College of Digital Science, Prince of Songkla University, Hat Yai, Songkhla, Thailand.
Division of Computational Science, Faculty of Science, Prince of Songkla University, Hat Yai, Songkhla, Thailand.
J Int Med Res. 2024 Apr;52(4):3000605241232519. doi: 10.1177/03000605241232519.
To develop and evaluate a novel feature selection technique, using photoplethysmography (PPG) sensors, for enhancing the performance of deep learning models in classifying vascular access quality in hemodialysis patients.
This cross-sectional study involved creating a novel feature selection method based on SelectKBest principles, specifically designed to optimize deep learning models for PPG sensor data, in hemodialysis patients. The method effectiveness was assessed by comparing the performance of multiple deep learning models using the feature selection approach versus complete feature set. The model with the highest accuracy was then trained and tested using a 70:30 approach, respectively, with the full dataset and the SelectKBest dataset. Performance results were compared using Student's paired -test.
Data from 398 hemodialysis patients were included. The 1-dimensional convolutional neural network (CNN1D) displayed the highest accuracy among different models. Implementation of the SelectKBest-based feature selection technique resulted in a statistically significant improvement in the CNN1D model's performance, achieving an accuracy of 92.05% (with feature selection) versus 90.79% (with full feature set).
These findings suggest that the newly developed feature selection approach might aid in accurately predicting vascular access quality in hemodialysis patients. This advancement may contribute to the development of reliable diagnostic tools for identifying vascular complications, such as stenosis, potentially improving patient outcomes and their quality of life.
开发和评估一种新的特征选择技术,使用光电容积脉搏波(PPG)传感器,以提高深度学习模型在分类血液透析患者血管通路质量方面的性能。
这是一项横断面研究,涉及创建一种新的特征选择方法,该方法基于 SelectKBest 原理,专门针对 PPG 传感器数据设计,以优化深度学习模型。通过比较使用特征选择方法与完整特征集的多个深度学习模型的性能来评估该方法的有效性。然后,使用完整数据集和 SelectKBest 数据集分别使用 70:30 的比例对具有最高准确性的模型进行训练和测试。使用学生配对检验比较性能结果。
共纳入 398 例血液透析患者的数据。一维卷积神经网络(CNN1D)在不同模型中显示出最高的准确性。实施基于 SelectKBest 的特征选择技术可显著提高 CNN1D 模型的性能,其准确性为 92.05%(使用特征选择)与 90.79%(使用完整特征集)。
这些发现表明,新开发的特征选择方法可能有助于准确预测血液透析患者的血管通路质量。这一进展可能有助于开发可靠的诊断工具,以识别狭窄等血管并发症,潜在地改善患者的预后和生活质量。