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首页> 外文期刊>Academic radiology >Improved lesion detection in MR mammography: three-dimensional segmentation, moving voxel sampling, and normalized maximum intensity-time ratio entropy.
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Improved lesion detection in MR mammography: three-dimensional segmentation, moving voxel sampling, and normalized maximum intensity-time ratio entropy.

机译:改进的MR乳腺摄影术中的病变检测:三维分割,移动体素采样和标准化的最大强度-时间比熵。

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摘要

RATIONALE AND OBJECTIVES: The objective of this work was to develop a quantitative method for improving lesion detection in dynamic contrast-enhanced magnetic resonance mammography (DCEMRM). For this purpose, we segmented and analyzed suspicious regions according to their contrast enhancement dynamics, generated a normalized maximum intensity-time ratio (nMITR) projection, and explored it to extract important features, to improve accuracy and reproducibility of detection. MATERIALS AND METHODS: A novel automated method is introduced to segment and analyze lesions in three dimensions. It consists of four consecutive stages: volume of interest selection, nMITR projection generation using a voxel sampling method based on a moving 3 x 3 mask, three-dimensional lesion segmentation, and feature extraction. The nMITR projection of the detected lesion is used to extract six features: mean, maximum, standard deviation, kurtosis, skewness, and entropy, and their diagnostic significance is studied in detail. High-resolution MR images of 52 breast masses from 46 women are analyzed using the technique developed. RESULTS: Entropy, standard deviation, and the maximum and mean value features were found to have high significance (P < 0.001) and diagnostic accuracy (0.86-0.97). The kurtosis and skewness were not significant. Automated analysis of DCEMRM using nMITR was shown to be feasible. CONCLUSION: The lesion detection method described is efficient and leads to improved, accurate, reproducible diagnoses. It is reliable in terms of observer variability and may allow for a better standardization of clinical evaluations. The findings demonstrate the usefulness of nMITR based features; nMITR-entropy shows the best performance for quantitative diagnosis.
机译:理由和目的:这项工作的目的是开发一种定量方法,以改善动态对比增强磁共振乳腺摄影(DCEMRM)中的病变检测。为此,我们根据对比度增强动态对可疑区域进行了细分和分析,生成了标准化的最大强度-时间比(nMITR)投影,并对其进行了探索以提取重要特征,以提高检测的准确性和可重复性。材料与方法:一种新颖的自动化方法被引入,可以在三个维度上分割和分析病变。它包括四个连续的阶段:感兴趣的体积选择,使用基于移动3 x 3面罩的体素采样方法生成nMITR投影,三维病变分割和特征提取。检测到的病变的nMITR投影用于提取六个特征:平均值,最大值,标准差,峰度,偏度和熵,并详细研究其诊断意义。使用开发的技术分析了来自46位女性的52个乳腺肿块的高分辨率MR图像。结果:熵,标准差以及最大值和平均值具有很高的显着性(P <0.001)和诊断准确性(0.86-0.97)。峰度和偏度不明显。使用nMITR自动分析DCEMRM被证明是可行的。结论:所描述的病变检测方法是有效的,并导致改进,准确,可重复的诊断。就观察者的可变性而言,它是可靠的,并且可以使临床评估更好地标准化。研究结果证明了基于nMITR的功能的实用性。 nMITR熵显示出最佳的定量诊断性能。

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