Artificial intelligence assisted identification of newborn auricular deformities via smartphone application.

IF 9.6 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL
EClinicalMedicine Pub Date : 2025-02-21 eCollection Date: 2025-03-01 DOI:10.1016/j.eclinm.2025.103124
Liu-Jie Ren, Rui-Jie Yang, Li-Li Chen, Shu-Yue Wang, Chen-Long Li, Yuan Huang, Tian-Yu Zhang, Yao-Yao Fu, Shuo Wang
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引用次数: 0

Abstract

Background: Auricular deformities are common in newborns and require early diagnosis and timely intervention. Several factors highlight the necessity of a machine learning-based diagnostic solution: the high prevalence of these conditions, the narrow time window for effective non-surgical treatment, limited medical resources, and the importance of both physical and mental well-being. This study presents a novel artificial intelligence (AI) model to identify and classify common sub-types of auricle deformities, using photos taken with mobile devices.

Methods: The dataset was made up of the open-source dataset named BabyEar4k, which contains 3852 auricle images with diagnosis data, and another private dataset containing 104 microtia ears added from ENT Hospital of Fudan University. All the training photos were pre-processed to 800 × 800 RGB images, with the auricles located at the centers. The dataset was divided into two parts, 3835 samples for training/validation and 120 (20 for each class) for testing, i.e., the internal test dataset. 15% of the training data were used for validation during the training process. External validation was conducted on data from three centres across China (Xinjiang N = 252, Guizhou N = 186, and Fujian N = 252). The performance of the model was evaluated by comparative analyses with human volunteers. A prospective test set was collected in Shanghai (Obstetrics & Gynecology Hospital of Fudan University, from 2023/10/17 to 2023/12/29; N = 272). Given the significant variation in the distribution of sub-types, accuracy and weighted F1-score were chosen as primary evaluation metrics.

Findings: Four different backbone architectures were evaluated: ResNet50, DenseNet121, EfficientNet, and RegNet. On the internal test set, the model achieved an accuracy of 0.83-0.85 for six-class classification and 0.94-0.98 for binary classification. ResNet50 backbone had the most consistent performance. Multi-center real-world data validation demonstrated satisfactory accuracy, with a range of 0.74-0.82 for six-class classification and 0.79-0.86 for normal/abnormal classification, indicating strong generalizability. In comparative analyses with volunteers, the professionals achieved an accuracy of 0.7-0.8 in the six-class classification task, while the related fellows scored 0.45-0.65, and the laypeople scored 0.45-0.55.

Interpretation: The developed system offers an efficient and cost-effective solution for clinical applications, including early diagnosis of newborn auricular deformities, monitoring treatment progress, and educational purposes.

Funding: This study was supported by Shanghai Science and Technology Innovation Action Plan (23Y21900200, 21DZ2200700, T-Y Zhang) and Medical Engineering Fund of Fudan University (Y-Y Fu). S Wang was supported by the Shanghai Sailing Program (22YF1409300) and China Computer Federation (CCF)-Baidu Open Fund Grant (CCF-BAIDU 202316).

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来源期刊
EClinicalMedicine
EClinicalMedicine Medicine-Medicine (all)
CiteScore
18.90
自引率
1.30%
发文量
506
审稿时长
22 days
期刊介绍: eClinicalMedicine is a gold open-access clinical journal designed to support frontline health professionals in addressing the complex and rapid health transitions affecting societies globally. The journal aims to assist practitioners in overcoming healthcare challenges across diverse communities, spanning diagnosis, treatment, prevention, and health promotion. Integrating disciplines from various specialties and life stages, it seeks to enhance health systems as fundamental institutions within societies. With a forward-thinking approach, eClinicalMedicine aims to redefine the future of healthcare.
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