Killian Michael O, Payrovnaziri Seyedeh Neelufar, Gupta Dipankar, Desai Dev, He Zhe
College of Social Work, Florida State University, Florida, USA.
College of Medicine, Florida State University, Florida, USA.
JAMIA Open. 2021 Mar 12;4(1):ooab008. doi: 10.1093/jamiaopen/ooab008. eCollection 2021 Jan.
Prediction of post-transplant health outcomes and identification of key factors remain important issues for pediatric transplant teams and researchers. Outcomes research has generally relied on general linear modeling or similar techniques offering limited predictive validity. Thus far, data-driven modeling and machine learning (ML) approaches have had limited application and success in pediatric transplant outcomes research. The purpose of the current study was to examine ML models predicting post-transplant hospitalization in a sample of pediatric kidney, liver, and heart transplant recipients from a large solid organ transplant program.
Various logistic regression, naive Bayes, support vector machine, and deep learning (DL) methods were used to predict 1-, 3-, and 5-year post-transplant hospitalization using patient and administrative data from a large pediatric organ transplant center.
DL models generally outperformed traditional ML models across organtypes and prediction windows with area under the receiver operating characteristic curve values ranging from 0.750 to 0.851. Shapley additive explanations (SHAP) were used to increase the interpretability of DL model results. Various medical, patient, and social variables were identified as salient predictors across organ types.
Results demonstrate the utility of DL modeling for health outcome prediction with pediatric patients, and its use represents an important development in the prediction of post-transplant outcomes in pediatric transplantation compared to prior research.
Results point to DL models as potentially useful tools in decision-support systems assisting physicians and transplant teams in identifying patients at a greater risk for poor post-transplant outcomes.
预测移植后的健康结局并确定关键因素,对于儿科移植团队和研究人员而言,仍然是重要问题。结局研究通常依赖于一般线性模型或类似技术,其预测效度有限。到目前为止,数据驱动建模和机器学习(ML)方法在儿科移植结局研究中的应用和成效有限。本研究的目的是在一个大型实体器官移植项目的儿科肾、肝和心脏移植受者样本中,检验预测移植后住院情况的ML模型。
使用来自一个大型儿科器官移植中心的患者和管理数据,采用各种逻辑回归、朴素贝叶斯、支持向量机和深度学习(DL)方法,预测移植后1年、3年和5年的住院情况。
在不同器官类型和预测窗口中,DL模型总体上优于传统ML模型,受试者工作特征曲线下面积值在0.750至0.851之间。使用夏普利值附加解释(SHAP)来提高DL模型结果的可解释性。确定了各种医学、患者和社会变量为不同器官类型的显著预测因素。
结果证明了DL建模在预测儿科患者健康结局方面的效用,与先前研究相比,其应用代表了儿科移植中移植后结局预测的一项重要进展。
结果表明DL模型可能是决策支持系统中的有用工具,可协助医生和移植团队识别移植后结局不佳风险较高的患者。