| Literature DB >> 35363146 |
Rahul Thapa1, Anurag Garikipati1, Sepideh Shokouhi1, Myrna Hurtado1, Gina Barnes1, Jana Hoffman1, Jacob Calvert1, Lynne Katzmann2, Qingqing Mao1, Ritankar Das1.
Abstract
BACKGROUND: Short-term fall prediction models that use electronic health records (EHRs) may enable the implementation of dynamic care practices that specifically address changes in individualized fall risk within senior care facilities.Entities:
Keywords: aging; assisted living facilities; blood pressure; elderly care; elderly population; fall prediction; independent living facilities; machine learning; older adult; skilled nursing facilities; vital signs
Year: 2022 PMID: 35363146 PMCID: PMC9015781 DOI: 10.2196/35373
Source DB: PubMed Journal: JMIR Aging ISSN: 2561-7605
Figure 1Participant encounter inclusion and exclusion diagram. EHR: electronic health record.
Figure 2(A) Study design timeline. (B) Selection of the optimal prediction window based on the distribution of the fall incidence time. EHR: electronic health record.
Performance metrics and 95% confidence intervals (CIs) of the gradient-boosted decision trees model (Extreme Gradient Boosting) with the top 68 features, the Juniper fall risk assessment score, and other machine learning models (logistic regression and multilayered perceptron) for the 3-month prediction of fall.
| Variable | Extreme Gradient Boosting | Logistic regression | Multilayered perceptron | Juniper fall risk |
| Area under the receiver operating characteristic curve (95% CI) | 0.846 (0.794-0.894) | 0.711 (0.645-0.773) | 0.697 (0.624-0.765) | 0.621 (0.547-0.693) |
| Sensitivity (95% CI) | 0.706 (0.577-0.833) | 0.706 (0.553-0.859) | 0.706 (0.571-0.833) | 0.351 (0.217-0.485) |
| Specificity (95% CI) | 0.848 (0.809-0.888) | 0.614 (0.560-0.668) | 0.612 (0.566-0.657) | 0.883 (0.854-0.911) |
| Positive likelihood ratio | 4.647 | 1.828 | 1.813 | 3.014 |
| Negative likelihood ratio | 0.346 | 0.479 | 0.481 | 0.733 |
| Diagnostic odds ratio (95% CI) | 13.400 (6.026-29.796) | 3.816 (1.764-8.256) | 3.766 (1.741-8.147) | 4.113 (1.881-8.995) |
| True positive | 24 | 24 | 24 | 12 |
| True negative | 268 | 194 | 193 | 279 |
| False positive | 48 | 122 | 123 | 37 |
| False negative | 10 | 10 | 10 | 22 |
| F1a | 0.393 | 0.262 | 0.248 | 0.289 |
aF score is defined as the harmonic mean between precision and recall.
Figure 3Row 1: Receiver operating characteristic (ROC) curves of the Extreme Gradient Boosting (XGBoost) model for three-month prediction compared with (A) the Juniper fall risk assessment and (B) other machine learning ML models. Row 2: ROC curves of the XGBoost model for a two-month prediction window compared with (C) the Juniper fall risk assessment and (D) other ML models. Row 3: ROC curves across different facilities. (E) Skilled nursing facility separated as a testing set and (F) Assisted living facility separated as a testing set. AUROC: area under the receiver operating characteristic; ML: machine learning; MLP: multilayered perceptron; LR: logistic regression.
Figure 4Feature correlations and distribution of feature importance for the Extreme Gradient Boosting (XGBoost) model at the three-month prediction window. The y-axis on the SHAP plot presents the features in order of importance from top to bottom. The SHAP values on the x-axis quantify the magnitude and direction in which each feature impacts the model prediction. SHAP: Shapely Additive Explanations.
Figure 5(A) Comparison between receiver operating characteristic (ROC) curves of Extreme Gradient Boosting (XGBoost) without vital signs and Juniper the fall risk model. (B) Comparison between ROC curves of XGBoost and other machine learning ML models without vital signs. (C) Comparison between ROC curves of XGBoost using only demographic information (age and sex) and vital signs and the Juniper fall risk model. (D) ROC curve of three ML models using demographic information and vital signs. AUROC: area under the receiver operating characteristic; ML: machine learning; MLP: multilayered perceptron; Logistic: Logistic Regression.