Transfer Learning-Based Classifier to Automate the Extraction of False X-Ray Images From Hospital's Database

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-09-03 DOI:10.1016/j.identj.2024.08.002
Manar Abu Talib , Mohammad Adel Moufti , Qassim Nasir , Yousuf Kabbani , Dana Aljaghber , Yaman Afadar
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Abstract

Background

During preclinical training, dental students take radiographs of acrylic (plastic) blocks containing extracted patient teeth. With the digitisation of medical records, a central archiving system was created to store and retrieve all x-ray images, regardless of whether they were images of teeth on acrylic blocks, or those from patients. In the early stage of the digitisation process, and due to the immaturity of the data management system, numerous images were mixed up and stored in random locations within a unified archiving system, including patient record files. Filtering out and expunging the undesired training images is imperative as manual searching for such images is problematic. Hence the aim of this stidy was to differentiate intraoral images from artificial images on acrylic blocks.

Methods

An artificial intelligence (AI) solution to automatically differentiate between intraoral radiographs taken of patients and those taken of acrylic blocks was utilised in this study. The concept of transfer learning was applied to a dataset provided by a Dental Hospital.

Results

An accuracy score, F1 score, and a recall score of 98.8%, 99.2%, and 100%, respectively, were achieved using a VGG16 pre-trained model. These results were more sensitive compared to those obtained initally using a baseline model with 96.5%, 97.5%, and 98.9% accuracy score, F1 score, and a recall score respectively.

Conclusions

The proposed system using transfer learning was able to accurately identify “fake” radiographs images and distinguish them from the real intraoral images.
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基于迁移学习的分类器,自动从医院数据库中提取虚假 X 光图像。
背景:在临床前培训期间,牙科学生要对装有患者拔出的牙齿的丙烯酸(塑料)块进行射线照相。随着医疗记录的数字化,建立了一个中央存档系统来存储和检索所有的 X 射线图像,无论它们是丙烯酸树脂块上的牙齿图像,还是患者的牙齿图像。在数字化进程的早期阶段,由于数据管理系统还不成熟,大量图像被混杂在一起,随意存放在统一存档系统的不同位置,包括病人的病历档案。过滤和删除不需要的训练图像势在必行,因为人工搜索这类图像很成问题。因此,本研究的目的是区分口内图像和丙烯酸块上的人工图像:方法:本研究采用了一种人工智能(AI)解决方案,用于自动区分患者口内X光片和丙烯酸树脂块上的人工图像。使用 VGG16 预训练模型得出的准确率、F1 分数和召回分数分别为 98.8%、99.2% 和 100%。与最初使用基线模型(准确率、F1 分数和召回分数分别为 96.5%、97.5% 和 98.9%)获得的结果相比,这些结果更加灵敏:使用迁移学习的拟议系统能够准确识别 "伪造 "的放射图像,并将其与真实的口腔内图像区分开来。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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