A Machine Learning Framework for Predicting Dementia and Mild Cognitive Impairment

被引:8
|
作者
Stamate, Daniel [1 ]
Alghamdi, Wajdi
Ogg, Jeremy
Hoile, Richard [2 ]
Murtagh, Fionn [3 ]
机构
[1] Goldsmiths Univ London, Data Sci & Soft Comp Lab, London, England
[2] Brighton & Sussex Med Sch, Dept Primary Care & Publ Hlth, Brighton, E Sussex, England
[3] Univ Huddersfield, Huddersfield, W Yorkshire, England
关键词
Dementia; Machine Learning; ReliefF; Statistical Permutation Tests; Support Vector Machines; Gaussian Processes; Stochastic Gradient Boosting; eXtreme Gradient Boosting; Monte Carlo Simulations;
D O I
10.1109/ICMLA.2018.00107
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Dementia is one of the most feared illnesses that has a growing year-to-year negative global impact, having a health and social care cost higher than cancer, stroke and chronic heart disease, taken together. Without the availability of a cure, nor a standardised clinical test, the utilisation of machine learning methods to identify individuals that are at risk of developing dementia could bring a new step towards proactive intervention. This study's goal is to carry out a precursor analysis leading to building classification models with enhanced capabilities for differentiating diagnoses of CN (Cognitively Normal), MCI (Mild Cognitive Impairment) and Dementia. The predictive modelling approach we propose is based on the ReliefF method combined with statistical permutation tests for feature selection, and on model training, tuning, and testing based on algorithms such as Random Forests, Support Vector Machines, Gaussian Processes, Stochastic Gradient Boosting, and eXtreme Gradient Boosting. Stability of model performances were studied in computationally intensive Monte Carlo simulations. The results consistently show that our models accurately detect dementia, and also mild cognitive impairment patients by only using the inclusion of baseline measurements as predictors, thus illustrating the importance of baseline measurements. The best results issued from Monte Carlo were achieved by eXtreme Gradient Boosting optimised models, with an accuracy of 0.88 (SD 0.02), a sensitivity of 0.93 (SD 0.02) and a specificity of 0.94 (SD 0.01) for dementia, and a sensitivity of 0.86 (SD 0.02) and a specificity of 0.9 (SD 0.02) for mild cognitive impairment. These results support in particular future developments for a risk-based method that can identify an individual's risk of developing dementia.
引用
收藏
页码:671 / 678
页数:8
相关论文
共 50 条
  • [1] Predicting Cognitive Impairment and Dementia: A Machine Learning Approach
    Aschwanden, Damaris
    Aichele, Stephen
    Ghisletta, Paolo
    Terracciano, Antonio
    Kliegel, Matthias
    Sutin, Angelina R.
    Brown, Justin
    Allemand, Mathias
    [J]. JOURNAL OF ALZHEIMERS DISEASE, 2020, 75 (03) : 717 - 728
  • [2] Mild cognitive impairment, dementia, and cognitive dysfunction screening using machine learning
    Yim, Daehyuk
    Yeo, Tae Young
    Park, Moon Ho
    [J]. JOURNAL OF INTERNATIONAL MEDICAL RESEARCH, 2020, 48 (07)
  • [3] Identification of Dementia & Mild Cognitive Impairment in Chinese Elderly Using Machine Learning
    Ying, Tong-Tong
    Zhuang, Li-Ying
    Xu, Shan-Hu
    Zhang, Shu-Feng
    Huang, Li-Jun
    Gao, Wei-Wei
    Liu, Lu
    Lai, Qi-Lun
    Lou, Yue
    Liu, Xiao-Li
    [J]. AMERICAN JOURNAL OF ALZHEIMERS DISEASE AND OTHER DEMENTIAS, 2024, 39
  • [4] Machine learning methods for predicting progression from mild cognitive impairment to Alzheimer’s disease dementia: a systematic review
    Sergio Grueso
    Raquel Viejo-Sobera
    [J]. Alzheimer's Research & Therapy, 13
  • [5] Machine learning methods for predicting progression from mild cognitive impairment to Alzheimer's disease dementia: a systematic review
    Grueso, Sergio
    Viejo-Sobera, Raquel
    [J]. ALZHEIMERS RESEARCH & THERAPY, 2021, 13 (01)
  • [6] Predicting Conversion from Subjective Cognitive Decline to Mild Cognitive Impairment and Alzheimer's Disease Dementia Using Ensemble Machine Learning
    Dolcet-Negre, Marta M.
    Aguayo, Laura Imaz
    Garcia-De-Eulate, Reyes
    Marti-Andres, Gloria
    Fernandez-Matarrubia, Marta
    Dominguez, Pablo
    Fernandez-Seara, Maria A.
    Riverol, Mario
    [J]. JOURNAL OF ALZHEIMERS DISEASE, 2023, 93 (01) : 125 - 140
  • [7] A hybrid machine learning approach for prediction of conversion from mild cognitive impairment to dementia
    Bucholc, Magda
    Titarenko, Sofya
    Ding, Xuemei
    Canavan, Callum
    Chen, Tianhua
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2023, 217
  • [8] Machine learning approaches to studying the role of cognitive reserve in conversion from mild cognitive impairment to dementia
    Facal, David
    Valladares-Rodriguez, Sonia
    Lojo-Seoane, Cristina
    Pereiro, Arturo X.
    Anido-Rifon, Luis
    Juncos-Rabadan, Onesimo
    [J]. INTERNATIONAL JOURNAL OF GERIATRIC PSYCHIATRY, 2019, 34 (07) : 941 - 949
  • [9] Predicting Cognitive Decline in Amyloid-Positive Patients With Mild Cognitive Impairment or Mild Dementia
    van der Veere, Pieter J.
    Hoogland, Jeroen
    Visser, Leonie N. C.
    Van Harten, Argonde C.
    Rhodius-Meester, Hanneke F.
    Sikkes, Sietske A. M.
    Venkatraghavan, Vikram
    Barkhof, Frederik
    Teunissen, Charlotte E.
    van de Giessen, Elsmarieke
    Berkhof, Johannes
    van der Flier, Wiesje M.
    [J]. NEUROLOGY, 2024, 103 (03)
  • [10] Effect of dietary patterns on mild cognitive impairment and dementia: a machine learning bibliometric and visualization analysis
    Lou, Yan
    Chen, Xueping
    Zhao, Le
    Xuc, Nan
    Zhang, Lijun
    Hu, Wenyi
    Qiu, Yongzhen
    [J]. FRONTIERS IN NUTRITION, 2024, 11