Zhang Shuaijie, Yang Fan, Wang Lijie, Si Shucheng, Zhang Jianmei, Xue Fuzhong
Department of Epidemiology and Health Statistics, School of Public Health, Cheeloo College of Medicine, Shandong University, Jinan, China.
National Institute of Health Data Science of China.
PLoS Comput Biol. 2023 Sep 21;19(9):e1011396. doi: 10.1371/journal.pcbi.1011396. eCollection 2023 Sep.
Personalized prediction of chronic diseases is crucial for reducing the disease burden. However, previous studies on chronic diseases have not adequately considered the relationship between chronic diseases. To explore the patient-wise risk of multiple chronic diseases, we developed a multitask learning Cox (MTL-Cox) model for personalized prediction of nine typical chronic diseases on the UK Biobank dataset. MTL-Cox employs a multitask learning framework to train semiparametric multivariable Cox models. To comprehensively estimate the performance of the MTL-Cox model, we measured it via five commonly used survival analysis metrics: concordance index, area under the curve (AUC), specificity, sensitivity, and Youden index. In addition, we verified the validity of the MTL-Cox model framework in the Weihai physical examination dataset, from Shandong province, China. The MTL-Cox model achieved a statistically significant (p<0.05) improvement in results compared with competing methods in the evaluation metrics of the concordance index, AUC, sensitivity, and Youden index using the paired-sample Wilcoxon signed-rank test. In particular, the MTL-Cox model improved prediction accuracy by up to 12% compared to other models. We also applied the MTL-Cox model to rank the absolute risk of nine chronic diseases in patients on the UK Biobank dataset. This was the first known study to use the multitask learning-based Cox model to predict the personalized risk of the nine chronic diseases. The study can contribute to early screening, personalized risk ranking, and diagnosing of chronic diseases.
慢性病的个性化预测对于减轻疾病负担至关重要。然而,先前关于慢性病的研究并未充分考虑慢性病之间的关系。为了探究个体患多种慢性病的风险,我们在英国生物银行数据集上开发了一种多任务学习Cox(MTL-Cox)模型,用于九种典型慢性病的个性化预测。MTL-Cox采用多任务学习框架来训练半参数多变量Cox模型。为了全面评估MTL-Cox模型的性能,我们通过五个常用的生存分析指标对其进行衡量:一致性指数、曲线下面积(AUC)、特异性、敏感性和约登指数。此外,我们在中国山东省威海市体检数据集中验证了MTL-Cox模型框架的有效性。使用配对样本Wilcoxon符号秩检验,在一致性指数、AUC、敏感性和约登指数的评估指标中,MTL-Cox模型与竞争方法相比,结果有统计学意义的改善(p<0.05)。特别是,与其他模型相比,MTL-Cox模型的预测准确率提高了多达12%。我们还应用MTL-Cox模型对英国生物银行数据集中患者的九种慢性病绝对风险进行排名。这是第一项使用基于多任务学习的Cox模型来预测九种慢性病个性化风险的已知研究。该研究有助于慢性病的早期筛查、个性化风险排名和诊断。