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人工智能临床医生在 COVID-19 大流行前后的偏好:离散选择实验和倾向评分匹配研究。

Preferences for Artificial Intelligence Clinicians Before and During the COVID-19 Pandemic: Discrete Choice Experiment and Propensity Score Matching Study.

机构信息

Department of Public Health and Preventive Medicine, School of Medicine, Jinan University, Guangzhou, China.

International School, Jinan University, Guangzhou, China.

出版信息

J Med Internet Res. 2021 Mar 2;23(3):e26997. doi: 10.2196/26997.

DOI:10.2196/26997
PMID:33556034
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7927951/
Abstract

BACKGROUND

Artificial intelligence (AI) methods can potentially be used to relieve the pressure that the COVID-19 pandemic has exerted on public health. In cases of medical resource shortages caused by the pandemic, changes in people's preferences for AI clinicians and traditional clinicians are worth exploring.

OBJECTIVE

We aimed to quantify and compare people's preferences for AI clinicians and traditional clinicians before and during the COVID-19 pandemic, and to assess whether people's preferences were affected by the pressure of pandemic.

METHODS

We used the propensity score matching method to match two different groups of respondents with similar demographic characteristics. Respondents were recruited in 2017 and 2020. A total of 2048 respondents (2017: n=1520; 2020: n=528) completed the questionnaire and were included in the analysis. Multinomial logit models and latent class models were used to assess people's preferences for different diagnosis methods.

RESULTS

In total, 84.7% (1115/1317) of respondents in the 2017 group and 91.3% (482/528) of respondents in the 2020 group were confident that AI diagnosis methods would outperform human clinician diagnosis methods in the future. Both groups of matched respondents believed that the most important attribute of diagnosis was accuracy, and they preferred to receive combined diagnoses from both AI and human clinicians (2017: odds ratio [OR] 1.645, 95% CI 1.535-1.763; P<.001; 2020: OR 1.513, 95% CI 1.413-1.621; P<.001; reference: clinician diagnoses). The latent class model identified three classes with different attribute priorities. In class 1, preferences for combined diagnoses and accuracy remained constant in 2017 and 2020, and high accuracy (eg, 100% accuracy in 2017: OR 1.357, 95% CI 1.164-1.581) was preferred. In class 2, the matched data from 2017 were similar to those from 2020; combined diagnoses from both AI and human clinicians (2017: OR 1.204, 95% CI 1.039-1.394; P=.011; 2020: OR 2.009, 95% CI 1.826-2.211; P<.001; reference: clinician diagnoses) and an outpatient waiting time of 20 minutes (2017: OR 1.349, 95% CI 1.065-1.708; P<.001; 2020: OR 1.488, 95% CI 1.287-1.721; P<.001; reference: 0 minutes) were consistently preferred. In class 3, the respondents in the 2017 and 2020 groups preferred different diagnosis methods; respondents in the 2017 group preferred clinician diagnoses, whereas respondents in the 2020 group preferred AI diagnoses. In the latent class, which was stratified according to sex, all male and female respondents in the 2017 and 2020 groups believed that accuracy was the most important attribute of diagnosis.

CONCLUSIONS

Individuals' preferences for receiving clinical diagnoses from AI and human clinicians were generally unaffected by the pandemic. Respondents believed that accuracy and expense were the most important attributes of diagnosis. These findings can be used to guide policies that are relevant to the development of AI-based health care.

摘要

背景

人工智能(AI)方法有可能被用于缓解 COVID-19 大流行对公共卫生造成的压力。在大流行导致医疗资源短缺的情况下,值得探索人们对 AI 临床医生和传统临床医生偏好的变化。

目的

我们旨在量化和比较 COVID-19 大流行前后人们对 AI 临床医生和传统临床医生的偏好,并评估人们的偏好是否受到大流行压力的影响。

方法

我们使用倾向评分匹配方法对具有相似人口统计学特征的两组不同的受访者进行匹配。受访者于 2017 年和 2020 年招募。共有 2048 名受访者(2017 年:n=1520;2020 年:n=528)完成了问卷并纳入分析。使用多项逻辑回归模型和潜在类别模型评估人们对不同诊断方法的偏好。

结果

共有 84.7%(1115/1317)的 2017 年组受访者和 91.3%(482/528)的 2020 年组受访者有信心 AI 诊断方法在未来将优于人类临床医生的诊断方法。两组匹配的受访者都认为诊断的最重要属性是准确性,他们更喜欢接受 AI 和人类临床医生的联合诊断(2017 年:比值比[OR]1.645,95%置信区间[CI]1.535-1.763;P<.001;2020 年:OR 1.513,95% CI 1.413-1.621;P<.001;参考:临床医生的诊断)。潜在类别模型确定了三个具有不同属性优先级的类别。在类别 1 中,2017 年和 2020 年对联合诊断和准确性的偏好保持不变,并且更喜欢高准确性(例如,2017 年的 100%准确性:OR 1.357,95% CI 1.164-1.581)。在类别 2 中,2017 年的匹配数据与 2020 年相似;AI 和人类临床医生的联合诊断(2017 年:OR 1.204,95% CI 1.039-1.394;P=.011;2020 年:OR 2.009,95% CI 1.826-2.211;P<.001;参考:临床医生的诊断)和 20 分钟的门诊等待时间(2017 年:OR 1.349,95% CI 1.065-1.708;P<.001;2020 年:OR 1.488,95% CI 1.287-1.721;P<.001;参考:0 分钟)一直是首选。在类别 3 中,2017 年和 2020 年组的受访者更喜欢不同的诊断方法;2017 年组的受访者更喜欢临床医生的诊断,而 2020 年组的受访者更喜欢 AI 诊断。在根据性别分层的潜在类别中,2017 年和 2020 年组的所有男性和女性受访者都认为准确性是诊断的最重要属性。

结论

个人对接受 AI 和人类临床医生临床诊断的偏好总体上不受大流行的影响。受访者认为准确性和费用是诊断的最重要属性。这些发现可用于指导与 AI 为基础的医疗保健发展相关的政策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/570a997b43f3/jmir_v23i3e26997_fig5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/47e45894aa7e/jmir_v23i3e26997_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/8bc74df71cef/jmir_v23i3e26997_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/a3f7a07aa989/jmir_v23i3e26997_fig3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/b7cfee7ce838/jmir_v23i3e26997_fig4.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/570a997b43f3/jmir_v23i3e26997_fig5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/47e45894aa7e/jmir_v23i3e26997_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/8bc74df71cef/jmir_v23i3e26997_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/a3f7a07aa989/jmir_v23i3e26997_fig3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/b7cfee7ce838/jmir_v23i3e26997_fig4.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/24c9/7927951/570a997b43f3/jmir_v23i3e26997_fig5.jpg

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