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Analysis Report: Weight Loss Clinic Survey

Analysis Report: Weight Loss Clinic Survey

Part A. Multiple Linear Regression

Hypothesis

The null hypothesis is that there is no relationship between the client characteristics (sex, age, diet adherence, exercise minutes per day, confidence in losing weight, and minutes sedentary per day) and the amount of weight lost (lbslost). The alternative hypothesis is that at least one of these client characteristics is significantly associated with weight loss.

Variable Description

The data consists of 51 observations with eight variables. Sex is coded as a binary variable with 56.9% of participants being male (coded as 1). The mean age of participants is 26.9 years (SD = 8.1), ranging from 19 to 46 years. Diet adherence is coded as a binary variable, with 62.7% of participants being diet adherent (coded as 1). The mean minutes of exercise per day is 39.6 minutes (SD = 5.5), ranging from 30 to 50 minutes. Participants’ confidence in losing weight averaged 17.8 (SD = 3.4) on the confidence scale, ranging from 11 to 26. The mean minutes sedentary per day is 114.4 minutes (SD = 4.4), ranging from 106 to 124 minutes. The dependent variable, pounds lost (lbslost), averages 24.4 pounds (SD = 5.1), with a range from 14 to 37 pounds. Additionally, 49.0% of participants would recommend the clinic to others.

Table 1: Descriptive Statistics

sex age diet exercise confid sedentary lbslost recommend
Mean 0.568627 26.94118 0.627451 39.58823529 17.78431373 114.3922 24.43137 0.490196078
Standard Error 0.070041 1.132899 0.068375 0.768587434 0.471388209 0.615536 0.710291 0.070697084
Median 1 23 1 39 17 114 24 0
Mode 1 22 1 39 16 114 25 0
Standard Deviation 0.500196 8.090517 0.488294 5.488812151 3.366385156 4.395809 5.072494 0.504878164
Sample Variance 0.250196 65.45647 0.238431 30.12705882 11.33254902 19.32314 25.7302 0.254901961
Kurtosis -1.99843 0.567563 -1.77606 -0.88296852 -0.10990102 -0.37228 -0.04011 -2.081632653
Skewness -0.2856 1.301572 -0.54333 -0.03457398 0.416958676 0.154949 0.254073 0.040421957
Range 1 27 1 20 15 18 23 1
Minimum 0 19 0 30 11 106 14 0
Maximum 1 46 1 50 26 124 37 1
Sum 29 1374 32 2019 907 5834 1246 25
Count 51 51 51 51 51 51 51 51

Bivariate Associations

Examining the correlation matrix, there are several significant correlations between variables. The strongest correlations with pounds lost (lbslost) are with confidence (r = 0.52), exercise (r = -0.54), and diet adherence (r = 0.44). The negative correlation with exercise may seem counterintuitive but could suggest those who need to lose more weight initially exercise less. There are also important correlations among the independent variables. Exercise and sedentary time are highly correlated (r = 0.84), suggesting potential multicollinearity issues. Exercise and confidence also have a moderately strong negative correlation (r = -0.46), indicating that those who exercise less may have higher confidence in losing weight through other means.

Table 2: Correlation Analysis

  sex age diet exercise confid sedentary lbslost recommend
sex 1
age -0.04099 1
diet -0.09794 0.136094 1
exercise 0.014141 0.321913 -0.25986 1
confid -0.04448 0.162546 0.412486 -0.45626 1
sedentary -0.02158 0.28128 -0.30328 0.836576 -0.35233 1
lbslost 0.11422 -0.06029 0.437617 -0.54159 0.515046 -0.45352 1
recommend 0.299702 -0.01728 0.187704 -0.0484 0.075219 0.01979 0.462443 1

Multiple Linear Regression Analysis

Multiple regression analysis was conducted to determine the relationship between client characteristics and weight loss. The assumptions of linearity, normality of residuals, homoscedasticity, and absence of influential outliers were checked and found to be satisfactory for this analysis.

The regression model with all six independent variables (sex, age, diet adherence, exercise, confidence, and sedentary time) explains 45.7% of the variance in weight loss (R² = 0.457, Adjusted R² = 0.383). The overall model is statistically significant (F(6, 44) = 6.17, p < 0.001), indicating that this set of variables significantly predicts weight loss.

In examining individual predictors, diet adherence was found to be a statistically significant predictor of weight loss (b = 2.76, p = 0.042). This indicates that participants who adhered to their diet lost approximately 2.76 more pounds than those who did not, controlling for other variables. Exercise (b = -0.38, p = 0.073) and confidence (b = 0.38, p = 0.080) were marginally significant predictors. For each additional minute of exercise per day, participants lost 0.38 fewer pounds, and for each additional point on the confidence scale, participants lost 0.38 more pounds after controlling for other variables.

Sex (b = 1.60, p = 0.166), age (b = -0.01, p = 0.891), and sedentary time (b = 0.08, p = 0.745) were not statistically significant predictors of weight loss in this model. The non-significance of sedentary time, despite its strong correlation with exercise, may be due to multicollinearity between these variables.

Table 3: Multiple Linear Regression Analysis

SUMMARY OUTPUT
Regression Statistics
Multiple R 0.675865
R Square 0.456793
Adjusted R Square 0.38272
Standard Error 3.985316
Observations 51
ANOVA
  df SS MS F Significance F
Regression 6 587.669 97.94484 6.166744786 9.42604E-05
Residual 44 698.8408 15.88275
Total 50 1286.51
  Coefficients Standard Error t Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%
Intercept 21.39604 21.9885 0.973056 0.335844629 -22.91885877 65.71095 -22.9189 65.71094672
sex 1.60206 1.136043 1.41021 0.165508004 -0.687484701 3.891604 -0.68748 3.891604384
age -0.01105 0.079847 -0.13844 0.890525465 -0.1719756 0.149868 -0.17198 0.149867708
diet 2.757065 1.315119 2.096437 0.041826919 0.106616379 5.407514 0.106616 5.407514305
exercise -0.38006 0.206681 -1.8389 0.072685424 -0.796602651 0.036473 -0.7966 0.036473479
confid 0.37944 0.212083 1.789107 0.080482752 -0.047986091 0.806866 -0.04799 0.806866276
sedentary 0.078591 0.239852 0.327666 0.744718447 -0.404799333 0.561982 -0.4048 0.561982154

Summary of Multiple Linear Regression Findings

Multiple linear regression was used to examine the relationship between client characteristics and weight loss at a weight loss clinic. Six predictors were examined: sex, age, diet adherence, exercise minutes per day, confidence in losing weight, and minutes sedentary per day. The model explained 45.7% of the variance in weight loss and was statistically significant (F(6, 44) = 6.17, p < 0.001).

Diet adherence emerged as the only statistically significant predictor (b = 2.76, p = 0.042), suggesting that adhering to the diet plan is associated with greater weight loss, controlling for other factors. Exercise and confidence were marginally significant predictors, with exercise surprisingly showing a negative relationship with weight loss (b = -0.38, p = 0.073) and confidence showing a positive relationship (b = 0.38, p = 0.080). The negative relationship with exercise might be explained by those with more weight to lose initially exercising less, or by other factors not captured in the model. Sex, age, and sedentary time were not significant predictors of weight loss in this model.

Part B. Multiple Logistic Regression

Appropriateness of Logistic Regression

Multiple logistic regression is appropriate for this analysis because the outcome variable (recommend) is binary, coded as 1 (yes) or 0 (no). We are attempting to predict the likelihood of a participant recommending the clinic based on several predictor variables, which aligns with the purpose of logistic regression—to model the probability of a binary outcome.

Hypothesis

The null hypothesis is that there is no relationship between the client characteristics (weight loss, sex, age, and diet adherence) and the likelihood of recommending the clinic to others. The alternative hypothesis is that at least one of these client characteristics is significantly associated with the likelihood of recommending the clinic.

Proportion of Patients Recommending the Clinic

Based on the descriptive statistics, 25 out of 51 participants (49.0%) indicated they would recommend the clinic to others.

Table 4: Logistic Regression

B S.E. Sig. OR 95% C.I.for OR
Lower Upper
Step 1a Lbslost .248 .095 .009 1.282 1.064 1.544
Sex (female vs male) 1.393 .694 .045 4.028 1.034 15.683
Age .011 .044 .801 1.011 .928 1.102
Diet .113 .757 .882 1.119 .254 4.935
Constant -7.228 2.780 .009 .001

Summary of Logistic Regression Findings

Multiple logistic regression was used to examine factors associated with participants’ likelihood of recommending the weight loss clinic to others. The analysis included weight loss (lbslost), sex, age, and diet adherence as predictors.

The analysis revealed two significant predictors of recommendation likelihood. Weight loss was significantly associated with recommending the clinic (b = 0.248, p = 0.009). For each additional pound lost, the odds of recommending the clinic increased by 28.2% (OR = 1.282, 95% CI: 1.064-1.544), controlling for other variables in the model.

Sex was also a significant predictor (B = 1.393, p = 0.045). Women were approximately four times more likely to recommend the clinic compared to men (OR = 4.028, 95% CI: 1.034-15.683) after controlling for other variables. This suggests a substantial gender difference in satisfaction or perceived effectiveness of the clinic’s services.

Age (B = 0.011, p = 0.801) and diet adherence (B = 0.113, p = 0.882) were not significantly associated with the likelihood of recommending the clinic. The non-significance of diet adherence is interesting, given its significant relationship with weight loss identified in the multiple linear regression, suggesting that diet adherence impacts weight loss but not necessarily satisfaction with the clinic as measured by willingness to recommend.

The significant constant term (B = -7.228, p = 0.009) indicates that the baseline probability of recommending the clinic (when all predictors are zero) is very low. This further emphasizes the importance of the significant predictors in increasing the likelihood of recommendation.

Part C. Sensitivity & Specificity

Table 5: Contingency Table

Gold standard positive Gold standard negative Total
Self-report + adherence 15 (True Positives) 17 (False Positives) 32
Self-report nonadherence 1 (False Negatives) 18 (True Negatives) 19
Total 16 35 51

 Sensitivity Calculation

Sensitivity = True Positives / (True Positives + False Negatives) Sensitivity = 15 / (15 + 1) = 15 / 16 = 0.9375 or 93.75%

Specificity Calculation

Specificity = True Negatives / (True Negatives + False Positives) Specificity = 18 / (18 + 17) = 18 / 35 = 0.5143 or 51.43%

Interpretation

The self-report measure of diet adherence demonstrates high sensitivity (93.75%) but moderate specificity (51.43%). This means the measure is very good at identifying individuals who are truly diet adherent (few false negatives) but less effective at identifying those who are not truly adherent (many false positives).

The high sensitivity suggests that when individuals report being adherent, and they truly are, they are accurately captured by the self-report measure. However, the moderate specificity indicates a substantial proportion of individuals who report being adherent when they are not according to the gold standard.

This finding has important implications for our regression analyses. Since diet adherence was found to be a significant predictor of weight loss, the moderate specificity of this measure may have diluted the true effect of diet adherence on weight loss. In other words, the actual impact of true diet adherence might be stronger than what we observed in our analysis because our measurement included false positives. When applying these findings in practice, clinicians should be aware that self-reported diet adherence may overestimate actual adherence, and additional verification methods might be beneficial for accurate assessment.

Part D. Run Chart

Context of Analysis

Clinic X implemented improvements to their diabetes education program in October, November, and December 2017, aiming to improve hemoglobin A1C levels among diabetic patients. Their goal was for 100% of eligible patients to achieve hemoglobin A1C levels below 7.0% by the following year, in accordance with American Diabetes Association guidelines. The clinic tracked progress bi-weekly throughout 2017 and 2018 to assess the effectiveness of their educational interventions.

Figure 1: Run Chart 1: 2017 Data

Figure 2: Run Chart 2: 2018 Data

Analysis of Run Chart Findings

The proportion of patients achieving target A1C levels showed notable changes before and after the program improvements. In 2017, prior to the full implementation of the improved education program, the mean proportion of patients with A1C levels below 7.0% was 0.30 (SD = 0.073). In 2018, following program implementation, this proportion increased substantially to 0.64 (SD = 0.080).

The run charts display a clear improvement trend. While the 2017 data shows considerable variation, with proportions generally hovering around 0.30, the 2018 data demonstrates both an increase in the overall proportion and somewhat more stability in the measurements. The improvement is particularly noticeable in early 2018, suggesting that the educational changes implemented in late 2017 had a positive impact.

Despite the improvements, the clinic did not achieve its ambitious goal of 100% of eligible patients reaching A1C levels below 7.0%. The highest proportion achieved in 2018 was approximately 0.75, indicating that while the program was effective, additional interventions may be needed to reach all patients.

To determine further steps for quality improvement, the clinic should begin collecting additional data. First, patient-specific data on adherence to medication regimens and recommended lifestyle changes would help identify barriers to achieving target A1C levels. Second, information on patient attendance and engagement with the education program would help evaluate program effectiveness and identify opportunities for enhancement. Third, socioeconomic and psychosocial data might reveal external factors affecting diabetes management. Fourth, detailed clinical data, including comorbidities, diabetes duration, and medication types, would allow for more tailored interventions. Finally, patient satisfaction and feedback data would provide insights into the patient experience and suggest potential improvements to the education program.

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Question 


Analysis Report: Weight Loss Clinic Survey

Multiple linear and logistic regression, sensitivity and specificity, and statistical control charts

Weight Loss Clinic Survey

Weight Loss Clinic Survey

Demonstrates an understanding of the data and the objectives of the assignment.

•       Describes data, noting formatting issues and how corrected

•       Provides hypotheses

•       Provides evidence of meeting assumptions of proposed tests

Conducts analysis thoughtfully, documenting analytic steps & decisions.

•       Recoded/created variables are described if used.

•       Chooses appropriate statistical technique for research question, justifying if needed.

•       Responds to analytic challenges with revised approach and justification

Interprets findings correctly, relating them to research questions, hypotheses, or assignment.

•       Answers research question with correct statistical evidence

•       Assesses strength of evidence and the effects using tests of model fit and other statistical evidence.