基于学习向量量化的牙髓炎疾病诊断预测模型

R. Kurniawan, Wirdatul Hasana, Benny Sukma Negara, Mohd Zakree Ahmad Nazri, F. Lestari, I. Iskandar
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引用次数: 2

摘要

贫穷和行动不便是阻碍人们定期看牙医的主要因素。因此,许多人,特别是来自偏远地区的人,没有得到适当的牙齿卫生和早期发现和治疗牙病的必要教育。牙髓炎是口腔常见病之一。一个免费的牙髓炎在线诊断将有助于用户谁是有困难去看牙医。然而,开发在线顾问或专家系统的挑战是创建一个高精度的预测模型。在建立所需的分类模型方面,一种被证明有效的方法是人工神经网络(ANN)。在本研究中,我们利用LVQ3算法建立了牙髓炎疾病预测模型。该模型可根据13种症状将牙髓炎疾病划分为5类。此外,我们还进行了8个学习率,8个窗口,最多100个epoch的实验测试,并以时间为参数,以获得最高精度的建模。经过实验测试,LVQ3在训练数据分配80%的情况下,平均准确率达到97.5%。在耗时方面,使用LVQ3算法的系统需要328分23秒的总处理时间,平均一次处理时间为1分42秒。因此,根据测试结果,我们认为该基于网络的预测系统有潜力作为社区尽早获得牙髓炎疾病诊断的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction Model for Diagnosis of Pulpitis Diseases using Learning Vector Quantization 3
Poverty and mobility limitations are among the main factors that hinder people from regular dental visits. Hence, many people, especially from remote areas, did not get the required education on proper dental hygiene and early detection and treatment for dental disease. Pulpitis is one of the frequent dental diseases. A free online diagnosis of Pulpitis would be helpful to users who are having difficulties visiting a dentist. However, the challenge in developing an online advisor or expert system is to create a high accuracy prediction model. One method proven effective in building the required classification model is an Artificial Neural Network (ANN). In this research, we developed the Pulpitis disease prediction model using the LVQ3 algorithm. This developed model can classify five classes of Pulpitis diseases based on 13 symptoms. In addition, we also conducted experimental testing with eight learning rates, eight windows, a maximum of 100 epochs, and time is taken parameters to get the highest accuracy modelling. Based on experimental testing, LVQ3 obtained an average accuracy of 97.5% on training data allocation of 80%. In terms of time taken, the system using the LVQ3 algorithm requiring a total processing time of 328 minutes 23 seconds, with an average for one processing time is 1 minute 42 seconds. Therefore, based on the test results, we concluded that this web-based prediction system has the potential to be used as a solution for the community to get the Pulpitis diseases diagnosis as early as possible.
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