Advances in heart rate variability signal analysis: joint position statement by the e-Cardiology ESC Working Group and the European Heart Rhythm Association co-endorsed by the Asia Pacific Heart Rhythm Society.
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S. Cerutti | M. Malik | C. Peng | H. Huikuri | F. Lombardi | G. Schmidt | R. Sassi | Yoshiharu Yamamoto | Chung-Kang Peng
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