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Direct application of an ECG-based sleep staging algorithm on reflective photoplethysmography data decreases performance.

Merel M van GilstB M WulterkensP FonsecaM RadhaM RossA MoreauA CernyP AndererX LongJ P van DijkS Overeem
Published in: BMC research notes (2020)
We applied an automatic sleep staging algorithm trained and validated on ECG-data directly on inter-beat intervals derived from a wrist-worn PPG sensor, in 389 polysomnographic recordings of patients with a variety of sleep disorders. While the algorithm reached moderate agreement with gold standard polysomnography, the performance was significantly lower when applied on PPG- versus ECG-derived heart rate variability data (kappa 0.56 versus 0.60, p < 0.001; accuracy 73.0% versus 75.9% p < 0.001). These results show that direct application of an algorithm on a different source of data may negatively affect performance. Algorithms need to be validated using each data source and re-training should be considered whenever possible.
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