An interpretable machine learning tool for in-home monitoring of agitation episodes in people living with dementia: a proof-of-concept study

被引:0
|
作者
Bafaloukou, Marirena [1 ,2 ,3 ]
Schalkamp, Ann-Kathrin [1 ,2 ]
Fletcher-Lloyd, Nan [1 ,2 ]
Capstick, Alex [1 ,2 ]
Walsh, Chloe [1 ,2 ,4 ]
Sandor, Cynthia [1 ,2 ,3 ]
Kouchaki, Samaneh [1 ,2 ,5 ]
Nilforooshan, Ramin [1 ,2 ,4 ,5 ]
Barnaghi, Payam [1 ,2 ,6 ]
机构
[1] Imperial Coll London, Dept Brain Sci, London, England
[2] Care Res & Technol Ctr, UK Dementia Res Inst, London, England
[3] Imperial Coll London, UK Dementia Res Inst, London, England
[4] Surrey & Borders Partnership NHS Fdn Trust, Leatherhead, Surrey, England
[5] Univ Surrey, Guildford, Surrey, England
[6] Great Ormond St Hosp NHS Fdn Trust, London, England
基金
英国工程与自然科学研究理事会;
关键词
Dementia care; Agitation; Machine learning; Remote monitoring; Digital health tools; BRIGHT LIGHT THERAPY; ALZHEIMERS-DISEASE; SYMPTOMS; SLEEP; DEPRESSION; EXPOSURE;
D O I
10.1016/j.eclinm.2024.103032
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Agitation affects around 30% of people living with dementia (PLwD), increasing carer burden and straining care services. Agitation identification typically relies on subjective clinical scales and direct patient observation, which are resource-intensive and challenging to incorporate into routine care. Clinical applicability of data- driven methods for agitation monitoring is limited by constraints such as short observational periods, data granularity, and lack of interpretability and generalisation. Current interventions for agitation are primarily medication-based, which may lead to severe side effects and lack personalisation. Understanding how real-world factors interact with agitation within home settings offers a promising avenue towards identifying potential personalised non-pharmacological interventions. Methods We used longitudinal data (32,896 person-days from n = 63 PLwD) collected using in-home monitoring devices between December 2020 and March 2023. Employing machine learning techniques, we developed a monitoring tool to identify the presence of agitation during the week. We incorporated a traffic-light system to stratify agitation probability estimates supporting clinical decision-making, and employed the SHapley Additive exPlanations (SHAP) framework to enhance interpretability. We designed an interactive tool that enables the exploration of personalised non-pharmacological interventions, such as modifying ambient light and temperature. Findings Light Gradient-boosting Machine (LightGBM) achieved the highest performance in identifying agitation over an 8-day period with a sensitivity of 71.32% +/- 7.38 and specificity of 75.28% +/- 7.38. Implementing the traffic-light system for stratification increased specificity to 90.3% +/- 7.55 and improved all metrics. Key features for identifying agitation included low nocturnal respiratory rate, heightened alertness during sleep, and increased indoor illuminance, as revealed by statistical and feature importance analysis. Using our interactive tool, we identified indoor lighting and temperature adjustments as the most promising and feasible intervention options within our cohort. Interpretation Our interpretable framework for agitation monitoring, developed using data from a dementia care study, showcases significant clinical value. The accompanying interactive interface allows for the in-silico simulation of non-pharmacological interventions, facilitating the design of personalised interventions that can improve in-home dementia care.
引用
收藏
页数:15
相关论文
共 38 条
  • [21] MRI texture-based machine learning models for the evaluation of renal function on different segmentations: a proof-of-concept study
    Xiaokai Mo
    Wenbo Chen
    Simin Chen
    Zhuozhi Chen
    Yuanshu Guo
    Yulian Chen
    Xuewei Wu
    Lu Zhang
    Qiuying Chen
    Zhe Jin
    Minmin Li
    Luyan Chen
    Jingjing You
    Zhiyuan Xiong
    Bin Zhang
    Shuixing Zhang
    Insights into Imaging, 14
  • [22] Prediction of high-risk emergency department revisits from a machine-learning algorithm: a proof-of-concept study
    Sung, Chih-Wei
    Ho, Joshua
    Fan, Cheng-Yi
    Chen, Ching-Yu
    Chen, Chi-Hsin
    Lin, Shao-Yung
    Chang, Jia-How
    Chen, Jiun-Wei
    Huang, Edward Pei-Chuan
    BMJ HEALTH & CARE INFORMATICS, 2024, 31 (01)
  • [23] MRI texture-based machine learning models for the evaluation of renal function on different segmentations: a proof-of-concept study
    Mo, Xiaokai
    Chen, Wenbo
    Chen, Simin
    Chen, Zhuozhi
    Guo, Yuanshu
    Chen, Yulian
    Wu, Xuewei
    Zhang, Lu
    Chen, Qiuying
    Jin, Zhe
    Li, Minmin
    Chen, Luyan
    You, Jingjing
    Xiong, Zhiyuan
    Zhang, Bin
    Zhang, Shuixing
    INSIGHTS INTO IMAGING, 2023, 14 (01)
  • [24] A Machine Learning Sepsis Prediction Algorithm for Intended Intensive Care Unit Use (NAVOY Sepsis): Proof-of-Concept Study
    Persson, Inger
    Ostling, Andreas
    Arlbrandt, Martin
    Soderberg, Joakim
    Becedas, David
    JMIR FORMATIVE RESEARCH, 2021, 5 (09)
  • [25] Photonic platform coupled with machine learning algorithms to detect pyrolysis products of crack cocaine in saliva: A proof-of-concept animal study
    Santana-Melo, Igor
    Caixeta, Douglas Carvalho
    Aguiar, Emilia Maria Gomes
    Cardoso-Sousa, Leia
    Pacheco, Amanda Larissa Dias
    dos Santos, Yngrid Mickaelli Oliveira
    da Silva, Jefte Teixeira
    Santana, Antonio Euzebio Goulart
    Carneiro, Murillo Guimaraes
    de Castro, Olagide Wagner
    Sabino-Silva, Robinson
    SPECTROCHIMICA ACTA PART A-MOLECULAR AND BIOMOLECULAR SPECTROSCOPY, 2025, 329
  • [26] Identifying posttraumatic stress disorder staging from clinical and sociodemographic features: a proof-of-concept study using a machine learning approach
    Ramos-Lima, Luis Francisco
    Waikamp, Vitoria
    Oliveira-Watanabe, Thauana
    Recamonde-Mendoza, Mariana
    Teche, Stefania Pigatto
    Mello, Marcelo Feijo
    Mello, Andrea Feijo
    Machado Freitas, Lucia Helena
    PSYCHIATRY RESEARCH, 2022, 311
  • [27] Machine learning models in the prediction of 1-year mortality in patients with advanced hepatocellular cancer on immunotherapy: a proof-of-concept study
    Lui, Thomas Ka Luen
    Cheung, Ka Shing
    Leung, Wai Keung
    HEPATOLOGY INTERNATIONAL, 2022, 16 (04) : 879 - 891
  • [28] Machine learning models in the prediction of 1-year mortality in patients with advanced hepatocellular cancer on immunotherapy: a proof-of-concept study
    Thomas Ka Luen Lui
    Ka Shing Cheung
    Wai Keung Leung
    Hepatology International, 2022, 16 : 879 - 891
  • [29] Combining S100B and Cytokines as Neuro-Inflammatory Biomarkers for Diagnosing Generalized Anxiety Disorder: A Proof-of-Concept Study Based on Machine Learning
    Shen, Zhongxia
    Cui, Lijun
    Mou, Shaoqi
    Ren, Lie
    Yuan, Yonggui
    Shen, Xinhua
    Li, Gang
    FRONTIERS IN PSYCHIATRY, 2022, 13
  • [30] Using a Smart Living Environment Simulation Tool and Machine Learning to Optimize the Home Sensor Network Configuration for Measuring the Activities of Daily Living of Older People
    Naccarelli, Riccardo
    Casaccia, Sara
    Pirozzi, Michela
    Revel, Gian Marco
    BUILDINGS, 2022, 12 (12)