Literature DB >> 22891656

An improved method for estimating human circadian phase derived from multichannel ambulatory monitoring and artificial neural networks.

Vitaliy Kolodyazhniy1, Jakub Späti, Sylvia Frey, Thomas Götz, Anna Wirz-Justice, Kurt Kräuchi, Christian Cajochen, Frank H Wilhelm.   

Abstract

Recently, we developed a novel method for estimating human circadian phase with noninvasive ambulatory measurements combined with subject-independent multiple regression models and a curve-fitting approach. With this, we were able to estimate circadian phase under real-life conditions with low subject burden, i.e., without need of constant routine (CR) laboratory conditions, and without measuring standard circadian markers, such as core body temperature (CBT) or pineal hormone melatonin rhythms. The precision of ambulatory-derived estimated circadian phase was within an error of 12 ± 41 min (mean ± SD) in comparison to melatonin phase during a CR protocol. The physiological measures could be reduced to a triple combination: skin temperatures, irradiance in the blue spectral band of ambient light, and motion acceleration. Here, we present a nonlinear regression model approach based on artificial neural networks for a larger data set (25 healthy young males), including both the original data and additional data collected in the same protocol and using the same equipment. Throughout our validation study, subjects wore multichannel ambulatory monitoring devices and went about their daily routine for 1 wk. The devices collected a large number of physiological, behavioral, and environmental variables, including CBT, skin temperatures, cardiovascular and respiratory functions, movement/posture, ambient temperature, spectral composition and intensity of light perceived at eye level, and sleep logs. After the ambulatory phase, study volunteers underwent a 32-h CR protocol in the laboratory for measuring unmasked circadian phase (i.e., "midpoint" of the nighttime melatonin rhythm). To overcome the complex masking effects of many different confounding variables during ambulatory measurements, neural network-based nonlinear regression techniques were applied in combination with the cross-validation approach to subject-independent prediction of circadian phase. The most accurate estimate of circadian phase with a prediction error of -3 ± 23 min (mean ± SD) was achieved using only two types of the measured variables: skin temperatures and irradiance for ambient light in the blue spectral band. Compared to our previous linear multiple regression modeling approach, motion acceleration data can be excluded and prediction accuracy, nevertheless, improved. Neural network regression showed statistically significant improvement of variance of prediction error over traditional approaches in determining circadian phase based on single predictors (CBT, motion acceleration, or sleep logs), even though none of these variables was included as predictor. We, therefore, have identified two sets of noninvasive measures that, combined with the prediction model, can provide researchers and clinicians with a precise measure of internal time, in spite of the masking effects of daily behavior. This method, here validated in healthy young men, requires testing in a clinical or shiftwork population suffering from circadian sleep-wake disorders.

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Year:  2012        PMID: 22891656     DOI: 10.3109/07420528.2012.700669

Source DB:  PubMed          Journal:  Chronobiol Int        ISSN: 0742-0528            Impact factor:   2.877


  14 in total

1.  Compensating for Sensor Error in the Model Predictive Control of Circadian Clock Phase.

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Journal:  IEEE Control Syst Lett       Date:  2019-05-28

2.  Pharmaceutical-based entrainment of circadian phase via nonlinear model predictive control.

Authors:  John H Abel; Ankush Chakrabarty; Elizabeth B Klerman; Francis J Doyle
Journal:  Automatica (Oxf)       Date:  2018-12-10       Impact factor: 5.944

3.  Light-based methods for predicting circadian phase in delayed sleep-wake phase disorder.

Authors:  Jade M Murray; Michelle Magee; Tracey L Sletten; Christopher Gordon; Nicole Lovato; Krutika Ambani; Delwyn J Bartlett; David J Kennaway; Leon C Lack; Ronald R Grunstein; Steven W Lockley; Shantha M W Rajaratnam; Andrew J K Phillips
Journal:  Sci Rep       Date:  2021-05-25       Impact factor: 4.379

4.  Ambulatory circadian monitoring in sleep disordered breathing patients and CPAP treatment.

Authors:  Antonio Martinez-Nicolas; Marc Guaita; Joan Santamaría; Josep M Montserrat; Juan Antonio Madrid; María Angeles Rol
Journal:  Sci Rep       Date:  2021-07-19       Impact factor: 4.379

5.  A classification approach to estimating human circadian phase under circadian alignment from actigraphy and photometry data.

Authors:  Lindsey S Brown; Melissa A St Hilaire; Andrew W McHill; Andrew J K Phillips; Laura K Barger; Akane Sano; Charles A Czeisler; Francis J Doyle; Elizabeth B Klerman
Journal:  J Pineal Res       Date:  2021-06-20       Impact factor: 12.081

Review 6.  Application of bioinformatics in chronobiology research.

Authors:  Robson da Silva Lopes; Nathalia Maria Resende; Adenilda Cristina Honorio-França; Eduardo Luzía França
Journal:  ScientificWorldJournal       Date:  2013-09-25

7.  The characterization of biological rhythms in mild cognitive impairment.

Authors:  Elisabet Ortiz-Tudela; Antonio Martinez-Nicolas; Carmen Díaz-Mardomingo; Sara García-Herranz; Inmaculada Pereda-Pérez; Azucena Valencia; Herminia Peraita; César Venero; Juan Antonio Madrid; Maria Angeles Rol
Journal:  Biomed Res Int       Date:  2014-07-17       Impact factor: 3.411

Review 8.  Sleep-Wake Regulation and Its Impact on Working Memory Performance: The Role of Adenosine.

Authors:  Carolin Franziska Reichert; Micheline Maire; Christina Schmidt; Christian Cajochen
Journal:  Biology (Basel)       Date:  2016-02-05

9.  Cognitive brain responses during circadian wake-promotion: evidence for sleep-pressure-dependent hypothalamic activations.

Authors:  Carolin F Reichert; Micheline Maire; Virginie Gabel; Antoine U Viola; Thomas Götz; Klaus Scheffler; Markus Klarhöfer; Christian Berthomier; Werner Strobel; Christophe Phillips; Eric Salmon; Christian Cajochen; Christina Schmidt
Journal:  Sci Rep       Date:  2017-07-17       Impact factor: 4.379

Review 10.  Personalized medicine for pathological circadian dysfunctions.

Authors:  Rachel L Skelton; Jon M Kornhauser; Barbara A Tate
Journal:  Front Pharmacol       Date:  2015-06-19       Impact factor: 5.810

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