Data-based Decision Rules to Personalize Depression Follow-up
Abstract Depression is a common mental illness with complex and heterogeneous progression dynamics. Risk grouping of depression treatment population based on their longitudinal patterns has the potential to enable cost-effective monitoring policy design. This paper establishes a rule-based method to...
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2018-03-01
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Online Access: | https://doi.org/10.1038/s41598-018-23326-1 |
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doaj-4da3f45378fe453681459c04b5a1c5c32020-12-08T03:39:55ZengNature Publishing GroupScientific Reports2045-23222018-03-01811810.1038/s41598-018-23326-1Data-based Decision Rules to Personalize Depression Follow-upYing Lin0Shuai Huang1Gregory E. Simon2Shan Liu3Department of Industrial Engineering, University of HoustonDepartment of Industrial and Systems Engineering, University of Washington, Box 352650Kaiser Permanente Washington Health Research Institute, 1730 Minor Ave, Suite 1600Department of Industrial and Systems Engineering, University of Washington, Box 352650Abstract Depression is a common mental illness with complex and heterogeneous progression dynamics. Risk grouping of depression treatment population based on their longitudinal patterns has the potential to enable cost-effective monitoring policy design. This paper establishes a rule-based method to identify a set of risk predictive patterns from person-level longitudinal disease measurements by integrating the data transformation, rule discovery and rule evaluation. We further extend the identified rules to create rule-based monitoring strategies to adaptively monitor individuals with different disease severities. We applied the rule-based method on an electronic health record (EHR) dataset of depression treatment population containing person-level longitudinal Patient Health Questionnaire (PHQ)-9 scores for assessing depression severity. 12 risk predictive rules are identified, and the rule-based prognostic model based on identified rules enables more accurate prediction of disease severity than other prognostic models including RuleFit, logistic regression and Support Vector Machine. Two rule-based monitoring strategies outperform the latest PHQ-9 based monitoring strategy by providing higher sensitivity and specificity. The rule-based method can lead to a better understanding of disease dynamics, achieving more accurate prognostics of disease progressions, personalizing follow-up intervals, and designing cost-effective monitoring of patients in clinical practice.https://doi.org/10.1038/s41598-018-23326-1 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ying Lin Shuai Huang Gregory E. Simon Shan Liu |
spellingShingle |
Ying Lin Shuai Huang Gregory E. Simon Shan Liu Data-based Decision Rules to Personalize Depression Follow-up Scientific Reports |
author_facet |
Ying Lin Shuai Huang Gregory E. Simon Shan Liu |
author_sort |
Ying Lin |
title |
Data-based Decision Rules to Personalize Depression Follow-up |
title_short |
Data-based Decision Rules to Personalize Depression Follow-up |
title_full |
Data-based Decision Rules to Personalize Depression Follow-up |
title_fullStr |
Data-based Decision Rules to Personalize Depression Follow-up |
title_full_unstemmed |
Data-based Decision Rules to Personalize Depression Follow-up |
title_sort |
data-based decision rules to personalize depression follow-up |
publisher |
Nature Publishing Group |
series |
Scientific Reports |
issn |
2045-2322 |
publishDate |
2018-03-01 |
description |
Abstract Depression is a common mental illness with complex and heterogeneous progression dynamics. Risk grouping of depression treatment population based on their longitudinal patterns has the potential to enable cost-effective monitoring policy design. This paper establishes a rule-based method to identify a set of risk predictive patterns from person-level longitudinal disease measurements by integrating the data transformation, rule discovery and rule evaluation. We further extend the identified rules to create rule-based monitoring strategies to adaptively monitor individuals with different disease severities. We applied the rule-based method on an electronic health record (EHR) dataset of depression treatment population containing person-level longitudinal Patient Health Questionnaire (PHQ)-9 scores for assessing depression severity. 12 risk predictive rules are identified, and the rule-based prognostic model based on identified rules enables more accurate prediction of disease severity than other prognostic models including RuleFit, logistic regression and Support Vector Machine. Two rule-based monitoring strategies outperform the latest PHQ-9 based monitoring strategy by providing higher sensitivity and specificity. The rule-based method can lead to a better understanding of disease dynamics, achieving more accurate prognostics of disease progressions, personalizing follow-up intervals, and designing cost-effective monitoring of patients in clinical practice. |
url |
https://doi.org/10.1038/s41598-018-23326-1 |
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