基于脊柱几何参数的遗传算法优化的CNN-LSTM混合框架中使用中性粒细胞集增强腰痛预测

Khaled Bedair, Nadir Omer, Ahmed A. H. Abdellatif, Kottakkaran Sooppy Nisar, Shankar Rao Munjam, Ahmed I. Taloba
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引用次数: 0

摘要

预测背部疼痛涉及多方面的方法,包括人口统计,生活方式和医疗数据的分析。机器学习算法和高级数据分析在预测背痛风险方面发挥着关键作用。早期预测有助于积极干预和个性化的医疗保健策略,从而减轻背痛对个人和医疗保健系统的负担。基于演化引力搜索的特征选择(EGSFS)是初始特征集中最具教育意义的元素。具体来说,该框架使用脊柱几何参数进行训练和微调,从而能够精确识别有发展背痛症风险的个体。本文提出了一种基于遗传算法(GA)优化的混合卷积神经网络(CNN)和长短期记忆(LSTM)模型的分类任务新方法。遗传算法通过优化模型的结构和超参数来提高模型的性能。该框架使用Python实现。在分类过程中,单中性粒细胞组有助于捕获模糊性,这在处理可能出现混淆症状的背痛症时特别有益,从而提高了分类各种背痛症的准确性。实验结果表明,这种混合方法显著提高了分类精度,在实际应用中是一种可行的选择。实验结果在准确性和预测能力方面有了显著的提高,强调了这种创新方法在推进背部疼痛管理的预防性和个性化医疗保健策略方面的潜力。该实验建立在腰痛症状数据集上。将实验结果与Logistic回归、决策树分类器、随机森林、支持向量机等先前的预测模型在准确率、f1分数、精密度、召回率等方面进行了比较。正常和异常数据的准确率为99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Dorsalgia Prediction using Neutrosophic Sets in a Genetic Algorithm-Optimized Hybrid CNN-LSTM Framework on Spinal Geometry Parameters
Predicting dorsalgia involves a multifaceted approach that encompasses the analysis of demographic, lifestyle, and medical data. Machine learning algorithms and advanced data analytics play a pivotal role in forecasting the risk of developing back pain. Early prediction aids in proactive interventions and personalized healthcare strategies, thereby mitigating the burden of dorsalgia on individuals and healthcare systems. The proposed feature selection is the initial feature set’s most educational elements by evolutionary gravitational search-based feature selection (EGSFS). Specifically, the framework is trained and fine-tuned using spinal geometry parameters, enabling precise identification of individuals at risk of developing dorsalgia. This study presents a novel approach for classification tasks using a Genetic Algorithm (GA)-optimized hybrid Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) model. The GA optimizes the model’s architecture and hyperparameters to enhance its performance. The framework is implemented using Python. In the categorization procedure, the Single Neutrosophic sets aid in capturing ambiguity, which is particularly beneficial when handling dorsalgia disorders that may present with confusing symptoms, thus enhancing the accuracy of classifying various dorsalgia conditions. Experimental results demonstrate that this hybrid approach significantly improves classification accuracy, making it a viable option for several practical applications. Experimental results exhibit remarkable improvements in accuracy and predictive power, underscoring the potential of this innovative approach in advancing preventative and personalized healthcare strategies for back pain management. The experiment was built on the lower back pain symptoms dataset. A comparison is made between the experimental results and previous prediction models like Logistic Regression, Decision Tree Classifier, Random Forest, and Support Vector Machine in terms of accuracy, F1-score, precision, and recall. The accuracy of normal and abnormal data is 99%.
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