Zhao Ke, Wu Lin, Huang Yanqi, Yao Su, Xu Zeyan, Lin Huan, Wang Huihui, Liang Yanting, Xu Yao, Chen Xin, Zhao Minning, Peng Jiaming, Huang Yuli, Liang Changhong, Li Zhenhui, Li Yong, Liu Zaiyi
Department of Radiology, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, Guangzhou 510080, China.
Department of Pathology, the Third Affiliated Hospital of Kunming Medical University, Yunnan Cancer Hospital, Yunnan Cancer Center, Kunming 650118, China.
Precis Clin Med. 2021 Jan 28;4(1):17-24. doi: 10.1093/pcmedi/pbab002. eCollection 2021 Mar.
In colorectal cancer (CRC), mucinous adenocarcinoma differs from other adenocarcinomas in gene-phenotype, morphology, and prognosis. However, mucinous components are present in a large number of adenocarcinomas, and the prognostic value of mucus proportion has not been investigated. Artificial intelligence provides a way to quantify mucus proportion on whole-slide images (WSIs) accurately. We aimed to quantify mucus proportion by deep learning and further investigate its prognostic value in two CRC patient cohorts.
Deep learning was used to segment WSIs stained with hematoxylin and eosin. Mucus-tumor ratio (MTR) was defined as the proportion of mucinous component in the tumor area. A training cohort (N = 419) and a validation cohort (N = 315) were used to evaluate the prognostic value of MTR. Survival analysis was performed using the Cox proportional hazard model.
Patients were stratified to mucus-low and mucus-high groups, with 24.1% as the threshold. In the training cohort, patients with mucus-high had unfavorable outcomes (hazard ratio for high vs. low 1.88, 95% confidence interval 1.18-2.99, = 0.008), with 5-year overall survival rates of 54.8% and 73.7% in mucus-high and mucus-low groups, respectively. The results were confirmed in the validation cohort (2.09, 1.21-3.60, 0.008; 62.8% vs. 79.8%). The prognostic value of MTR was maintained in multivariate analysis for both cohorts.
The deep learning quantified MTR was an independent prognostic factor in CRC. With the advantages of advanced efficiency and high consistency, our method is suitable for clinical application and promotes precision medicine development.
在结直肠癌(CRC)中,黏液腺癌在基因表型、形态和预后方面与其他腺癌不同。然而,大量腺癌中存在黏液成分,且黏液比例的预后价值尚未得到研究。人工智能提供了一种准确量化全切片图像(WSIs)中黏液比例的方法。我们旨在通过深度学习量化黏液比例,并进一步研究其在两个CRC患者队列中的预后价值。
使用深度学习对苏木精和伊红染色的WSIs进行分割。黏液-肿瘤比率(MTR)定义为肿瘤区域中黏液成分的比例。使用一个训练队列(N = 419)和一个验证队列(N = 315)来评估MTR的预后价值。使用Cox比例风险模型进行生存分析。
患者被分层为黏液低和黏液高组,阈值为24.1%。在训练队列中,黏液高的患者预后不良(高与低的风险比为1.88,95%置信区间为1.18 - 2.99,P = 0.008),黏液高和黏液低组的5年总生存率分别为54.8%和73.7%。在验证队列中得到了证实(2.09,1.21 - 3.60,P = 0.008;62.8%对79.8%)。两个队列在多变量分析中MTR的预后价值均得以维持。
深度学习量化的MTR是CRC的一个独立预后因素。我们的方法具有高效和高度一致性的优点,适用于临床应用并促进精准医学发展。