Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with Osteoarthritis

Objective: To identify the leading predictors of co-occurring cardiovascular or gastrointestinal disorders (CV-GID) in a real-world cohort of elderly with osteoarthritis (OA). Method: An observational retrospective cohort study using data from Optum’s deidentified Clinformatics® Data Mart was conduc...

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Main Authors: Jayeshkumar Patel, Amit Ladani, Nethra Sambamoorthi, Traci LeMasters, Nilanjana Dwibedi, Usha Sambamoorthi
Format: Article
Language:English
Published: Elsevier 2021-06-01
Series:Osteoarthritis and Cartilage Open
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S266591312100011X
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spelling doaj-9bbab49287ce4f468d7116df14fbabb52021-10-05T04:20:48ZengElsevierOsteoarthritis and Cartilage Open2665-91312021-06-0132100148Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with OsteoarthritisJayeshkumar Patel0Amit Ladani1Nethra Sambamoorthi2Traci LeMasters3Nilanjana Dwibedi4Usha Sambamoorthi5Department of Pharmaceutical Systems and Policy, West Virginia University, Morgantown, USA; Corresponding author.Rheumatology, West Virginia University Medicine, Morgantown, WV, USAMasters in Data Science Program, School of Professional Studies, Northwestern University, Chicago, IL, USADepartment of Pharmaceutical Systems and Policy, West Virginia University, Morgantown, USADepartment of Pharmaceutical Systems and Policy, West Virginia University, Morgantown, USADepartment of Pharmaceutical Systems and Policy, West Virginia University, Morgantown, USA; Department of Pharmacotherapy, University of North Texas Health Sciences Center College of Pharmacy, USA; Vashisht Professor, Health Disparities, Health Education, Awareness & Research in Disparities Scholar, Texas Center for Health Disparities, HSC, USAObjective: To identify the leading predictors of co-occurring cardiovascular or gastrointestinal disorders (CV-GID) in a real-world cohort of elderly with osteoarthritis (OA). Method: An observational retrospective cohort study using data from Optum’s deidentified Clinformatics® Data Mart was conducted. Elderly with OA were identified in 2015 and were followed for two years to identify co-occurring CV-GID including ischemic heart disease, stroke, heart failure, dyspepsia, gastroesophageal reflux disorder, and peptic ulcer disease. Random Forest (RF) and Partial Dependence Plots (PDP) were used to identify the leading predictors of CV-GID and to examine their associations. Multivariable logistic regression was also used to examine the association of the leading predictors with CV-GID. Results: Our study cohort consisted of 45,385 elderly with OA (mean age 76.0 years). CV-GID were present in 59% of elderly. Using RF, age was found to be the strongest predictor of CV-GID followed by cardiac arrhythmia, duration of opioid use, number of orthopedist or physical therapy visits, number of intra-articular corticosteroid injections, polypharmacy, duration of non-selective nonsteroidal anti-inflammatory drugs or oral corticosteroids, and hypertension. The PDPs demonstrated that higher age, cardiac arrhythmia, longer durations of opioid or oral corticosteroids, higher number of physical therapy visits or intra-articular corticosteroid use, polypharmacy, and hypertension were associated with a higher risk of CV-GID. Conclusion: CV-GIDs are common among elderly with OA and can be predicted based on certain clinical factors. Machine learning methods with PDPs can be used to improve the interpretability and inform decision-making.http://www.sciencedirect.com/science/article/pii/S266591312100011XOsteoarthritisCardiovascular diseaseGastrointestinal disordersMachine learningPredictive modelingRandom forest
collection DOAJ
language English
format Article
sources DOAJ
author Jayeshkumar Patel
Amit Ladani
Nethra Sambamoorthi
Traci LeMasters
Nilanjana Dwibedi
Usha Sambamoorthi
spellingShingle Jayeshkumar Patel
Amit Ladani
Nethra Sambamoorthi
Traci LeMasters
Nilanjana Dwibedi
Usha Sambamoorthi
Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with Osteoarthritis
Osteoarthritis and Cartilage Open
Osteoarthritis
Cardiovascular disease
Gastrointestinal disorders
Machine learning
Predictive modeling
Random forest
author_facet Jayeshkumar Patel
Amit Ladani
Nethra Sambamoorthi
Traci LeMasters
Nilanjana Dwibedi
Usha Sambamoorthi
author_sort Jayeshkumar Patel
title Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with Osteoarthritis
title_short Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with Osteoarthritis
title_full Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with Osteoarthritis
title_fullStr Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with Osteoarthritis
title_full_unstemmed Predictors of Co-occurring Cardiovascular and Gastrointestinal Disorders among Elderly with Osteoarthritis
title_sort predictors of co-occurring cardiovascular and gastrointestinal disorders among elderly with osteoarthritis
publisher Elsevier
series Osteoarthritis and Cartilage Open
issn 2665-9131
publishDate 2021-06-01
description Objective: To identify the leading predictors of co-occurring cardiovascular or gastrointestinal disorders (CV-GID) in a real-world cohort of elderly with osteoarthritis (OA). Method: An observational retrospective cohort study using data from Optum’s deidentified Clinformatics® Data Mart was conducted. Elderly with OA were identified in 2015 and were followed for two years to identify co-occurring CV-GID including ischemic heart disease, stroke, heart failure, dyspepsia, gastroesophageal reflux disorder, and peptic ulcer disease. Random Forest (RF) and Partial Dependence Plots (PDP) were used to identify the leading predictors of CV-GID and to examine their associations. Multivariable logistic regression was also used to examine the association of the leading predictors with CV-GID. Results: Our study cohort consisted of 45,385 elderly with OA (mean age 76.0 years). CV-GID were present in 59% of elderly. Using RF, age was found to be the strongest predictor of CV-GID followed by cardiac arrhythmia, duration of opioid use, number of orthopedist or physical therapy visits, number of intra-articular corticosteroid injections, polypharmacy, duration of non-selective nonsteroidal anti-inflammatory drugs or oral corticosteroids, and hypertension. The PDPs demonstrated that higher age, cardiac arrhythmia, longer durations of opioid or oral corticosteroids, higher number of physical therapy visits or intra-articular corticosteroid use, polypharmacy, and hypertension were associated with a higher risk of CV-GID. Conclusion: CV-GIDs are common among elderly with OA and can be predicted based on certain clinical factors. Machine learning methods with PDPs can be used to improve the interpretability and inform decision-making.
topic Osteoarthritis
Cardiovascular disease
Gastrointestinal disorders
Machine learning
Predictive modeling
Random forest
url http://www.sciencedirect.com/science/article/pii/S266591312100011X
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