基于深度学习的儿童鼻咽侧位X光片腺样体肥大自动检测。

IF 1.5 4区 医学 Q2 PEDIATRICS Translational pediatrics Pub Date : 2024-08-31 Epub Date: 2024-08-28 DOI:10.21037/tp-24-194
Wanhong Guo, Yunjian Gao, Yang Yang
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引用次数: 0

摘要

背景:腺样体肥大是造成儿童上呼吸道阻塞的常见原因,可能导致各种耳鼻喉科并发症,甚至全身性后遗症。鼻咽侧位片是诊断腺样体肥大的常规方法。本研究旨在评估深度学习使用鼻咽侧位片诊断小儿腺样体肥大的准确性和可靠性:在回顾性研究中,收集了2023年1月至2023年11月期间在苏州大学附属儿童医院、中国人民解放军联合后勤保障部队第983医院和苏州市吴江区儿童医院接受治疗的儿童的鼻咽侧位X光图像。模型训练和验证采用了五种深度学习模型,即 AlexNet、VGG16、Inception v3、ResNet50 和 DenseNet121。接收者操作特征曲线(ROC)分析用于评估每个模型的性能。将最佳算法与三名放射科医生对内部验证组 208 张图像的解释进行比较:收集了1188名儿童的鼻咽侧位X光图像,其中包括705名男性(59.3%)和483名女性(40.7%),年龄在8个月到13岁之间,平均年龄为(5.57±2.66)岁。在五个深度学习模型中,DenseNet-121表现最佳,其曲线下面积(AUC)值分别为0.892和0.872,内部和外部验证组的准确性分别为0.895和0.878,灵敏度分别为0.870和0.838,特异性分别为0.913和0.906。DenseNet-121 的诊断性能高于初级和中级放射科医生(0.892 对 0.836,0.892 对 0.869),接近高级放射科医生(0.892 对 0.901)。然而,德隆检验显示,DenseNet121与验证组中的每位放射科医生之间没有显著差异(P=0.24、P=0.52、P=0.79):本研究中的五个深度学习模型在诊断腺样体肥大方面都表现出了良好的性能,其中DenseNet121的性能最好,对自动识别腺样体肥大具有临床意义。
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Automatic detection of adenoid hypertrophy on lateral nasopharyngeal radiographs of children based on deep learning.

Background: Adenoid hypertrophy is a prevalent cause of upper airway obstruction in children, potentially leading to various otolaryngological complications and even systemic sequelae. The lateral nasopharyngeal radiograph is routinely employed for the diagnosis of adenoid hypertrophy. This study aimed to evaluate the accuracy and reliability of deep learning, using lateral nasopharyngeal radiographs, for the diagnosis of adenoid hypertrophy in pediatric patients.

Methods: In the retrospective study, the lateral nasopharyngeal X-ray images were collected from children receiving therapy in the Children's Hospital of Soochow University, the 983th Hospital of Joint Logistics Support Forces of Chinese PLA and the Suzhou Wujiang District Children's Hospital from January 2023 to November 2023. Five deep learning models, i.e., AlexNet, VGG16, Inception v3, ResNet50 and DenseNet121, were used for model training and validation. Receiver operating characteristic (ROC) curve analyses were used to evaluate the performance of each model. The best algorithm was compared with interpretations from three radiologists on 208 images in the internal validation group.

Results: The lateral nasopharyngeal X-ray images were collected from 1,188 children, including 705 males (59.3%) and 483 females (40.7%), aged 8 months to 13 years, with a mean age of 5.57±2.66 years. Among the five deep learning models, DenseNet-121 performed the best, with area under the curve (AUC) values of 0.892 and 0.872, with accuracy of 0.895 and 0.878, sensitivity of 0.870 and 0.838, and specificity of 0.913 and 0.906 in the internal and external validation groups, respectively. The diagnostic performance of DenseNet-121 was higher than that of the junior and mid-level radiologists (0.892 vs. 0.836, 0.892 vs. 0.869), close to the senior radiologist (0.892 vs. 0.901). However, Delong's test revealed no significant difference between DenseNet121 and each radiologist in the validation group (P=0.24, P=0.52, P=0.79).

Conclusions: All the five deep learning models in the study showed good performance for the diagnosis of adenoid hypertrophy, with DenseNet121 being the best, which was clinically relevant for the automatic identification of adenoid hypertrophy.

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来源期刊
Translational pediatrics
Translational pediatrics Medicine-Pediatrics, Perinatology and Child Health
CiteScore
4.50
自引率
5.00%
发文量
108
期刊介绍: Information not localized
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