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对使用人工智能和技术进行哮喘发作风险预测的看法:毛利人观点的定性探讨。

Perceptions Toward Using Artificial Intelligence and Technology for Asthma Attack Risk Prediction: Qualitative Exploration of Māori Views.

机构信息

Department of Computer Science, School of Engineering, Computer and Mathematical Sciences, Auckland University of Technology, Auckland, New Zealand.

Department of Software Engineering, Faculty of Computing and Technology, University of Kelaniya, Kelaniya, Sri Lanka.

出版信息

JMIR Form Res. 2024 Oct 30;8:e59811. doi: 10.2196/59811.

Abstract

BACKGROUND

Asthma is a significant global health issue, impacting over 500,000 individuals in New Zealand and disproportionately affecting Māori communities in New Zealand, who experience worse asthma symptoms and attacks. Digital technologies, including artificial intelligence (AI) and machine learning (ML) models, are increasingly popular for asthma risk prediction. However, these AI models may underrepresent minority ethnic groups and introduce bias, potentially exacerbating disparities.

OBJECTIVE

This study aimed to explore the views and perceptions that Māori have toward using AI and ML technologies for asthma self-management, identify key considerations for developing asthma attack risk prediction models, and ensure Māori are represented in ML models without worsening existing health inequities.

METHODS

Semistructured interviews were conducted with 20 Māori participants with asthma, 3 male and 17 female, aged 18-76 years. All the interviews were conducted one-on-one, except for 1 interview, which was conducted with 2 participants. Altogether, 10 web-based interviews were conducted, while the rest were kanohi ki te kanohi (face-to-face). A thematic analysis was conducted to identify the themes. Further, sentiment analysis was carried out to identify the sentiments using a pretrained Bidirectional Encoder Representations from Transformers model.

RESULTS

We identified four key themes: (1) concerns about AI use, (2) interest in using technology to support asthma, (3) desired characteristics of AI-based systems, and (4) experience with asthma management and opportunities for technology to improve care. AI was relatively unfamiliar to many participants, and some of them expressed concerns about whether AI technology could be trusted, kanohi ki te kanohi interaction, and inadequate knowledge of AI and technology. These concerns are exacerbated by the Māori experience of colonization. Most of the participants were interested in using technology to support their asthma management, and we gained insights into user preferences regarding computer-based health care applications. Participants discussed their experiences, highlighting problems with health care quality and limited access to resources. They also mentioned the factors that trigger their asthma control level.

CONCLUSIONS

The exploration revealed that there is a need for greater information about AI and technology for Māori communities and a need to address trust issues relating to the use of technology. Expectations in relation to computer-based applications for health purposes were expressed. The research outcomes will inform future investigations on AI and technology to enhance the health of people with asthma, in particular those designed for Indigenous populations in New Zealand.

摘要

背景

哮喘是一个重大的全球健康问题,影响了新西兰超过 50 万人,毛利社区受影响尤为严重,他们的哮喘症状和发作更为严重。人工智能(AI)和机器学习(ML)等数字技术越来越常用于预测哮喘风险。然而,这些 AI 模型可能会对少数族裔群体代表性不足,并引入偏差,从而可能加剧现有的不平等现象。

目的

本研究旨在探讨毛利人对使用 AI 和 ML 技术进行哮喘自我管理的看法和看法,确定开发哮喘发作风险预测模型的关键考虑因素,并确保在 ML 模型中代表毛利人,而不会加剧现有的健康不公平现象。

方法

对 20 名患有哮喘的毛利人参与者(3 名男性,17 名女性)进行了半结构化访谈,年龄在 18-76 岁之间。除了 1 次访谈是 2 人参加外,其余访谈都是一对一进行的。总共进行了 10 次网络访谈,其余的是面对面访谈。采用主题分析法识别主题。此外,还进行了情感分析,使用预先训练的基于双向编码器表示的转换器模型来识别情感。

结果

我们确定了四个关键主题:(1)对 AI 使用的担忧,(2)对使用技术支持哮喘的兴趣,(3)对基于 AI 的系统的期望特征,以及(4)对哮喘管理的经验和技术改善护理的机会。许多参与者对 AI 技术相对不熟悉,他们中的一些人对 AI 技术是否值得信任、面对面互动以及对 AI 和技术的了解不足表示担忧。这些担忧因毛利人被殖民的经历而加剧。大多数参与者有兴趣使用技术来支持他们的哮喘管理,我们还深入了解了用户对计算机医疗保健应用程序的偏好。参与者讨论了他们的经验,强调了医疗质量问题和资源有限的问题。他们还提到了引发他们哮喘控制水平的因素。

结论

研究结果表明,毛利社区需要更多有关 AI 和技术的信息,需要解决与使用技术相关的信任问题。对用于健康目的的基于计算机的应用程序表示了期望。研究结果将为未来有关 AI 和技术的研究提供信息,以改善哮喘患者的健康状况,特别是为新西兰的土著人口设计的研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0fa0/11561449/8243c58b394d/formative_v8i1e59811_fig1.jpg

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