Ji Meng-Yao, Yuan Lei, Lu Shi-Min, Gao Meng-Ting, Zeng Zhi, Zhan Na, Ding Yi-Juan, Liu Zheng-Ru, Huang Ping-Xiao, Lu Cheng, Dong Wei-Guo
Department of Gastroenterology, Wuhan University Renmin Hospital, Wuhan, Hubei, China.
Key Laboratory of Hubei Province for Digestive System Disease, Wuhan University Renmin Hospital, Wuhan, Hubei, China.
J Transl Med. 2020 Mar 16;18(1):129. doi: 10.1186/s12967-020-02297-w.
Identifying the early-stage colon adenocarcinoma (ECA) patients who have lower risk cancer vs. the higher risk cancer could improve disease prognosis. Our study aimed to explore whether the glandular morphological features determined by computational pathology could identify high risk cancer in ECA via H&E images digitally.
532 ECA patients retrospectively from 2 independent data centers, as well as 113 from The Cancer Genome Atlas (TCGA), were enrolled in this study. Four tissue microarrays (TMAs) were constructed across ECA hematoxylin and eosin (H&E) stained slides. 797 quantitative glandular morphometric features were extracted and 5 most prognostic features were identified using minimum redundancy maximum relevance to construct an image classifier. The image classifier was evaluated on D2/D3 = 223, D4 = 46, D5 = 113. The expression of Ki67 and serum CEA levels were scored on D3, aiming to explore the correlations between image classifier and immunohistochemistry data and serum CEA levels. The roles of clinicopathological data and ECAHBC were evaluated by univariate and multivariate analyses for prognostic value.
The image classifier could predict ECA recurrence (accuracy of 88.1%). ECA histomorphometric-based image classifier (ECAHBC) was an independent prognostic factor for poorer disease-specific survival [DSS, (HR = 9.65, 95% CI 2.15-43.12, P = 0.003)]. Significant correlations were observed between ECAHBC-positive patients and positivity of Ki67 labeling index (Ki67Li) and serum CEA.
Glandular orientation and shape could predict the high risk cancer in ECA and contribute to precision oncology. Computational pathology is emerging as a viable and objective means of identifying predictive biomarkers for cancer patients.
识别低风险与高风险癌症的早期结肠腺癌(ECA)患者可改善疾病预后。我们的研究旨在探讨通过计算病理学确定的腺形态特征能否通过苏木精和伊红(H&E)数字图像识别ECA中的高风险癌症。
本研究回顾性纳入了来自2个独立数据中心的532例ECA患者以及来自癌症基因组图谱(TCGA)的113例患者。在ECA苏木精和伊红(H&E)染色玻片上构建了4个组织微阵列(TMA)。提取了797个定量腺形态特征,并使用最小冗余最大相关性识别出5个最具预后价值的特征以构建图像分类器。该图像分类器在D2/D3 = 223、D4 = 46、D5 = 113上进行评估。在D3时对Ki67表达和血清CEA水平进行评分,旨在探讨图像分类器与免疫组化数据及血清CEA水平之间的相关性。通过单因素和多因素分析评估临床病理数据和ECA H&E图像分类器(ECAHBC)对预后价值的作用。
图像分类器能够预测ECA复发(准确率为88.1%)。基于ECA组织形态计量学的图像分类器(ECAHBC)是疾病特异性生存率较差的独立预后因素[DSS,(HR = 9.65,95%CI 2.15 - 43.12,P = 0.003)]。在ECAHBC阳性患者与Ki67标记指数(Ki67Li)阳性和血清CEA之间观察到显著相关性。
腺的方向和形状可预测ECA中的高风险癌症,并有助于精准肿瘤学。计算病理学正在成为识别癌症患者预测性生物标志物的可行且客观的手段。