| Literature DB >> 25342922 |
Richard F Kaplan1, Ying Wang1, Kenneth A Loparo2, Monica R Kelly3, Richard R Bootzin3.
Abstract
BACKGROUND: A need exists, from both a clinical and a research standpoint, for objective sleep measurement systems that are both easy to use and can accurately assess sleep and wake. This study evaluates the output of an automated sleep-wake detection algorithm (Z-ALG) used in the Zmachine (a portable, single-channel, electroencephalographic [EEG] acquisition and analysis system) against laboratory polysomnography (PSG) using a consensus of expert visual scorers.Entities:
Keywords: EEG; Zmachine; algorithm; automatic sleep scoring; single channel; sleep–wake detection
Year: 2014 PMID: 25342922 PMCID: PMC4206400 DOI: 10.2147/NSS.S71159
Source DB: PubMed Journal: Nat Sci Sleep ISSN: 1179-1608
Figure 1Sample study participant showing epoch-by-epoch scoring by four polysomnographic technologists.
Note: When a majority agreement exists for an epoch, the symbol is shown in dark blue. Otherwise, the symbol is shown in light blue.
Figure 2Sample study participant scored by four polysomnographic technologists and converted from sleep stages to sleep–wake using a majority agreement rule.
Figure 3Block diagram of sleep–wake detection algorithm.
Abbreviation: EEG, electroencephalography.
κ agreement among technologists (number of common subjects scored)
| T1 | T2 | T3 | T4 | T5 | |
|---|---|---|---|---|---|
| T1 | 1.000 (97) | 0.892 (38) | 0.868 (96) | 0.895 (42) | 0.896 (97) |
| T2 | 1.000 (38) | 0.883 (38) | N/A (0) | 0.924 (38) | |
| T3 | 1.000 (98) | 0.823 (42) | 0.846 (98) | ||
| T4 | 1.000 (42) | 0.915 (42) | |||
| T5 | 1.000 (99) |
Contingency table showing the number of sleep–wake epochs from Z-ALG against the consensus of sleep technologists for each sleep stage (Wake; 1, 2, 3, 4; and REM)
| Z-ALG | Technologist consensus scores
| ||||||
|---|---|---|---|---|---|---|---|
| Wake | Stage 1 | Stage 2 | Stage 3 | Stage 4 | REM | Total | |
| Detected as wake | 15,632 (92.5%) | 1,254 (31.1%) | 1,523 (3.6%) | 26 (1.4%) | 10 (0.4%) | 127 (0.8%) | 18,572 (22.4%) |
| Detected as sleep | 1,276 (7.5%) | 2,779 (68.9%) | 40,867 (96.4%) | 1,775 (98.6%) | 2,500 (99.6%) | 15,012 (99.2%) | 64,209 (77.6%) |
| Total | 16,908 (20.4%) | 4,033 (4.9%) | 42,390 (51.2%) | 1,801 (2.2%) | 2,510 (3.0%) | 15,139 (18.3%) | 82,781 (100%) |
Abbreviation: REM, rapid eye movement.
Contingency table showing the number of sleep-wake epochs in each classification
| Z-ALG | Consensus sleep technologist scores
| |
|---|---|---|
| Sleep | Wake | |
| Detected as sleep | TP =62,933 | FP =1,276 |
| Detected as wake | FN =2,940 | TN =15,632 |
Abbreviations: TP, true positive; TN, true negative; FP, false positive; FN, false negative.
Contingency table of validation statistics for both the entire sample and subgroups
| n | Sensitivity | Specificity | PPV | NPV | κ | |
|---|---|---|---|---|---|---|
| Entire sample | 99 | 95.5% | 92.5% | 98.0% | 84.2% | 0.85 |
| Insomnia subgroup | 35 | 96.7% | 91.6% | 97.2% | 90.4% | 0.88 |
| Apnea subgroup | 5 | 95.0% | 89.3% | 94.4% | 90.3% | 0.85 |
| PLM/RLS subgroup | 22 | 95.1% | 91.8% | 97.8% | 83.2% | 0.84 |
| SSRI/SNRI subgroup | 4 | 91.2% | 92.8% | 97.8% | 74.6% | 0.77 |
Abbreviations: NPV, negative predictive value; PPV, positive predictive value; SNRI, serotonin–norepinephrine reuptake inhibitor; SSRI, selective serotonin reuptake inhibitor; PLM, periodic limb movement; RLS, restless leg syndrome.
Figure 4Bland–Altman plot of total sleep time between sleep–wake detection algorithm (Z-ALG) and the consensus of sleep technologists. r=0.954 and bias =0.193±0.290.
Figure 7Bland–Altman plot of wake after sleep onset between sleep–wake detection algorithm (Z-ALG) and the consensus of sleep technologists. r=0.887 and bias =−0.099±0.197.