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基于深度学习的移动应用程序用于临床图像中眼睑肿瘤的高效识别。

Deep learning-based mobile application for efficient eyelid tumor recognition in clinical images.

作者信息

Hui Shiqi, Xie Jing, Dong Li, Wei Li, Dai Weiwei, Li Dongmei

机构信息

Beijing Tongren Eye Center, Beijing Key Laboratory of Intraocular Tumor Diagnosis and Treatment, Beijing Ophthalmology & Visual Sciences Key Lab, Medical Artificial Intelligence Research and Verification Key Laboratory of the Ministry of Industry and Information Technology, Beijing Tongren Hospital, Capital Medical University, Beijing, China.

Institute of Digital Ophthalmology and Visual Science, Changsha Aier Eye Hospital, Changsha, Hunan, China.

出版信息

NPJ Digit Med. 2025 Mar 30;8(1):185. doi: 10.1038/s41746-025-01539-9.

Abstract

Early detection, regular monitoring of eyelid tumors and post-surgery recurrence monitoring are crucial for patients. However, frequent hospital visits are burdensome for patients with poor medical conditions. This study validates a novel deep learning-based mobile application, based on YOLOv5 and Efficient-Net v2-B architectures, for self-diagnosing eyelid tumors, enabling improved health support systems for such patients. 1195 preprocessed clinical ocular photographs and biopsy results were collected for model training. The best-performing model was chosen and converted into a smartphone-based application, then further evaluated based on external validation dataset, achieved 0.921 accuracy for triple classification outcomes (benign/malignant eyelid tumors or normal eye), generally superior to that of general physicians, resident doctors, and ophthalmology specialists. Intelligent Eyelid Tumor Screening application exhibited a straightforward detection process, user-friendly interface and treatment recommendation scheme, provides preliminary evidence for recognizing eyelid tumors and could be used by healthcare professionals, patients and caregivers for detection and monitoring purposes.

摘要

早期发现、定期监测眼睑肿瘤以及术后复发监测对患者至关重要。然而,频繁就医对身体状况较差的患者来说负担很重。本研究验证了一种基于深度学习的新型移动应用程序,该程序基于YOLOv5和Efficient-Net v2-B架构,用于自我诊断眼睑肿瘤,为这类患者提供了更好的健康支持系统。收集了1195张经过预处理的临床眼部照片和活检结果用于模型训练。选择性能最佳的模型并将其转换为基于智能手机的应用程序,然后基于外部验证数据集进行进一步评估,对于三重分类结果(良性/恶性眼睑肿瘤或正常眼睛)的准确率达到0.921,总体上优于普通医生、住院医生和眼科专家。智能眼睑肿瘤筛查应用程序展示了简单直接的检测过程、用户友好的界面和治疗推荐方案,为识别眼睑肿瘤提供了初步证据,可供医疗保健专业人员、患者和护理人员用于检测和监测目的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ae00/11955516/82f745064ee9/41746_2025_1539_Fig1_HTML.jpg

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