Development and validation of the cancer self-perceived discrimination scale for Chinese cancer patients

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Abstract

Background: To develop a Cancer Self-Perceived Discrimination Scale (CSPDS) for Chinese cancer patients and to assess its reliability and validity. Method: A total of 178 patients were recruited and the classical test theory was used to develop the CSPDS. Item analysis was adapted to improve the preliminary version of the CSPDS, then the reliability, the validity and the acceptability of the final version of CSPDS were assessed. Results: This CSPDS contained 14 items classified into 3 subscales: social withdrawal with 7 items, stigma with 4 and self-deprecation with 3. Good validity (χ2/df = 1.216, GFI = 0.935, AGFI = 0.903, I-CVIs> 0.80) and good reliability (Cronbach's alpha = 0.829, Spearman-Brown coefficient = 0.827, test-retest reliability coefficient = 0.944) were found. The completion time was 6.06 ± 1.80 min. Participants who were female and reported poor self-rated health tended to have higher CSPDS scores (P < 0.05). Conclusions: The results indicated that this CSPDS could be used to assess the level of self-perceived discrimination and to preliminarily screen perceived discrimination among Chinese cancer patients, especially in Southwest China. It may provide a basis for scientific assessment of targeted patient education, psychological counseling, social interventions, and psychotherapy in the future.

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Feng, L. sen, Li, X. yue, Wang, H. rong, Zhan, J. jing, Chen, D., & Wang, Y. feng. (2018). Development and validation of the cancer self-perceived discrimination scale for Chinese cancer patients. Health and Quality of Life Outcomes, 16(1). https://doi.org/10.1186/s12955-018-0984-x

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