A Nonlinear Complexity Index for Wearable PPG Cardiovascular Stability: Multiscale Validation, Systematic Evaluation Correction, and Bayesian Parameter Optimization
Timothy Oladunni, Farouk Ganiyu Adewumi

TL;DR
This paper introduces a nonlinear cardiovascular stability index derived from PPG data, validated across multiple datasets, correcting evaluation artifacts, and optimized with Bayesian methods for reliable wearable health monitoring.
Contribution
It presents a new stability index grounded in Cardiac Stability Theory, systematically evaluates and corrects performance inflation artifacts, and employs Bayesian optimization for improved accuracy.
Findings
Achieved cross-dataset AUC of 0.720 after correction and optimization.
Demonstrated strong cross-scale consistency and correlation with respiratory rate.
Validated the index's generalization on external datasets.
Abstract
Cardiovascular stability estimation from wearable photoplethysmography (PPG) requires a principled nonlinear framework, yet major gaps persist in heuristic parameter selection and evaluation protocols that inflate reported performance. We introduce a Stability-Constrained Cardiovascular Stability Index (SCSI) grounded in Cardiac Stability Theory and validate it across 176,742 segments from four heterogeneous PPG datasets at three temporal scales. Cross-dataset analysis demonstrates a large Kruskal-Wallis effect size (eta2 = 0.351, p < 0.001), strong cross-scale consistency (kappa > 0.97), and significant correlation with respiratory rate across 53 ICU records (Spearman r = 0.346, p = 0.011). We identify three evaluation artifacts that inflate heuristic AUC from a true baseline of 0.573 to 0.752: segment-level cross-validation leakage, test-set normalization leakage, and pooled-AUC…
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