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首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Prostate cancer detection with multi-parametric MRI: logistic regression analysis of quantitative T2, diffusion-weighted imaging, and dynamic contrast-enhanced MRI.
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Prostate cancer detection with multi-parametric MRI: logistic regression analysis of quantitative T2, diffusion-weighted imaging, and dynamic contrast-enhanced MRI.

机译:多参数MRI检测前列腺癌:定量T2,扩散加权成像和动态对比增强MRI的逻辑回归分析。

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PURPOSE: To develop a multi-parametric model suitable for prospectively identifying prostate cancer in peripheral zone (PZ) using magnetic resonance imaging (MRI). MATERIALS AND METHODS: Twenty-five radical prostatectomy patients (median age, 63 years; range, 44-72 years) had T2-weighted, diffusion-weighted imaging (DWI), T2-mapping, and dynamic contrast-enhanced (DCE) MRI at 1.5 Tesla (T) with endorectal coil to yield parameters apparent diffusion coefficient (ADC), T2, volume transfer constant (K(trans)) and extravascular extracellular volume fraction (v(e)). Whole-mount histology was generated from surgical specimens and PZ tumors delineated. Thirty-eight tumor outlines, one per tumor, and pathologically normal PZ regions were transferred to MR images. Receiver operating characteristic (ROC) curves were generated using all identified normal and tumor voxels. Step-wise logistic-regression modeling was performed, testing changes in deviance for significance. Areas under the ROC curves (A(z)) were used to evaluate and compare performance. RESULTS: The best-performing single-parameter was ADC (mean A(z) [95% confidence interval]: A(z,ADC): 0.689 [0.675, 0.702]; A(z,T2): 0.673 [0.659, 0.687]; A(z,Ktrans): 0.592 [0.578, 0.606]; A(z,ve): 0.543 [0.528, 0.557]). The optimal multi-parametric model, LR-3p, consisted of combining ADC, T2 and K(trans). Mean A(z,LR-3p) was 0.706 [0.692, 0.719], which was significantly higher than A(z,T2), A(z,Ktrans), and A(z,ve) (P < 0.002). A(z,LR-3p) tended to be greater than A(z,ADC), however, this result was not statistically significant (P = 0.090). CONCLUSION: Using logistic regression, an objective model capable of mapping PZ tumor with reasonable performance can be constructed.
机译:目的:建立一个多参数模型,适用于使用磁共振成像(MRI)前瞻性识别外周区(PZ)的前列腺癌。材料与方法:25例前列腺癌根治术患者(中位年龄63岁;范围44-72岁)接受了T2加权,弥散加权成像(DWI),T2映射和动态对比增强(DCE)MRI在1.5特斯拉(T)时使用直肠内线圈产生参数表观扩散系数(ADC),T2,体积转移常数(K(trans))和血管外细胞体积分数(v(e))。从手术标本和描绘的PZ肿瘤产生完整组织学。 38个肿瘤轮廓(每个肿瘤一个)和病理上正常的PZ区域被转移到MR图像中。使用所有确定的正常体素和肿瘤体素生成受体工作特征(ROC)曲线。进行了逐步逻辑回归建模,测试了差异的显着性。 ROC曲线下的面积(A(z))用于评估和比较性能。结果:表现最佳的单参数是ADC(平均A(z)[95%置信区间]:A(z,ADC):0.689 [0.675,0.702]; A(z,T2):0.673 [0.659,0.687 ]; A(z,Ktrans):0.592 [0.578,0.606]; A(z,ve):0.543 [0.528,0.557])。最佳多参数模型LR-3p由ADC,T2和K(trans)组合而成。平均A(z,LR-3p)为0.706 [0.692,0.719],显着高于A(z,T2),A(z,Ktrans)和A(z,ve)(P <0.002)。 A(z,LR-3p)倾向于大于A(z,ADC),但是,此结果在统计学上不显着(P = 0.090)。结论:采用logistic回归分析,可以构建能够绘制具有合理性能的PZ肿瘤的客观模型。

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