人工智能用于龋齿检测:随机试验。
Artificial intelligence for caries detection: Randomized trial.
机构信息
Department of Oral Diagnostics, Digital Health and Health Services Research, Charité - Universitätsmedizin Berlin, corporate member of Freie Universität Berlin and Humboldt-Universität zu Berlin, Germany; Department of Operative and Preventive Dentistry, Charité - Universitätsmedizin Berlin, corporate member of Freie Universität Berlin and Humboldt-Universität zu Berlin, Germany.
Department of Oral Diagnostics, Digital Health and Health Services Research, Charité - Universitätsmedizin Berlin, corporate member of Freie Universität Berlin and Humboldt-Universität zu Berlin, Germany.
出版信息
J Dent. 2021 Dec;115:103849. doi: 10.1016/j.jdent.2021.103849. Epub 2021 Oct 14.
OBJECTIVES
We aimed to assess the impact of an artificial intelligence (AI)-based diagnostic-support software for proximal caries detection on bitewing radiographs.
METHODS
A cluster-randomized cross-over controlled trial was conducted. A commercially available software employing a fully convolutional neural network for caries detection (dentalXrai Pro, dentalXrai Ltd.) was randomly employed by 22 dentists, supporting their caries detection on 20 bitewings randomly chosen from a pool of 140 bitewings, with 10 bitewings randomly being supported by AI and 10 not. The reference test had been established by 4 + 1 independent experts in a pixelwise fashion. Caries was subgrouped as enamel, early dentin and advanced dentin caries, and accuracy and treatment decisions for each caries lesion assessed.
RESULTS
Dentists with AI showed a significantly higher mean (95% CI) area under the Receiver-Operating-Characteristics curve (0.89; 0.87-0.90) than those without AI (0.85; 0.83-0.86; p<0.05), mainly as their sensitivity was significantly higher (0.81; 0.74-0.87 compared with 0.72; 0.64-0.79; p<0.05) while the specificity was not significantly affected (p>0.05). This increase in sensitivity was found for enamel, but not early or advanced dentin lesions. Higher sensitivity came with an increase in non-invasive, but also invasive treatment decisions (p<0.05).
CONCLUSION
AI can increase dentists' diagnostic accuracy but may also increase invasive treatment decisions.
CLINICAL SIGNIFICANCE
AI can increase dentists' diagnostic accuracy, mainly via increasing their sensitivity for detecting enamel lesions, but may also increase invasive therapy decisions. Differences in the effects of AI for different dentists should be explored, and dentists should be guided as to which therapy to choose when detecting caries lesions using AI support.
目的
评估基于人工智能(AI)的诊断支持软件在近中龋检测中的应用对咬合片的影响。
方法
采用集群随机交叉对照试验。采用一种商用软件,该软件使用完全卷积神经网络进行龋病检测(dentalXrai Pro,dentalXrai Ltd.),由 22 名牙医随机使用,在 140 张咬合片中随机选择 20 张进行龋病检测,其中 10 张由 AI 支持,10 张不支持。参考测试由 4 名+1 名独立专家以像素级的方式建立。将龋病分为釉质龋、早期牙本质龋和进展性牙本质龋,并评估每个龋损的准确性和治疗决策。
结果
使用 AI 的牙医的平均(95%CI)接收者操作特征曲线下面积(0.89;0.87-0.90)显著高于未使用 AI 的牙医(0.85;0.83-0.86;p<0.05),主要是因为他们的敏感性显著更高(0.81;0.74-0.87 与 0.72;0.64-0.79;p<0.05),而特异性没有显著影响(p>0.05)。这种敏感性的提高仅见于釉质龋,而不在早期或进展性牙本质龋中。更高的敏感性伴随着非侵入性治疗决策的增加,但也伴随着侵入性治疗决策的增加(p<0.05)。
结论
AI 可以提高牙医的诊断准确性,但也可能增加侵入性治疗决策。
临床意义
AI 可以提高牙医的诊断准确性,主要是通过提高其检测釉质病变的敏感性,但也可能增加侵入性治疗决策。应该探索 AI 对不同牙医的影响差异,并且应该指导牙医在使用 AI 支持检测龋病病变时选择哪种治疗方法。