Discovery of causal paths in cardiorespiratory parameters: a time-independent approach in elite athletes
Marcel M{\l}y\'nczak, Hubert Krysztofiak

TL;DR
This study applies causal inference methods to identify general causal relationships between cardiac and respiratory parameters in elite athletes at rest, providing a novel, time-independent analysis approach that aligns with medical understanding.
Contribution
It introduces a data-driven, time-independent framework for discovering causal paths among physiological variables in athletes, without prior knowledge, using multiple causal discovery algorithms.
Findings
Tidal volume influences heart activity in supine position.
Normalized respiratory variation affects heart activity when standing.
The approach aligns with existing medical knowledge and can aid athlete profiling.
Abstract
Training of elite athletes requires regular physiological and medical monitoring to plan the schedule, intensity and volume of training, and subsequent recovery. In sports medicine, ECG-based analyses are well established. However, they rarely consider the correspondence of respiratory and cardiac activity. Given such mutual influence, we hypothesize that athlete monitoring might be developed with causal inference and that detailed, time-related techniques should be preceded by a more general, time-independent approach that considers the whole group of participants and parameters describing whole signals. The aim of this study was to discover general causal paths among cardiac and respiratory variables in elite athletes in two body positions (supine and standing), at rest. ECG and impedance pneumography signals were obtained from 100 elite athletes. The mean HR, the RMSSD, its natural…
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