mutants by combining machine learning with structure based computational mutagenesis [ J ]. Bioinformatics, 2008,24 ( 18 ) : 2002 -2009.
  • 6Capriotti E, Fariselli P, Casadio R. A neural-network-based method for predicting protein stability changes upon single point mutations [ J ]. Bioinformatics, 2004,20 ( suppl_1 ) : i63-68.
  • 7Huang L-T, Saraboji K, Ho S-Y, et al. Prediction of protein mutant stability using classification and regression tool [ J ]. Biophysical Chemistry,2007,125 ( 2-3 ) :462-470.
  • 8Parthiban V, Gromiha M M, Schomburg D. CUPSAT: prediction of protein stability upon point mutations [ J ]. Nucleic Acids Res ,2006,34 : W239-W242.
  • 9Dehouck Y, Grosfils A, Folch B, et al. Fast and accurate predictions of protein stability changes upon mutations using statistical potentials and neural networks:PoPMuSiC- 2.0[ J]. Bioinformatics ,2009,25(19) :2537-2543.
  • 10Cheng J L, Randall A, Baldi P. Prediction of protein stabil- ity changes for single-site mutations using support vector machines [ J ]. Proteins,2006,62 (4) : 1125-1132.

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