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Applying machine learning approaches to improving the accuracy of breast-tumour diagnosis via fine needle aspiration
作者姓名:YUAN Qian-fei  CAI Cong-zhong  XIAO Han-guang  LIU Xing-hua
作者单位:Department of
基金项目:Funded by Joint Research Project Between Chongqing University and National University of Singapore (No. ARF151-000-014-112); the Basic Research & Applied Basic Research Program of Chongqing University (No.71341103); Natural Science Foundation of Chongqing S & T Committee (No. CSTC,2006BB5240)
摘    要:Diagnosis and treatment of breast cancer have been improved during the last decade; however, breast cancer is still a leading cause of death among women in the whole world. Early detection and accurate diagnosis of this disease has been demonstrated an approach to long survival of the patients. As an attempt to develop a reliable diagnosing method for breast cancer, we integrated support vector machine (SVM), k-nearest neighbor and probabilistic neural network into a complex machine learning approach to detect malignant breast tumour through a set of indicators consisting of age and ten cellular features of fine-needle aspiration of breast which were ranked according to signal-to-noise ratio to identify determinants distinguishing benign breast tumours from malignant ones. The method turned out to significantly improve the diagnosis, with a sensitivity of 94.04%, a specificity of 97.37%, and an overall accuracy up to 96.24% when SVM was adopted with the sigmoid kernel function under 5-fold cross validation. The results suggest that SVM is a promising methodology to be further developed into a practical adjunct implement to help discerning benign and malignant breast tumours and thus reduce the incidence of misdiagnosis.

关 键 词:乳腺肿瘤  诊断精度  机器学习法  细针抽吸活检  特征分级滤波
文章编号:1671-8224(2007)01-0001-07
收稿时间:2006-07-10
修稿时间:2006-10-21

Applying machine learning approaches to improving the accuracy of breast-tumour diagnosis via fine needle aspiration
YUAN Qian-fei,CAI Cong-zhong,XIAO Han-guang,LIU Xing-hua.Applying machine learning approaches to improving the accuracy of breast-tumour diagnosis via fine needle aspiration[J].Journal of Chongqing University,2007,6(1):1-7.
Authors:YUAN Qian-fei  CAI Cong-zhong  XIAO Han-guang and LIU Xing-hua
Institution:Department of Applied Physics, Chongqing University, Chongqing 400044, P.R. China;Department of Pharmacy, National University of Singapore, Singapore 117543, Singapore;Department of Applied Physics, Chongqing University, Chongqing 400044, P.R. China;Department of Pharmacy, National University of Singapore, Singapore 117543, Singapore;Department of Applied Physics, Chongqing University, Chongqing 400044, P.R. China;Department of Pharmacy, National University of Singapore, Singapore 117543, Singapore;Department of Applied Physics, Chongqing University, Chongqing 400044, P.R. China;Department of Pharmacy, National University of Singapore, Singapore 117543, Singapore
Abstract:Diagnosis and treatment of breast cancer have been improved during the last decade; however, breast cancer is still a leading cause of death among women in the whole world. Early detection and accurate diagnosis of this disease has been demonstrated an approach to long survival of the patients. As an attempt to develop a reliable diagnosing method for breast cancer, we integrated support vector machine (SVM), k-nearest neighbor and probabilistic neural network into a complex machine learning approach to detect malignant breast tumour through a set of indicators consisting of age and ten cellular features of fine-needle aspiration of breast which were ranked according to signal-to-noise ratio to identify determinants distinguishing benign breast tumours from malignant ones. The method turned out to significantly improve the diagnosis, with a sensitivity of 94.04%, a specificity of 97.37%, and an overall accuracy up to 96.24% when SVM was adopted with the sigmoid kernel function under 5-fold cross validation. The results suggest that SVM is a promising methodology to be further developed into a practical adjunct implement to help discerning benign and malignant breast tumours and thus reduce the incidence of misdiagnosis.
Keywords:breast cancer  diagnosis  machine learning approach  fine needle aspirate  feature ranking/filtering
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