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Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records

PURPOSE: Acute graft-versus-host disease (aGVHD) remains a significant complication of allogeneic hematopoietic cell transplantation (HCT) and limits its broader application. The ability to predict grade II to IV aGVHD could potentially mitigate morbidity and mortality. To date, researchers have foc...

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Autores principales: Tang, Shengpu, Chappell, Grant T., Mazzoli, Amanda, Tewari, Muneesh, Choi, Sung Won, Wiens, Jenna
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society of Clinical Oncology 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7049247/
https://www.ncbi.nlm.nih.gov/pubmed/32083957
http://dx.doi.org/10.1200/CCI.19.00105
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author Tang, Shengpu
Chappell, Grant T.
Mazzoli, Amanda
Tewari, Muneesh
Choi, Sung Won
Wiens, Jenna
author_facet Tang, Shengpu
Chappell, Grant T.
Mazzoli, Amanda
Tewari, Muneesh
Choi, Sung Won
Wiens, Jenna
author_sort Tang, Shengpu
collection PubMed
description PURPOSE: Acute graft-versus-host disease (aGVHD) remains a significant complication of allogeneic hematopoietic cell transplantation (HCT) and limits its broader application. The ability to predict grade II to IV aGVHD could potentially mitigate morbidity and mortality. To date, researchers have focused on using snapshots of a patient (eg, biomarkers at a single time point) to predict aGVHD onset. We hypothesized that longitudinal data collected and stored in electronic health records (EHRs) could distinguish patients at high risk of developing aGVHD from those at low risk. PATIENTS AND METHODS: The study included a cohort of 324 patients undergoing allogeneic HCT at the University of Michigan C.S. Mott Children’s Hospital during 2014 to 2017. Using EHR data, specifically vital sign measurements collected within the first 10 days of transplantation, we built a predictive model using penalized logistic regression for identifying patients at risk for grade II to IV aGVHD. We compared the proposed model with a baseline model trained only on patient and donor characteristics collected at the time of transplantation and performed an analysis of the importance of different input features. RESULTS: The proposed model outperformed the baseline model, with an area under the receiver operating characteristic curve of 0.659 versus 0.512 (P = .019). The feature importance analysis showed that the learned model relied most on temperature and systolic blood pressure, and temporal trends (eg, increasing or decreasing) were more important than the average values. CONCLUSION: Leveraging readily available clinical data from EHRs, we developed a machine-learning model for aGVHD prediction in patients undergoing HCT. Continuous monitoring of vital signs, such as temperature, could potentially help clinicians more accurately identify patients at high risk for aGVHD.
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spelling pubmed-70492472021-02-21 Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records Tang, Shengpu Chappell, Grant T. Mazzoli, Amanda Tewari, Muneesh Choi, Sung Won Wiens, Jenna JCO Clin Cancer Inform Original Reports PURPOSE: Acute graft-versus-host disease (aGVHD) remains a significant complication of allogeneic hematopoietic cell transplantation (HCT) and limits its broader application. The ability to predict grade II to IV aGVHD could potentially mitigate morbidity and mortality. To date, researchers have focused on using snapshots of a patient (eg, biomarkers at a single time point) to predict aGVHD onset. We hypothesized that longitudinal data collected and stored in electronic health records (EHRs) could distinguish patients at high risk of developing aGVHD from those at low risk. PATIENTS AND METHODS: The study included a cohort of 324 patients undergoing allogeneic HCT at the University of Michigan C.S. Mott Children’s Hospital during 2014 to 2017. Using EHR data, specifically vital sign measurements collected within the first 10 days of transplantation, we built a predictive model using penalized logistic regression for identifying patients at risk for grade II to IV aGVHD. We compared the proposed model with a baseline model trained only on patient and donor characteristics collected at the time of transplantation and performed an analysis of the importance of different input features. RESULTS: The proposed model outperformed the baseline model, with an area under the receiver operating characteristic curve of 0.659 versus 0.512 (P = .019). The feature importance analysis showed that the learned model relied most on temperature and systolic blood pressure, and temporal trends (eg, increasing or decreasing) were more important than the average values. CONCLUSION: Leveraging readily available clinical data from EHRs, we developed a machine-learning model for aGVHD prediction in patients undergoing HCT. Continuous monitoring of vital signs, such as temperature, could potentially help clinicians more accurately identify patients at high risk for aGVHD. American Society of Clinical Oncology 2020-02-21 /pmc/articles/PMC7049247/ /pubmed/32083957 http://dx.doi.org/10.1200/CCI.19.00105 Text en © 2020 by American Society of Clinical Oncology https://creativecommons.org/licenses/by-nc-nd/4.0/ Creative Commons Attribution Non-Commercial No Derivatives 4.0 License: https://creativecommons.org/licenses/by-nc-nd/4.0/
spellingShingle Original Reports
Tang, Shengpu
Chappell, Grant T.
Mazzoli, Amanda
Tewari, Muneesh
Choi, Sung Won
Wiens, Jenna
Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records
title Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records
title_full Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records
title_fullStr Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records
title_full_unstemmed Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records
title_short Predicting Acute Graft-Versus-Host Disease Using Machine Learning and Longitudinal Vital Sign Data From Electronic Health Records
title_sort predicting acute graft-versus-host disease using machine learning and longitudinal vital sign data from electronic health records
topic Original Reports
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7049247/
https://www.ncbi.nlm.nih.gov/pubmed/32083957
http://dx.doi.org/10.1200/CCI.19.00105
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