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Multidimensional PROMIS Self-Efficacy Measure for Managing Chronic Conditions

Author

Listed:
  • Mi Jung Lee

    (University of Florida
    Veterans Rural Health Resource Center - Gainesville (VRHRC-GNV))

  • Sergio Romero

    (University of Florida
    Veterans Rural Health Resource Center - Gainesville (VRHRC-GNV))

  • Ren Liu

    (University of California, Merced)

  • Craig A. Velozo

    (Medical University of South Carolina)

  • Ann L. Gruber-Baldini

    (University of Maryland School of Medicine)

  • Lisa M. Shulman

    (University of Maryland School of Medicine)

Abstract

This study used a multidimensional categorical model to concurrently estimate individual’s self-efficacy for managing their chronic conditions across five related domains measured with the Patient-Reported Outcomes Measurement Information System Self-Efficacy Measure for managing chronic conditions (PROMIS-SE). A total of 1087 individuals with chronic conditions was analyzed in this study. A Diagnostic Classification Model (DCM) was applied to PROMIS-SE’s 4-item short forms measuring five behavioral domains (daily activities, emotions, medications and treatments, social interactions, and symptoms) to provide patient multidimensional categorical outcomes (high, transition, or low self-efficacy). Psychometric properties were examined using classification consistency, model fit, entropy value, domain and item-level information, and patient profiles. DCM PROMIS-SE showed adequate classification consistency, fit, and high entropy values. Five domains demonstrated different average probabilities of having high self-efficacy for patients with chronic conditions from 42.0% (emotions) to 70% (medications and treatments). Rating scale analysis indicated the rating 5 (very confident) most critically discriminated patients with high or low self-efficacy for managing chronic conditions across all domains. Only four common patient profile groups contained more than 5% of the sample. Acceptable psychometric properties indicate that DCM PROMIS-SE satisfactorily classified patients with chronic conditions. This study demonstrates a feasible approach for other existing multidimensional measures to classify patients’ conditions and support clinical judgment.

Suggested Citation

  • Mi Jung Lee & Sergio Romero & Ren Liu & Craig A. Velozo & Ann L. Gruber-Baldini & Lisa M. Shulman, 2021. "Multidimensional PROMIS Self-Efficacy Measure for Managing Chronic Conditions," Applied Research in Quality of Life, Springer;International Society for Quality-of-Life Studies, vol. 16(5), pages 1909-1924, October.
  • Handle: RePEc:spr:ariqol:v:16:y:2021:i:5:d:10.1007_s11482-020-09842-1
    DOI: 10.1007/s11482-020-09842-1
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