Mendonça Fábio, Mostafa Sheikh Shanawaz, Morgado-Dias Fernando, Ravelo-García Antonio G, Rosenzweig Ivana
University of Madeira, Funchal, Portugal.
Interactive Technologies Institute (ITI/ARDITI/LARSyS), Funchal, Portugal.
Biomed Eng Lett. 2023 Jul 19;13(3):273-291. doi: 10.1007/s13534-023-00303-w. eCollection 2023 Aug.
This study conducted a systematic review to determine the feasibility of automatic Cyclic Alternating Pattern (CAP) analysis. Specifically, this review followed the 2020 Preferred Reporting Items for Systematic reviews and Meta-Analyses (PRISMA) guidelines to address the formulated research question: is automatic CAP analysis viable for clinical application? From the identified 1,280 articles, the review included 35 studies that proposed various methods for examining CAP, including the classification of A phase, their subtypes, or the CAP cycles. Three main trends were observed over time regarding A phase classification, starting with mathematical models or features classified with a tuned threshold, followed by using conventional machine learning models and, recently, deep learning models. Regarding the CAP cycle detection, it was observed that most studies employed a finite state machine to implement the CAP scoring rules, which depended on an initial A phase classifier, stressing the importance of developing suitable A phase detection models. The assessment of A-phase subtypes has proven challenging due to various approaches used in the state-of-the-art for their detection, ranging from multiclass models to creating a model for each subtype. The review provided a positive answer to the main research question, concluding that automatic CAP analysis can be reliably performed. The main recommended research agenda involves validating the proposed methodologies on larger datasets, including more subjects with sleep-related disorders, and providing the source code for independent confirmation.
本研究进行了一项系统评价,以确定自动循环交替模式(CAP)分析的可行性。具体而言,本评价遵循2020年系统评价与Meta分析的首选报告项目(PRISMA)指南,以解决所提出的研究问题:自动CAP分析在临床应用中是否可行?从检索到的1280篇文章中,该评价纳入了35项研究,这些研究提出了各种检查CAP的方法,包括A期、其亚型或CAP周期的分类。随着时间的推移,在A期分类方面观察到三个主要趋势,首先是用调整阈值分类的数学模型或特征,其次是使用传统机器学习模型,最近则是深度学习模型。关于CAP周期检测,观察到大多数研究采用有限状态机来实施CAP评分规则,这依赖于初始A期分类器,强调了开发合适的A期检测模型的重要性。由于目前最先进的检测方法多种多样,从多类模型到为每个亚型创建模型,A期亚型的评估已被证明具有挑战性。该评价对主要研究问题给出了肯定答案,得出自动CAP分析可以可靠进行的结论。主要推荐的研究议程包括在更大的数据集上验证所提出的方法,包括纳入更多患有睡眠相关障碍的受试者,并提供源代码以供独立验证。