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Special Issue on Using Machine Learning Algorithms in the Prediction of Kyphosis Disease: A Comparative Study

机译:使用机器学习算法在脑脊病预测中使用机器学习算法的特殊问题:比较研究

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摘要

Machine learning (ML) is the technology that allows a computer system to learn from the environment, through re-iterative processes, and improve itself from experience. Recently, machine learning has gained massive attention across numerous fields, and is making it easy to model data extremely well, without the importance of using strong assumptions about the modeled system. The rise of machine learning has proven to better describe data as a result of providing both engineering solutions and an important benchmark. Therefore, in this current research work, we applied three different machine learning algorithms, which were, the Random Forest (RF), Support Vector Machines (SVM), and Artificial Neural Network (ANN) to predict kyphosis disease based on a biomedical data. At the initial stage of the experiments, we performed 5- and 10-Fold Cross-Validation using Logistic Regression as a baseline model to compare with our ML models without performing grid search. We then evaluated the models and compared their performances based on 5- and 10-Fold Cross-Validation after running grid search algorithms on the ML models. Among the Support Vector Machines, we experimented with the three kernels (Linear, Radial Basis Function (RBF), Polynomial). We observed overall accuracies of the models between 79%−85%, and 77%−86% based on the 5- and 10-Fold Cross-Validation, after running grid search respectively. Based on the 5- and 10-Fold Cross-Validation as evaluation metrics, the RF, SVM-RBF, and ANN models achieved accuracies more than 80%. The RF, SVM-RBF and ANN models outperformed the baseline model based on the 10-Fold Cross-Validation with grid search. Overall, in terms of accuracies, the ANN model outperformed all the other ML models, achieving 85.19% and 86.42% based on the 5- and 10-Fold Cross-Validation. We proposed that RF, SVM-RBF and ANN models should be used to detect and predict kyphosis disease after a patient had undergone surgery or operation. We suggest that machine learning should be adopted and used as an essential and critical tool across the maximum spectrum of answering biomedical questions.
机译:机器学习(ML)是允许计算机系统通过重新迭代过程从环境中学习的技术,并从经验中提高自己。最近,机器学习在众多领域获得了大量的关注,并且可以轻松地建模数据,而不是使用对所建模系统的强烈假设的重要性。由于提供工程解决方案和重要的基准,因此已证明机器学习的兴起已经更好地描述了数据。因此,在本前研究工作中,我们应用了三种不同的机器学习算法,即随机森林(RF),支持向量机(SVM)和人工神经网络(ANN)以基于生物医学数据预测脑脊蛋白疾病。在实验的初始阶段,我们使用Logistic回归作为基线模型执行5倍和10倍的交叉验证,以与我们的ML模型进行比较而不执行网格搜索。然后,我们基于在ML模型上运行网格搜索算法之后,基于5倍和10倍的交叉验证进行评估并比较它们的性能。在支持向量机中,我们尝试了三个内核(线性,径向基函数(RBF),多项式)。在运行网格搜索后,我们将在79%-85%和77%-86%之间观察到模型的整体精度为79%-86%。基于5倍和10倍的交叉验证作为评估指标,RF,SVM-RBF和ANN模型实现了超过80%的准确度。 RF,SVM-RBF和ANN型号基于使用网格搜索的10倍交叉验证表现优于基线模型。总的来说,在准确性方面,ANN模型表现出所有其他ML模型,基于5-10倍的交叉验证实现85.19%和86.42%。我们提出了RF,SVM-RBF和ANN模型应该用于检测和预测患者经过手术或操作后的脑脊病。我们建议应采用机器学习,并将其作为跨越回答生物医学问题的最大频谱的重要和关键工具。

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