Dynamic forecasting of severe acute graft-versus-host disease after transplantation.
Xueou LiuYigeng CaoYe GuoXiaowen GongYahui FengYao WangMingyang WangMengxuan CuiWenwen GuoLuyang ZhangNingning ZhaoXiaoqiang SongXuetong ZhengXia ChenQiujin ShenSong ZhangZhen SongLinfeng LiSizhou FengMingzhe HanXiao-Fan ZhuErlie JiangJunren ChenPublished in: Nature computational science (2022)
Forecasting of severe acute graft-versus-host disease (aGVHD) after transplantation is a challenging 'large p, small n' problem that suffers from nonuniform data sampling. We propose a dynamic probabilistic algorithm, daGOAT, that accommodates sampling heterogeneity, integrates multidimensional clinical data and continuously updates the daily risk score for severe aGVHD onset within a two-week moving window. In the studied cohorts, the cross-validated area under the receiver operator characteristic curve (AUROC) of daGOAT rose steadily after transplantation and peaked at ≥0.78 in both the adult and pediatric cohorts, outperforming the two-biomarker MAGIC score, three-biomarker Ann Arbor score, peri-transplantation features-based models and XGBoost. Simulation experiments indicated that the daGOAT algorithm is well suited for short time-series scenarios where the underlying process for event generation is smooth, multidimensional and where there are frequent and irregular data missing. daGOAT's broader utility was demonstrated by performance testing on a remotely different task, that is, prediction of imminent human postural change based on smartphone inertial sensor time-series data.