Abstract

BackgroundMood disorders (MDS) are a type of mental health illness that effects millions of people in the United States. Early prediction of MDS can give providers greater opportunity to treat these disorders. We hypothesized that longitudinal cardiovascular health (CVH) measurements would be informative for MDS prediction.MethodsTo test this hypothesis, the American Heart Association’s Guideline Advantage (TGA) dataset was used, which contained longitudinal EHR from 70 outpatient clinics. The statistical analysis and machine learning models were employed to identify the associations of the MDS and the longitudinal CVH metrics and other confounding factors.ResultsPatients diagnosed with MDS consistently had a higher proportion of poor CVH compared to patients without MDS, with the largest difference between groups for Body mass index (BMI) and Smoking. Race and gender were associated with status of CVH metrics. Approximate 46% female patients with MDS had a poor hemoglobin A1C compared to 44% of those without MDS; 62% of those with MDS had poor BMI compared to 47% of those without MDS; 59% of those with MDS had poor blood pressure (BP) compared to 43% of those without MDS; and 43% of those with MDS were current smokers compared to 17% of those without MDS.ConclusionsWomen and ethnoracial minorities with poor cardiovascular health measures were associated with a higher risk of development of MDS, which indicated the high utility for using routine medical records data collected in care to improve detection and treatment for MDS among patients with poor CVH.

Highlights

  • Mood disorders (MDS) are a type of mental health illness that effects millions of people in the United States

  • Association between cardiovascular health (CVH) health metrics and MDS Patients diagnosed with MDS consistently had a higher proportion of poor CVH compared to patients without MDS, with the largest difference between groups for Body mass index (BMI) and Smoking

  • A1C compared to 44% of those without MDS; 62% of those with MDS had poor BMI compared to 47% of those without MDS; 59% of those with MDS had poor blood pressure (BP) compared to 43% of those without MDS; and 43% of those with MDS were current smokers compared to 17% of those without MDS

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Summary

Introduction

Mood disorders (MDS) are a type of mental health illness that effects millions of people in the United States. We hypothesized that longitudinal cardiovascular health (CVH) measurements would be informative for MDS prediction. Mood disorders (MDS) are a type of mental health illness where the primary problem is a person’s abnormal changes in mood. MDS often present as chronic, waxing and waning conditions where mood issues, such as depression and anxiety, significantly cause distress or impairment in a person’s life [1]. MDS effects millions of people in the United States (U.S.) and MDS affects approximately 21.4% of U.S adults across the lifespan [2]. Risk factors associated with MDS are varied. The following risk factors are commonly identified: demographics, cognitive

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