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Quantitative nuclear histomorphometry predicts oncotype DX risk categories for early stage ER+ breast cancer

机译:定量核组织形态计量学可预测早期ER +乳腺癌的癌型DX风险类别

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Gene-expression companion diagnostic tests, such as the Oncotype DX test, assess the risk of early stage Estrogen receptor (ER) positive (+) breast cancers, and guide clinicians in the decision of whether or not to use chemotherapy. However, these tests are typically expensive, time consuming, and tissue-destructive. In this paper, we evaluate the ability of computer-extracted nuclear morphology features from routine hematoxylin and eosin (H&E) stained images of 178 early stage ER+ breast cancer patients to predict corresponding risk categories derived using the Oncotype DX test. A total of 216 features corresponding to the nuclear shape and architecture categories from each of the pathologic images were extracted and four feature selection schemes: Ranksum, Principal Component Analysis with Variable Importance on Projection (PCA-VIP), Maximum-Relevance, Minimum Redundancy Mutual Information Difference (MRMR MID), and Maximum-Relevance, Minimum Redundancy - Mutual Information Quotient (MRMR MIQ), were employed to identify the most discriminating features. These features were employed to train 4 machine learning classifiers: Random Forest, Neural Network, Support Vector Machine, and Linear Discriminant Analysis, via 3-fold cross validation. The four sets of risk categories, and the top Area Under the receiver operating characteristic Curve (AUC) machine classifier performances were: 1) Low ODx and Low mBR grade vs. High ODx and High mBR grade (Low-Low vs. High-High) (AUC?=?0.83), 2) Low ODx vs. High ODx (AUC?=?0.72), 3) Low ODx vs. Intermediate and High ODx (AUC?=?0.58), and 4) Low and Intermediate ODx vs. High ODx (AUC?=?0.65). Trained models were tested independent validation set of 53 cases which comprised of Low and High ODx risk, and demonstrated per-patient accuracies ranging from 75 to 86%. Our results suggest that computerized image analysis of digitized H&E pathology images of early stage ER+ breast cancer might be able predict the corresponding Oncotype DX risk categories.
机译:基因表达辅助诊断测试(例如Oncotype DX测试)可评估早期雌激素受体(ER)阳性(+)乳腺癌的风险,并指导临床医生决定是否使用化学疗法。然而,这些测试通常是昂贵的,费时的并且具有组织破坏性。在本文中,我们评估了178例早期ER +乳腺癌患者的常规苏木精和曙红(H&E)染色图像的计算机提取核形态学特征的能力,以预测使用Oncotype DX测试得出的相应风险类别。从每个病理图像中总共提取了216个与核形状和结构类别相对应的特征,并选择了四个特征选择方案:Ranksum,具有投影重要性的主成分分析(PCA-VIP),最大相关性,最小冗余互斥信息差异(MRMR MID)和最大相关性,最小冗余-互信息商(MRMR MIQ)被用来识别最具区别性的特征。这些功能通过3倍交叉验证,用于训练4种机器学习分类器:随机森林,神经网络,支持向量机和线性判别分析。四组风险类别以及接收器工作特征曲线(AUC)机器分类器的最高性能为:1)ODx低和mBR等级低,而ODx高和mBR等级高(低-低vs.高-高)(AUC?=?0.83),2)低ODx与高ODx(AUC?=?0.72),3)低ODx与中,高ODx(AUC?=?0.58)和4)低和中ODx相对于高ODx(AUC≥0.65)。对训练有素的模型进行了独立检验,共测试了53例ODx低风险和高ODx风险,并证明了每位患者的准确率从75%到86%不等。我们的结果表明,早期ER +乳腺癌的数字化H&E病理图像的计算机图像分析可能能够预测相应的Oncotype DX风险类别。

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