Guillaud Martial, Zhang Lewei, Poh Catherine, Rosin Miriam P, MacAulay Calum
British Columbia Cancer Agency/Cancer Research Center, University of British Columbia, Vancouver, British Columbia, Canada.
Cancer Res. 2008 May 1;68(9):3099-107. doi: 10.1158/0008-5472.CAN-07-2113.
The importance of early diagnosis in improving mortality and morbidity rates of oral squamous cell carcinoma (SCC) has long been recognized. However, a major challenge for early diagnosis is our limited ability to differentiate oral premalignant lesions (OPL) at high risk of progressing into invasive SCC from those at low risk. We investigated the potential of quantitative tissue phenotype (QTP), measured by high-resolution image analysis, to identify severe dysplasia/carcinoma in situ (CIS; known to have an increased risk of progression) and to predict progression to cancer within hyperplasia or mild/moderate dysplasia. We generated a nuclear phenotype score (NPS), a combination of five nuclear morphometric features that best discriminate 4,027 "normal" nuclei (selected from 29 normal oral biopsies) from 4,298 "abnormal" nuclei (selected from 30 SCC biopsies). This NPS was then determined for a set of 69 OPLs. Severe dysplasia/CIS showed a significant increase in NPS compared with hyperplasia or mild/moderate dysplasia. However, within the latter group, elevated NPS was strongly associated with the presence of high-risk loss of heterozygosity (LOH) patterns. There was a statistical difference between NPS of hyperplasia or mild/moderate dysplasia that progressed to cancer and those that did not. Individuals with a high NPS had a 10-fold increase in relative risk of progression. In the multivariate Cox model, LOH and NPS together were the strongest predictors for cancer development. These data suggest that QTP could be used to identify lesions that require molecular evaluation and should be integrated with such approaches to facilitate the identification of hyperplasia or mild/moderate dysplasia OPLs at high risk of progression.
长期以来,人们一直认识到早期诊断对于提高口腔鳞状细胞癌(SCC)死亡率和发病率的重要性。然而,早期诊断面临的一个重大挑战是,我们区分有进展为侵袭性SCC高风险的口腔癌前病变(OPL)和低风险病变的能力有限。我们研究了通过高分辨率图像分析测量的定量组织表型(QTP)识别重度发育异常/原位癌(CIS;已知进展风险增加)以及预测增生或轻度/中度发育异常进展为癌症的潜力。我们生成了一个核表型评分(NPS),它是五个核形态计量特征的组合,能最佳地区分4027个“正常”细胞核(从29例正常口腔活检中选取)和4298个“异常”细胞核(从30例SCC活检中选取)。然后对一组69例OPL确定了该NPS。与增生或轻度/中度发育异常相比,重度发育异常/CIS的NPS显著增加。然而,在后者组中,NPS升高与高风险杂合性缺失(LOH)模式的存在密切相关。进展为癌症的增生或轻度/中度发育异常的NPS与未进展者之间存在统计学差异。NPS高的个体进展的相对风险增加了10倍。在多变量Cox模型中,LOH和NPS共同是癌症发生的最强预测因素。这些数据表明,QTP可用于识别需要进行分子评估的病变,并且应与这些方法相结合,以促进识别有高进展风险的增生或轻度/中度发育异常OPL。