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首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Automatic segmentation of invasive breast carcinomas from dynamic contrast-enhanced MRI using time series analysis
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Automatic segmentation of invasive breast carcinomas from dynamic contrast-enhanced MRI using time series analysis

机译:使用时间序列分析从动态对比增强MRI自动分割浸润性乳腺癌

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Purpose To accurately segment invasive ductal carcinomas (IDCs) from dynamic contrast-enhanced MRI (DCE-MRI) using time series analysis based on linear dynamic system (LDS) modeling. Materials and Methods Quantitative segmentation methods based on black-box modeling and pharmacokinetic modeling are highly dependent on imaging pulse sequence, timing of bolus injection, arterial input function, imaging noise, and fitting algorithms. We modeled the underlying dynamics of the tumor by an LDS and used the system parameters to segment the carcinoma on the DCE-MRI. Twenty-four patients with biopsy-proven IDCs were analyzed. The lesions segmented by the algorithm were compared with an expert radiologist's segmentation and the output of a commercial software, CADstream. The results are quantified in terms of the accuracy and sensitivity of detecting the lesion and the amount of overlap, measured in terms of the Dice similarity coefficient (DSC). Results The segmentation algorithm detected the tumor with 90% accuracy and 100% sensitivity when compared with the radiologist's segmentation and 82.1% accuracy and 100% sensitivity when compared with the CADstream output. The overlap of the algorithm output with the radiologist's segmentation and CADstream output, computed in terms of the DSC was 0.77 and 0.72, respectively. The algorithm also shows robust stability to imaging noise. Simulated imaging noise with zero mean and standard deviation equal to 25% of the base signal intensity was added to the DCE-MRI series. The amount of overlap between the tumor maps generated by the LDS-based algorithm from the noisy and original DCE-MRI was DSC = 0.95. Conclusion The time-series analysis based segmentation algorithm provides high accuracy and sensitivity in delineating the regions of enhanced perfusion corresponding to tumor from DCE-MRI.
机译:目的使用基于线性动态系统(LDS)建模的时间序列分析从动态对比增强MRI(DCE-MRI)准确分割浸润性导管癌(IDC)。材料和方法基于黑盒模型和药代动力学模型的定量分割方法高度依赖于成像脉冲序列,大剂量注射的时间,动脉输入功能,成像噪声和拟合算法。我们通过LDS建模了肿瘤的基本动力学,并使用系统参数在DCE-MRI上分割了癌症。分析了24例经活检证实的IDC患者。将通过算法分割的病变与放射线专家的分割以及商用软件CADstream的输出进行比较。根据检测病变的准确性和敏感性以及重叠的数量对结果进行量化,并根据骰子相似性系数(DSC)进行测量。结果与放射科医师的分割相比,分割算法以90%的准确度和100%的灵敏度检测出肿瘤,与CADstream的输出相比,分割算法以82.1%的准确度和100%灵敏度检测到了肿瘤。按照DSC计算,算法输出与放射科医生的分割和CADstream输出的重叠分别为0.77和0.72。该算法还显示出对成像噪声的鲁棒稳定性。零均值和标准差等于基本信号强度的25%的模拟成像噪声已添加到DCE-MRI系列中。由基于噪声和原始DCE-MRI的基于LDS的算法生成的肿瘤图之间的重叠量为DSC = 0.95。结论基于时间序列分析的分割算法从DCE-MRI描绘肿瘤对应的增强灌注区域时具有很高的准确性和敏感性。

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