腺样体肥大
腺样体
医学
深度学习
阻塞性睡眠呼吸暂停
肺
放射科
计算机科学
心脏病学
病理
内科学
人工智能
腺样体切除术
扁桃体切除术
作者
Shengchang Xiao,Xueshuai Zhang,Yu Lu,Pengfei Ye,Yanfen Tang,Pengyuan Zhang,Yonghong Yan,Jun Tai
标识
DOI:10.1109/jbhi.2025.3527403
摘要
Adenoid hypertrophy is one of the most common upper respiratory tract disorders during childhood, leading to a range of symptoms such as nasal congestion, mouth breathing and obstructive sleep apnea. Current diagnostic methods, including computerized tomography scans and nasal endoscopy, are invasive or involve ionizing radiation, rendering them unsuitable for long-term assessments. To address these clinical challenges, this paper proposes a novel deep learning approach for the non-invasive detection of adenoid hypertrophy using heartlung sounds. Firstly, we established a heart-lung sound database with corresponding labels indicating adenoid size. Subsequently, we employed three different deep learning tasks to explore the association between heart-lung sounds and adenoid size. In particular, it includes binary classification to distinguish between normal and abnormal cases, four-grade classification to assess the severity of adenoid hypertrophy, and regression models to predict the actual size of the adenoids. The experimental results demonstrate that the deep learning models can effectively predict the condition of adenoid hypertrophy based on heart-lung sounds. In resource-constrained clinical environments, the proposed methods for adenoid hypertrophy automatic detection provide a simple and non-invasive approach, which can reduce healthcare costs and facilitate remote self-screening.
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