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一种基于新型混合机器学习的肩部植入物制造商分类系统。

A Novel Hybrid Machine Learning Based System to Classify Shoulder Implant Manufacturers.

作者信息

Sivari Esra, Güzel Mehmet Serdar, Bostanci Erkan, Mishra Alok

机构信息

Computer Engineering Department, Cankiri Karatekin University, Cankiri 18100, Turkey.

Computer Engineering Department, Ankara University, Ankara 06830, Turkey.

出版信息

Healthcare (Basel). 2022 Mar 20;10(3):580. doi: 10.3390/healthcare10030580.

Abstract

It is necessary to know the manufacturer and model of a previously implanted shoulder prosthesis before performing Total Shoulder Arthroplasty operations, which may need to be performed repeatedly in accordance with the need for repair or replacement. In cases where the patient’s previous records cannot be found, where the records are not clear, or the surgery was conducted abroad, the specialist should identify the implant manufacturer and model during preoperative X-ray controls. In this study, an auxiliary expert system is proposed for classifying manufacturers of shoulder implants on the basis of X-ray images that is automated, objective, and based on hybrid machine learning models. In the proposed system, ten different hybrid models consisting of a combination of deep learning and machine learning algorithms were created and statistically tested. According to the experimental results, an accuracy of 95.07% was achieved using the DenseNet201 + Logistic Regression model, one of the proposed hybrid machine learning models (p < 0.05). The proposed hybrid machine learning algorithms achieve the goal of low cost and high performance compared to other studies in the literature. The results lead the authors to believe that the proposed system could be used in hospitals as an automatic and objective system for assisting orthopedists in the rapid and effective determination of shoulder implant types before performing revision surgery.

摘要

在进行全肩关节置换手术之前,有必要了解先前植入的肩关节假体的制造商和型号,根据修复或更换的需要,可能需要反复进行此类手术。如果找不到患者的既往记录、记录不清楚或者手术是在国外进行的,专家应在术前X线检查时确定植入物的制造商和型号。在本研究中,提出了一种基于X线图像对肩部植入物制造商进行分类的辅助专家系统,该系统是自动化的、客观的,并且基于混合机器学习模型。在所提出的系统中,创建了由深度学习和机器学习算法组合而成的十种不同混合模型,并进行了统计测试。根据实验结果,使用所提出的混合机器学习模型之一DenseNet201 + 逻辑回归模型,准确率达到了95.07%(p < 0.05)。与文献中的其他研究相比,所提出的混合机器学习算法实现了低成本和高性能的目标。这些结果使作者相信,所提出的系统可以在医院中用作自动、客观的系统,以帮助骨科医生在进行翻修手术之前快速有效地确定肩部植入物的类型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/adfc/8952500/ce31f5f6a402/healthcare-10-00580-g001.jpg

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