Department of Pathology and Clinical Laboratories, National Cancer Center Hospital East, Kashiwa, Japan.
Department of Otolaryngology, Head and Neck Surgery, University of Tsukuba, Tsukuba, Japan.
J Pathol Clin Res. 2024 Sep;10(5):e12392. doi: 10.1002/2056-4538.12392.
Researchers have attempted to identify the factors involved in lymph node recurrence in cT1-2N0 tongue squamous cell carcinoma (SCC). However, studies combining histopathological and clinicopathological information in prediction models are limited. We aimed to develop a highly accurate lymph node recurrence prediction model for clinical stage T1-2, N0 (cT1-2N0) tongue SCC by integrating histopathological artificial intelligence (AI) with clinicopathological information. A dataset from 148 patients with cT1-2N0 tongue SCC was divided into training and test sets. The prediction models were constructed using AI-extracted information from whole slide images (WSIs), human-assessed clinicopathological information, and both combined. Weakly supervised learning and machine learning algorithms were used for WSIs and clinicopathological information, respectively. The combination model utilised both algorithms. Highly predictive patches from the model were analysed for histopathological features. In the test set, the areas under the receiver operating characteristic (ROC) curve for the model using WSI, clinicopathological information, and both combined were 0.826, 0.835, and 0.991, respectively. The highest area under the ROC curve was achieved with the model combining WSI and clinicopathological factors. Histopathological feature analysis showed that highly predicted patches extracted from recurrence cases exhibited significantly more tumour cells, inflammatory cells, and muscle content compared with non-recurrence cases. Moreover, patches with mixed inflammatory cells, tumour cells, and muscle were significantly more prevalent in recurrence versus non-recurrence cases. The model integrating AI-extracted histopathological and human-assessed clinicopathological information demonstrated high accuracy in predicting lymph node recurrence in patients with cT1-2N0 tongue SCC.
研究人员试图确定 cT1-2N0 舌鳞癌(SCC)淋巴结复发相关因素。然而,结合组织病理学和临床病理信息的预测模型研究有限。我们旨在通过整合组织病理学人工智能(AI)与临床病理信息,为临床分期 T1-2、N0(cT1-2N0)舌 SCC 开发一种高度准确的淋巴结复发预测模型。来自 148 例 cT1-2N0 舌 SCC 患者的数据集分为训练集和测试集。使用 AI 从全切片图像(WSI)中提取的信息、人工评估的临床病理信息以及两者结合构建预测模型。使用弱监督学习和机器学习算法分别用于 WSI 和临床病理信息。组合模型使用了这两种算法。对模型中具有高度预测性的斑块进行组织病理学特征分析。在测试集中,基于 WSI、临床病理信息和两者结合的模型的受试者工作特征(ROC)曲线下面积分别为 0.826、0.835 和 0.991。结合 WSI 和临床病理因素的模型获得了最高的 ROC 曲线下面积。组织病理学特征分析表明,从复发病例中提取的具有高度预测性的斑块与非复发病例相比,显示出更多的肿瘤细胞、炎症细胞和肌肉含量。此外,在复发与非复发病例中,混合炎症细胞、肿瘤细胞和肌肉的斑块更为常见。整合 AI 提取的组织病理学和人工评估的临床病理信息的模型在预测 cT1-2N0 舌 SCC 患者的淋巴结复发方面表现出高度准确性。