Technology-Supported Fantasy-Story Role-Play to Enhance Speaking and Social Interaction in Students with Intellectual Disabilities Study in Indonesian Special Primary Schools
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Background Students with intellectual disabilities often have limited opportunities to practice oral communication and peer interaction, a challenge that can intensify when learning relies on technology-mediated delivery. Pedagogical approaches that combine narrative engagement with structured participation may help expand interactional opportunities. Objective This study examined whether a learning-technology (LT)–supported role-play intervention using fantasy stories improved speaking performance and social interaction among students with intellectual disabilities in an Indonesian special primary-school context. Methods A one-group pretest–posttest design was implemented with 50 students (grades 1–6) enrolled in a special primary school in Kendari, Indonesia. Students participated in fantasy-story sessions followed by guided role-play supported by LT (multimodal prompts). Speaking skills were assessed using a performance rubric, and social interaction using structured observation ratings. Descriptive statistics and paired-sample t-tests examined pre–post differences. Results Mean speaking scores increased from 5.56 (SD = 1.21) to 5.76 (SD = 1.29) but were not statistically significant (t(49) = 1.07, p = .291; d = 0.15). Social interaction scores increased from 5.80 (SD = 1.14) to 11.22 (SD = 3.72), yielding a significant and large improvement (t(49) = 11.74, p < .001; d = 1.66). After the intervention, 62% of students reached the “enough” category for social interaction. Conclusion LT-supported fantasy-story role-play appears promising for strengthening interactional engagement, even when short-term gains in measured speaking production are limited. Future work should test multi-component models that integrate explicit language targets and augmentative supports using stronger experimental controls, and report implementation fidelity and maintenance over time.