Stress Estimation in Elderly Oncology Patients Using Visual Wearable Representations and Multi-Instance Learning
Abstract
Psychological stress is clinically relevant in cardio-oncology, yet it is typically assessed only through patient-reported outcome measures (PROMs) and is rarely integrated into continuous cardiotoxicity surveillance. We estimate perceived stress in an elderly, multicenter breast cancer cohort (CARDIOCARE) using multimodal wearable data from a smartwatch (physical activity and sleep) and a chest-worn ECG sensor. Wearable streams are transformed into heterogeneous visual representations, yielding a weakly supervised setting in which a single Perceived Stress Scale (PSS) score corresponds to many unlabeled windows. A lightweight pretrained mixture-of-experts backbone (Tiny-BioMoE) embeds each representation into 192-dimensional vectors, which are aggregated via attention-based multiple instance learning (MIL) to predict PSS at month 3 (M3) and month 6 (M6). Under leave-one-subject-out (LOSO) evaluation, predictions showed moderate agreement with questionnaire scores (M3: R^2=0.24, Pearson r=0.42, Spearman rho=0.48; M6: R^2=0.28, Pearson r=0.49, Spearman rho=0.52), with global RMSE/MAE of 6.62/6.07 at M3 and 6.13/5.54 at M6.
Cite
@article{arxiv.2604.06990,
title = {Stress Estimation in Elderly Oncology Patients Using Visual Wearable Representations and Multi-Instance Learning},
author = {Ioannis Kyprakis and Vasileios Skaramagkas and Georgia Karanasiou and Vasilis Bouratzis and Andri Papakonstantinou and Dimitar Stefanovski and Kalliopi Keramida and Aristofania Simatou and Ketti Mazzocco and Anastasia Constantinidou and Konstantinos Marias and Dimitrios I. Fotiadis and Manolis Tsiknakis},
journal= {arXiv preprint arXiv:2604.06990},
year = {2026}
}
Comments
7 pages, 2 figures, under review for IEEE EMBC 2026