School of Automation, Nanjing University of Information Science and Technology, Nanjing, 210044, China.
College of Information Engineering, Taizhou University, Taizhou, 225300, China.
Dig Dis Sci. 2024 Aug;69(8):2985-2995. doi: 10.1007/s10620-024-08501-x. Epub 2024 Jun 5.
Colorectal cancer (CRC) is a malignant tumor within the digestive tract with both a high incidence rate and mortality. Early detection and intervention could improve patient clinical outcomes and survival.
This study computationally investigates a set of prognostic tissue and cell features from diagnostic tissue slides. With the combination of clinical prognostic variables, the pathological image features could predict the prognosis in CRC patients. Our CRC prognosis prediction pipeline sequentially consisted of three modules: (1) A MultiTissue Net to delineate outlines of different tissue types within the WSI of CRC for further ROI selection by pathologists. (2) Development of three-level quantitative image metrics related to tissue compositions, cell shape, and hidden features from a deep network. (3) Fusion of multi-level features to build a prognostic CRC model for predicting survival for CRC.
Experimental results suggest that each group of features has a particular relationship with the prognosis of patients in the independent test set. In the fusion features combination experiment, the accuracy rate of predicting patients' prognosis and survival status is 81.52%, and the AUC value is 0.77.
This paper constructs a model that can predict the postoperative survival of patients by using image features and clinical information. Some features were found to be associated with the prognosis and survival of patients.
结直肠癌(CRC)是一种消化道恶性肿瘤,具有高发病率和死亡率。早期发现和干预可以改善患者的临床结局和生存。
本研究通过计算方法研究了一组来自诊断组织切片的预后组织和细胞特征。结合临床预后变量,病理图像特征可以预测 CRC 患者的预后。我们的 CRC 预后预测管道包括三个模块:(1)多组织网络,用于描绘 CRC 组织切片的不同组织类型的轮廓,以便病理学家进一步选择 ROI。(2)从深度网络中开发与组织成分、细胞形状和隐藏特征相关的三级定量图像指标。(3)融合多层次特征,构建用于预测 CRC 患者生存的预后模型。
实验结果表明,每组特征与独立测试集中患者的预后都有特定的关系。在融合特征组合实验中,预测患者预后和生存状态的准确率为 81.52%,AUC 值为 0.77。
本文构建了一个可以通过图像特征和临床信息预测患者术后生存的模型。一些特征与患者的预后和生存有关。