TY - JOUR
T1 - Risk factors and machine learning model for predicting hospitalization outcomes in geriatric patients with dementia
AU - Wang, Xin
AU - Ezeana, Chika F.
AU - Wang, Lin
AU - Puppala, Mamta
AU - Huang, Yan Siang
AU - He, Yunjie
AU - Yu, Xiaohui
AU - Yin, Zheng
AU - Zhao, Hong
AU - Lai, Eugene C.
AU - Wong, Stephen T.C.
N1 - Funding Information:
This study is supported by NIH R01AG057635, NIH R01AG069082, the T.T. and W.F. Chao Foundation, John S. Dunn Research Foundation, Houston Methodist Cornerstone Award, and the Paul Richard Jeanneret Research Fund. We thank the Clinical Informatics Oversight Committee and Hospital IT Division of Houston Methodist Hospital for their advice and support of this project, Dr. Guihua Li for assisting in part of the data review, and Dr. Rebecca Danforth for proofreading the manuscript. The sponsors had no role in the study's conception and design, collection, analysis, and interpretation of the data, or writing of this manuscript. The corresponding authors have full access to all the data and reserved rights to share the same. They have the final responsibility to submit the manuscript for its publication.
Funding Information:
The authors of this work declare that apart from support funding for this work by the following National Institutes of Health (for R01AG057635 and NIH R01AG069082), the T.T. and W.F. Chao Foundation, John S. Dunn Research Foundation, Houston Methodist Cornerstone Award, and the Paul Richard Jeanneret Research Fund, there are no other potential conflicts of interest. Author disclosures are available in the supporting information .
Funding Information:
This study is supported by NIH R01AG057635, NIH R01AG069082, the T.T. and W.F. Chao Foundation, John S. Dunn Research Foundation, Houston Methodist Cornerstone Award, and the Paul Richard Jeanneret Research Fund. We thank the Clinical Informatics Oversight Committee and Hospital IT Division of Houston Methodist Hospital for their advice and support of this project, Dr. Guihua Li for assisting in part of the data review, and Dr. Rebecca Danforth for proofreading the manuscript. The sponsors had no role in the study's conception and design, collection, analysis, and interpretation of the data, or writing of this manuscript. The corresponding authors have full access to all the data and reserved rights to share the same. They have the final responsibility to submit the manuscript for its publication.
Publisher Copyright:
© 2022 The Authors. Alzheimer's & Dementia: Translational Research & Clinical Interventions published by Wiley Periodicals LLC on behalf of Alzheimer's Association.
PY - 2022
Y1 - 2022
N2 - Introduction: Geriatric patients with dementia incur higher healthcare costs and longer hospital stays than other geriatric patients. We aimed to identify risk factors for hospitalization outcomes that could be mitigated early to improve outcomes and impact overall quality of life. Methods: We identified risk factors, that is, demographics, hospital complications, pre-admission, and post-admission risk factors including medical history and comorbidities, affecting hospitalization outcomes determined by hospital stays and discharge dispositions. Over 150 clinical and demographic factors of 15,678 encounters (8407 patients) were retrieved from our institution's data warehouse. We further narrowed them down to twenty factors through feature selection engineering by using analysis of variance (ANOVA) and Glmnet. We developed an explainable machine-learning model to predict hospitalization outcomes among geriatric patients with dementia. Results: Our model is based on stacking ensemble learning and achieved accuracy of 95.6% and area under the curve (AUC) of 0.757. It outperformed prevalent methods of risk assessment for encounters of patients with Alzheimer's disease dementia (ADD) (4993), vascular dementia (VD) (4173), Parkinson's disease with dementia (PDD) (3735), and other unspecified dementias (OUD) (2777). Top identified hospitalization outcome risk factors, mostly from medical history, include encephalopathy, number of medical problems at admission, pressure ulcers, urinary tract infections, falls, admission source, age, race, anemia, etc., with several overlaps in multi-dementia groups. Discussion: Our model identified several predictive factors that can be modified or intervened so that efforts can be made to prevent recurrence or mitigate their adverse effects. Knowledge of the modifiable risk factors would help guide early interventions for patients at high risk for poor hospitalization outcome as defined by hospital stays longer than seven days, undesirable discharge disposition, or both. The interventions include starting specific protocols on modifiable risk factors like encephalopathy, falls, and infections, where non-existent or not routine, to improve hospitalization outcomes of geriatric patients with dementia. Highlights: A total 15,678 encounters of Geriatrics with dementia with a final 20 risk factors. Developed a predictive model for hospitalization outcomes for multi-dementia types. Risk factors for each type were identified including those amenable to interventions. Top factors are encephalopathy, pressure ulcers, urinary tract infection (UTI), falls, and admission source. With accuracy of 95.6%, our ensemble predictive model outperforms other models.
AB - Introduction: Geriatric patients with dementia incur higher healthcare costs and longer hospital stays than other geriatric patients. We aimed to identify risk factors for hospitalization outcomes that could be mitigated early to improve outcomes and impact overall quality of life. Methods: We identified risk factors, that is, demographics, hospital complications, pre-admission, and post-admission risk factors including medical history and comorbidities, affecting hospitalization outcomes determined by hospital stays and discharge dispositions. Over 150 clinical and demographic factors of 15,678 encounters (8407 patients) were retrieved from our institution's data warehouse. We further narrowed them down to twenty factors through feature selection engineering by using analysis of variance (ANOVA) and Glmnet. We developed an explainable machine-learning model to predict hospitalization outcomes among geriatric patients with dementia. Results: Our model is based on stacking ensemble learning and achieved accuracy of 95.6% and area under the curve (AUC) of 0.757. It outperformed prevalent methods of risk assessment for encounters of patients with Alzheimer's disease dementia (ADD) (4993), vascular dementia (VD) (4173), Parkinson's disease with dementia (PDD) (3735), and other unspecified dementias (OUD) (2777). Top identified hospitalization outcome risk factors, mostly from medical history, include encephalopathy, number of medical problems at admission, pressure ulcers, urinary tract infections, falls, admission source, age, race, anemia, etc., with several overlaps in multi-dementia groups. Discussion: Our model identified several predictive factors that can be modified or intervened so that efforts can be made to prevent recurrence or mitigate their adverse effects. Knowledge of the modifiable risk factors would help guide early interventions for patients at high risk for poor hospitalization outcome as defined by hospital stays longer than seven days, undesirable discharge disposition, or both. The interventions include starting specific protocols on modifiable risk factors like encephalopathy, falls, and infections, where non-existent or not routine, to improve hospitalization outcomes of geriatric patients with dementia. Highlights: A total 15,678 encounters of Geriatrics with dementia with a final 20 risk factors. Developed a predictive model for hospitalization outcomes for multi-dementia types. Risk factors for each type were identified including those amenable to interventions. Top factors are encephalopathy, pressure ulcers, urinary tract infection (UTI), falls, and admission source. With accuracy of 95.6%, our ensemble predictive model outperforms other models.
KW - cognitive impairment
KW - dementia
KW - explainable artificial intelligence
KW - geriatric patient risk factors
KW - hospitalization outcome prediction
KW - machine learning
KW - multi-dementia modalities
KW - multi-view ensemble learning model
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U2 - 10.1002/trc2.12351
DO - 10.1002/trc2.12351
M3 - Article
AN - SCOPUS:85145068383
VL - 8
JO - Alzheimer's and Dementia: Translational Research and Clinical Interventions
JF - Alzheimer's and Dementia: Translational Research and Clinical Interventions
SN - 2352-8737
IS - 1
M1 - e12351
ER -