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基于智能手机的人工智能利用迁移学习算法检测和诊断中耳疾病:一项回顾性深度学习研究。

Smartphone-based artificial intelligence using a transfer learning algorithm for the detection and diagnosis of middle ear diseases: A retrospective deep learning study.

作者信息

Chen Yen-Chi, Chu Yuan-Chia, Huang Chii-Yuan, Lee Yen-Ting, Lee Wen-Ya, Hsu Chien-Yeh, Yang Albert C, Liao Wen-Huei, Cheng Yen-Fu

机构信息

Department of Otolaryngology-Head and Neck Surgery, Taipei Veterans General Hospital, NO. 201, Sec. 2, Shipai Rd., Beitou District, Taipei 112, Taiwan.

Institute of Brain Science, National Yang Ming Chiao Tung University, 3F Shouren Building, No.155, Sec.2, Linong Street, Beitou District, Taipei 112, Taiwan.

出版信息

EClinicalMedicine. 2022 Jul 12;51:101543. doi: 10.1016/j.eclinm.2022.101543. eCollection 2022 Sep.

Abstract

BACKGROUND

Middle ear diseases such as otitis media and middle ear effusion, for which diagnoses are often delayed or misdiagnosed, are among the most common issues faced by clinicians providing primary care for children and adolescents. Artificial intelligence (AI) has the potential to assist clinicians in the detection and diagnosis of middle ear diseases through imaging.

METHODS

Otoendoscopic images obtained by otolaryngologists from Taipei Veterans General Hospital in Taiwan between Jany 1, 2011 to Dec 31, 2019 were collected retrospectively and de-identified. The images were entered into convolutional neural network (CNN) training models after data pre-processing, augmentation and splitting. To differentiate sophisticated middle ear diseases, nine CNN-based models were constructed to recognize middle ear diseases. The best-performing models were chosen and ensembled in a small CNN for mobile device use. The pretrained model was converted into the smartphone-based program, and the utility was evaluated in terms of detecting and classifying ten middle ear diseases based on otoendoscopic images. A class activation map (CAM) was also used to identify key features for CNN classification. The performance of each classifier was determined by its accuracy, precision, recall, and F1-score.

FINDINGS

A total of 2820 clinical eardrum images were collected for model training. The programme achieved a high detection accuracy for binary outcomes (pass/refer) of otoendoscopic images and ten different disease categories, with an accuracy reaching 98.0% after model optimisation. Furthermore, the application presented a smooth recognition process and a user-friendly interface and demonstrated excellent performance, with an accuracy of 97.6%. A fifty-question questionnaire related to middle ear diseases was designed for practitioners with different levels of clinical experience. The AI-empowered mobile algorithm's detection accuracy was generally superior to that of general physicians, resident doctors, and otolaryngology specialists (36.0%, 80.0% and 90.0%, respectively). Our results show that the proposed method provides sufficient treatment recommendations that are comparable to those of specialists.

INTERPRETATION

We developed a deep learning model that can detect and classify middle ear diseases. The use of smartphone-based point-of-care diagnostic devices with AI-empowered automated classification can provide real-world smart medical solutions for the diagnosis of middle ear diseases and telemedicine.

FUNDING

This study was supported by grants from the Ministry of Science and Technology (MOST110-2622-8-075-001, MOST110-2320-B-075-004-MY3, MOST-110-2634-F-A49 -005, MOST110-2745-B-075A-001A and MOST110-2221-E-075-005), Veterans General Hospitals and University System of Taiwan Joint Research Program (VGHUST111-G6-11-2, VGHUST111c-140), and Taipei Veterans General Hospital (V111E-002-3).

摘要

背景

中耳炎和中耳积液等中耳疾病的诊断常常延迟或误诊,是为儿童和青少年提供初级护理的临床医生面临的最常见问题之一。人工智能(AI)有潜力通过成像协助临床医生检测和诊断中耳疾病。

方法

回顾性收集了2011年1月1日至2019年12月31日期间台湾台北荣民总医院耳鼻喉科医生获取的耳内镜图像,并进行去识别处理。经过数据预处理、增强和分割后,将图像输入卷积神经网络(CNN)训练模型。为区分复杂的中耳疾病,构建了9个基于CNN的模型来识别中耳疾病。选择性能最佳的模型并将其集成到一个小型CNN中以供移动设备使用。将预训练模型转换为基于智能手机的程序,并根据耳内镜图像对10种中耳疾病进行检测和分类来评估其效用。还使用类激活映射(CAM)来识别CNN分类的关键特征。每个分类器的性能由其准确率、精确率、召回率和F1分数来确定。

结果

共收集了2820张临床鼓膜图像用于模型训练。该程序对耳内镜图像的二元结果(通过/转诊)和10种不同疾病类别实现了较高的检测准确率,模型优化后准确率达到98.0%。此外,该应用呈现出流畅的识别过程和用户友好的界面,表现出色,准确率为97.6%。为具有不同临床经验水平的从业者设计了一份与中耳疾病相关的50个问题的问卷。人工智能赋能的移动算法的检测准确率总体上优于普通医生、住院医生和耳鼻喉科专家(分别为36.0%、80.0%和90.0%)。我们的结果表明,所提出的方法提供了与专家相当的充分治疗建议。

解读

我们开发了一种深度学习模型,可检测和分类中耳疾病。使用具有人工智能赋能的自动分类功能的基于智能手机的即时医疗诊断设备可为中耳疾病的诊断和远程医疗提供实际的智能医疗解决方案。

资金支持

本研究得到了科学技术部(MOST110 - 2622 - 8 - 075 - 001、MOST110 - 2320 - B - 075 - 004 - MY3、MOST - 110 - 2634 - F - A49 - 005、MOST110 - 2745 - B - 075A - 001A和MOST110 - 2221 - E - 075 - 005)、台湾荣民总医院和大学系统联合研究计划(VGHUST111 - G6 - 11 - 2、VGHUST111c - 140)以及台北荣民总医院(V111E - 002 - 3)的资助。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2973/9287624/a2693f3e117b/gr1.jpg

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