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Otoscopic diagnosis using computer vision: An automated machine learning approach

机译:使用计算机视觉的耳蛋白诊断:自动化机器学习方法

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Objective Access to otolaryngology is limited by lengthy wait lists and lack of specialists, especially in rural and remote areas. The objective of this study was to use an automated machine learning approach to build a computer vision algorithm for otoscopic diagnosis capable of greater accuracy than trained physicians. This algorithm could be used by primary care providers to facilitate timely referral, triage, and effective treatment. Methods Otoscopic images were obtained from Google Images (Google Inc., Mountain View, CA), from open access repositories, and within otolaryngology clinics associated with our institution. After preprocessing, 1,366 unique images were uploaded to the Google Cloud Vision AutoML platform (Google Inc.) and annotated with one or more of 14 otologic diagnoses. A consensus set of labels for each otoscopic image was attained, and a multilabel classifier architecture algorithm was trained. The performance of the algorithm on an 89‐image test set was compared to the performance of physicians from pediatrics, emergency medicine, otolaryngology, and family medicine. Results For all diagnoses combined, the average precision (positive predictive value) of the algorithm was 90.9%, and the average recall (sensitivity) was 86.1%. The algorithm made 79 correct diagnoses with an accuracy of 88.7%. The average physician accuracy was 58.9%. Conclusion We have created a computer vision algorithm using automated machine learning that on average rivals the accuracy of the physicians we tested. Fourteen different otologic diagnoses were analyzed. The field of medicine will be changed dramatically by artificial intelligence within the next few decades, and physicians of all specialties must be prepared to guide that process. Level of Evidence NA Laryngoscope, 130:1408–1413, 2020
机译:目的访问耳鼻喉科有限的是冗长的等待列表和缺乏专家,特别是在农村和偏远地区。本研究的目的是使用自动化机器学习方法来构建计算机视觉算法,用于耳诊诊断,能够比培训的医生更高的精度。该算法可以由初级护理提供者使用,以促进及时转诊,分类和有效治疗。方法从谷歌图像(谷歌公司,山景,加利福尼亚州),从开放访问存储库以及与我们所关联的耳鼻喉科诊所中获得耳镜图像。在预处理后,将1,366个独特的图像上传到Google Cloud Vision Automl平台(Google Inc.)并用14个Orologic诊断中的一个或多个注释。达到了每个耳镜图像的共识一组标签,训练了一种多标签分类器架构算法。将算法对89图像测试集的性能进行比较,与家育学,急诊医学,耳鼻喉科和家庭医学的医生的性能进行了比较。所有诊断的结果合并,算法的平均精度(阳性预测值)为90.9%,平均召回(敏感性)为86.1%。该算法使79个正确诊断为88.7%。平均医生准确性为58.9%。结论我们创建了一种使用自动化机器学习的计算机视觉算法,平均竞争对手我们测试的医生的准确性。分析了14种不同的耳科诊断。在未来几十年内,人工智能将急剧改变医学领域,并且必须准备所有专业的医生来指导该过程。证据水平na喉镜,130:1408-1413,2020

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