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上皮、基质和管腔空间的变化与 Gleason 模式的相关性更强,并且比细胞计数指标更能有力地预测前列腺 ADC 的变化。

Changes in Epithelium, Stroma, and Lumen Space Correlate More Strongly with Gleason Pattern and Are Stronger Predictors of Prostate ADC Changes than Cellularity Metrics.

机构信息

From the Discipline of Medical Radiation Sciences, Faculty of Health Sciences, University of Sydney, Level 2, 94 Mallett St, Camperdown, NSW, Australia 2050 (A.C., M.M., R.B.); Department of Clinical Pathology and Diagnostic Oncology (G.W.) and Department of Urology (P.S.), Royal Prince Alfred Hospital, Sydney, NSW, Australia; and Douglas Hanly Moir Pathology, Sydney, NSW, Australia (E.M.).

出版信息

Radiology. 2015 Dec;277(3):751-62. doi: 10.1148/radiol.2015142414. Epub 2015 Jun 23.

Abstract

PURPOSE

To investigate the hypothesis that the clinically observed decrease in apparent diffusion coefficient (ADC) at diffusion-weighted magnetic resonance imaging with increasing prostate cancer Gleason grade can be attributed to an increasing volume of low-diffusivity epithelial cells and corresponding decreasing volumes of higher-diffusivity stroma and lumen space rather than to increased cell density.

MATERIALS AND METHODS

Tissue samples were acquired after institutional ethics review committee approval and informed consent from patients were obtained. Nuclear count, nuclear area, and gland component volumes (epithelium, stroma, lumen space) were measured in tissue from 14 patients. Gland component volumes and cellularity metrics were correlated with Gleason pattern (Spearman rank correlation coefficient) and measured ADC (Pearson correlation coefficient) in six prostates ex vivo. Differences between metrics for cancerous tissue and those for normal tissue were assessed by using a two-tailed two-sample t test. Linear mixed models with a post hoc Fisher least significant difference test were used to assess differences between gland component volumes and cellularity metrics for multiple groups. To adjust for a clustering effect due to repeated measures, the organ mean value of the measured metric for each tissue type was used in the analysis.

RESULTS

There were significant differences between Gleason patterns for gland component volumes (P < .05) but not nuclear count (P = .100) or area (P = .141). There was a stronger correlation of Gleason pattern with gland component volumes (n = 553) of epithelium (Spearman ρ = 0.898, P < .001), stroma (ρ = -0.651, P < .001), and lumen space (ρ = -0.912, P = .007) than with the cellularity metrics (n = 288) nuclear area (ρ = 0.422, P = .133) or nuclear count (ρ = 0.082, P = .780). There was a stronger correlation between measured ADC and lumen volume (r = 0.688, P < .001) and epithelium volume (r = -0.647, P < .001) than between ADC and nuclear count (r = -0.598, P < .001) or nuclear area (r = -0.569, P < .001) (n = 57).

CONCLUSION

Differences in the gland compartment volumes of prostate tissue having distinct diffusivities, rather than changes in the conventionally cited "cellularity" metrics, are likely to be the major contributor to clinically observed variations of ADC in prostate tissue.

摘要

目的

研究假设,即在扩散加权磁共振成像中,随着前列腺癌 Gleason 分级的增加,表观扩散系数(ADC)的临床观察下降可归因于低扩散性上皮细胞的体积增加和相应的高扩散性基质和管腔空间体积减小,而不是细胞密度的增加。

材料与方法

在获得机构伦理审查委员会批准并获得患者知情同意后,获取组织样本。在 14 名患者的组织中测量核计数、核面积和腺体成分体积(上皮、基质、管腔空间)。在 6 例前列腺离体组织中,使用 Pearson 相关系数(Pearson correlation coefficient)将腺体成分体积和细胞密度指标与 Gleason 模式(Spearman 秩相关系数)和测量 ADC 相关联。使用双侧两样本 t 检验评估癌症组织和正常组织之间的指标差异。使用具有事后 Fisher 最小显著差异检验的线性混合模型评估多个组的腺体成分体积和细胞密度指标之间的差异。为了调整由于重复测量而导致的聚类效应,在分析中使用了每种组织类型的测量指标的器官平均值。

结果

腺体成分体积的 Gleason 模式之间存在显著差异(P <.05),但核计数(P =.100)或面积(P =.141)无显著差异。Gleason 模式与上皮(Spearman ρ = 0.898,P <.001)、基质(ρ = -0.651,P <.001)和管腔空间(ρ = -0.912,P =.007)的腺体成分体积相关性更强,而不是与细胞密度指标(核面积 ρ = 0.422,P =.133)或核计数(ρ = 0.082,P =.780)相关性更强。在测量 ADC 与管腔体积(r = 0.688,P <.001)和上皮体积(r = -0.647,P <.001)之间的相关性强于在 ADC 与核计数(r = -0.598,P <.001)或核面积(r = -0.569,P <.001)之间的相关性(n = 57)。

结论

具有不同扩散率的前列腺组织的腺腔体积差异,而不是通常引用的“细胞密度”指标的变化,可能是临床观察到的前列腺组织 ADC 变化的主要原因。

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