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通过对磁共振图像进行分形分析实现前列腺癌的计算机化特征描述。

Computerized characterization of prostate cancer by fractal analysis in MR images.

作者信息

Lv Dongjiao, Guo Xuemei, Wang Xiaoying, Zhang Jue, Fang Jing

机构信息

Department of Biomedical Engineering, Peking University, Beijing, China, People's Republic of China.

出版信息

J Magn Reson Imaging. 2009 Jul;30(1):161-8. doi: 10.1002/jmri.21819.

Abstract

PURPOSE

To explore the potential of computerized characterization of prostate MR images by extracting the fractal features of texture and intensity distributions as indices in the differential diagnosis of prostate cancer.

MATERIALS AND METHODS

MR T2-weighted images (T2WI) of 55 patients with pathologic results detected by ultrasound guided biopsy were collected and then divided in two groups, 27 with prostate cancer (PCa) and 28 with no histological abnormality. Texture fractal dimension (TFD) and histogram fractal dimension (HFD) were calculated to analyze complexity features of regions of Interest (ROIs) selected from the peripheral zone. Two-sample t-tests were performed to evaluate group differences for both parameters. Receiver operating characteristic (ROC) analysis was used to estimate the performance of TFD and HFD for discriminating PCa.

RESULTS

Significant differences were found in both TFD and HFD between the two patient groups. The areas under the ROC curves of TFD and HFD were 0.691 and 0.966, respectively, in distinguishing prostatic carcinoma from normal peripheral zone. As characterized by the fractal indices, cancerous prostatic tissue exhibited smoother texture and lower variation in intensity distribution than normal prostatic tissue.

CONCLUSION

The study suggests that TFD and HFD depict the changes in texture and intensity distribution associated with prostate cancer on T2WI. Both TFD and HFD provide promising quantitative indices for cancer identification. HFD performs better than TFD offering a more robust MR-based indicator in the diagnosis of prostatic carcinoma.

摘要

目的

通过提取纹理和强度分布的分形特征作为指标,探索前列腺磁共振图像计算机化特征在前列腺癌鉴别诊断中的潜力。

材料与方法

收集55例经超声引导活检有病理结果患者的磁共振T2加权图像(T2WI),然后分为两组,27例患有前列腺癌(PCa),28例无组织学异常。计算纹理分形维数(TFD)和直方图分形维数(HFD),以分析从外周区选取的感兴趣区域(ROI)的复杂性特征。对这两个参数进行两样本t检验以评估组间差异。采用受试者操作特征(ROC)分析来评估TFD和HFD鉴别PCa的性能。

结果

两组患者的TFD和HFD均存在显著差异。在区分前列腺癌与正常外周区时,TFD和HFD的ROC曲线下面积分别为0.691和0.966。以分形指数为特征,癌性前列腺组织比正常前列腺组织表现出更平滑的纹理和更低的强度分布变化。

结论

该研究表明TFD和HFD描绘了T2WI上与前列腺癌相关的纹理和强度分布变化。TFD和HFD均为癌症识别提供了有前景的定量指标。HFD比TFD表现更好,在前列腺癌诊断中提供了更可靠的基于磁共振的指标。

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