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
  • [31] HoloYolo: A proof-of-concept study for marker-less surgical navigation of spinal rod implants with augmented reality and on-device machine learning
    von Atzigen, Marco
    Liebmann, Florentin
    Hoch, Armando
    Bauer, David E.
    Snedeker, Jess Gerrit
    Farshad, Mazda
    Furnstahl, Philipp
    INTERNATIONAL JOURNAL OF MEDICAL ROBOTICS AND COMPUTER ASSISTED SURGERY, 2021, 17 (01) : 1 - 10
  • [32] A Machine Learning Algorithm Predicting Acute Kidney Injury in Intensive Care Unit Patients (NAVOY Acute Kidney Injury): Proof-of-Concept Study
    Persson, Inger
    Grunwald, Adam
    Morvan, Ludivine
    Becedas, David
    Arlbrandt, Martin
    JMIR FORMATIVE RESEARCH, 2023, 7
  • [33] Non-invasive prediction of cholesterol levels from photoplethysmogram (PPG)-based features using machine learning techniques: a proof-of-concept study
    Arguello-Prada, Erick Javier
    Ojeda, Angie Vanessa Villota
    Ojeda, Maria Yoselin Villota
    COGENT ENGINEERING, 2025, 12 (01):
  • [34] Proof-of-Concept Study of Using Supervised Machine Learning Algorithms to Predict Self-Care and Glycemic Control in Type 1 Diabetes Patients on Insulin Pump Therapy
    Kurdi, Sawsan
    Alamer, Ahmad
    Wali, Haytham
    Badr, Aisha F.
    Pendergrass, Merri L.
    Ahmed, Nehad
    Abraham, Ivo
    Fazel, Maryam T.
    ENDOCRINE PRACTICE, 2023, 29 (06) : 448 - 455
  • [35] A proof-of-concept study applying machine learning methods to putative risk factors for eating disorders: results from the multi-centre European project on healthy eating
    Krug, I
    Linardon, J.
    Greenwood, C.
    Youssef, G.
    Treasure, J.
    Fernandez-Aranda, F.
    Karwautz, A.
    Wagner, G.
    Collier, D.
    Anderluh, M.
    Tchanturia, K.
    Ricca, V
    Sorbi, S.
    Nacmias, B.
    Bellodi, L.
    Fuller-Tyszkiewicz, M.
    PSYCHOLOGICAL MEDICINE, 2023, 53 (07) : 2913 - 2922
  • [36] Development and Validation of Machine Learning Models for Prediction of 1-Year Mortality Utilizing Electronic Medical Record Data Available at the End of Hospitalization in Multicondition Patients: a Proof-of-Concept Study
    Nishant Sahni
    Gyorgy Simon
    Rashi Arora
    Journal of General Internal Medicine, 2018, 33 : 921 - 928
  • [37] Development and Validation of Machine Learning Models for Prediction of 1-Year Mortality Utilizing Electronic Medical Record Data Available at the End of Hospitalization in Multicondition Patients: a Proof-of-Concept Study
    Sahni, Nishant
    Simon, Gyorgy
    Arora, Rashi
    JOURNAL OF GENERAL INTERNAL MEDICINE, 2018, 33 (06) : 921 - 928
  • [38] Development of two machine learning models to predict conversion from primary HER2-0 breast cancer to HER2-low metastases: a proof-of-concept study
    Miglietta, F.
    Collesei, A.
    Vernieri, C.
    Giarratano, T.
    Giorgi, C. A.
    Girardi, F.
    Griguolo, G.
    Cacciatore, M.
    Botticelli, A.
    Vingiani, A.
    Fotia, G.
    Piacentini, F.
    Massa, D.
    Marino, M.
    Pruneri, G.
    Fassan, M.
    Tos, A. P. Dei
    Dieci, M., V
    Guarneri, V.
    ESMO OPEN, 2025, 10 (01)