Department of Pharmacy, Shenzhen Children's Hospital, Shenzhen, People's Republic of China.
Department of Research and Development, Shenzhen Advanced precision medical CO., LTD, Shenzhen, People's Republic of China.
Leuk Lymphoma. 2021 Oct;62(10):2502-2513. doi: 10.1080/10428194.2021.1913140. Epub 2021 Apr 26.
Methotrexate (MTX), an antimetabolite for the treatment of leukemia, could cause neutropenia and subsequently fever, which might lead to treatment delay and affect prognosis. Here, we aimed to predict neutropenia and fever related to high-dose MTX using artificial intelligence. This study included 139 pediatric patients newly diagnosed with standard- or intermediate risk B-cell acute lymphoblastic leukemia. Fifty-seven SNPs of 16 genes were genotyped. Univariate and multivariate analysis were used to select SNPs and clinical covariates for model developing. Five machine learning algorithms combined with four resampling techniques were used to build optimal predictive model. The combination of random forest with adaptive synthetic appeared to be the best model for neutropenia (sensitivity = 0.935, specificity = 0.920, AUC = 0.927) and performed best for fever (sensitivity = 0.818, specificity = 0.924, AUC = 0.870). By machine learning, we have developed and validated comprehensive models to predict the risk of neutropenia and fever. Such models may be helpful for medical oncologists in quick decision-making.
甲氨蝶呤(MTX)是一种用于治疗白血病的抗代谢药物,可导致中性粒细胞减少症,并随后引起发热,这可能导致治疗延迟并影响预后。在这里,我们旨在使用人工智能预测与大剂量 MTX 相关的中性粒细胞减少症和发热。这项研究包括 139 名新诊断为标准或中危 B 细胞急性淋巴细胞白血病的儿科患者。对 16 个基因的 57 个 SNP 进行了基因分型。使用单变量和多变量分析选择 SNP 和临床协变量用于模型开发。五种机器学习算法结合四种重采样技术用于构建最佳预测模型。随机森林与自适应综合的结合似乎是预测中性粒细胞减少症的最佳模型(敏感性=0.935,特异性=0.920,AUC=0.927),对发热的预测效果最佳(敏感性=0.818,特异性=0.924,AUC=0.870)。通过机器学习,我们已经开发和验证了全面的模型来预测中性粒细胞减少症和发热的风险。这些模型可能有助于肿瘤内科医生做出快速决策。