Literature DB >> 33493130

Patients' Preferences for Artificial Intelligence Applications Versus Clinicians in Disease Diagnosis During the SARS-CoV-2 Pandemic in China: Discrete Choice Experiment.

Taoran Liu1,2, Winghei Tsang1, Fengqiu Huang1, Oi Ying Lau1, Yanhui Chen1, Jie Sheng1, Yiwei Guo3, Babatunde Akinwunmi4,5, Casper Jp Zhang6, Wai-Kit Ming1.   

Abstract

BACKGROUND: Misdiagnosis, arbitrary charges, annoying queues, and clinic waiting times among others are long-standing phenomena in the medical industry across the world. These factors can contribute to patient anxiety about misdiagnosis by clinicians. However, with the increasing growth in use of big data in biomedical and health care communities, the performance of artificial intelligence (Al) techniques of diagnosis is improving and can help avoid medical practice errors, including under the current circumstance of COVID-19.
OBJECTIVE: This study aims to visualize and measure patients' heterogeneous preferences from various angles of AI diagnosis versus clinicians in the context of the COVID-19 epidemic in China. We also aim to illustrate the different decision-making factors of the latent class of a discrete choice experiment (DCE) and prospects for the application of AI techniques in judgment and management during the pandemic of SARS-CoV-2 and in the future.
METHODS: A DCE approach was the main analysis method applied in this paper. Attributes from different dimensions were hypothesized: diagnostic method, outpatient waiting time, diagnosis time, accuracy, follow-up after diagnosis, and diagnostic expense. After that, a questionnaire is formed. With collected data from the DCE questionnaire, we apply Sawtooth software to construct a generalized multinomial logit (GMNL) model, mixed logit model, and latent class model with the data sets. Moreover, we calculate the variables' coefficients, standard error, P value, and odds ratio (OR) and form a utility report to present the importance and weighted percentage of attributes.
RESULTS: A total of 55.8% of the respondents (428 out of 767) opted for AI diagnosis regardless of the description of the clinicians. In the GMNL model, we found that people prefer the 100% accuracy level the most (OR 4.548, 95% CI 4.048-5.110, P<.001). For the latent class model, the most acceptable model consists of 3 latent classes of respondents. The attributes with the most substantial effects and highest percentage weights are the accuracy (39.29% in general) and expense of diagnosis (21.69% in general), especially the preferences for the diagnosis "accuracy" attribute, which is constant across classes. For class 1 and class 3, people prefer the AI + clinicians method (class 1: OR 1.247, 95% CI 1.036-1.463, P<.001; class 3: OR 1.958, 95% CI 1.769-2.167, P<.001). For class 2, people prefer the AI method (OR 1.546, 95% CI 0.883-2.707, P=.37). The OR of levels of attributes increases with the increase of accuracy across all classes.
CONCLUSIONS: Latent class analysis was prominent and useful in quantifying preferences for attributes of diagnosis choice. People's preferences for the "accuracy" and "diagnostic expenses" attributes are palpable. AI will have a potential market. However, accuracy and diagnosis expenses need to be taken into consideration. ©Taoran Liu, Winghei Tsang, Fengqiu Huang, Oi Ying Lau, Yanhui Chen, Jie Sheng, Yiwei Guo, Babatunde Akinwunmi, Casper JP Zhang, Wai-Kit Ming. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 23.02.2021.

Entities:  

Keywords:  COVID-19; China; app; artificial intelligence; diagnosis; discrete choice experiment; human clinicians; latent-class conditional logit; multinomial logit analysis; patient preference; questionnaire

Year:  2021        PMID: 33493130     DOI: 10.2196/22841

Source DB:  PubMed          Journal:  J Med Internet Res        ISSN: 1438-8871            Impact factor:   5.428


  4 in total

1.  The Accuracy of Artificial Intelligence in the Endoscopic Diagnosis of Early Gastric Cancer: Pooled Analysis Study.

Authors:  Pei-Chin Chen; Yun-Ru Lu; Yi-No Kang; Chun-Chao Chang
Journal:  J Med Internet Res       Date:  2022-05-16       Impact factor: 7.076

Review 2.  Perceptions and Needs of Artificial Intelligence in Health Care to Increase Adoption: Scoping Review.

Authors:  Han Shi Jocelyn Chew; Palakorn Achananuparp
Journal:  J Med Internet Res       Date:  2022-01-14       Impact factor: 5.428

3.  Applications of discrete choice experiments in COVID-19 research: Disparity in survey qualities between health and transport fields.

Authors:  Milad Haghani; Michiel C J Bliemer; Esther W de Bekker-Grob
Journal:  J Choice Model       Date:  2022-07-21

4.  Population preferences for non-pharmaceutical interventions to control the SARS-CoV-2 pandemic: trade-offs among public health, individual rights, and economics.

Authors:  Axel C Mühlbacher; Andrew Sadler; Yvonne Jordan
Journal:  Eur J Health Econ       Date:  2022-02-09
  4 in total

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