沙特阿拉伯患者对在放射学中使用人工智能作为诊断工具的态度:横断面研究。

IF 2.6 Q2 HEALTH CARE SCIENCES & SERVICES JMIR Human Factors Pub Date : 2024-08-07 DOI:10.2196/53108
Leena R Baghdadi, Arwa A Mobeirek, Dania R Alhudaithi, Fatimah A Albenmousa, Leen S Alhadlaq, Maisa S Alaql, Sarah A Alhamlan
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引用次数: 0

摘要

背景:人工智能(AI)被广泛应用于各个医疗领域,包括放射诊断,作为一种提高效率、精确度和准确性的工具。将人工智能整合为放射诊断工具有可能减少诊断延误,进而影响患者的预后和治疗效果。文献显示,患者对人工智能作为诊断工具的态度并不一致。据我们所知,沙特阿拉伯尚未开展过类似的研究:本研究旨在探讨沙特阿拉伯哈立德国王大学医院的患者对使用人工智能作为放射诊断工具的态度。此外,我们还试图探讨患者的态度与各种社会人口因素之间的潜在关联:这项描述性分析横断面研究在一家三级医院进行。通过一份经过验证的自填式调查问卷收集了计划接受放射成像检查的患者的数据。主要结果是通过计算不信任和责任感(因子 1)、程序知识(因子 2)、个人互动和沟通(因子 3)、效率(因子 4)以及向患者提供信息的方法(因子 5)这 5 个因子的平均得分,来衡量患者对放射科使用人工智能的态度。数据分析采用学生 t 检验、单因素方差分析、事后分析和多变量分析:共有 382 名参与者(女性 273 人,占 71.5%;男性 109 人,占 28.5%)完成了调查并纳入分析。受访者的平均年龄为 39.51 岁(标准差为 13.26 岁)。在程序知识、个人互动和知情方面,受访者更倾向于选择医生而非人工智能。然而,在不信任、问责和效率方面,受访者持中立态度。婚姻状况与不信任和责任感、程序知识和人际交往有关。此外,还发现自我报告的健康状况与知情程度之间以及专业领域与不信任和问责之间存在关联:结论:患者渴望了解人工智能在放射学中的应用,但更倾向于与放射科医生进行个人互动。患者对人工智能取代放射科医生和人工智能的效率持中立态度,这也是未来政策制定和整合时应考虑的因素。未来需要在沙特阿拉伯不同地区开展多中心研究。
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Patients' Attitudes Toward the Use of Artificial Intelligence as a Diagnostic Tool in Radiology in Saudi Arabia: Cross-Sectional Study.

Background: Artificial intelligence (AI) is widely used in various medical fields, including diagnostic radiology as a tool for greater efficiency, precision, and accuracy. The integration of AI as a radiological diagnostic tool has the potential to mitigate delays in diagnosis, which could, in turn, impact patients' prognosis and treatment outcomes. The literature shows conflicting results regarding patients' attitudes to AI as a diagnostic tool. To the best of our knowledge, no similar study has been conducted in Saudi Arabia.

Objective: The objectives of this study are to examine patients' attitudes toward the use of AI as a tool in diagnostic radiology at King Khalid University Hospital, Saudi Arabia. Additionally, we sought to explore potential associations between patients' attitudes and various sociodemographic factors.

Methods: This descriptive-analytical cross-sectional study was conducted in a tertiary care hospital. Data were collected from patients scheduled for radiological imaging through a validated self-administered questionnaire. The main outcome was to measure patients' attitudes to the use of AI in radiology by calculating mean scores of 5 factors, distrust and accountability (factor 1), procedural knowledge (factor 2), personal interaction and communication (factor 3), efficiency (factor 4), and methods of providing information to patients (factor 5). Data were analyzed using the student t test, one-way analysis of variance followed by post hoc and multivariable analysis.

Results: A total of 382 participants (n=273, 71.5% women and n=109, 28.5% men) completed the surveys and were included in the analysis. The mean age of the respondents was 39.51 (SD 13.26) years. Participants favored physicians over AI for procedural knowledge, personal interaction, and being informed. However, the participants demonstrated a neutral attitude for distrust and accountability and for efficiency. Marital status was found to be associated with distrust and accountability, procedural knowledge, and personal interaction. Associations were also found between self-reported health status and being informed and between the field of specialization and distrust and accountability.

Conclusions: Patients were keen to understand the work of AI in radiology but favored personal interaction with a radiologist. Patients were impartial toward AI replacing radiologists and the efficiency of AI, which should be a consideration in future policy development and integration. Future research involving multicenter studies in different regions of Saudi Arabia is required.

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来源期刊
JMIR Human Factors
JMIR Human Factors Medicine-Health Informatics
CiteScore
3.40
自引率
3.70%
发文量
123
审稿时长
12 weeks
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