Multi-task learning for predicting quality-of-life and independence in activities of daily living after stroke: a proof-of-concept study

Front Neurol. 2024 Sep 27:15:1449234. doi: 10.3389/fneur.2024.1449234. eCollection 2024.

Abstract

A health-related (HR) profile is a set of multiple health-related items recording the status of the patient at different follow-up times post-stroke. In order to support clinicians in designing rehabilitation treatment programs, we propose a novel multi-task learning (MTL) strategy for predicting post-stroke patient HR profiles. The HR profile in this study is measured by the Barthel index (BI) assessment or by the EQ-5D-3L questionnaire. Three datasets are used in this work and for each dataset six neural network architectures are developed and tested. Results indicate that an MTL architecture combining a pre-trained network for all tasks with a concatenation strategy conditioned by a task grouping method is a promising approach for predicting the HR profile of a patient with stroke at different phases of the patient journey. These models obtained a mean F1-score of 0.434 (standard deviation 0.022, confidence interval at 95% [0.428, 0.44]) calculated across all the items when predicting BI at 3 months after stroke (MaS), 0.388 (standard deviation 0.029, confidence interval at 95% [0.38, 0.397]) when predicting EQ-5D-3L at 6MaS, and 0.462 (standard deviation 0.029, confidence interval at 95% [0.454, 0.47]) when predicting the EQ-5D-3L at 18MaS. Furthermore, our MTL architecture outperforms the reference single-task learning models and the classic MTL of all tasks in 8 out of 10 tasks when predicting BI at 3MaS and has better prediction performance than the reference models on all tasks when predicting EQ-5D-3L at 6 and 18MaS. The models we present in this paper are the first models to predict the components of the BI or the EQ-5D-3L, and our results demonstrate the potential benefits of using MTL in a health context to predict patient profiles.

Keywords: Barthel index; EQ-5D-3L; activities of daily living; multi-task learning; quality-of-life; stroke; task grouping.

Grants and funding

The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. This project received funding from the European Union's Horizon 2020 research and innovation program under grant agreement No. 777107 (PRECISE4Q). This research was also supported by the ADAPT Research Centre, which is funded by Science Foundation Ireland (Grant 13/RC/2106 P2) and is co-funded by the European Regional Development fund.