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Using quantitative features extracted from T2-weighted MRI to improve breast MRI computer-aided diagnosis (CAD)

机译:使用从T2加权MRI提取的定量特征来改善乳房MRI计算机辅助诊断(CAD)

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摘要

Computer-aided diagnosis (CAD) has been proposed for breast MRI as a tool to standardize evaluation, to automate time-consuming analysis, and to aid the diagnostic decision process by radiologists. T2w MRI findings are diagnostically complementary to T1w DCE-MRI findings in the breast and prior research showed that measuring the T2w intensity of a lesion relative to a tissue of reference improves diagnostic accuracy. The diagnostic value of this information in CAD has not been yet quantified. This study proposes an automatic method of assessing relative T2w lesion intensity without the need to select a reference region. We also evaluate the effect of adding this feature to other T2w and T1w image features in the predictive performance of a breast lesion classifier for differential diagnosis of benign and malignant lesions. An automated feature of relative T2w lesion intensity was developed using a quantitative regression model. The diagnostic performance of the proposed feature in addition to T2w texture was compared to the performance of a conventional breast MRI CAD system based on T1w DCE-MRI features alone. The added contribution of T2w features to more conventional T1w-based features was investigated using classification rules extracted from the lesion classifier. After institutional review board approval that waived informed consent, we identified 627 breast lesions (245 malignant, 382 benign) diagnosed after undergoing breast MRI at our institution between 2007 and 2014. An increase in diagnostic performance in terms of area under the curve (AUC) from the receiver operating characteristic (ROC) analysis was observed with the additional T2w features and the proposed quantitative feature of relative T2w lesion intensity. AUC increased from 0.80 to 0.83 and this difference was statistically significant (adjusted p-value = 0.020).
机译:乳房MRI的计算机辅助诊断(CAD)已被提议作为标准化评估,自动进行耗时的分析并协助放射科医生进行诊断决策的工具。 T2w MRI检查结果与乳腺T1w DCE-MRI检查结果在诊断上是互补的,先前的研究表明,相对于参考组织测量病变的T2w强度可以提高诊断准确性。此信息在CAD中的诊断价值尚未量化。这项研究提出了一种无需选择参考区域即可评估相对T2w病变强度的自动方法。我们还评估了将此特征添加到其他T2w和T1w图像特征中对乳腺病变分类器的预测性能的区别,以对良性和恶性病变进行鉴别诊断。使用定量回归模型开发了相对T2w病变强度的自动特征。除了T2w质感之外,还将所建议特征的诊断性能与仅基于T1w DCE-MRI特征的常规乳腺MRI CAD系统的性能进行了比较。使用从病变分类器提取的分类规则,研究了T2w特征对更常规的基于T1w的特征的贡献。经过机构审查委员会的批准,无需知情同意,我们在2007年至2014年间确定了627例乳房MRI诊断为乳腺癌的病变(245例恶性,382例良性)。曲线下面积(AUC)的诊断性能有所提高从接收器工作特征(ROC)分析中观察到了其他T2w特征和相对T2w病变强度的定量特征。 AUC从0.80增加到0.83,这一差异具有统计学意义(调整后的p值= 0.020)。

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