Can the Electronic Health Record Predict Risk of Falls in Hospitalized Patients by Using Artificial Intelligence? A Meta-analysis

被引:2
作者
Hsu, Yen [1 ]
Kao, Yung-Shuo [2 ,3 ]
机构
[1] Changhua Christian Hosp, Dept Family Med, Changhua, Taiwan
[2] China Med Univ Hosp, Dept Radiat Oncol, Taichung, Taiwan
[3] China Med Univ Hosp, 2 Yude Rd, Taichung 404332, Taiwan
关键词
Accidental falls; Artificial intelligence; Hospitalization; Inpatients; Risk of falls; MODEL; INPATIENTS; IDENTIFY;
D O I
10.1097/CIN.0000000000000952
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Because of an aging population worldwide, the increasing prevalence of falls and their consequent injuries are becoming a safety, health, and social-care issue among elderly people. We conducted a meta-analysis to investigate the benchmark of prediction power when using the EHR with artificial intelligence to predict risk of falls in hospitalized patients. The CHARMS guideline was used in this meta-analysis. We searched PubMed, Cochrane, and EMBASE. The pooled sensitivity and specificity were calculated, and the summary receiver operating curve was formed to investigate the predictive power of artificial intelligence models. The PROBAST table was used to assess the quality of the selected studies. A total of 132 846 patients were included in this meta-analysis. The pooled area under the curve of the collected research was estimated to be 0.78. The pooled sensitivity was 0.63 (95% confidence interval, 0.52-0.72), whereas the pooled specificity was 0.82 (95% confidence interval, 0.73-0.88). The quality of our selected studies was high, with most of them being evaluated with low risk of bias and low concern for applicability. Our study demonstrates that using the EHR with artificial intelligence to predict the risk of falls among hospitalized patients is feasible. Future clinical applications are anticipated.
引用
收藏
页码:531 / 538
页数:8
相关论文
共 29 条
[1]  
Allaire J., 2012, Boston MA, V770, P165
[2]   Falls Risk Prediction for Older Inpatients in Acute Care Medical Wards: Is There an Interest to Combine an Early Nurse Assessment and the Artificial Neural Network Analysis? [J].
Beauchet, O. ;
Noublanche, F. ;
Simon, R. ;
Sekhon, H. ;
Chabot, J. ;
Levinoff, E. J. ;
Kabeshova, A. ;
Launay, C. P. .
JOURNAL OF NUTRITION HEALTH & AGING, 2018, 22 (01) :131-137
[3]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[4]   Using Electronic Health Records for Population Health Research: A Review of Methods and Applications [J].
Casey, Joan A. ;
Schwartz, Brian S. ;
Stewart, Walter F. ;
Adler, Nancy E. .
ANNUAL REVIEW OF PUBLIC HEALTH, VOL 37, 2016, 37 :61-81
[5]  
Chen T, 2015, XGBOOST EXTREME GRAD, V1, P1
[6]   Novel Approach to Inpatient Fall Risk Prediction and Its Cross-Site Validation Using Time-Variant Data [J].
Cho, Insook ;
Boo, Eun-Hee ;
Chung, Eunja ;
Bates, David W. ;
Dykes, Patricia .
JOURNAL OF MEDICAL INTERNET RESEARCH, 2019, 21 (02)
[7]   Use of machine learning in geriatric clinical care for chronic diseases: a systematic literature review [J].
Choudhury, Avishek ;
Renjilian, Emily ;
Asan, Onur .
JAMIA OPEN, 2020, 3 (03) :459-471
[8]   Can Falls Risk Prediction Tools Correctly Identify Fall-Prone Elderly Rehabilitation Inpatients? A Systematic Review and Meta-Analysis [J].
da Costa, Bruno Roza ;
Rutjes, Anne Wilhelmina Saskia ;
Mendy, Angelico ;
Freund-Heritage, Rosalie ;
Vieira, Edgar Ramos .
PLOS ONE, 2012, 7 (07)
[9]  
Hssina B., 2014, SpecialIssue, V4, P13, DOI DOI 10.14569/SPECIALISSUE.2014.040203
[10]   Prediction of fall events during admission using eXtreme gradient boosting: a comparative validation study [J].
Hsu, Yin-Chen ;
Weng, Hsu-Huei ;
Kuo, Chiu-Ya ;
Chu, Tsui-Ping ;
Tsai, Yuan-Hsiung .
SCIENTIFIC REPORTS, 2020, 10 (01)