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Prediction of Neural Tube Defect Using Support Vector Machine 被引量:1

Prediction of Neural Tube Defect Using Support Vector Machine
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摘要 Objective To predict neural tube birth defect (NTD) using support vector machine (SVM). Method The dataset in the pilot area was divided into non overlaid training set and testing set. SVM was trained using the training set and the trained SVM was then used to predict the classification of NTD. Result NTD rate was predicted at village level in the pilot area. The accuracy of the prediction was 71.50% for the training dataset and 68.57% for the test dataset respectively. Conclusion Results from this study have shown that SVM is applicable to the prediction of NTD. Objective To predict neural tube birth defect (NTD) using support vector machine (SVM). Method The dataset in the pilot area was divided into non overlaid training set and testing set. SVM was trained using the training set and the trained SVM was then used to predict the classification of NTD. Result NTD rate was predicted at village level in the pilot area. The accuracy of the prediction was 71.50% for the training dataset and 68.57% for the test dataset respectively. Conclusion Results from this study have shown that SVM is applicable to the prediction of NTD.
出处 《Biomedical and Environmental Sciences》 SCIE CAS CSCD 2010年第3期167-172,共6页 生物医学与环境科学(英文版)
基金 supported by CAS(KZCX2-YW-308) the MOST(2007DFC20180 2007AA 12Z233) NSF(40471111 70571076).
关键词 NTD PREDICTION Small sample SVM NTD Prediction Small sample SVM
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