Children of color are diagnosed with autism later than White children. Caregivers of color are also more likely than White caregivers to report that their child's healthcare providers do not treat them as a partner, spend enough time with them, or respect their culture and values. We wanted to better understand the experiences of caregivers of color with the diagnostic process of autism spectrum disorder, from the time they discuss developmental concerns with their child's primary care provider to when the diagnosis is shared with them. We systematically reviewed the literature and found 15 articles that explored the experiences of caregivers of color. Caregivers of color described that they faced large-scale barriers, such as the cost of appointments, transportation, and long wait lists. They also reported negative experiences with providers, including providers not taking their concerns seriously, making assumptions about caregivers, and delaying referrals for an evaluation. Caregivers stated that their own lack of knowledge of autism spectrum disorder, stigma, their family's thoughts and opinions, and cultural differences between providers and caregivers served as barriers during the diagnostic process. Communication challenges were discussed and included use of medical and technical jargon, a lack of follow-up, language barriers, and difficulty obtaining high-quality interpreters. Some families described providers, other individuals, community networks, and self-advocacy as helpful during the diagnostic process. Large-scale changes are needed, such as increases in the number of providers who are trained in diagnosing Autism. Provider-level changes (e.g. implicit bias training) are also important for improving caregivers' experiences.

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http://dx.doi.org/10.1177/13623613221128171DOI Listing

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