To date, very few biomedical signals have transitioned from research applications to clinical applications. This is largely due to the lack of trust in the diagnostic ability of non-stationary signals. To reach the level of clinical diagnostic application, classification using high-quality signal features is necessary. While there has been considerable progress in machine learning in recent years, especially deep learning, progress has been quite limited in the field of feature engineering. This study proposes a feature extraction algorithm based on group intelligence which we call a Plant Root System (PRS) algorithm. Importantly, the correlation between features produced by this PRS algorithm and traditional features is low, and the accuracy of several widely-used classifiers was found to be substantially improved with the addition of PRS features. It is expected that more biomedical signals can be applied to clinical diagnosis using the proposed algorithm.
翻译:迄今为止,很少有生物医学信号从研究应用转向临床应用,这主要是由于对非静止信号的诊断能力缺乏信任。为了达到临床诊断应用水平,有必要使用高质量的信号特征进行分类。虽然近年来机器学习取得了相当大的进展,特别是深层学习,但在特征工程领域进展有限。本研究报告建议根据我们称之为植物根系统(PRS)算法的团体情报进行特征提取算法。重要的是,这种PRS算法产生的特征与传统特征的关联性很低,而且随着PRS特性的增加,发现一些广泛使用的分类器的准确性大为改善。预计更多的生物医学信号可以用于临床诊断,使用拟议的算法。