在尼日利亚低收入社区设计一个适当的气候健康界面,用于引导自我诊断

Waku Ken-Opurum, Bobuchi Ken-Opurum, Aimebenomon Idahosa
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引用次数: 0

摘要

在尼日利亚,许多与气候有关的疾病影响着低收入社区弱势群体的健康和福祉。由于高昂的前期费用和不合格的设施,低收入医疗保健依赖于自我诊断和自我用药,这往往是不准确的。此外,由于较高的文盲率、多种尼日利亚语言和较低的技术采用率——尤其是在老一代中——传统的远程医疗应用程序界面可能无法促进目标人群的易于使用和理解。因此,本研究建议开发一种算法指导的自我诊断工具,以提高自我诊断的准确性,并为医疗保健提供更实惠的手段。本文中描述的初步过程包括确定向本研究人群中的多种用户类型传递信息的适当形式。进行了远程用户访谈,以评估视觉,文本以及两者结合在代表医学和技术术语方面的效率。研究结果表明,视觉和文字的结合在外行术语中是最有效的交流,而文本放在背景中在信息传递和理解技术术语和描述方面更有效。这些发现将支持下一步为尼日利亚选择适当的自我诊断界面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing an Appropriate Climate Health Interface for Guided Self-Diagnosis in Low-income Communities within Nigeria
In Nigeria, many climate-related illnesses affect the health and well-being of vulnerable populations in low income communities. Due to high upfront costs and substandard facilities, low-income healthcare relies on self-diagnoses and self-medication which is often inaccurate. Furthermore, due to high illiteracy levels, multiple Nigerian languages, and a low technology adoption rate - especially in older generations - traditional telemedicine application interfaces may be unsuccessful in promoting easy usage and comprehension by the target population. Consequently, this research proposes the development of an algorithmically guided self-diagnostic tool to increase accuracy in self-diagnosis and provide more affordable means to healthcare. The preliminary process described in this paper involves determining the appropriate form of information transfer to the multiple user types within this study population. A remote user-interview was conducted to evaluate the efficiency of visuals, text, and a combination of both, in representing medical and technical jargon. Findings indicated that a combination of visuals and text in lay terms was most effective in communication, and the placement of the text in the background was more efficient at information transfer and comprehension of technical jargon and descriptions. These findings will support next steps for selecting an appropriate self-diagnostic interface for Nigeria.
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