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Prediction of Near-term Breast Cancer Risk Based on Bilateral Mammographic Feature Asymmetry

机译:基于双边乳腺X线摄影特征不对称性的近期乳腺癌风险预测

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Rationale and Objectives: The objective of this study is to investigate the feasibility of predicting near-term risk of breast cancer development in women after a negative mammography screening examination. It is based on a statistical learning model that combines computerized image features related to bilateral mammographic tissue asymmetry and other clinical factors. Materials and Methods: A database of negative digital mammograms acquired from 994 women was retrospectively collected. In thenext sequential screening examination (12 to 36months later), 283 women were diagnosed positive for cancer, 349 were recalled for additional diagnostic workups and later proved to be benign, and 362 remain negative (not recalled). From an initial pool of 183 features, we applied a Sequential Forward Floating Selection feature selection method to search for effective features. Using 10 selected features, we developed and trained a support vector machine classification model to compute a cancer risk or probability score for each case. The area under the receiver operating characteristic curve and odds ratios (ORs) were used as the two performance assessment indices. Results: The area under the receiver operating characteristic curve=0.725±0.018 was obtained for positive and negative/benign case classification. The ORs showed an increasing risk trend with increasing model-generated risk scores (from 1.00 to 12.34, between positive and negative/benign case groups). Regression analysis of ORs also indicated a significant increase trend in slope (P=006). Conclusions: This study demonstrates that the risk scores computed by a new support vector machine model involving bilateral mammographic feature asymmetry have potential to assist the prediction of near-term risk of women for developing breast cancer.
机译:原理和目的:这项研究的目的是调查在乳房X光检查阴性后预测妇女近期发生乳腺癌风险的可行性。它基于统计学习模型,该模型结合了与双侧乳房X线照片组织不对称和其他临床因素有关的计算机化图像特征。材料和方法:回顾性收集了从994名妇女那里获得的阴性数字乳房X线照片的数据库。在随后的连续筛查检查中(12到36个月后),有283名妇女被诊断出癌症阳性,召回349名妇女进行进一步的诊断检查,后来被证实是良性的,还有362名阴性(未召回)。从最初的183个特征池中,我们应用了顺序正向浮动选择特征选择方法来搜索有效特征。我们使用10种选定功能,开发并训练了支持向量机分类模型,以计算每种情况下的癌症风险或概率评分。接收机工作特性曲线下的面积和比值比(OR)被用作两个性能评估指标。结果:对于阳性和阴性/良性病例分类,获得了接收器工作特性曲线下的面积= 0.725±0.018。 ORs显示出随着模型生成的风险评分增加而增加的风险趋势(阳性和阴性/良性病例组之间从1.00到12.34)。 ORs的回归分析也表明斜率有明显增加趋势(P = 006)。结论:这项研究表明,由新的支持向量机模型计算的风险评分涉及双边乳腺X线摄影特征不对称性,有可能有助于预测妇女患乳腺癌的近期风险。

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