Pelosi Giuseppe, Papotti Mauro, Rindi Guido, Scarpa Aldo
Department of Pathology and Laboratory Medicine, Fondazione IRCCS Istituto Nazionale dei Tumori, Milan, Italy,
Endocr Pathol. 2014 Jun;25(2):151-64. doi: 10.1007/s12022-014-9320-0.
Currently, grading in lung neuroendocrine tumors (NETs) is inherently defined by the histological classification based on cell features, mitosis count, and necrosis, for which typical carcinoids (TC) are low-grade malignant tumors with long life expectation, atypical carcinoids (AC) intermediate-grade malignant tumors with more aggressive clinical behavior, and large cell NE carcinomas (LCNEC) and small cell lung carcinomas (SCLC) high-grade malignant tumors with dismal prognosis. While Ki-67 antigen labeling index, highlighting the proportion of proliferating tumor cells, has largely been used in digestive NETs for assessing prognosis and assisting therapy decisions, the same marker does not play an established role in the diagnosis, grading, and prognosis of lung NETs. Next generation sequencing techniques (NGS), thanks to their astonishing ability to process in a shorter timeframe up to billions of DNA strands, are radically revolutionizing our approach to diagnosis and therapy of tumors, including lung cancer. When applied to single genes, panels of genes, exome, or the whole genome by using either frozen or paraffin tissues, NGS techniques increase our understanding of cancer, thus realizing the bases of precision medicine. Data are emerging that TC and AC are mainly altered in chromatin remodeling genes, whereas LCNEC and SCLC are also mutated in cell cycle checkpoint and cell differentiation regulators. A common denominator to all lung NETs is a deregulation of cell proliferation, which represents a biological rationale for morphologic (mitoses and necrosis) and molecular (Ki-67 antigen) parameters to successfully serve as predictors of tumor behavior (i.e., identification of pathological entities with clinical correlation). It is envisaged that a novel grading system in lung NETs based on the combined assessment of mitoses, necrosis, and Ki-67 LI may offer a better stratification of prognostic classes, realizing a bridge between molecular alterations, morphological features, and clinical behavior.
目前,肺神经内分泌肿瘤(NETs)的分级本质上是由基于细胞特征、有丝分裂计数和坏死情况的组织学分类来定义的,其中典型类癌(TC)是低级别恶性肿瘤,预期寿命长;非典型类癌(AC)是中级别的恶性肿瘤,临床行为更具侵袭性;大细胞神经内分泌癌(LCNEC)和小细胞肺癌(SCLC)是高级别恶性肿瘤,预后不良。虽然Ki-67抗原标记指数突出了增殖肿瘤细胞的比例,在消化性NETs中已广泛用于评估预后和辅助治疗决策,但该标记物在肺NETs的诊断、分级和预后方面尚未发挥既定作用。下一代测序技术(NGS)凭借其在较短时间内处理多达数十亿条DNA链的惊人能力,正在从根本上彻底改变我们对包括肺癌在内的肿瘤的诊断和治疗方法。当通过使用冷冻或石蜡组织应用于单个基因、基因面板、外显子组或整个基因组时,NGS技术增进了我们对癌症的理解,从而实现了精准医学的基础。有数据显示,TC和AC主要在染色质重塑基因中发生改变,而LCNEC和SCLC在细胞周期检查点和细胞分化调节因子中也发生了突变。所有肺NETs的一个共同特征是细胞增殖失调,这为形态学(有丝分裂和坏死)和分子(Ki-67抗原)参数成功作为肿瘤行为预测指标(即识别与临床相关的病理实体)提供了生物学依据。设想基于有丝分裂、坏死和Ki-67标记指数的联合评估建立一种新的肺NETs分级系统,可能会更好地对预后类别进行分层,在分子改变、形态特征和临床行为之间架起一座桥梁。