Frailty Estimation in Elderly Oncology Patients Using Multimodal Wearable Data and Multi-Instance Learning
Ioannis Kyprakis, Vasileios Skaramagkas, Georgia Karanasiou, Lampros Lakkas, Andri Papakonstantinou, Domen Ribnikar, Kalliopi Keramida, Dorothea Tsekoura, Ketti Mazzocco, Anastasia Constantinidou, Konstantinos Marias, Dimitrios I. Fotiadis, Manolis Tsiknakis

TL;DR
This study introduces a multimodal wearable data framework combined with multi-instance learning to estimate frailty-related functional decline in elderly cancer patients, enabling continuous monitoring between clinical visits.
Contribution
It presents a novel attention-based MIL model that fuses irregular multimodal wearable data with missingness handling to predict functional change in elderly oncology patients.
Findings
Multimodal model achieved balanced accuracy of ~0.68-0.70 for handgrip at 3 and 6 months.
Smartwatch activity and sleep data are the most predictive modalities.
HRV adds complementary information when combined with smartwatch data.
Abstract
Frailty and functional decline strongly influence treatment tolerance and outcomes in older patients with cancer, yet assessment is typically limited to infrequent clinic visits. We propose a multimodal wearable framework to estimate frailty-related functional change between visits in elderly breast cancer patients enrolled in the multicenter CARDIOCARE study. Free-living smartwatch physical activity and sleep features are combined with ECG-derived heart rate variability (HRV) features from a chest strap and organized into patient-horizon bags aligned to month 3 (M3) and month 6 (M6) follow-ups. Our innovation is an attention-based multiple instance learning (MIL) formulation that fuses irregular, multimodal wearable instances under real-world missingness and weak supervision. An attention-based MIL model with modality-specific multilayer perceptron (MLP) encoders with embedding…
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