Sex Differences in Time-Domain and Frequency-Domain Heart Rate Variability Measures of Fatigued Drivers
Abstract
:1. Introduction
2. Materials and Methods
2.1. Subject
2.2. Driving Simulator
2.3. Experimental Protocol
2.4. Fatigue Assessment
2.5. Extraction of HRV Time and Frequency Measures
2.6. Statistical Analysis
3. Results
4. Discussion
4.1. HRV Time Domain and Frequency Domain Measures of Drivers without Considering the Difference of Sex
4.2. The HRV Time and Frequency Domain Measures of Drivers Considering the Difference of Sex
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Number of Subjects (Valid) | Male/Female | Age (Years) | Study Design | Methods Related to Fatigue Assessment | Methods Related to HRV Measure Extraction | References |
---|---|---|---|---|---|---|
10 (10) | 5/5 | 29–47 | Three real driving sessions on the motorway of approximately 100–105 min each: one during the daytime, one in the evening and one at night | The subjects were asked to provide their Karolinska Sleepiness Scale (KSS) score every 5 min during driving. | HRV analysis was performed following reference [23], and an AR model was used for the PSD estimation of the HRV time series. | [19] |
22 (11) | Unknown | 18–35 | 80 min of simulated, monotonous driving | Drowsiness-related events were identified based on a range of facial features, and the driver in the 5 min prior to or after an event was scored as being in an alert or drowsy state. | ECG signal analysis was performed using Biosignal Toolbox. | [8,10] |
20 (20) | Unknown | 22.6 ± 1.6 | 120 min of simulated driving with highway scenery | A driver in the 5 min prior to or after driving was scored as being in an alert or fatigued state. | Peak-to-peak intervals were determined through a blood pressure waveform produced by the radial artery. The HRV analysis followed reference [23] and used an FFT for PSD estimation. | [24] |
10 (unknown) | Unknown | 41 ± 9 | Driving on highways for a mean duration of 223 min | Observers classified the state of the driver each minute as either alert or drowsy through video recordings. Ten minutes before and after a drowsy minute was defined as a drowsiness period; the other periods were defined as alert periods. | HRV measures were extracted from a 300-beat window with a step of one beat. The Hodrick-Prescott filter was used for detrending, and a periodogram was estimated using a Hanning window. | [25] |
12 (12) | 9/3 | 24–30 | Two simulated driving sessions lasting 15–20 min: one in the morning and one in the afternoon after lunch | Two observers scored the drowsiness level according to recorded videos of the drivers’ faces. | HRV measures were extracted from one-minute segments of the ECG. | [5] |
Mental State | Score | Description of Facial Expression |
---|---|---|
Alert | 1 | The eyes open normally and blink quickly, the eyes are active, the attention appears focused, and attention to the outside world is maintained. The head is upright, and the facial expression is changing frequently. |
Fatigued | 2 | The eyes appear to be partially closed, eyes appear to be partially closed, blinking duration is extended, blinking speed is decreased, eye activity is decreased, or eyes become sluggish; the subject yawns, takes a deep breath, sighs, swallows, rubs the eyelids using their hands, shakes his or her head, scratches his or her face or performs any other action that suggests fatigue or reduced concern with the environment. |
Very fatigued | 3 | The eyes appear to be half or fully closed, the eyelids are so heavy that they are unable to open, the eyes are closed for a long period of time, there is head nodding and head tilting, and the ability to continue driving is lost. |
Method | Measure (Abbreviation in This Study) | Measure (Abbreviation in Other Publications) | Description | Unit | Physiological Interpretation |
---|---|---|---|---|---|
Time domain method | MRR | Mean RR | Mean RR interval | ms | − |
DRR | STD RR (SDNN) | Standard deviation of RR interval | ms | Reflects the ebb and flow of all the factors that contribute to heart rate variability. [28] | |
MHR | Mean HR | Mean heart rate | 1/min | − | |
DRMS | RMSSD | Square root of the mean squared differences between successive RR intervals | ms | Measurements of short-term variation in the NN cycles and detect high frequency oscillations caused by parasympathetic activity. [13] | |
NNN50 | NN50 | Number of successive RR interval pairs that differ by more than 50 ms | beats | Reflects parasympathetic activity. [13] | |
pNN50 | pNN50 | NNN50 divided by the total number of RR intervals | % | A proxy for cardiac parasympathetic activity. [12,13] | |
Frequency domain method | PVLF(abs) | VLF(power) | Absolute power of the VLF band | ms2 | Increases in resting PVLF(abs) power may reflect increased sympathetic activity. [28] |
PLF(abs) | LF(power) | Absolute power of the LF band | ms2 | A marker of the parasympathetic tone. [13] | |
PHF(abs) | HF(power) | Absolute power of the HF band | ms2 | Possibly correlated to sympathetic tone or to autonomic balance. [13] | |
PLF(nu) | LF(pow nu) | Power of the LF band in normalized units | n.u. | A marker of the parasympathetic tone. [13] | |
PHF(nu) | HF(pow nu) | Power of the HF band in normalized units | n.u. | Possibly correlated to sympathetic tone or to autonomic balance. [13] | |
rLF/HF | LF/HF | Ratio of the LF band power to the HF band power | − | An important marker of sympathovagal balance. [13] | |
Ptot(abs) | tot(power) | Absolute power of all three bands | ms2 | The variance of NN intervals over the temporal segment. [13] |
Measures | Alert (N = 88) | Fatigued (N = 223) | Mann-Whitney U Test | Mean Difference (95% Confidence Interval) | r | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Mean | SD | Q1 | Med. | Q3 | Mean | SD | Q1 | Med. | Q3 | Alert vs. Fatigued | |||
MRR | 797.9 | 137.5 | 684.3 | 804.0 | 870.3 | 863.5 | 141.0 | 738.6 | 851.4 | 955.2 | p < 0.01 | 65.64 (30.96 to 100.3) | 0.20 |
DRR | 47.06 | 20.37 | 33.53 | 43.05 | 54.76 | 65.55 | 23.87 | 48.05 | 60.57 | 77.67 | p < 0.01 | 18.49 (13.17 to 23.81) | 0.40 |
MHR | 77.38 | 13.0 | 68.94 | 74.63 | 87.68 | 71.32 | 11.49 | 62.82 | 70.47 | 81.23 | p < 0.01 | −6.060 (−9.193 to −2.927) | −0.20 |
DRMS | 33.63 | 20.44 | 21.67 | 27.57 | 40.18 | 42.55 | 23.06 | 24.56 | 39.28 | 45.36 | p < 0.01 | 8.915 (3.379 to 14.45) | 0.21 |
NNN50 | 46.63 | 51.36 | 10.0 | 19.5 | 73.75 | 69.87 | 55.14 | 17.0 | 67.0 | 89.0 | p < 0.01 | 23.24 (9.838 to 36.64) | 0.20 |
pNN50 | 14.3 | 17.8 | 2.128 | 5.318 | 21.76 | 22.3 | 20.15 | 4.239 | 19.27 | 26.46 | p < 0.01 | 8.002 (3.169 to 12.84) | 0.20 |
PVLF(abs) | 87.25 | 92.05 | 32.89 | 58.0 | 112.1 | 201.2 | 193.1 | 85.6 | 136.0 | 247.5 | p < 0.01 | 113.9 (82.00 to 145.9) | 0.42 |
PLF(abs) | 751.8 | 714.7 | 297.9 | 571.4 | 859.5 | 1348.0 | 1056.0 | 638.5 | 958.6 | 1686.0 | p < 0.01 | 596.5 (391.8 to 801.3) | 0.35 |
PHF(abs) | 528.6 | 719.7 | 159.3 | 290.5 | 621.9 | 701.9 | 789.5 | 249.6 | 470.3 | 725.4 | p < 0.01 | 173.2 (−17.61 to 364.1) | 0.17 |
PLF(nu) | 62.52 | 18.35 | 49.65 | 63.57 | 77.95 | 67.78 | 16.43 | 57.56 | 70.49 | 81.43 | p = 0.02 | 5.259 (1.051 to 9.468) | 0.13 |
PHF(nu) | 37.4 | 18.35 | 21.95 | 36.32 | 50.22 | 32.09 | 16.38 | 18.56 | 29.43 | 41.57 | p = 0.02 | −5.304 (−9.505 to −1.103) | −0.13 |
rLF/HF | 2.667 | 2.42 | 0.9887 | 1.75 | 3.557 | 3.155 | 2.492 | 1.365 | 2.395 | 4.387 | p = 0.02 | 0.4887 (−0.124 to 1.101) | 0.13 |
Ptot(abs) | 1368.0 | 1373.0 | 470.6 | 949.7 | 1524.0 | 2254.0 | 1730.0 | 1030.0 | 1748.0 | 2911.0 | p < 0.01 | 885.2 (517.1 to 1253) | 0.34 |
Measure | MA | MF | FA | FF |
---|---|---|---|---|
Mean ± SD, Q1, Med., Q3 | Mean ± SD, Q1, Med., Q3 | Mean ± SD, Q1, Med., Q3 | Mean ± SD, Q1, Med., Q3 | |
MRR | 807.8 ± 155.8, 681.1, 789.1, 962.8 | 903.8 ± 143.0, 785.7, 927.2, 984.1 | 787.9 ± 117.4, 684.3, 804.0, 860.4 | 825.0 ± 128.3, 728.5, 812.4, 858.2 |
DRR | 50.19 ± 26.94, 30.8, 43.23, 59.21 | 75.28 ± 28.59, 53.08, 75.8, 92.73 | 43.93 ± 9.691, 34.6, 42.73, 51.69 | 56.26 ± 12.66, 46.75, 54.74, 64.15 |
MHR | 77.01 ± 14.73, 62.33, 76.31, 88.09 | 68.14 ± 11.39, 60.97, 64.71, 76.55 | 77.75 ± 11.16, 69.74, 74.63, 87.68 | 74.36 ± 10.78, 69.91, 73.86, 82.37 |
DRMS | 34.36 ± 24.38, 16.94, 30.33, 43.77 | 46.17 ± 25.47, 30.26, 41.42, 50.78 | 32.91 ± 15.79, 24.19, 27.57, 37.89 | 39.09 ± 19.99, 24.51, 36.38, 41.64 |
NNN50 | 48.64 ± 54.94, 1.0, 30.0, 78.0 | 74.97 ± 55.34, 31.5, 69.0, 86.5 | 44.61 ± 48.07, 13.5, 19.5, 73.0 | 64.98±54.75, 16.0, 61.0, 89.25 |
pNN50 | 15.57 ± 18.98, 0.2277, 8.506, 23.96 | 24.79 ± 20.09, 9.427, 21.69, 27.64 | 13.03 ± 16.66, 3.332, 5.318, 19.53 | 19.92 ± 20.0, 4.067, 16.93, 24.48 |
PVLF(abs) | 111.5 ± 118.0, 40.54, 77.98, 146.3 | 276.3 ± 223.1, 118.0, 217.0, 333.7 | 63.0 ± 44.98, 32.05, 48.51, 80.22 | 129.4 ± 122.7, 71.9, 104.4, 152.2 |
PLF(abs) | 981.8 ± 909.9, 262.7, 681.6, 1371.0 | 1839.0 ± 1244.0, 876.2, 1547.0, 2506.0 | 521.8 ± 311.8, 301.9, 516.8, 687.3 | 878.8 ± 504.4, 516.2, 819.8, 1051.0 |
PHF(abs) | 617.5 ± 924.6, 77.8, 261.2, 646.3 | 788.6 ± 968.6, 239.1, 504.9, 746.1 | 439.7 ± 420.5, 181.8, 290.5, 526.3 | 618.9 ± 560.1, 251.1, 464.5, 716.5 |
PLF(nu) | 69.73 ± 14.17, 57.47, 73.59, 79.99 | 74.24 ± 13.77, 64.08, 79.19, 85.1 | 55.31 ± 19.33, 38.39, 54.78, 68.06 | 61.6 ± 16.43, 51.25, 62.04, 75.55 |
PHF(nu) | 30.2 ± 14.18, 19.98, 26.36, 42.5 | 25.58 ± 13.63, 14.87, 20.8, 35.81 | 44.6 ± 19.34, 31.93, 45.1, 61.59 | 38.32 ± 16.42, 24.38, 37.93, 48.73 |
rLF/HF | 3.187 ± 2.17, 1.362, 2.792, 4.004 | 4.176 ± 2.889, 1.788, 3.806, 5.722 | 2.147 ± 2.567, 0.6233, 1.215, 2.134 | 2.179 ± 1.503, 1.052, 1.636, 3.1 |
Ptot(abs) | 1712.0 ± 1799.0, 368.2, 1257.0, 2478.0 | 2908.0 ± 2121.0, 1487.0, 2395.0, 3713.0 | 1025.0 ± 582.6, 581.2, 925.3, 1201.0 | 1628.0 ± 879.9, 987.8, 1386.0, 2074.0 |
Measure | MA vs. MF | FA vs. FF | MA vs. FA | MF vs. FF | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Mann-Whitney U Test | Mean Difference (95% CI) | r | Mann-Whitney U Test | Mean Difference (95% CI) | r | Mann-Whitney U Test | Mean Difference (95% CI) | r | Mann-Whitney U Test | Mean Difference (95% CI) | r | |
MRR | p < 0.01 | 95.97 (33.09 to 158.8) | 0.26 | p = 0.19 | 37.09 (−25.39 to 99.57) | 0.10 | p = 0.63 | −19.93 (−94.98 to 55.13) | 0.05 | p < 0.01 | −78.81 (−126.0 to −31.65) | 0.32 |
DRR | p < 0.01 | 25.08 (15.17 to 34.99) | 0.41 | p < 0.01 | 12.33 (2.482 to 22.18) | 0.43 | p = 0.81 | −6.263 (−18.09 to 5.566) | 0.03 | p < 0.01 | −19.02 (−26.45 to −11.58) | 0.36 |
MHR | p < 0.01 | −8.870 (−14.26 to −3.484) | −0.26 | p = 0.19 | −3.390 (−8.742 to 1.961) | −0.10 | p = 0.63 | 0.7385 (−5.690 to 7.167) | −0.05 | p < 0.01 | 6.218 (2.179 to 10.26) | −0.32 |
DRMS | p < 0.01 | 11.81 (1.558 to 22.06) | 0.25 | p = 0.05 | 6.182 (−4.004 to 16.37) | 0.15 | p = 0.73 | −1.456 (−13.69 to 10.78) | −0.04 | p < 0.01 | −7.082 (−14.77 to 0.6060) | 0.19 |
NNN50 | p = 0.01 | 26.34 (1.370 to 51.30) | 0.22 | p = 0.04 | 20.37 (−4.436 to 45.17) | 0.16 | p = 0.23 | −4.023 (−33.82 to 25.77) | −0.13 | p = 0.55 | −9.990 (−28.71 to 8.730) | 0.04 |
pNN50 | p < 0.01 | 9.219 (0.2436 to 18.20) | 0.23 | p = 0.05 | 6.894 (−2.025 to 15.81) | 0.16 | p = 0.42 | −2.544 (−13.26 to 8.170) | −0.09 | p = 0.1 | −4.870 (−11.60 to 1.862) | 0.11 |
PVLF(abs) | p < 0.01 | 164.8 (91.40 to 238.1) | 0.47 | p < 0.01 | 66.41 (−6.495 to 139.3) | 0.41 | p = 0.02 | −48.49 (−136.1 to 39.09) | 0.24 | p < 0.01 | −146.86 (−201.9 to −91.82) | 0.44 |
PLF(abs) | p < 0.01 | 857.7 (453.4 to 1262) | 0.37 | p < 0.01 | 357.0 (−44.74 to 758.7) | 0.38 | p = 0.04 | −460.0 (−942.6 to 22.60) | 0.22 | p < 0.01 | −960.7 (−1264 to −657.5) | 0.44 |
PHF(abs) | p = 0.05 | 171.0 (−183.4 to 525.4) | 0.16 | p = 0.02 | 179.3 (−172.9 to 531.4) | 0.19 | p = 0.67 | −177.9 (−600.9 to 245.1) | −0.05 | p = 0.64 | −169.7 (−435.5 to 96.15) | 0.03 |
PLF(nu) | p = 0.05 | 4.513 (−2.733 to 11.76) | 0.16 | p = 0.04 | 6.289 (−0.9107 to 13.49) | 0.16 | p < 0.01 | −14.42 (−23.07 to −5.773) | 0.38 | p < 0.01 | −12.65 (−18.08 to −7.211) | 0.40 |
PHF(nu) | p = 0.04 | −4.620 (−11.84 to 2.604) | −0.16 | p = 0.04 | −6.275 (−13.45 to 0.9033) | −0.16 | p < 0.01 | 14.40 (5.778 to 23.02) | −0.38 | p < 0.01 | 12.75 (7.327 to 18.16) | −0.40 |
rLF/HF | p = 0.05 | 0.9894 (−0.07761 to 2.057) | 0.16 | p = 0.04 | 0.03274 (−1.028 to 1.093) | 0.16 | p < 0.01 | −1.040 (−2.314 to 0.2333) | 0.38 | p < 0.01 | −1.997 (−2.798 to −1.197) | 0.40 |
Ptot(abs) | p < 0.01 | 1196 (486.1 to 1906) | 0.34 | p < 0.01 | 603.0 (−102.4 to 1308) | 0.36 | p = 0.41 | −686.3 (−1534 to 161.1) | 0.09 | p < 0.01 | −1279 (−1812 to −746.8) | 0.34 |
Measure | Unit | Alert State (mean ± SD) | Fatigued State (Mean ± SD) | Statistical Method | Level of Significance | Change Tendency | References |
---|---|---|---|---|---|---|---|
MRR | ms | 688.7 ± 84 | 753.9 ± 103 | One-way ANOVA | * | Up | [19] |
889 ± 122 | 927 ± 132 | Paired t-test | * | Up | [27] | ||
865.7 ± 144 | 845.5 ± 131 | Scheffé’s test | * | Down | [18] | ||
797.86 ± 137.5 | 863.5 ± 140.98 | M-W U test | * | Up | This study | ||
DRR | ms | 40.8 ± 17 | 53.2 ± 23 | One-way ANOVA | * | Up | [19] |
47.7 ± 16.9 | 58.6 ± 17.3 | Paired t-test | ** | Up | [26] | ||
63.6 ± 21.1 | 73.7 ± 24.3 | Paired t-test | * | Up | [27] | ||
106.72 ± 30.38 | 97.07 ± 45.45 | One-way ANOVA | NS | None | [5] | ||
46.7 ± 29 | 49.4 ± 25 | Scheffé’s test | NS | None | [18] | ||
47.061 ± 20.375 | 65.555 ± 23.873 | M-W U test | * | Up | This study | ||
MHR | 1/min | 70.4 ± 8.6 | 65.6 ± 6.9 | Paired t-test | ** | Down | [26] |
77.382 ± 12.998 | 71.322 ± 11.488 | M-W U test | * | Down | This study | ||
DRMS | ms | 43.2 ± 21.8 | 43.2 ± 18.9 | Paired t-test | NS | None | [27] |
28.67 ± 9.40 | 31.10 ± 22.07 | One-way ANOVA | NS | None | [5] | ||
50.1 ± 41.4 | 50.2 ± 36.8 | Scheffé’s test | NS | None | [18] | ||
33.635 ± 20.436 | 42.55 ± 23.058 | M-W U test | * | Up | This study | ||
NNN50 | beats | 39.0 ± 47 | 52.8 ± 48 | One-way ANOVA | * | Up | [19] |
46.63 ± 51.365 | 69.87 ± 55.143 | M-W U test | * | Up | This study | ||
pNN50 | % | 20.1 ± 22.0 | 18.1 ± 18.0 | Scheffé’s test | NS | None | [18] |
14.302 ± 17.799 | 22.304 ± 20.145 | M-W U test | * | Up | This study |
Measure | Unit | Alert (Mean ± SD) | Fatigued (Mean ± SD) | Statistical Method | Level of Significance | Change Tendency | References |
---|---|---|---|---|---|---|---|
PVLF(abs) | ms2 | 859.82 ± 114.12 | 1338.47 ± 121.61 | Paired t-test | * | Up | [8,10] |
1233.6 ± 773.1 | 2135.6 ± 1286.7 | Paired t-test | ** | Up | [24] | ||
87.25 ± 92.054 | 201.2 ± 193.13 | M-W U test | * | Up | This study | ||
PLF(abs) | ms2 | 222.4 ± 191 | 449.5 ± 365 | One-way ANOVA | * | Up | [19] |
738.3 ± 869.5 | 825.5 ± 590.3 | Paired t-test | NS | None | [24] | ||
1216 ± 686 | 1789 ± 1248 | Paired t-test | NS | None | [25] | ||
511.15 ± 115.47 | 606.67 ± 162.70 | One-way ANOVA | NS | None | [5] | ||
1179 ± 1520 | 1581 ± 1792 | Scheffé’s test | * | Up | [18] | ||
751.79 ± 714.69 | 1348.4 ± 1055.6 | M-W U test | * | Up | This study | ||
PHF(abs) | ms2 | 127.2 ± 121 | 241.2 ± 212 | One-way ANOVA | * | Up | [19] |
506.3 ± 484.2 | 757.2 ± 538.2 | Paired t-test | ** | Up | [24] | ||
572 ± 488 | 576 ± 520 | Paired t-test | NS | None | [25] | ||
244.26 ± 101.69 | 568.33 ± 312.05 | One-way ANOVA | ** | Up | [5] | ||
1415 ± 2612 | 1218 ± 1789 | Scheffé’s test | NS | None | [18] | ||
528.61 ± 719.68 | 701.85 ± 789.47 | M-W U test | * | Up | This study | ||
PLF(nu) | n.u. | 0.54 ± 0.10 | 0.46 ± 0.08 | Paired t-test | ** | Down | [8,10] |
0.592 ± 0.190 | 0.515 ± 0.170 | Paired t-test | NS | None | [24] | ||
0.501 ± 0.15 | 0.566 ± 0.15 | Scheffé’s test | * | Up | [18] | ||
0.62518 ± 0.18346 | 0.67777 ± 0.16430 | M-W U test | NS | None | This study | ||
PHF(nu) | n.u. | 0.32 ± 0.08 | 0.37 ± 0.06 | Paired t-test | * | Up | [8,10] |
0.406 ± 0.191 | 0.484 ± 0.170 | Paired t-test | * | Up | [24] | ||
0.436 ± 0.16 | 0.35 ± 0.17 | Scheffé’s test | * | Down | [18] | ||
0.37398 ± 0.18349 | 0.32094 ± 0.16383 | M-W U test | NS | None | This study | ||
rLF/HF | - | 2.1 ± 1.5 | 2.1 ± 0.9 | One-way ANOVA | NS | None | [19] |
2.01 ± 0.98 | 1.39 ± 0.59 | Paired t-test | ** | Down | [8,10] | ||
2.0 ± 1.3 | 1.3 ± 0.9 | Paired t-test | * | Down | [24] | ||
3.18 ± 1.58 | 4.33 ± 2.27 | Paired t-test | * | Up | [25] | ||
2.55 ± 1.37 | 1.01 ± 1.55 | One-way ANOVA | * | Down | [5] | ||
1.5 ± 1.3 | 2.4 ± 2.3 | Scheffé’s test | * | Up | [18] | ||
2.6668 ± 2.42 | 3.1555 ± 2.4921 | M-W U test | NS | None | This study | ||
Ptot(abs) | ms2 | 373.4 ± 302 | 741.4 ± 584 | One-way ANOVA | * | Up | [19] |
1368.4 ± 1373.3 | 2253.6 ± 1729.9 | M-W U test | * | Up | This study |
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Zeng, C.; Wang, W.; Chen, C.; Zhang, C.; Cheng, B. Sex Differences in Time-Domain and Frequency-Domain Heart Rate Variability Measures of Fatigued Drivers. Int. J. Environ. Res. Public Health 2020, 17, 8499. https://doi.org/10.3390/ijerph17228499
Zeng C, Wang W, Chen C, Zhang C, Cheng B. Sex Differences in Time-Domain and Frequency-Domain Heart Rate Variability Measures of Fatigued Drivers. International Journal of Environmental Research and Public Health. 2020; 17(22):8499. https://doi.org/10.3390/ijerph17228499
Chicago/Turabian StyleZeng, Chao, Wenjun Wang, Chaoyang Chen, Chaofei Zhang, and Bo Cheng. 2020. "Sex Differences in Time-Domain and Frequency-Domain Heart Rate Variability Measures of Fatigued Drivers" International Journal of Environmental Research and Public Health 17, no. 22: 8499. https://doi.org/10.3390/ijerph17228499
APA StyleZeng, C., Wang, W., Chen, C., Zhang, C., & Cheng, B. (2020). Sex Differences in Time-Domain and Frequency-Domain Heart Rate Variability Measures of Fatigued Drivers. International Journal of Environmental Research and Public Health, 17(22), 8499. https://doi.org/10.3390/ijerph17228499