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Parameter Optimization of Parenchymal Texture Analysis for Prediction of False-Positive Recalls from Screening Mammography

机译:乳腺X线摄影预测假阳性召回的实质纹理分析参数优化

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This work details a methodology to obtain optimal parameter values for a locally-adaptive texture analysis algorithm that extracts mammographic texture features representative of breast parenchymal complexity for predicting false-positive (FP) recalls from breast cancer screening with digital mammography. The algorithm has two components: (1) adaptive selection of localized regions of interest (ROIs) and (2) Haralick texture feature extraction via Gray-Level Co-Occurrence Matrices (GLCM). The following parameters were systematically varied: mammographic views used, upper limit of the ROI window size used for adaptive ROI selection, GLCM distance offsets, and gray levels (binning) used for feature extraction. Each iteration per parameter set had logistic regression with stepwise feature selection performed on a clinical screening cohort of 474 non-recalled women and 68 FP recalled women, FP recall prediction was evaluated using area under the curve (AUC) of the receiver operating characteristic (ROC) and associations between the extracted features and FP recall were assessed via odds ratios (OR). A default instance of mediolateral (MLO) view, upper ROI size limit of 143.36 mm (2048 pixels~2), GLCM distance offset combination range of 0.07 to 0.84 mm (1 to 12 pixels) and 16 GLCM gray levels was set. The highest ROC performance value of AUC=0.77 [95% confidence intervals: 0.71-0.83] was obtained at three specific instances: the default instance, upper ROI window equal to 17.92 mm (256 pixels~2), and gray levels set to 128. The texture feature of sum average was chosen as a statistically significant (p<0.05) predictor and associated with higher odds of FP recall for 12 out of 14 total instances.
机译:这项工作详细介绍了一种方法,该方法可为局部适应性纹理分析算法获取最佳参数值,该算法可提取代表乳房实质复杂性的乳房X线照片纹理特征,以预测使用数字乳腺X线摄影术筛查的假阳性(FP)召回率。该算法包括两个部分:(1)自适应选择感兴趣的局部区域(ROI);(2)通过灰度共生矩阵(GLCM)提取Haralick纹理特征。以下参数被系统地改变:使用的乳腺摄影视图,用于自适应ROI选择的ROI窗口大小的上限,GLCM距离偏移和用于特征提取的灰度级(合并)。每个参数集的每次迭代均具有逻辑回归,并在474名非召回女性和68名FP召回女性的临床筛查队列中进行了逐步特征选择,FP召回预测是使用受试者工作特征(ROC)的曲线下面积(AUC)进行评估的),并通过比值比(OR)评估提取的特征与FP回忆之间的关联。设置了默认的中外侧(MLO)实例,ROI大小上限为143.36毫米(2048像素〜2),GLCM距离偏移组合范围为0.07至0.84毫米(1到12像素)和16个GLCM灰度级。在以下三个特定情况下获得了最高的ROC性能值AUC = 0.77 [95%置信区间:0.71-0.83]:默认情况,上ROI窗口等于17.92毫米(256像素〜2)以及灰度级设置为128选择总和平均的纹理特征作为统计上显着的(p <0.05)预测因子,并在14个实例中有12个与FP召回率更高。

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