Cargando…

Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine

BACKGROUND: Chronic kidney disease (CKD) is a major public health concern in the United States with high prevalence, growing incidence, and serious adverse outcomes. OBJECTIVE: We aimed to develop and validate a model to identify patients at risk of receiving a new diagnosis of CKD (incident CKD) du...

Descripción completa

Detalles Bibliográficos
Autores principales: Hao, Shiying, Fu, Tianyun, Wu, Qian, Jin, Bo, Zhu, Chunqing, Hu, Zhongkai, Guo, Yanting, Zhang, Yan, Yu, Yunxian, Fouts, Terry, Ng, Phillip, Culver, Devore S, Alfreds, Shaun T, Stearns, Frank, Sylvester, Karl G, Widen, Eric, McElhinney, Doff B, Ling, Xuefeng B
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5550735/
https://www.ncbi.nlm.nih.gov/pubmed/28747298
http://dx.doi.org/10.2196/medinform.7954
_version_ 1783256174450180096
author Hao, Shiying
Fu, Tianyun
Wu, Qian
Jin, Bo
Zhu, Chunqing
Hu, Zhongkai
Guo, Yanting
Zhang, Yan
Yu, Yunxian
Fouts, Terry
Ng, Phillip
Culver, Devore S
Alfreds, Shaun T
Stearns, Frank
Sylvester, Karl G
Widen, Eric
McElhinney, Doff B
Ling, Xuefeng B
author_facet Hao, Shiying
Fu, Tianyun
Wu, Qian
Jin, Bo
Zhu, Chunqing
Hu, Zhongkai
Guo, Yanting
Zhang, Yan
Yu, Yunxian
Fouts, Terry
Ng, Phillip
Culver, Devore S
Alfreds, Shaun T
Stearns, Frank
Sylvester, Karl G
Widen, Eric
McElhinney, Doff B
Ling, Xuefeng B
author_sort Hao, Shiying
collection PubMed
description BACKGROUND: Chronic kidney disease (CKD) is a major public health concern in the United States with high prevalence, growing incidence, and serious adverse outcomes. OBJECTIVE: We aimed to develop and validate a model to identify patients at risk of receiving a new diagnosis of CKD (incident CKD) during the next 1 year in a general population. METHODS: The study population consisted of patients who had visited any care facility in the Maine Health Information Exchange network any time between January 1, 2013, and December 31, 2015, and had no history of CKD diagnosis. Two retrospective cohorts of electronic medical records (EMRs) were constructed for model derivation (N=1,310,363) and validation (N=1,430,772). The model was derived using a gradient tree-based boost algorithm to assign a score to each individual that measured the probability of receiving a new diagnosis of CKD from January 1, 2014, to December 31, 2014, based on the preceding 1-year clinical profile. A feature selection process was conducted to reduce the dimension of the data from 14,680 EMR features to 146 as predictors in the final model. Relative risk was calculated by the model to gauge the risk ratio of the individual to population mean of receiving a CKD diagnosis in next 1 year. The model was tested on the validation cohort to predict risk of CKD diagnosis in the period from January 1, 2015, to December 31, 2015, using the preceding 1-year clinical profile. RESULTS: The final model had a c-statistic of 0.871 in the validation cohort. It stratified patients into low-risk (score 0-0.005), intermediate-risk (score 0.005-0.05), and high-risk (score ≥ 0.05) levels. The incidence of CKD in the high-risk patient group was 7.94%, 13.7 times higher than the incidence in the overall cohort (0.58%). Survival analysis showed that patients in the 3 risk categories had significantly different CKD outcomes as a function of time (P<.001), indicating an effective classification of patients by the model. CONCLUSIONS: We developed and validated a model that is able to identify patients at high risk of having CKD in the next 1 year by statistically learning from the EMR-based clinical history in the preceding 1 year. Identification of these patients indicates care opportunities such as monitoring and adopting intervention plans that may benefit the quality of care and outcomes in the long term.
format Online
Article
Text
id pubmed-5550735
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-55507352017-08-29 Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine Hao, Shiying Fu, Tianyun Wu, Qian Jin, Bo Zhu, Chunqing Hu, Zhongkai Guo, Yanting Zhang, Yan Yu, Yunxian Fouts, Terry Ng, Phillip Culver, Devore S Alfreds, Shaun T Stearns, Frank Sylvester, Karl G Widen, Eric McElhinney, Doff B Ling, Xuefeng B JMIR Med Inform Original Paper BACKGROUND: Chronic kidney disease (CKD) is a major public health concern in the United States with high prevalence, growing incidence, and serious adverse outcomes. OBJECTIVE: We aimed to develop and validate a model to identify patients at risk of receiving a new diagnosis of CKD (incident CKD) during the next 1 year in a general population. METHODS: The study population consisted of patients who had visited any care facility in the Maine Health Information Exchange network any time between January 1, 2013, and December 31, 2015, and had no history of CKD diagnosis. Two retrospective cohorts of electronic medical records (EMRs) were constructed for model derivation (N=1,310,363) and validation (N=1,430,772). The model was derived using a gradient tree-based boost algorithm to assign a score to each individual that measured the probability of receiving a new diagnosis of CKD from January 1, 2014, to December 31, 2014, based on the preceding 1-year clinical profile. A feature selection process was conducted to reduce the dimension of the data from 14,680 EMR features to 146 as predictors in the final model. Relative risk was calculated by the model to gauge the risk ratio of the individual to population mean of receiving a CKD diagnosis in next 1 year. The model was tested on the validation cohort to predict risk of CKD diagnosis in the period from January 1, 2015, to December 31, 2015, using the preceding 1-year clinical profile. RESULTS: The final model had a c-statistic of 0.871 in the validation cohort. It stratified patients into low-risk (score 0-0.005), intermediate-risk (score 0.005-0.05), and high-risk (score ≥ 0.05) levels. The incidence of CKD in the high-risk patient group was 7.94%, 13.7 times higher than the incidence in the overall cohort (0.58%). Survival analysis showed that patients in the 3 risk categories had significantly different CKD outcomes as a function of time (P<.001), indicating an effective classification of patients by the model. CONCLUSIONS: We developed and validated a model that is able to identify patients at high risk of having CKD in the next 1 year by statistically learning from the EMR-based clinical history in the preceding 1 year. Identification of these patients indicates care opportunities such as monitoring and adopting intervention plans that may benefit the quality of care and outcomes in the long term. JMIR Publications 2017-07-26 /pmc/articles/PMC5550735/ /pubmed/28747298 http://dx.doi.org/10.2196/medinform.7954 Text en ©Shiying Hao, Tianyun Fu, Qian Wu, Bo Jin, Chunqing Zhu, Zhongkai Hu, Yanting Guo, Yan Zhang, Yunxian Yu, Terry Fouts, Phillip Ng, Devore S Culver, Shaun T Alfreds, Frank Stearns, Karl G Sylvester, Eric Widen, Doff B McElhinney, Xuefeng B Ling. Originally published in JMIR Medical Informatics (http://medinform.jmir.org), 26.07.2017. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Medical Informatics, is properly cited. The complete bibliographic information, a link to the original publication on http://medinform.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Hao, Shiying
Fu, Tianyun
Wu, Qian
Jin, Bo
Zhu, Chunqing
Hu, Zhongkai
Guo, Yanting
Zhang, Yan
Yu, Yunxian
Fouts, Terry
Ng, Phillip
Culver, Devore S
Alfreds, Shaun T
Stearns, Frank
Sylvester, Karl G
Widen, Eric
McElhinney, Doff B
Ling, Xuefeng B
Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine
title Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine
title_full Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine
title_fullStr Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine
title_full_unstemmed Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine
title_short Estimating One-Year Risk of Incident Chronic Kidney Disease: Retrospective Development and Validation Study Using Electronic Medical Record Data From the State of Maine
title_sort estimating one-year risk of incident chronic kidney disease: retrospective development and validation study using electronic medical record data from the state of maine
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5550735/
https://www.ncbi.nlm.nih.gov/pubmed/28747298
http://dx.doi.org/10.2196/medinform.7954
work_keys_str_mv AT haoshiying estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT futianyun estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT wuqian estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT jinbo estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT zhuchunqing estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT huzhongkai estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT guoyanting estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT zhangyan estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT yuyunxian estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT foutsterry estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT ngphillip estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT culverdevores estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT alfredsshaunt estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT stearnsfrank estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT sylvesterkarlg estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT wideneric estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT mcelhinneydoffb estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine
AT lingxuefengb estimatingoneyearriskofincidentchronickidneydiseaseretrospectivedevelopmentandvalidationstudyusingelectronicmedicalrecorddatafromthestateofmaine