论文标题

回归或分类?在实际应用范围内使用深神网络对BP预测的反思

Regression or Classification? Reflection on BP prediction from PPG data using Deep Neural Networks in the scope of practical applications

论文作者

Schrumpf, Fabian, Serdack, Paul Rudi, Fuchs, Mirco

论文摘要

光杀解物学(PPG)信号超出心率分析或血氧水平监测提供诊断潜力。最近,研究广泛地集中在基于非侵入性PPG的血压方法(BP)估计上。这些方法可以细分为回归和分类方法。后者将PPG信号分配给代表临床相关范围的预定义BP间隔。前者预测收缩期(SBP)和舒张压(DBP)BP是连续变量,并且对研究界特别感兴趣。但是,报告的BP回归方法的准确性在出版物中差异很大,一些作者甚至质疑基于PPG的BP回归的可行性。在我们的工作中,我们比较了BP回归和分类方法。我们认为,BP分类可能提供诊断价值,在许多临床相关的情况下等同于回归,同时在性能方面相似甚至更高。我们使用公开可用的PPG数据进行SBP回归和分类,并使用特定于主题的数据进行分类,比较几个已建立的神经体系结构。我们发现在个性化之前,分类和回归模型执行相似。但是,在个性化之后,基于分类方法的准确性优于回归方法。我们得出的结论是,在某些情况下,BP分类可能比BP回归优于回归,而BP范围的粗分段就足够了。

Photoplethysmographic (PPG) signals offer diagnostic potential beyond heart rate analysis or blood oxygen level monitoring. In the recent past, research focused extensively on non-invasive PPG-based approaches to blood pressure (BP) estimation. These approaches can be subdivided into regression and classification methods. The latter assign PPG signals to predefined BP intervals that represent clinically relevant ranges. The former predict systolic (SBP) and diastolic (DBP) BP as continuous variables and are of particular interest to the research community. However, the reported accuracies of BP regression methods vary widely among publications with some authors even questioning the feasibility of PPG-based BP regression altogether. In our work, we compare BP regression and classification approaches. We argue that BP classification might provide diagnostic value that is equivalent to regression in many clinically relevant scenarios while being similar or even superior in terms of performance. We compare several established neural architectures using publicly available PPG data for SBP regression and classification with and without personalization using subject-specific data. We found that classification and regression models perform similar before personalization. However, after personalization, the accuracy of classification based methods outperformed regression approaches. We conclude that BP classification might be preferable over BP regression in certain scenarios where a coarser segmentation of the BP range is sufficient.

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