Using Artificial Intelligence to Diagnose Lacrimal Passage Obstructions Based on Dacryocystography Images.

IF 1 4区 医学 Q3 SURGERY Journal of Craniofacial Surgery Pub Date : 2024-11-06 DOI:10.1097/SCS.0000000000010829
Suyoung Kim, Hyungwoo Lee, Hong Gee Roh, Hyun Jin Shin
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Abstract

Dacryocystography (DCG) has been used to illustrate the morphological and functional aspects of the lacrimal drainage system in the evaluation of patients with maxillofacial trauma and epiphora. This study developed deep-learning models for the automatic classification of the status of the lacrimal passage based on DCG. The authors collected 719 DCG images from 430 patients with nasolacrimal duct obstruction. The obstruction images were further manually categorized into 2 binary categories based on the location of the obstruction: (1) upper obstruction and (2) lower obstruction. An upper obstruction was defined as one occurring within the canaliculus or common canaliculus, whereas a lower obstruction was defined as one within the lacrimal sac, duct-sac junction, or nasolacrimal duct. The authors then established a deep-learning model to automatically determine whether a passage was patent or obstruction. The accuracy, precision, sensitivity, F1 score, and area under the receiver operating characteristic curve for the evaluation set of each deep-learning model were 99.3%, 98.8%, 99.5%, 99.2%, and 0.9998, respectively, for obstruction detection, and 95.5%, 93.0%, 93.0%, 93.0%, and 0.9778 for classifying the obstruction location. Both receiver operating characteristic curves were skewed toward the left-upper region, indicating the high reliability of these models. The high accuracies of the obstruction detection model (99.3%) and the obstruction classification model (95.5%) demonstrate that deep-learning models can be reliable diagnostic tools for DCG images. This deep-learning model could enhance diagnostic consistency, enable non-specialists to interpret results accurately and facilitate the efficient allocation of medical resources.

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利用人工智能诊断基于泪囊造影图像的泪道阻塞。
泪囊造影术(DCG)在评估颌面部创伤和外窥患者时,一直被用于说明泪道引流系统的形态和功能方面。本研究开发了深度学习模型,用于根据 DCG 对泪道状态进行自动分类。作者收集了 430 名鼻泪管阻塞患者的 719 张 DCG 图像。根据阻塞的位置,阻塞图像被进一步人工分为两个二元类别:(1) 上部阻塞和 (2) 下部阻塞。上部阻塞被定义为发生在管腔或总管腔内的阻塞,而下部阻塞被定义为发生在泪囊、管骶交界处或鼻泪管内的阻塞。作者随后建立了一个深度学习模型来自动判断通道是通畅还是阻塞。在每个深度学习模型的评估集中,阻塞检测的准确度、精确度、灵敏度、F1得分和接收器工作特征曲线下面积分别为99.3%、98.8%、99.5%、99.2%和0.9998,阻塞位置分类的准确度、精确度、灵敏度、F1得分和接收器工作特征曲线下面积分别为95.5%、93.0%、93.0%、93.0%和0.9778。两条接受者操作特征曲线均向左上方区域倾斜,表明这些模型具有很高的可靠性。阻塞检测模型(99.3%)和阻塞分类模型(95.5%)的高准确率表明,深度学习模型可以成为 DCG 图像的可靠诊断工具。该深度学习模型可提高诊断的一致性,使非专科医生也能准确解读结果,并促进医疗资源的有效分配。
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来源期刊
CiteScore
1.70
自引率
11.10%
发文量
968
审稿时长
1.5 months
期刊介绍: ​The Journal of Craniofacial Surgery serves as a forum of communication for all those involved in craniofacial surgery, maxillofacial surgery and pediatric plastic surgery. Coverage ranges from practical aspects of craniofacial surgery to the basic science that underlies surgical practice. The journal publishes original articles, scientific reviews, editorials and invited commentary, abstracts and selected articles from international journals, and occasional international bibliographies in craniofacial surgery.
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