Development of AI-Based Diagnostic Algorithm for Nasal Bone Fracture Using Deep Learning

Yeonjin Jeong, Chanho Jeong, Kun-Yong Sung, Gwiseong Moon, Jinsoo Lim
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Abstract

Facial bone fractures are relatively common, with the nasal bone the most frequently fractured facial bone. Computed tomography is the gold standard for diagnosing such fractures. Most nasal bone fractures can be treated using a closed reduction. However, delayed diagnosis may cause nasal deformity or other complications that are difficult and expensive to treat. In this study, the authors developed an algorithm for diagnosing nasal fractures by learning computed tomography images of facial bones with artificial intelligence through deep learning. A significant concordance with human doctors’ reading results of 100% sensitivity and 77% specificity was achieved. Herein, the authors report the results of a pilot study on the first stage of developing an algorithm for analyzing fractures in the facial bone.
利用深度学习开发基于人工智能的鼻骨骨折诊断算法
面部骨骼骨折比较常见,其中鼻骨是最常发生骨折的面部骨骼。计算机断层扫描是诊断此类骨折的金标准。大多数鼻骨骨折可采用闭合复位法治疗。然而,延误诊断可能会导致鼻部畸形或其他并发症,治疗起来既困难又昂贵。在这项研究中,作者通过深度学习,用人工智能学习面部骨骼的计算机断层扫描图像,开发了一种诊断鼻骨骨折的算法。该算法的灵敏度为 100%,特异度为 77%,与人类医生的阅读结果非常吻合。在此,作者报告了开发面骨骨折分析算法第一阶段的试点研究结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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