Faculty of Dentistry, Oral and Craniofacial Sciences, King's College London, United Kingdom.
Faculty of Dentistry, Oral and Craniofacial Sciences, King's College London, United Kingdom.
Oral Oncol. 2023 Jun;141:106399. doi: 10.1016/j.oraloncology.2023.106399. Epub 2023 Apr 23.
Routine haematoxylin and eosin (H&E) photomicrographs from human papillomavirus-associated oropharyngeal squamous cell carcinomas (HPV + OpSCC) contain a wealth of prognostic information. In this study, we developed a high content image analysis (HCIA) workflow to quantify features of H&E images from HPV + OpSCC patients to identify prognostic features and predict patient outcomes.
First, we have developed an open-source HCIA tool for single-cell segmentation and classification of H&E images. Subsequently, we have used our HCIA tool to analyse a set of 889 images from diagnostic H&E slides in a retrospective cohort of HPV + OpSCC patients with favourable (FO, n = 60) or unfavourable (UO, n = 30) outcomes. We have identified and measured 31 prognostic features which were quantified in each sample and used to train a neural network (NN) model to predict patient outcomes.
Univariate and multivariate statistical analyses revealed significant differences between FO and UO patients in 31 and 17 variables, respectively (P < 0.05). At the single-image level, the NN model had an overall accuracy of 72.5% and 71.2% in recognising FO and UO patients when applied to test or validation sets, respectively. When considering 10 images per patient, the accuracy of the NN model increased to 86.7% in the test set.
Our open-source H&E analysis workflow and predictive models confirm previously reported prognostic features and identifies novel factors which predict HPV + OpSCC outcomes with promising accuracy. Our work supports the use of machine learning in digital pathology to exploit clinically relevant features in routine diagnostic pathology without additional biomarkers.
人乳头瘤病毒相关性口咽鳞状细胞癌(HPV+OpSCC)的常规苏木精和伊红(H&E)显微照片包含丰富的预后信息。在本研究中,我们开发了一种高内涵图像分析(HCIA)工作流程,以量化 HPV+OpSCC 患者的 H&E 图像特征,以确定预后特征并预测患者结局。
首先,我们开发了一种用于 H&E 图像单细胞分割和分类的开源 HCIA 工具。随后,我们使用 HCIA 工具分析了 HPV+OpSCC 患者回顾性队列中 889 张来自诊断性 H&E 切片的图像,这些患者的结局良好(FO,n=60)或不良(UO,n=30)。我们确定并测量了 31 个预后特征,这些特征在每个样本中进行了量化,并用于训练神经网络(NN)模型来预测患者结局。
单变量和多变量统计分析显示,FO 和 UO 患者在 31 个和 17 个变量方面存在显著差异(P<0.05)。在单张图像水平上,当应用于测试或验证集时,NN 模型识别 FO 和 UO 患者的总体准确率分别为 72.5%和 71.2%。当考虑每位患者 10 张图像时,NN 模型在测试集中的准确率提高到 86.7%。
我们的开源 H&E 分析工作流程和预测模型证实了先前报道的预后特征,并确定了一些新的因素,这些因素以有希望的准确率预测 HPV+OpSCC 结局。我们的工作支持在数字病理学中使用机器学习来利用常规诊断病理学中的临床相关特征,而无需额外的生物标志物。