Deep Learning Based Time-to-Event Prediction of MCI Transition Leveraging Sensor-captured Daily Activities Data

Deep Learning Based Time-to-Event Prediction of MCI Transition Leveraging Sensor-captured Daily Activities Data

  IJETT-book-cover           
  
© 2023 by IJETT Journal
Volume-71 Issue-8
Year of Publication : 2023
Author : Rajaram Narasimhan, Muthukumaran Gopalan, Mathangi Damal Chandrasekhar
DOI : 10.14445/22315381/IJETT-V71I8P231

How to Cite?

Rajaram Narasimhan, Muthukumaran Gopalan, Mathangi Damal Chandrasekhar, "Deep Learning Based Time-to-Event Prediction of MCI Transition Leveraging Sensor-captured Daily Activities Data," International Journal of Engineering Trends and Technology, vol. 71, no. 8, pp. 356-366, 2023. Crossref, https://doi.org/10.14445/22315381/IJETT-V71I8P231

Abstract
Mild Cognitive Impairment (MCI) is known to be a condition in older adults presenting cognitive impairment symptoms in the absence of functional impairment. This could be a transitional stage to developing Alzheimer’s disease (AD), but it does not always lead to AD. Early detection of MCI symptoms is vital in determining personalized interventions to slow down the MCI progression. This study proposes a survival analysis approach based on deep learning techniques to predict the probability of an individual transitioning from a cognitively healthy stage to MCI at a given time point by utilizing activity data captured through unobtrusive sensors by continuously monitoring the older adults’ daily routines. The performance of the proposed models, Neural Multi-Task Logistic Regression and Non-Linear Cox, in predicting the probability of time-to-transition are examined and compared against the Standard Cox PH model. The two well-known metrics, Concordance Index (CI) and Integrated Brier Score (IBS), are used to evaluate the model performance. Additionally, the features are ranked based on the model-learned weights and results are interpreted. Deep learning-based models perform better than the standard Cox PH model, with the best average CI of 0.714 and IBS of 0.119. The results suggest that the proposed models can accommodate the nonlinear elements from the data and account for the fact that the rate of progression of two individuals will vary with time. Feature ranking reveals the age and years of education to be in the top 5, in addition to features from sleep and mobility domains which are clinically meaningful. This study demonstrates that a practical, less expensive, and non-invasive way of observing older adults’ activity routines coupled with computing advancements such as deep learning techniques offer phenomenal opportunities for early detection of MCI transition.

Keywords - Activities of daily living, Alzheimer’s disease, Deep learning, Mild cognitive impairment, Time-to-event prediction, Unobtrusive sensor.

References
[1] D. Galasko et al., “Detailed Assessment of Activities of Daily Living in Moderate to Severe Alzheimer's Disease,” Journal of the International Neuropsychological Society, vol. 11, no. 4, pp. 446–453, 2005.
[CrossRef] [Google Scholar] [Publisher Link]
[2] Prafulla Nath Dawadi, Diane Joyce Cook, and Maureen Schmitter-Edgecombe, “Automated Cognitive Health Assessment from Smart Home-Based Behavior Data,” IEEE Journal of Biomedical and Health Informatics, vol. 20, no. 4, pp. 1188–1194, 2016.
[CrossRef] [Google Scholar] [Publisher Link]
[3] Rajaram Narasimhan, G. Muthukumaran, and Charles McGlade “Current State of Non-Wearable Sensor Technologies for Monitoring Activity Patterns to Detect Symptoms of Mild Cognitive Impairment to Alzheimer’s Disease,” International Journal of Alzheimer's Disease, vol. 2021, pp. 1–18, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[4] Jeffrey A. Kaye et al., “Intelligent Systems for Assessing Aging Changes: Home-Based, Unobtrusive, and Continuous Assessment of Aging,” The Journals of Gerontology Series B: Psychological Sciences and Social Sciences, vol. 66B, no. 1, pp. i180–i190, 2011.
[CrossRef] [Google Scholar] [Publisher Link]
[5] Stephane Fotso, “Deep Neural Networks for Survival Analysis Based on A Multi-Task Framework,” Machine Learning, arXiv, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[6] D. R. Cox, “Regression Models and Life-Tables,” Journal of the Royal Statistical Society: Series B (Methodological), vol. 34, no. 2, pp. 187–202, 1972.
[CrossRef] [Google Scholar] [Publisher Link]
[7] Rahul Sharma et al., “Time-to-Event Prediction using Survival Analysis Methods for Alzheimer's Disease Progression,” Alzheimer's & Dementia: Translational Research & Clinical Interventions, vol. 7, no. 1, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[8] Tomonori Nakagawa et al., “Prediction of Conversion to Alzheimer’s Disease Using Deep Survival Analysis of MRI Images,” Brain Communications, vol. 2, no. 1, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[9] Ghazal Mirabnahrazamet al., “Predicting Time-To-Conversion for Dementia of Alzheimer's Type Using Multi-Modal Deep Survival Analysis,” Neurobiology of Aging, vol. 121, pp. 139-156, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[10] Xinxing Wu et al., “Machine Learning Approach Predicts Probability of Time to Stage-Specific Conversion of Alzheimer’s Disease,” Journal of Alzheimer's Disease, vol. 90, no. 2, pp. 891–903, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[11] Adriana Seelye et al., “Weekly Observations of Online Survey Metadata Obtained Through Home Computer Use Allow for Detection of Changes in Everyday Cognition Before Transition to Mild Cognitive Impairment,” Alzheimer's and Dementia, vol. 14, no. 2, pp. 187–194, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[12] R. C. Petersen, “Mild Cognitive Impairment as a Diagnostic Entity,” Journal of Internal Medicine, vol. 256, no. 3, pp. 183–194, 2004.
[CrossRef] [Google Scholar] [Publisher Link]
[13] Rajaram Narasimhan et al., “Recurrent Neural Network based Prediction of Transition to Mild Cognitive Impairment Using Unobtrusive Sensor Data,” IEEE International Conference on Data Science and Information System (ICDSIS), pp. 1-6, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[14] Jared L. Katzman et al., “DeepSurv: Personalized Treatment Recommender System using a Cox Proportional Hazards Deep Neural Network,” BMC Medical Research Methodology, vol. 18, no. 24, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[15] S. Fotso, Square/Pysurvival: Open Source Package for Survival Analysis Modeling, GitHub, 2019. [Online]. Available: https://github.com/square/pysurvival/
[16] Hajime Uno et al., “On the C-statistics for Evaluating Overall Adequacy of Risk Prediction Procedures with Censored Survival Data,” Statistics in Medicine, vol. 30, no. 10, pp. 1105–1117, 2011.
[CrossRef] [Google Scholar] [Publisher Link]
[17] Thomas A. Gerds, and Martin Schumacher, “Consistent Estimation of the Expected Brier Score in General Survival Models with Right-Censored Event Times,” Biometrical Journal, vol. 48, no. 6, pp. 1029–1040, 2006.
[CrossRef] [Google Scholar] [Publisher Link]
[18] Yun-Chun Wu, and Wen-Chung Lee, “Alternative Performance Measures for Prediction Models,” PLoS ONE, vol. 9, no. 3, 2014.
[CrossRef] [Google Scholar] [Publisher Link]
[19] Lotte G. M. Cremers et al., “Predicting Global Cognitive Decline in the General Population Using the Disease State Index,” Frontiers in Aging Neuroscience, vol. 11, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[20] V. Solfrizzi et al., “Vascular Risk Factors, Incidence of MCI, and Rates of Progression to Dementia,” Neurology, vol. 63, no. 10, pp. 1882–1891, 2004.
[CrossRef] [Google Scholar] [Publisher Link]
[21] Yaakov Stern, “Cognitive Reserve in Ageing and Alzheimer's Disease,” The Lancet Neurology, vol. 11, no. 11, pp. 1006–1012, 2012.
[CrossRef] [Google Scholar] [Publisher Link]
[22] Christine Sattler et al., “Cognitive Activity, Education and Socioeconomic Status as Preventive Factors for Mild Cognitive Impairment and Alzheimer's Disease,” Psychiatry Research, vol. 196, no. 1, pp. 90–95, 2012.
[CrossRef] [Google Scholar] [Publisher Link]
[23] Srinivasan Suresh, “Prediction of Roadway Crashes Using Logistic Regression in SAS,” SSRG International Journal of Computer Science and Engineering, vol. 7, no. 10, pp. 13-17, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[24] Shelley S. Tworoger et al., “The Association of Self-Reported Sleep Duration, Difficulty Sleeping, and Snoring with Cognitive Function in Older Women,” Alzheimer Disease & Associated Disorders, vol. 20, no. 1, pp. 41–48, 2006.
[CrossRef] [Google Scholar] [Publisher Link]
[25] Terri Blackwell et al., “Poor Sleep is Associated with Impaired Cognitive Function in Older Women: The Study of Osteoporotic Fractures,” The Journals of Gerontology Series A: Biological Sciences and Medical Sciences, vol. 61, no. 4, pp. 405–410, 2006.
[CrossRef] [Google Scholar] [Publisher Link]
[26] Jeffrey Kaye et al., “One Walk a Year to 1000 within a Year: Continuous in-Home Unobtrusive Gait Assessment of Older Adults,” Gait & Posture, vol. 35, no. 2, pp. 197–202, 2012.
[CrossRef] [Google Scholar] [Publisher Link]
[27] H. H. Dodge et al., “In-Home Walking Speeds and Variability Trajectories Associated with Mild Cognitive Impairment,” Neurology, vol. 78, no. 24, pp. 1946–1952, 2012.
[CrossRef] [Google Scholar] [Publisher Link]
[28] Johanna Petersen et al., “Time Out-Of-Home and Cognitive, Physical, and Emotional Wellbeing of Older Adults: A Longitudinal Mixed Effects Model,” PLOS ONE, vol. 10, no. 10, 2015.
[CrossRef] [Google Scholar] [Publisher Link]
[29] T. Suzuki and S. Murase, “Influence of Outdoor Activity and Indoor Activity on Cognition Decline: Use of an Infrared Sensor to Measure Activity,” Telemedicine and e-Health, vol. 16, no. 6, pp. 686–690, 2010.
[CrossRef] [Google Scholar] [Publisher Link]
[30] Tamara L. Hayes et al., “Estimation of Rest-Activity Patterns Using Motion Sensors,” Annual International Conference of the IEEE Engineering in Medicine and Biology, pp. 2147-2150, 2010.
[CrossRef] [Google Scholar] [Publisher Link]