人工智能辅助泪沟畸形分级

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引用次数: 0

摘要

背景已经发布了多种泪沟畸形(TTD)分类系统;然而,这些系统的复杂性会给临床使用带来挑战,尤其是对经验不足的外科医生而言。人们相信,人工智能(AI)技术可以减少疏忽造成的错误,提高医疗实践的准确性,从而应对其中的一些挑战。在这项研究中,我们旨在利用人工智能深度学习技术,通过基于智能手机的摄影技术,为 TTD 建立一个可靠、精确的数字图像分级模型。该模型旨在帮助和指导外科医生,尤其是经验较少或来自年轻一代的外科医生,进行临床检查并做出进一步手术干预的决定。我们采用了巴顿的 TTD 分级系统。所有照片均使用同一部智能手机拍摄,并使用医疗人工智能助手(MAIA™)软件进行处理和分析。结果训练模型的混淆矩阵显示灵敏度为 56%,特异性为 87.3%,F1 得分为 0.57,曲线下面积 (AUROC) 为 0.85。测试组的灵敏度为 49.3%,特异性为 85%,F1 得分为 0.49,曲线下面积为 0.83。我们的研究首次证明,使用智能手机内置摄像头和人工智能深度学习程序,可以轻松地对泪沟畸形进行分类。这种方法可以减少临床患者评估过程中的错误,尤其是对于经验不足的从业人员。
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Artificial intelligence-assisted grading for tear trough deformity

Background

Various classification systems for tear trough deformity (TTD) have been published; however, their complexity can pose challenges in clinical use, especially for less experienced surgeons. It is believed that artificial intelligence (AI) technology can address some of these challenges by reducing inadvertent errors and improving the accuracy of medical practice. In this study, we aimed to establish a reliable and precise digital image grading model for TTD using smartphone-based photography enhanced using AI deep learning technology. This model is designed to aid and guide surgeons, particularly those who are less experienced or from younger generations, during clinical examinations and in making decisions regarding further surgical interventions.

Materials and methods

A total of 504 patients and 983 photos were included in the study. We adopted the Barton’s grading system for TTD. All photos were taken using the same smartphone and processed and analyzed using the medical AI assistant (MAIA™) software. The photos were then randomly divided into two groups to establish training and testing models.

Results

The confusion matrix for the training model demonstrated a sensitivity of 56%, specificity of 87.3%, F1 score of 0.57, and an area under the curve (AUROC) of 0.85. For the testing group, the sensitivity was 49.3%, specificity was 85%, F1 score was 0.49, and AUROC was 0.83. Representative heatmaps were also generated.

Conclusion

Our study is the first to demonstrate that tear trough deformities can be easily categorized using a built-in smartphone camera in conjunction with an AI deep learning program. This approach can reduce errors during clinical patient evaluations, particularly for less experienced practitioners.

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来源期刊
CiteScore
3.10
自引率
11.10%
发文量
578
审稿时长
3.5 months
期刊介绍: JPRAS An International Journal of Surgical Reconstruction is one of the world''s leading international journals, covering all the reconstructive and aesthetic aspects of plastic surgery. The journal presents the latest surgical procedures with audit and outcome studies of new and established techniques in plastic surgery including: cleft lip and palate and other heads and neck surgery, hand surgery, lower limb trauma, burns, skin cancer, breast surgery and aesthetic surgery.
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