Anikina Anna, Ibragimova Diliara, Mustafaev Tamerlan, Mello-Thoms Claudia, Ibragimov Bulat
Department of Computer Science, University of Copenhagen, Copenhagen, Denmark.
Kazan State University Clinic, Republic of Tatarstan, Kazan, Russia.
Artif Intell Med. 2025 Feb;160:103051. doi: 10.1016/j.artmed.2024.103051. Epub 2024 Dec 12.
Medical imaging, particularly radiography, is an indispensable part of diagnosing many chest diseases. Final diagnoses are made by radiologists based on images, but the decision-making process is always associated with a risk of incorrect interpretation. Incorrectly interpreted data can lead to delays in treatment, a prescription of inappropriate therapy, or even a completely missed diagnosis. In this context, our study aims to determine whether it is possible to predict diagnostic errors made by radiologists using eye-tracking technology. For this purpose, we asked 4 radiologists with different levels of experience to analyze 1000 images covering a wide range of chest diseases. Using eye-tracking data, we calculated the radiologists' gaze fixation points and generated feature vectors based on this data to describe the radiologists' gaze behavior during image analysis. Additionally, we emulated the process of revealing the read images following radiologists' gaze data to create a more comprehensive picture of their analysis. Then we applied a recurrent neural network to predict diagnostic errors. Our results showed a 0.7755 ROC AUC score, demonstrating a significant potential for this approach in enhancing the accuracy of diagnostic error recognition.
医学成像,尤其是放射成像,是诊断许多胸部疾病不可或缺的一部分。最终诊断由放射科医生根据图像做出,但决策过程始终伴随着错误解读的风险。错误解读的数据可能导致治疗延误、开出不适当的治疗处方,甚至完全漏诊。在此背景下,我们的研究旨在确定是否有可能使用眼动追踪技术预测放射科医生的诊断错误。为此,我们邀请了4位经验水平不同的放射科医生分析1000张涵盖各种胸部疾病的图像。利用眼动追踪数据,我们计算了放射科医生的注视点,并基于此数据生成特征向量,以描述放射科医生在图像分析过程中的注视行为。此外,我们根据放射科医生的注视数据模拟了显示已读图像的过程,以更全面地了解他们的分析情况。然后我们应用循环神经网络来预测诊断错误。我们的结果显示受试者工作特征曲线下面积(ROC AUC)得分为0.7755,表明该方法在提高诊断错误识别准确性方面具有巨大潜力。