首页> 外文期刊>European journal of medical research. >Using automated texture features to determine the probability for masking of a tumor on mammography, but not ultrasound
【24h】

Using automated texture features to determine the probability for masking of a tumor on mammography, but not ultrasound

机译:使用自动纹理特征来确定在乳房X射线照相术(而非超声)上掩盖肿瘤的可能性

获取原文
           

摘要

BackgroundTumors in radiologically dense breast were overlooked on mammograms more often than tumors in low-density breasts. A fast reproducible and automated method of assessing percentage mammographic density (PMD) would be desirable to support decisions whether ultrasonography should be provided for women in addition to mammography in diagnostic mammography units. PMD assessment has still not been included in clinical routine work, as there are issues of interobserver variability and the procedure is quite time consuming. This study investigated whether fully automatically generated texture features of mammograms can replace time-consuming semi-automatic PMD assessment to predict a patient’s risk of having an invasive breast tumor that is visible on ultrasound but masked on mammography (mammography failure). MethodsThis observational study included 1334 women with invasive breast cancer treated at a hospital-based diagnostic mammography unit. Ultrasound was available for the entire cohort as part of routine diagnosis. Computer-based threshold PMD assessments (“observed PMD”) were carried out and 363 texture features were obtained from each mammogram. Several variable selection and regression techniques (univariate selection, lasso, boosting, random forest) were applied to predict PMD from the texture features. The predicted PMD values were each used as new predictor for masking in logistic regression models together with clinical predictors. These four logistic regression models with predicted PMD were compared among themselves and with a logistic regression model with observed PMD. The most accurate masking prediction was determined by cross-validation. ResultsAbout 120 of the 363 texture features were selected for predicting PMD. Density predictions with boosting were the best substitute for observed PMD to predict masking. Overall, the corresponding logistic regression model performed better (cross-validated AUC, 0.747) than one without mammographic density (0.734), but less well than the one with the observed PMD (0.753). However, in patients with an assigned mammography failure risk?>10%, covering about half of all masked tumors, the boosting-based model performed at least as accurately as the original PMD model. ConclusionAutomatically generated texture features can replace semi-automatically determined PMD in a prediction model for mammography failure, such that more than 50% of masked tumors could be discovered.
机译:背景乳腺X线照片上放射线密集乳腺的肿瘤比低密度乳腺肿瘤更容易被忽视。需要一种可快速重现且自动化的评估乳腺X射线摄影密度(PMD)的方法,以支持是否在诊断性乳腺X射线摄影单元中,除了乳腺X射线摄影之外,还应为女性提供超声检查的决定。 PMD评估仍未包括在临床常规工作中,因为存在观察者之间的差异性问题,并且该过程非常耗时。这项研究调查了自动生成的乳房X线照片的纹理特征是否可以代替费时的半自动PMD评估,以预测患者罹患浸润性乳腺肿瘤的风险,该风险在超声检查中可见,但在乳腺X线照相术中会被掩盖(乳房X线照相术失败)。方法这项观察性研究纳入了以医院为基础的乳房X线照相术治疗的1334名浸润性乳腺癌妇女。在常规诊断中,整个队列都可以使用超声波。进行了基于计算机的阈值PMD评估(“观察到的PMD”),并且从每个乳房X线照片中获得了363个纹理特征。应用了几种变量选择和回归技术(单变量选择,套索,增强,随机森林)来根据纹理特征预测PMD。预测的PMD值分别用作逻辑回归模型中掩盖的新预测因子以及临床预测因子。将这四个具有预测PMD的逻辑回归模型与具有观测PMD的逻辑回归模型进行了比较。最准确的掩蔽预测是通过交叉验证确定的。结果在363个纹理特征中选择了约120个用于预测PMD。增强的密度预测是观察到的PMD预测掩盖的最佳替代方法。总体而言,相应的逻辑回归模型的性能(交叉验证的AUC为0.747)比没有乳房X线密度的一种更好(0.734),但比观察到的PMD更好(0.753)。然而,在乳腺X线照相术失败风险≥10%且覆盖了所有被掩盖肿瘤的一半的患者中,基于增强的模型的表现至少与原始PMD模型一样准确。结论自动生成的纹理特征可以替代乳房X线照相术失败的预测模型中的半自动确定的PMD,从而可以发现超过50%的被掩盖的肿瘤。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号