Department of Pathology, Kansai Medical University, Hirakata, Osaka, 573-1191, Japan.
Department of Urology and Andrology, Kansai Medical University, Hirakata, Osaka, 573-1191, Japan.
Mod Pathol. 2022 Jun;35(6):816-824. doi: 10.1038/s41379-021-00982-9. Epub 2021 Nov 30.
The prognostic significance of an architectural grading system for clear cell renal cell carcinoma (ccRCC) has recently been demonstrated. The present study aimed to establish a vascularity-based architectural classification using the cohort of 436 patients with localized ccRCC who underwent extirpative surgery and correlated the findings with conventional pathologic factors, gene expression, and prognosis. First, we assessed architectural patterns in the highest-grade area on hematoxylin and eosin-stained slides, then separately evaluated our surrogate score for vascularity. We grouped nine architectural patterns into three categories based on the vascular network score. "Vascularity-based architectural classification" was defined: category 1: characterized by enrichment of the vascular network, including compact/small nested, macrocyst/microcystic, and tubular/acinar patterns; category 2: characterized by a widely spaced-out vascular network, including alveolar/large nested, thick trabecular/insular, papillary/pseudopapillary patterns; category 3: characterized by scattered vascularity without a vascular network, including solid sheets, rhabdoid and sarcomatoid patterns. Adverse pathological prognostic factors such as TNM stage, WHO/ISUP grade, and necrosis were significantly associated with category 3, followed by category 2 (all p < 0.001). We successfully validated the classification using The Cancer Genome Atlas (TCGA) cohort (n = 162), and RNA-sequencing data available from TCGA showed that the angiogenesis gene signature was significantly enriched in category 1 compared to categories 2 and 3, whereas the immune gene signature was significantly enriched in category 3 compared to categories 1 and 2. In univariate analysis, vascularity-based architectural classification showed the best accuracy in pathological prognostic factors for predicting recurrence-free survival (c-index = 0.786). The predictive accuracy of our model which integrated WHO/ISUP grade, necrosis, TNM stage, and vascularity-based architectural classification was greater than conventional risk models (c-index = 0.871 vs. 0.755-0.843). Our findings suggest that the vascularity-based architectural classification is prognostically useful and may help stratify patients appropriately for management based on their likelihood of post-surgical recurrence.
目前已经证明,用于透明细胞肾细胞癌(ccRCC)的建筑分级系统具有预后意义。本研究旨在使用接受根治性手术的 436 名局限性 ccRCC 患者队列建立一种基于血管生成的建筑分类,并将这些发现与传统病理因素、基因表达和预后相关联。首先,我们评估了苏木精和伊红染色切片上高级别区域的结构模式,然后分别评估了我们的血管生成替代评分。我们根据血管网络评分将 9 种结构模式分为 3 类。“基于血管生成的建筑分类”定义为:类别 1:富含血管网络,包括致密/小巢状、大囊/微囊状和管状/腺泡状模式;类别 2:血管网络分布广泛,包括肺泡/大巢状、厚小梁/胰岛状、乳头/假乳头状模式;类别 3:无血管网络的散在血管性,包括实性片状、横纹肌样和肉瘤样模式。不良的病理预后因素,如 TNM 分期、WHO/ISUP 分级和坏死,与类别 3显著相关,其次是类别 2(均 p<0.001)。我们使用癌症基因组图谱(TCGA)队列(n=162)成功验证了该分类,并且 TCGA 提供的 RNA 测序数据显示,与类别 2 和 3 相比,类别 1 中血管生成基因特征显著富集,而与类别 1 和 2 相比,免疫基因特征在类别 3 中显著富集。在单因素分析中,基于血管生成的建筑分类在预测无复发生存率方面对病理预后因素的准确性最高(c 指数=0.786)。我们的模型整合了 WHO/ISUP 分级、坏死、TNM 分期和基于血管生成的建筑分类,其预测准确性大于传统风险模型(c 指数=0.871 与 0.755-0.843)。我们的研究结果表明,基于血管生成的建筑分类具有预后意义,并且可能有助于根据患者术后复发的可能性对其进行适当的分层管理。