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Complexity of cardiac rhythms during head-up tilt test by entropy of patterns Dorota Wejer 1 , Danuta Makowiec 2 , Beata Graff 3 , Szymon Budrejko 4 and Zbigniew R. Struzik 5 1 University of Gda´ nsk, Inst. of Experimental Physics, Gda´ nsk, Poland 2 University of Gda´ nsk, Inst. of Theoretical Physics and Astrophysics, Gda´ nsk, Poland 3 Medical University of Gda´ nsk, Dept. of Hypertension and Diabetology, Gda´ nsk, Poland 4 Medical University of Gda´ nsk, Dept. of Cardiology and Electrotherapy, Gda´ nsk, Poland 5 RIKEN Brain Science Institute, Wako-shi, Japan University of Tokyo, Graduate School of Education, Tokyo, Japan Head-up tilt test: The head-up tilt (HUT) test is a valuable tool for provoking of dynamical changes in the cardiovascular system. In this context, time intervals between subsequent heart contractions (RR-intervals) and systolic blood pressure (SBP) were recorded during the HUT test. Then the four 300-point signals were extracted from each recording: window H0 corresponds to supine position before the tilt, windows T1 and T2 refer to early response to the tilt, and window T3 represents so called late response to the tilt. Study group: Permutation patterns: Generation of permutation patterns: 1. x i =(x i ,x i+1 ,...,x i+L-1 ) i-th segment of signal 2. In case of L =3, we considered six permutation patterns: I x i x i+1 x i+2 [123] I x i x i+2 <x i+3 [132] I x i+1 <x i x i+2 [213] I x i+1 x i+2 <x i [231] I x i+2 <x i x i+1 [312] I x i+2 <x i+1 <x i [321] Examples: 1. x i = (808, 806, 816) 806 < 808 < 816 m x i+1 <x i x i+2 [213] 2. x i = (806, 816, 816) 806 < 816 816 m x i x i+1 x i+2 [123] Deterministic patterns: Generation of deterministic patterns: 1. Quantization of time series into 6-value series 2. Classifying patterns into 4 groups: I 0V - constant pattern, I 1V - patterns contain a plateau and a ramp, I 2LV - patterns with two like variations, I 2UV - patterns with two unlike variations. Ordinal patterns: Generation of ordinal patterns: 1. Δ – segment resolution 2. x i =(x i ,x i+1 ,...,x i+L-1 ) i-th segment of signal 3. φ i =(φ i i+1 ,...,φ i+L-1 ) – binned signal, where φ i+j = b x i+j -min(x i ) Δ c for j =0, 1,...,L - 1 4. π i =(π i i+1 ,...,π i+L-1 ) – ordinal pattern, which is constructed as follows: N different values of the φ i are ranked and their ordinal values are assigned to π i . Example: x i = (808, 806, 816) Δ=4 φ i = (0, 0, 2) π i = (1, 1, 2) Δ=2 φ i = (1, 0, 5) π i = (2, 1, 3) L is equal to 3 in this study, and consequently we deal with 13 different ordinal patterns. Relationships: I permutation patterns - the center of the pie chart I ordinal patterns - the middle ring of the pie char I deterministic patterns - the external ring of the pie chart The Shannon entropy is calculated from distributions of these patterns found for RR-intervals (H RR )) and the levels of SBP (H SBP )). Shannon entropy of permutation patterns distribution: Shannon entropy of ordinal patterns distribution: References: 1. Bandt C, Pompe B 2002 Phys. Rev. Lett. 88 174102:1-174102:4 2. Porta A, Guzzetti S, Montano N, Furlan R, Pagani M, Malliani A, Cerutti S 2001 IEEE Trans Biomed Eng. 48(11) 1282-1291 3. Makowiec D, Kaczkowska A, Wejer D, ˙ Zarczy´ nska-Buchowiecka M, Struzik Z.R 2015 Entropy 17 1253-1272 Shannon entropy of permutation, ordinal and deterministic patterns distribution: Conclusion: 1. There is a statistical significant increase in the value of entropy of ordinal patterns when the resolution Δ RR and Δ SBP changes. 2. It corresponds to increasing occurrence of patterns with same values which are absent at the highest resolution. 3. At the maximum, the entropy for different groups of signals do not differ from each other. 4. In time windows T1, T2, and T3, the signal complexity of the healthy people is always higher than vasovagal patients, independently of the signal resolution for entropy of ordinal patterns and permutation patterns. 5. In case of the entropy calculated from signals represented by 6 symbols, the ordinal pattern approach provides a lower value of entropy than the permutation one. 6. The deterministic patterns give the lowest value of entropy. 7. However, the relations between entropy of deterministic patterns of different groups are the same as among entropy found for ordinal patterns.

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Page 1: Complexity of cardiac rhythms during head-up tilt test by ... · Complexity of cardiac rhythms during head-up tilt test by entropy of patterns Dorota Wejer1, Danuta Makowiec2, Beata

Complexity of cardiac rhythms during head-up tilttest by entropy of patterns

Dorota Wejer1, Danuta Makowiec2, Beata Graff3, Szymon Budrejko4 and Zbigniew R. Struzik5

1 University of Gdansk, Inst. of Experimental Physics, Gdansk, Poland2 University of Gdansk, Inst. of Theoretical Physics and Astrophysics, Gdansk, Poland

3 Medical University of Gdansk, Dept. of Hypertension and Diabetology, Gdansk, Poland4 Medical University of Gdansk, Dept. of Cardiology and Electrotherapy, Gdansk, Poland

5 RIKEN Brain Science Institute, Wako-shi, Japan

University of Tokyo, Graduate School of Education, Tokyo, Japan

Head-up tilt test:The head-up tilt (HUT) test is a valuable tool for provoking of dynamicalchanges in the cardiovascular system. In this context, time intervals betweensubsequent heart contractions (RR-intervals) and systolic blood pressure (SBP)were recorded during the HUT test. Then the four 300-point signals wereextracted from each recording: window H0 corresponds to supine position beforethe tilt, windows T1 and T2 refer to early response to the tilt, and window T3represents so called late response to the tilt.

Study group:

Permutation patterns:

Generation of permutationpatterns:

1.xi = (xi, xi+1, . . . , xi+L−1)– i-th segment of signal

2. In case of L = 3, we considered sixpermutation patterns:Ixi ≤ xi+1 ≤ xi+2 → [123]Ixi ≤ xi+2 < xi+3 → [132]Ixi+1 < xi ≤ xi+2 → [213]Ixi+1 ≤ xi+2 < xi → [231]Ixi+2 < xi ≤ xi+1 → [312]Ixi+2 < xi+1 < xi → [321]

Examples:

1.xi = (808, 806, 816)806 < 808 < 816

mxi+1 < xi ≤ xi+2

→ [213]

2.xi = (806, 816, 816)806 < 816 ≤ 816

mxi ≤ xi+1 ≤ xi+2

→ [123]

Deterministic patterns:

Generation of deterministic patterns:

1. Quantization of time series into 6-valueseries

2. Classifying patterns into 4 groups:I 0V - constant pattern,I 1V - patterns contain a plateau and a ramp,I 2LV - patterns with two like variations,I 2UV - patterns with two unlike variations.

Ordinal patterns:

Generation of ordinal patterns:

1. ∆ – segment resolution

2.xi = (xi, xi+1, . . . , xi+L−1) – i-thsegment of signal

3.φi = (φi, φi+1, . . . , φi+L−1) – binned

signal, where φi+j = bxi+j−min(xi)

∆c for

j = 0, 1, . . . , L− 1

4.πi = (πi, πi+1, . . . , πi+L−1) – ordinalpattern, which is constructed as follows: Ndifferent values of the φi are ranked andtheir ordinal values are assigned to πi.

Example: xi = (808, 806, 816)∆ = 4φi = (0, 0, 2)πi = (1, 1, 2)

∆ = 2φi = (1, 0, 5)πi = (2, 1, 3)

L is equal to 3 in this study, andconsequently we deal with 13 differentordinal patterns.

Relationships:

I permutation patterns - the center of thepie chart

I ordinal patterns - the middle ring of thepie char

I deterministic patterns - the external ringof the pie chart

The Shannon entropy is calculated from distributions of these patterns found for RR-intervals (H(ΠRR)) and the levels of SBP (H(ΠSBP)).

Shannon entropy of permutationpatterns distribution:

Shannon entropy of ordinal patternsdistribution:

References:

1. Bandt C, Pompe B 2002 Phys. Rev. Lett. 88 174102:1-174102:4

2. Porta A, Guzzetti S, Montano N, Furlan R, Pagani M, Malliani A, Cerutti S 2001 IEEE Trans Biomed Eng.48(11) 1282-1291

3. Makowiec D, Kaczkowska A, Wejer D, Zarczynska-Buchowiecka M, Struzik Z.R 2015 Entropy 17 1253-1272

Shannon entropy of permutation, ordinaland deterministic patterns distribution:

Conclusion:

1. There is a statistical significant increase in the value ofentropy of ordinal patterns when the resolution ∆RR and∆SBP changes.

2. It corresponds to increasing occurrence of patterns withsame values which are absent at the highest resolution.

3. At the maximum, the entropy for different groups ofsignals do not differ from each other.

4. In time windows T1, T2, and T3, the signal complexity ofthe healthy people is always higher than vasovagalpatients, independently of the signal resolution for entropyof ordinal patterns and permutation patterns.

5. In case of the entropy calculated from signals representedby 6 symbols, the ordinal pattern approach provides alower value of entropy than the permutation one.

6. The deterministic patterns give the lowest value ofentropy.

7. However, the relations between entropy of deterministicpatterns of different groups are the same as amongentropy found for ordinal patterns.