Inequalities in Access to Healthcare Faced by Women Who Are Deaf
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Public Health
Social Sciences
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The Cheshire Deaf Women's Health Project undertook a research study to assess the access to healthcare of women who are deaf in Cheshire, UK. Group discussions took place with 13 women who were hard of hearing and 14 women who were Deaf Sign Language users. Questionnaires were distributed to a stratified random sample of 103 women taken from the social services register, 38 of which were returned. In order to reach more women whose first language was British Sign Language, 129 questionnaires were distributed to the leaders of various clubs and organizations for people who are deaf, and 100 of these were returned. The data revealed inequities in access to healthcare. For example, women who are deaf face a lack of awareness by health staff of how to communicate with them. The survey confirmed that these problems are of major importance to the majority of women who are deaf. For example, fewer than one in 10 deaf women said that they usually fully understand what the doctor says to them when they visit the doctor on their own. There are many other difficulties faced by women who are deaf, leading to inequalities when they are compared with hearing people. Almost half the respondents said that they would be more likely to use health services if help and/or services for deaf women were available. The introduction of various relatively simple measures would greatly help to reduce the inequalities of access to healthcare faced by deaf women. Under the terms of the Disability Discrimination Act 1995, such action is essential if providers are to avoid facing possible legal action.
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