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P. Stability, Proposed Method (a) vs. FFT (b), normalized results, p.150

. Stability, PC estimation via FFT and VBA for 4-days length signals, p.153

P. Stability and .. , Proposed Method (a) vs. FFT (b), p.153

P. Stability, Proposed Method (a) vs. FFT (b), normalized results, p.154

P. Stability and .. , PC estimation via FFT and VBA for 4-days length signals, Activity DD, during155 6.79 PC Stability: Proposed Method (a) vs. FFT (b), p.155

P. Stability, Proposed Method (a) vs. FFT (b), normalized results, p.155

.. Stability, Proposed Method (a) vs. FFT (b) 158 6.86 PC Stability: Proposed Method (a) vs. FFT (b), normalized results . . . . . . 158 6.87 DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.158

.. Stability, PC estimation via FFT and VBA for 4-days length signals, Photon DD, during159 6.90 PC Stability: Proposed Method (a) vs. FFT (b) 159 6.91 PC Stability: Proposed Method (a) vs. FFT (b)a) and the corresponding PC via VBA (b) and FFT (c), p.160

B. Mouse, Activity (a) and Photon Absorption (b) raw data, p.162

.. Stability, Proposed Method (a) vs. FFT (b) 164 6.98 PC Stability: Proposed Method (a) vs. FFT (b), normalized results, 164 6.99 DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.164

1. Stability and .. , Proposed Method (a) vs. FFT (b), p.167

1. Stability and R. .. , Proposed Method (a) vs. FFT (b)105DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.167

1. Stability and .. , Proposed Method (a) vs. FFT (b), p.170

1. Stability and R. .. , Proposed Method (a) vs. FFT (b)112DD before signal (a) and the corresponding PC via VBA (b) and FFT (c), p.171

1. Stability and .. , Proposed Method (a) vs. FFT (b), p.172

1. Stability, Proposed Method (a) vs. FFT (b), normalized results, p.172

1. Stability and .. , Proposed Method (a) vs. FFT (b), p.175

1. Stability, Proposed Method (a) vs. FFT (b), normalized results, p.175

1. Stability and .. , Proposed Method (a) vs. FFT (b), p.176

1. Stability, Proposed Method (a) vs. FFT (b), normalized results, p.177