Transfer Learning for Hand Arthritis Prediction from X-Ray Images

R. Raman, T. Inbamalar, N. Pushpalatha, S. Meenakshi, Ashok Kumar, S. Razia, N. Gopinath
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Abstract

Arthritis is a bone disorder that includes swelling and pain in one or more joints. Everyone can develop osteoarthritis, but it grows more common as individuals get older. When arthritis deteriorates over time, it can lead to persistent pain, making it challenging to do daily tasks, and making activities like walking and climbing stairs painful and difficult. If arthritis is correctly identified and treated in its early stages, these consequences can be avoided. The goal of this project is to create two transfer learning models that, by spotting arthritis in its earliest stages, can lower the likelihood of acquiring chronic arthritis. For this purpose, Google served as the source of the images used in this study. After being purchased from Google, the data collection is preprocessed using three different methods. Image scaling, noise reduction, and image enhancement are a few of the pre-processing approaches. The transfer learning models are trained and assessed using this preprocessed dataset. In this work, two distinct transfer learning models are established. The models include SegNet and ENet. On a graph, the outcomes for the performances of both models are displayed. The training data from the first few epochs of the ENet model and SegNet model are also used in the analysis. The models' final accuracy and loss values are then assessed. In the end, it was discovered that the SegNet model had a lower loss value and more accuracy than the other. The model created in this study can be utilised as a preliminary test for arthritis when a person exhibits moderate arthritis symptoms because the final accuracy of the model is higher than or equal to 95%.
基于x射线图像的手部关节炎预测迁移学习
关节炎是一种骨骼疾病,包括一个或多个关节的肿胀和疼痛。每个人都可能患上骨关节炎,但随着年龄的增长,这种疾病会变得越来越普遍。当关节炎随着时间的推移而恶化时,它会导致持续的疼痛,使其难以完成日常任务,并使行走和爬楼梯等活动变得痛苦和困难。如果关节炎在早期阶段得到正确的识别和治疗,这些后果是可以避免的。这个项目的目标是创建两个迁移学习模型,通过在早期发现关节炎,可以降低患慢性关节炎的可能性。为此,谷歌作为本研究中使用的图像的来源。从谷歌购买后,数据收集使用三种不同的方法进行预处理。图像缩放、降噪和图像增强是一些预处理方法。使用此预处理数据集训练和评估迁移学习模型。在这项工作中,建立了两种不同的迁移学习模型。这些模型包括SegNet和ENet。在一个图表上,显示了两种模型的性能结果。在分析中还使用了ENet模型和SegNet模型的前几个时代的训练数据。然后评估模型的最终精度和损失值。最后,我们发现SegNet模型的损失值更低,准确率更高。本研究创建的模型可以作为关节炎的初步测试,当一个人表现出中度关节炎症状时,因为模型的最终准确度高于或等于95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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