| Literature DB >> 29704408 |
Sandra Komarzynski1,2, Qi Huang1,3, Pasquale F Innominato1,2,4, Monique Maurice1,2, Alexandre Arbaud2, Jacques Beau2, Mohamed Bouchahda2,5, Ayhan Ulusakarya2,5, Nicolas Beaumatin6, Gabrièle Breda6, Bärbel Finkenstädt2,3, Francis Lévi1,2,5.
Abstract
BACKGROUND: Experimental and epidemiologic studies have shown that circadian clocks' disruption can play an important role in the development of cancer and metabolic diseases. The cellular clocks outside the brain are effectively coordinated by the body temperature rhythm. We hypothesized that concurrent measurements of body temperature and rest-activity rhythms would assess circadian clocks coordination in individual patients, thus enabling the integration of biological rhythms into precision medicine.Entities:
Keywords: biomarkers; circadian clock; domomedicine; eHealth; rest-activity rhythm; temperature rhythm; time series analyses
Mesh:
Year: 2018 PMID: 29704408 PMCID: PMC6018238 DOI: 10.2196/jmir.9779
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1eHealth domomedicine platform technology. The chest sensor embedded into the vest shirt with an open area for infrared temperature measurements is shown in the upper left corner. The epoch length of the data points as well as length of time intervals between teletransmission events are indicated within each circle for each variable. Teletransmissions involve Bluetooth Low Energy (BLE) from sensor to gateway and General Packet Radio Service (GPRS) from gateway to server, from which data can be retrieved continuously.
Figure 2Consort diagram. The 69 subjects were enrolled in 1 of 3 cohorts that differed according to the method of sensor attachment and record duration (first row), health status (second row), and number of subject per group, including sex, age (median and range), and record duration (median and range).
Subjects and records characteristics. Median and distribution of data for all quantitative variables. M/F refers to male/female.
| Cohort | Total N | Age, years (range) [25-75% IQa] | Weight, kg (range) [25-75% IQ] | Height, cm (range) [25-75% IQ] | BMI, kg/m2 (range) [25-75% IQ] | # of subjects with partial record (cause) | Valid time series duration, days (range) [25-75% IQ] | Missing data, days (%) (range) [25-75% IQ] |
| 1 | 28 | 40 | 73 | — | — | 0 | 4.0 | 0 (0.8) |
| 2.1 | 18 | 26 | 73 | 172 | 24 | 1 (charger dysfunction) | 7.0 | 0.1 (1.5) |
| 2.2 | 9 | 34 | 71 | 169 | 24 | 3 (subject-related)b
| 19.0 | 2.3 (7.7) |
| 2 | 27 | 27 | 70 | 171 | 24.3 | 3 subject-related | 7.4 | 0.1 (2.0) |
| 3 | 12 | 61 | 66 | 170 | 22.8 | 5 (subject-related)c | 20.3 | 1.2 (5.0) |
aIQ: interquartile.
bForgetfulness after charging (N=1), travel abroad starting before end of recording span (N=1), wrong charging procedure applied (N=1).
cWrong charging procedure applied (N=2); poor tolerability of adjusted sensor-dedicated cloth due to no current use of bra (N=1), or treatment-related itching (N=1); need for more feedback and support (N=1).
Figure 3Inter- and intrasubject variability in circadian patterns illustrated by chronograms of rest-activity (a) and thoracic skin surface temperature (b) of 2 healthy subjects. Panel 1 (left): time series from a 57-year-old female researcher, with usual respective times of awakening and retiring at 8:30 and 22:30; mean rest-activity I
Figure 4Inter- and intrasubject variability in circadian acrophases and amplitudes of rest-activity (left panels), temperature (middle panels), and circadian coordination (right panels). Illustrative examples through polar plots in 4 healthy subjects, whose 3-day time series shifted by 6 hours (subjects 1 and 4) or 1 hour (subjects 2 and 3), have been analyzed using the sampling-resampling spectrum analysis. The length of each vector represents the amplitude of the dominant period and its direction points toward the timing of the corresponding acrophase.
Figure 5Intersubject variabilities in main rhythm parameters of healthy subjects (left columns) and cancer patients (right column). Median, interquartiles, range, and individual values of dominant periods and corresponding amplitudes and acrophases of temperature (green) and rest-activity (blue), based on spectral analysis of time series over the whole time span.The bottom row depicts the distribution of the dichotomy index I
Figure 6Sex and sex-age dependencies of circadian amplitude (upper row) and spectrum gravity center of temperature time series (lower row) in 55 healthy subjects. (a) Box plot of temperature amplitudes of the estimated main harmonic for females (left, N=32) and males (right, N=23); (b) Sex-specific effect of age on temperature amplitude shown by estimated regression line with 95% confidence bands. The vertical dashes along the horizontal axes show corresponding age of each subject. (c) Box plot of the estimated gravity center of temperature spectra for females (left, N=32) and males (right, N=23). (d) Sex-specific effect of age on the gravity center of temperature spectra shown by estimated regression line with 95% confidence bands.
Figure 7Inter- and intrasubject differences in circadian patterns in rest-activity and chest surface temperature as illustrated in 2 cancer patients (a and b), with chronograms (panels 1 and 2) and polar plot representations of amplitude-acrophase vectors (panel 3).