Activity Number:
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443
- Latent Variables, Causal Inference, Machine Learning and Other Topics in Mental Health Statistics
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Type:
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Contributed
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Date/Time:
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Thursday, August 12, 2021 : 4:00 PM to 5:50 PM
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Sponsor:
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Mental Health Statistics Section
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Abstract #317959
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Title:
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Adjusting a Patient-Reported Scale for Overlapping Symptoms of Co-Occurring Conditions
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Author(s):
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Douglas Gunzler*
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Companies:
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Case Western Reserve University
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Keywords:
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structural equation modeling;
patient-reported outcomes;
factor analysis;
multiple indicator multiple cause modeling;
depression;
hemodialysis
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Abstract:
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A typical objective in scoring a multi-item patient reported scale is to assess the level of an underlying trait. For example, the patient health questionnaire (PHQ)-9 is used as a screening tool for depression. However, a problem in the use of patient-reported scales is the inflation or deflation of scoring due to the presence or absence of overlapping symptoms when individuals suffer from co-occurring conditions. In this talk, structural equation modeling (SEM) approaches will be discussed for analysis of overlapping symptoms in co-occurring conditions using a patient reported scale. Factor scores extracted from the model can be transformed using a probability integral transformation back into the metric of the original scale. These transformed scores are adjusted scale scores that account for overlapping symptoms of the co-occurring conditions. We also discuss approaches for the validation of this adjusted scale. We illustrate these approaches for a hemodialysis-specific PHQ-9 in a sample of 924 hemodialysis subjects, many of which have co-occurring depressive symptoms.
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Authors who are presenting talks have a * after their name.
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