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Predictors of non-compliance in primary care of patients with chronic disease Roger Zoorob, MD, MPH, FAAFP; Mohamad Sidani, MD, MS; Medhat Kalliny, MD,

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Presentation on theme: "Predictors of non-compliance in primary care of patients with chronic disease Roger Zoorob, MD, MPH, FAAFP; Mohamad Sidani, MD, MS; Medhat Kalliny, MD,"— Presentation transcript:

1 Predictors of non-compliance in primary care of patients with chronic disease Roger Zoorob, MD, MPH, FAAFP; Mohamad Sidani, MD, MS; Medhat Kalliny, MD, PhD; Kristy M. Durkin, MSW, LCSW; and Robert Levine, MD Department of Family and Community Medicine, Meharry Medical College Nashville, Tennessee

2 Presenter Disclosures The following personal financial relationships with commercial interests relevant to this presentation existed during the past 12 months: Mohamad Sidani, MD, MS “No relationships to disclose”

3 OJECTIVES: 1) What are the barriers of compliance among patients with chronic Diseases ? Scope of the Issue  Compliance is a key concept in health care and affects all areas of health care including chronic diseases.  Non-compliance has previously been a label attached to many patients without much thought having been given to the causes of poor compliance.  A better understanding of the factors affecting compliance, is imperative in order to improved outcomes. Objectives/Issue

4 Study Purpose  The purpose of our study was to investigate the predictors of non-compliance among patients living with chronic diseases (n=267) who were seen at our two Family Medicine Residency-based clinics. Our Study

5 Participant Criteria  Diagnosed with Type 2 diabetes, hypertension, hyperlipidemia, or obesity  Patients seen at either of our two Family Health Clinics  Meharry Family Clinic (49.2%) in a metropolitan area of Nashville  Madison Family Clinic (50.8%) in a suburban area half an hour outside Nashville city. Our Study

6 Design Method  Data was collected from the patient's electronic health record from 2008 to 2010.  We compared the effect of gender, age, ethnicity, marital status, employment, insurance, tobacco or alcohol use, clinic location, and co-morbidity on compliance.  Used Chi-Square, t-tests, and logistic regression to analyze results. Our Study

7 Patients were deemed compliant if they had a minimum of two regular check-ups per year. Compliance

8 Gender was not found to be a predictor of non-compliance (p=.379). Gender

9 Ethnicity was not found to be a predictor of non- compliance (p=.379) Ethnicity

10 Age was not found to be a predictor of non-compliance (p=.930) AGE

11 Marital Status was not found to be a predictor of non- compliance (p=.721) Marital Status

12 Tobacco (p=.375) was not found to be a predictor of non- compliance Substance Use

13 Alcohol use (p=.535) was not found to be a predictor of non-compliance. Substance Use

14 Location of residence (p=.117) was not found to be a predictor of non-compliance.

15 clinic location was not found to be a predictor of non- compliance (p<.001)

16 Being Unemployed/Disabled was not found to be a predictor of non-compliance (p=.290) Economics

17 Patients having insurance were significantly more compliant (53.5%) than those without (5.7%) (p<.000). Economics

18  Having Comorbidity was not found to be a predictor of non-compliance (p=.168) 31.7% With and 43.2% Without were compliant  Having Hypertension was not found to be a predictor of non-compliance (p=.671) 32.7% With and 35.7% Without were compliant  Having Hyperlipidemia was not found to be a predictor of non-compliance (p=.209) 36.1% With and 28.6% Without were compliant  Those having Obesity were significantly more compliant than those who did not (40.1% versus 10%) (p<.000). Comorbidity

19 Co-morbidity

20  Patients who received Diet Counseling (n=185) from the clinic’s nutritionist were significantly more complaint than those who did not (n=82) (43.8% verses 9.8%) (p<.000).  patients who received Exercise Counseling (n=156) from the clinic’s nutritionist were significantly more complaint than those who did not (n=111) (44.9% verses 17.1%) (p<.000). Counseling

21 Predictors of Non-Compliance Clinic Location  patients seen in the suburban clinic (Madison) were more likely to be compliant than those from the urban clinic (Meharry) (44.2% versus 24.8%)(p<.01).  When both insurance and clinic were entered into a logistic regression model, insurance status was a significant predictor of compliance while clinic location was not.  A follow-up chi-square revealed that patients from the suburban clinic (Madison) were significantly more likely to have insurance than the urban clinic (72% versus 48%) (p<.01). Findings

22 Predictors of Non-Compliance Obesity  Our findings suggest that those with obesity make more office visits.  Obese were significantly more compliant than those who were not (40.1% vs.10%)(p<.000).  Almost all of the patients who were compliant were also obese (93.3%) compared to patients who were compliant and not obese (6.7%)(p<.01). Findings

23 Predictors of Non-Compliance Insurance  Not having insurance is a significant risk factor for noncompliance among patients with chronic diseases.  Patients having insurance were significantly more compliant (53.5%) than those without (5.7%) (p<.000).  Almost all patients with insurance (93.3%) were more compliant than those without (36%)(p<.01)  Those with insurance were also less likely to drop out after the first visit compared to those without (22% versus 73%)(p<.01). Findings

24 Any Questions or Comments?


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