Airway and Airway Obstruction Site Segmentation Study Using U-Net with Drug-Induced Sleep Endoscopy Images.

Yeong Hun Kang, Jin Youp Kim, Young Jae Kim, Sung Hyun Kim, Kwang Gi Kim, Chae-Seo Rhee
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Abstract

Obstructive sleep apnea is characterized by a decrease or cessation of breathing due to repetitive closure of the upper airway during sleep, leading to a decrease in blood oxygen saturation. In this study, employing a U-Net model, we utilized drug-induced sleep endoscopy images to segment the major causes of airway obstruction, including the epiglottis, oropharynx lateral walls, and tongue base. The evaluation metrics included sensitivity, specificity, accuracy, and Dice score, with airway sensitivity at 0.93 (± 0.06), specificity at 0.96 (± 0.01), accuracy at 0.95 (± 0.01), and Dice score at 0.84 (± 0.03), indicating overall high performance. The results indicate the potential for artificial intelligence (AI)-driven automatic interpretation of sleep disorder diagnosis, with implications for standardizing medical procedures and improving healthcare services. The study suggests that advancements in AI technology hold promise for enhancing diagnostic accuracy and treatment efficacy in sleep and respiratory disorders, fostering competitiveness in the medical AI market.

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利用 U-Net 与药物诱导睡眠内窥镜图像进行气道和气道阻塞部位分割研究。
阻塞性睡眠呼吸暂停的特点是睡眠时上气道反复关闭导致呼吸减少或停止,从而导致血氧饱和度下降。在这项研究中,我们采用 U-Net 模型,利用药物诱导的睡眠内窥镜图像来分割气道阻塞的主要原因,包括会厌、口咽侧壁和舌根。评价指标包括灵敏度、特异性、准确性和 Dice 评分,其中气道灵敏度为 0.93(± 0.06),特异性为 0.96(± 0.01),准确性为 0.95(± 0.01),Dice 评分为 0.84(± 0.03),表明总体性能较高。研究结果表明,人工智能(AI)驱动的睡眠障碍诊断自动解释具有潜力,对规范医疗程序和改善医疗服务具有重要意义。研究表明,人工智能技术的进步有望提高睡眠和呼吸系统疾病的诊断准确性和治疗效果,从而增强医疗人工智能市场的竞争力。
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