基于图像处理和卷积神经网络的中耳炎感染分类

Ahmed I. Elabbas, K. Khan, Carlos C. Hortinela
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引用次数: 3

摘要

发展中国家至今仍存在中耳炎感染误诊的问题。解决这个问题的各种研究成功率各不相同。这项研究探索了卷积神经网络(CNN)的不同变体,YOLO V3,或你只看一次的版本3。该算法检测各种形式媒体中的特定对象,其中之一就是图像。考虑到它是为检测特定物体而设计的,因此它是检测急性中耳炎(AOM)和慢性化脓性中耳炎(CSOM)的理想候选者。当医生诊断一个病例时,这两个变体有一个对象可以查找。中耳炎症或中耳炎(OM)是单独的疾病实体,但可能重叠。因此,新训练的医生可能会对正确诊断感到困惑。本研究对20张AOM、CSOM和正常鼓膜图像进行检测,准确率达到75%。这个结果可以通过使用测试中使用的相同相机向训练数据集中添加更多图像来改进。YOLOV3的另一个吸引人的特性是开发成本低,并且有使用和改进它的可用文档。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Otitis Media Infections using Image Processing and Convolutional Neural Network
Developing countries still to this day suffer from misdiagnosis of otitis media infections. Various studies to solve this issue with various success rates. This study explores a different variation of convolutional neural network (CNN), YOLO V3, or Version 3 of You Only Look Once. This algorithm detects particular objects in various forms of media, and one of them is images. Considering it is designed to detect specific objects, it was the perfect candidate to test on detecting Acute Otitis Media (AOM) and Chronic Suppurative Otitis Media (CSOM). These two variations have an object to look for whenever a doctor is diagnosing a case. Inflammation of the middle ear or otitis media (OM) are separate disease entities but may overlap. Hence, it may be confusing for a newly trained doctor to diagnose it correctly. This study achieved an accuracy rate of 75% when 20 images of AOM, CSOM, and normal tympanic membrane were tested. This result can be improved by adding more images into the training datasets using the same camera used in testing. Another appealing feature of YOLOV3 is the low cost of development and the availability of documentation on using and improving it.
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