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Prediction of Breast Cancer Risk Using a Machine Learning Approach Embedded with a Locality Preserving Projection Algorithm

机译:使用嵌入了位置保留投影算法的机器学习方法预测乳腺癌风险

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摘要

In order to automatically identify a set of effective mammographic image features and build an optimal breast cancer risk stratification model, this study aims to investigate advantages of applying a machine learning approach embedded with a locally preserving projection (LPP) based feature combination and regeneration algorithm to predict short-term breast cancer risk. A dataset involving negative mammograms acquired from 500 women was assembled. This dataset was divided into two age-matched classes of 250 high risk cases in which cancer was detected in the next subsequent mammography screening and 250 low risk cases, which remained negative. First, a computer-aided image processing scheme was applied to segment fibro-glandular tissue depicted on mammograms and initially compute 44 features related to the bilateral asymmetry of mammographic tissue density distribution between left and right breasts. Next, a multi-feature fusion based machine learning classifier was built to predict the risk of cancer detection in the next mammography screening. A leave-one-case-out (LOCO) cross-validation method was applied to train and test the machine learning classifier embedded with a LLP algorithm, which generated a new operational vector with 4 features using a maximal variance approach in each LOCO process. Results showed a 9.7% increase in risk prediction accuracy when using this LPP-embedded machine learning approach. An increased trend of adjusted odds ratios was also detected in which odds ratios increased from 1.0 to 11.2. This study demonstrated that applying LPP algorithm effectively reduced feature dimensionality, and yielded higher and potentially more robust performance in predicting short-term breast cancer risk.
机译:为了自动识别一组有效的乳腺X射线摄影图像特征并建立最佳的乳腺癌风险分层模型,本研究旨在研究应用嵌入了基于局部保留投影(LPP)的特征组合和再生算法的机器学习方法的优势。预测短期乳腺癌风险。收集了涉及从500名妇女那里获得的阴性乳房X线照片的数据集。该数据集分为两个年龄匹配的类别,分别是250例高危病例和250例低危病例,其中250例在随后的X线钼靶筛查中发现了癌症。首先,将计算机辅助图像处理方案应用于乳房X线照片上描绘的纤维腺组织的分割,并最初计算44个与左右乳房之间的乳房X线照片组织密度分布的双侧不对称有关的特征。接下来,建立了一个基于多特征融合的机器学习分类器,以预测在下一次乳房X线照片筛查中发现癌症的风险。一种留一事例(LOCO)交叉验证方法用于训练和测试嵌入了LLP算法的机器学习分类器,该分类器在每个LOCO过程中使用最大方差方法生成了具有4个特征的新运算向量。结果表明,使用此LPP嵌入式机器学习方法时,风险预测的准确性提高了9.7%。还发现了调整后的优势比增加的趋势,其中优势比从1.0增加到11.2。这项研究表明,应用LPP算法可有效降低特征维数,并在预测短期乳腺癌风险方面产生更高甚至可能更强大的性能。

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