Explainable AI decision support improves accuracy during telehealth strep throat screening

IF 5.4 Q1 MEDICINE, RESEARCH & EXPERIMENTAL Communications medicine Pub Date : 2024-07-24 DOI:10.1038/s43856-024-00568-x
Catalina Gomez, Brittany-Lee Smith, Alisa Zayas, Mathias Unberath, Therese Canares
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Abstract

Artificial intelligence-based (AI) clinical decision support systems (CDSS) using unconventional data, like smartphone-acquired images, promise transformational opportunities for telehealth; including remote diagnosis. Although such solutions’ potential remains largely untapped, providers’ trust and understanding are vital for effective adoption. This study examines how different human–AI interaction paradigms affect clinicians’ responses to an emerging AI CDSS for streptococcal pharyngitis (strep throat) detection from smartphone throat images. In a randomized experiment, we tested explainable AI strategies using three AI-based CDSS prototypes for strep throat prediction. Participants received clinical vignettes via an online survey to predict the disease state and offer clinical recommendations. The first set included a validated CDSS prediction (Modified Centor Score) and the second introduced an explainable AI prototype randomly. We used linear models to assess explainable AI’s effect on clinicians’ accuracy, confirmatory testing rates, and perceived trust and understanding of the CDSS. The study, involving 121 telehealth providers, shows that compared to using the Centor Score, AI-based CDSS can improve clinicians’ predictions. Despite higher agreement with AI, participants report lower trust in its advice than in the Centor Score, leading to more requests for in-person confirmatory testing. Effectively integrating AI is crucial in the telehealth-based diagnosis of infectious diseases, given the implications of antibiotic over-prescriptions. We demonstrate that AI-based CDSS can improve the accuracy of remote strep throat screening yet underscores the necessity to enhance human–machine collaboration, particularly in trust and intelligibility. This ensures providers and patients can capitalize on AI interventions and smartphones for virtual healthcare. Strep pharyngitis, or strep throat, is a bacterial infection that can cause a sore throat. Artificial intelligence (AI) can use photos taken on a person’s phone to help diagnose strep throat, offering an additional way for doctors to screen patients during virtual appointments. However, it is currently unclear whether doctors will trust AI recommendations or how they might use them in decision-making. We surveyed clinicians about their use of an AI system for strep throat screening with smartphone images. We compared different ways of providing AI recommendations to standard medical guidelines. We found that all tested AI methods helped clinicians to identify strep throat cases. However, clinicians trusted AI less than their usual clinical guidelines, leading to more requests for follow-up in-person testing. Our results show how AI may improve the accuracy of pharyngitis assessment. Still, further research is needed to ensure doctors trust and collaborate with AI to improve remote healthcare. Gomez et al. develop an artificial intelligence-based clinical decision support tool that can help diagnose streptococcal pharyngitis using images obtained using a smartphone. Whilst the tool improves clinical prediction accuracy compared to the modified centor score, clinicians report lower trust in the advice and order more in-person tests.

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可解释的人工智能决策支持提高了远程医疗链球菌咽喉筛查的准确性。
背景:基于人工智能(AI)的临床决策支持系统(CDSS)使用非常规数据,如智能手机获取的图像,为远程医疗(包括远程诊断)带来了变革性机遇。尽管此类解决方案的潜力在很大程度上尚未得到开发,但医疗服务提供者的信任和理解对于有效采用此类解决方案至关重要。本研究探讨了不同的人机交互范式如何影响临床医生对新兴人工智能 CDSS 的反应,该 CDSS 用于从智能手机咽喉图像中检测链球菌性咽炎(咽喉炎):在一项随机实验中,我们使用三种基于人工智能的链球菌咽喉炎预测 CDSS 原型测试了可解释的人工智能策略。参与者通过在线调查接收临床小故事,预测疾病状态并提供临床建议。第一组包括经过验证的 CDSS 预测(修正 Centor 评分),第二组随机引入了可解释的人工智能原型。我们使用线性模型评估了可解释人工智能对临床医生的准确性、确诊率以及对 CDSS 的信任和理解的影响:这项涉及 121 名远程医疗提供者的研究表明,与使用 Centor Score 相比,基于人工智能的 CDSS 可以改善临床医生的预测。尽管参与者对人工智能的认同度较高,但他们对人工智能建议的信任度却低于 "中心评分",从而导致更多的人要求亲自进行确证测试:鉴于抗生素处方过量的影响,有效整合人工智能对于基于远程医疗的传染病诊断至关重要。我们证明,基于人工智能的 CDSS 可以提高远程链球菌咽喉筛查的准确性,但同时也强调了加强人机协作的必要性,尤其是在信任和可理解性方面。这将确保医疗服务提供者和患者能够利用人工智能干预和智能手机进行虚拟医疗保健。
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