Department of Infectious Diseases, Shunde Hospital, Southern Medical University, Shunde, Guangdong, China.
BMC Bioinformatics. 2022 Apr 8;23(1):124. doi: 10.1186/s12859-022-04657-3.
Immune microenvironment was closely related to the occurrence and progression of colorectal cancer (CRC). The objective of the current research was to develop and verify a Machine learning survival predictive system for CRC based on immune gene expression data and machine learning algorithms.
The current study performed differentially expressed analyses between normal tissues and tumor tissues. Univariate Cox regression was used to screen prognostic markers for CRC. Prognostic immune genes and transcription factors were used to construct an immune-related regulatory network. Three machine learning algorithms were used to create an Machine learning survival predictive system for CRC. Concordance indexes, calibration curves, and Brier scores were used to evaluate the performance of prognostic model.
Twenty immune genes (BCL2L12, FKBP10, XKRX, WFS1, TESC, CCR7, SPACA3, LY6G6C, L1CAM, OSM, EXTL1, LY6D, FCRL5, MYEOV, FOXD1, REG3G, HAPLN1, MAOB, TNFSF11, and AMIGO3) were recognized as independent risk factors for CRC. A prognostic nomogram was developed based on the previous immune genes. Concordance indexes were 0.852, 0.778, and 0.818 for 1-, 3- and 5-year survival. This prognostic model could discriminate high risk patients with poor prognosis from low risk patients with favorable prognosis.
The current study identified twenty prognostic immune genes for CRC patients and constructed an immune-related regulatory network. Based on three machine learning algorithms, the current research provided three individual mortality predictive curves. The Machine learning survival predictive system was available at: https://zhangzhiqiao8.shinyapps.io/Artificial_Intelligence_Survival_Prediction_for_CRC_B1005_1/ , which was valuable for individualized treatment decision before surgery.
免疫微环境与结直肠癌(CRC)的发生和发展密切相关。本研究旨在基于免疫基因表达数据和机器学习算法,开发和验证用于 CRC 的机器学习生存预测系统。
本研究对正常组织和肿瘤组织进行差异表达分析。使用单因素 Cox 回归筛选 CRC 的预后标志物。使用预后免疫基因和转录因子构建免疫相关调控网络。使用三种机器学习算法构建用于 CRC 的机器学习生存预测系统。使用一致性指数、校准曲线和 Brier 评分来评估预后模型的性能。
鉴定出 20 个免疫基因(BCL2L12、FKBP10、XKRX、WFS1、TESC、CCR7、SPACA3、LY6G6C、L1CAM、OSM、EXTL1、LY6D、FCRL5、MYEOV、FOXD1、REG3G、HAPLN1、MAOB、TNFSF11 和 AMIGO3)为 CRC 的独立危险因素。基于先前的免疫基因构建了一个预后列线图。1 年、3 年和 5 年的一致性指数分别为 0.852、0.778 和 0.818。该预后模型能够区分预后不良的高风险患者和预后良好的低风险患者。
本研究确定了 20 个与 CRC 患者预后相关的免疫基因,并构建了一个免疫相关调控网络。基于三种机器学习算法,本研究提供了三个个体死亡率预测曲线。机器学习生存预测系统可在 https://zhangzhiqiao8.shinyapps.io/Artificial_Intelligence_Survival_Prediction_for_CRC_B1005_1/ 获得,这对于术前个体化治疗决策具有重要价值。