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使用通用纹理特征对乳腺 X 光图像进行特征描述。

Characterizing mammographic images by using generic texture features.

机构信息

University Breast Center for Franconia, Erlangen-Nuremberg Comprehensive Cancer Center, Erlangen University Hospital, Department of Gynecology and Obstetrics, Universitaetsstrasse 21-23, 91054 Erlangen, Germany.

出版信息

Breast Cancer Res. 2012 Apr 10;14(2):R59. doi: 10.1186/bcr3163.

Abstract

INTRODUCTION

Although mammographic density is an established risk factor for breast cancer, its use is limited in clinical practice because of a lack of automated and standardized measurement methods. The aims of this study were to evaluate a variety of automated texture features in mammograms as risk factors for breast cancer and to compare them with the percentage mammographic density (PMD) by using a case-control study design.

METHODS

A case-control study including 864 cases and 418 controls was analyzed automatically. Four hundred seventy features were explored as possible risk factors for breast cancer. These included statistical features, moment-based features, spectral-energy features, and form-based features. An elaborate variable selection process using logistic regression analyses was performed to identify those features that were associated with case-control status. In addition, PMD was assessed and included in the regression model.

RESULTS

Of the 470 image-analysis features explored, 46 remained in the final logistic regression model. An area under the curve of 0.79, with an odds ratio per standard deviation change of 2.88 (95% CI, 2.28 to 3.65), was obtained with validation data. Adding the PMD did not improve the final model.

CONCLUSIONS

Using texture features to predict the risk of breast cancer appears feasible. PMD did not show any additional value in this study. With regard to the features assessed, most of the analysis tools appeared to reflect mammographic density, although some features did not correlate with PMD. It remains to be investigated in larger case-control studies whether these features can contribute to increased prediction accuracy.

摘要

简介

尽管乳腺密度是乳腺癌的一个既定风险因素,但由于缺乏自动化和标准化的测量方法,其在临床实践中的应用受到限制。本研究旨在评估乳腺 X 线摄影中各种自动纹理特征作为乳腺癌风险因素,并通过病例对照研究设计将其与百分比乳腺密度(PMD)进行比较。

方法

对包括 864 例病例和 418 例对照的病例对照研究进行了自动分析。共探讨了 470 种特征作为乳腺癌的可能危险因素。这些特征包括统计特征、基于矩的特征、谱能量特征和基于形状的特征。使用逻辑回归分析进行了详细的变量选择过程,以确定与病例对照状态相关的特征。此外,还评估了 PMD 并将其纳入回归模型。

结果

在探索的 470 个图像分析特征中,有 46 个特征保留在最终的逻辑回归模型中。使用验证数据获得了 0.79 的曲线下面积,每个标准差变化的优势比为 2.88(95%置信区间,2.28 至 3.65)。添加 PMD 并没有改善最终模型。

结论

使用纹理特征来预测乳腺癌的风险似乎是可行的。在本研究中,PMD 没有显示出任何额外的价值。就评估的特征而言,大多数分析工具似乎反映了乳腺密度,尽管有些特征与 PMD 不相关。在更大的病例对照研究中,仍需研究这些特征是否可以提高预测准确性。

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