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Quantitative analysis of multiparametric prostate MR images: Differentiation between prostate cancer and normal tissue and correlation with Gleason score - A computer-aided diagnosis development study

机译:多参数前列腺MR图像的定量分析:前列腺癌与正常组织的区别及其与格里森评分的相关性-计算机辅助诊断开发研究

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Purpose: To evaluate the potential utility of a number of parameters obtained at T2-weighted, diffusion-weighted, and dynamic contrast material-enhanced multiparametric magnetic resonance (MR) imaging for computer-aided diagnosis (CAD) of prostate cancer and assessment of cancer aggressiveness. Materials and Methods: In this institutional review board-approved HIPAA-compliant study, multiparametric MR images were acquired with an endorectal coil in 48 patients with prostate cancer (median age, 62.5 years; age range, 44-73 years) who subsequently underwent prostatectomy. A radiologist and a pathologist identified 104 regions of interest (ROIs) (61 cancer ROIs, 43 normal ROIs) based on correlation of histologic and MR findings. The 10th percentile and average apparent diffusion coefficient (ADC) values, T2-weighted signal intensity histogram skewness, and Tofts Ktrans were analyzed, both individually and combined, via linear discriminant analysis, with receiver operating characteristic curve analysis with area under the curve (AUC) as figure of merit, to distinguish cancer foci from normal foci. Spearman rank-order correlation (r) was calculated between cancer foci Gleason score (GS) and image features. Results: AUC (maximum likelihood estimate ± standard error) values in the differentiation of prostate cancer from normal foci of 10th percentile ADC, average ADC, T2-weighted skewness, and K trans were 0.92 ± 0.03, 0.89 ± 0.03, 0.86 ± 0.04, and 0.69 ± 0.04, respectively. The combination of 10th percentile ADC, average ADC, and T2-weighted skewness yielded an AUC value for the same task of 0.95 ± 0.02. GS correlated moderately with 10th percentile ADC (ρ = 20.34, P = .008), average ADC (ρ = 20.30, P = .02), and Ktrans (ρ = 0.38, P = .004). Conclusion: The combination of 10th percentile ADC, average ADC, and T2-weighted skewness with CAD is promising in the differentiation of prostate cancer from normal tissue. ADC image features and Ktrans moderately correlate with GS.
机译:目的:评价在T2加权,扩散加权和动态对比材料增强的多参数磁共振(MR)成像中获得的许多参数对前列腺癌的计算机辅助诊断(CAD)和癌症评估的潜在效用进取心。材料和方法:在这项经过机构审查委员会批准的符合HIPAA的研究中,通过直肠内线圈对48例前列腺癌患者(中位年龄为62.5岁;年龄范围为44-73岁)进行了前列腺切除术,获得了多参数MR图像。 。放射科医生和病理学家根据组织学和MR发现的相关性,确定了104个感兴趣区域(ROI)(61个癌症ROI,43个正常ROI)。分别通过线性判别分析和接收器工作特性曲线分析(曲线下面积为AUC)分别分析和组合了第十个百分位数和平均视在扩散系数(ADC)值,T2加权信号强度直方图偏度和Tofts Ktrans ),以区别癌灶和正常灶。在癌症病灶格里森评分(GS)和图像特征之间计算Spearman等级相关性(r)。结果:从第10个百分位数ADC的正常灶,平均ADC,T2加权偏度和K trans区分前列腺癌的AUC(最大似然估计值)为0.92±0.03、0.89±0.03、0.86±0.04,和0.69±0.04分别。第10个百分位数ADC,平均ADC和T2加权偏斜的组合得出的AUC值为0.95±0.02。 GS与第10个百分位数ADC(ρ= 20.34,P = .008),平均ADC(ρ= 20.30,P = .02)和Ktrans(ρ= 0.38,P = .004)有适度的相关性。结论:第10个百分位数ADC,平均ADC和T2加权偏斜与CAD的结合有望将前列腺癌与正常组织区分开。 ADC图像特征和Ktrans与GS适度相关。

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