Publication detail

Automatic Patient Functionality Assessment from Multimodal Data using Deep Learning Techniques - Development and Feasibility Evaluation

SUKEI, E. DE LEON MARTINEZ, S. OLMOS, M. ARTES, A.

Original Title

Automatic Patient Functionality Assessment from Multimodal Data using Deep Learning Techniques - Development and Feasibility Evaluation

Type

journal article in Scopus

Language

English

Original Abstract

Wearable devices and mobile sensors enable the real-time collection of an abundant source of physiological and behavioural data unobtrusively. Unlike traditional in-person evaluation or ecological momentary assessment (EMA) questionnaire-based approaches, these data sources open many possibilities in remote patient monitoring. However, defining robust models is challenging due to the data's noisy and frequently missing observations. This work proposes an attention-based Long Short-Term Memory (LSTM) neural network-based pipeline for predicting mobility impairment based on WHODAS 2.0 evaluation from such digital biomarkers. Furthermore, we addressed the missing observation problem by utilising hidden Markov models and the possibility of including information from unlabelled samples via transfer learning. We validated our approach using two wearable/mobile sensor data sets collected in the wild and socio-demographic information about the patients. Our results showed that in the WHODAS 2.0 mobility impairment prediction task, the proposed pipeline outperformed a prior baseline while additionally providing interpretability with attention heatmaps. Moreover, using a much smaller cohort via task transfer learning, the same model could learn to predict generalised anxiety severity accurately based on GAD-7 scores.

Keywords

In-situ patient monitoring, Digital phenotyping, Ecological momentary, Assessment, Time-series modelling, Attention models, Transfer learning

Authors

SUKEI, E.; DE LEON MARTINEZ, S.; OLMOS, M.; ARTES, A.

Released

8. 8. 2023

ISBN

2214-7829

Periodical

Internet Interventions

Year of study

33

Number

100657

State

Kingdom of the Netherlands

Pages from

1

Pages to

9

Pages count

9

URL

BibTex

@article{BUT184781,
  author="SUKEI, E. and DE LEON MARTINEZ, S. and OLMOS, M. and ARTES, A.",
  title="Automatic Patient Functionality Assessment from Multimodal Data using Deep Learning Techniques - Development and Feasibility Evaluation",
  journal="Internet Interventions",
  year="2023",
  volume="33",
  number="100657",
  pages="1--9",
  doi="10.1016/j.invent.2023.100657",
  issn="2214-7829",
  url="https://www.sciencedirect.com/science/article/pii/S221478292300057X"
}