Dear experts,
I express my sincere thank for this forum and helpful experts in this forum.
Recently, I fit a multiple linear regression model with depression (measured by CESD score) as outcome. Since this study was conducted among young women, the depression showed a right-skewed distribution. So when I fit the linear model and check the residual, I found that this model violated the normality of residuals assumption in linear regression. So depression was natural log-transformed (Logdepres) and fit the linear regression again using Logdepres. This time, the graph of residuals looks greater than no-transformed model.
My question is: In linear regression model,when outcome (continuous variable) was natural log-transformed, do I need to back-transform result (β) when interpreting results?
I attached part of my results. I plan to back-transform each β as: exp(β).
Some professor suggested to do back-transform, others think the values of back-transformed are not true. I have reviewed some articles as followed which also mentioned back-transformed for interpreting.
1. Association of Sleep Characteristics and Cognition in Older Community-Dwelling Men: the MrOS Sleep Study
2. Relationships Between Sleep Stages and Changes in Cognitive Function in Older Men: The MrOS Sleep Study
3. Associations Between Sleep-Disordered Breathing, Nocturnal Hypoxemia, and Subsequent Cognitive Decline in Older Community-Dwelling Men: The Osteoporotic Fractures in Men Sleep Study
4. Nonparametric Parameters of 24-Hour Rest–Activity Rhythms and Long-Term Cognitive Decline and Incident Cognitive Impairment in Older Men
5. Associations of 24-Hour Light Exposure and Activity Patterns and Risk of Cognitive Impairment and Decline in Older Men: The MrOS Sleep Study
6. Associations of Sleep Architecture and Sleep Disordered Breathing with Cognition in Older Community-Dwelling Men: The MrOS Sleep Study
In these 6 paper, authors described as followed in their Statistical Analysis sections.
The continuous cognitive scores were transformed to meet model requirements (log transformation for Trails B, cube
transformation for 3MS) and back-transformed for display of results.
or
Log transformation was performed on Trails B scores to improve the normality of the distribution, and the results were
back-transformed to the original scale.
So I also planned to do back-transformation of β. But I just feel a little weird for back-transformed results.
Thanks very much.
I am looking forward to your constructive opinion!
I express my sincere thank for this forum and helpful experts in this forum.
Recently, I fit a multiple linear regression model with depression (measured by CESD score) as outcome. Since this study was conducted among young women, the depression showed a right-skewed distribution. So when I fit the linear model and check the residual, I found that this model violated the normality of residuals assumption in linear regression. So depression was natural log-transformed (Logdepres) and fit the linear regression again using Logdepres. This time, the graph of residuals looks greater than no-transformed model.
My question is: In linear regression model,when outcome (continuous variable) was natural log-transformed, do I need to back-transform result (β) when interpreting results?
I attached part of my results. I plan to back-transform each β as: exp(β).
Some professor suggested to do back-transform, others think the values of back-transformed are not true. I have reviewed some articles as followed which also mentioned back-transformed for interpreting.
1. Association of Sleep Characteristics and Cognition in Older Community-Dwelling Men: the MrOS Sleep Study
2. Relationships Between Sleep Stages and Changes in Cognitive Function in Older Men: The MrOS Sleep Study
3. Associations Between Sleep-Disordered Breathing, Nocturnal Hypoxemia, and Subsequent Cognitive Decline in Older Community-Dwelling Men: The Osteoporotic Fractures in Men Sleep Study
4. Nonparametric Parameters of 24-Hour Rest–Activity Rhythms and Long-Term Cognitive Decline and Incident Cognitive Impairment in Older Men
5. Associations of 24-Hour Light Exposure and Activity Patterns and Risk of Cognitive Impairment and Decline in Older Men: The MrOS Sleep Study
6. Associations of Sleep Architecture and Sleep Disordered Breathing with Cognition in Older Community-Dwelling Men: The MrOS Sleep Study
In these 6 paper, authors described as followed in their Statistical Analysis sections.
The continuous cognitive scores were transformed to meet model requirements (log transformation for Trails B, cube
transformation for 3MS) and back-transformed for display of results.
or
Log transformation was performed on Trails B scores to improve the normality of the distribution, and the results were
back-transformed to the original scale.
So I also planned to do back-transformation of β. But I just feel a little weird for back-transformed results.
Thanks very much.
I am looking forward to your constructive opinion!
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