Validating the accuracy of the Hendrich II Fall Risk Model for hospitalized patients using the ROC curve analysis

Author:

Hu Chieh‐Ying1ORCID,Sun Li‐Chen2,Lin Ming‐Yen3,Chen Mei‐Hsing45ORCID,Hsu Hsin‐Tien67ORCID

Affiliation:

1. Integrated Long‐Term Care Services Center, Kaohsiung Municipal Ta‐Tung Hospital Kaohsiung Medical University Kaohsiung Taiwan

2. Department of Nursing, Kaohsiung Medical University Hospital Kaohsiung Medical University Kaohsiung Taiwan

3. Division of Nephrology, Department of Internal Medicine, Kaohsiung Medical University Hospital Kaohsiung Medical University Kaohsiung Taiwan

4. Superintendent Office, Kaohsiung Medical University Hospital Kaohsiung Medical University Kaohsiung Taiwan

5. Center for Quality Management and Patient Safety, Kaohsiung Medical University Hospital Kaohsiung Medical University Kaohsiung Taiwan

6. School of Nursing Kaohsiung Medical University Kaohsiung Taiwan

7. Department of Medical Research, Kaohsiung Medical University Hospital Kaohsiung Medical University Kaohsiung Taiwan

Abstract

AbstractThis retrospective study was conducted at a medical center in southern Taiwan to assess the accuracy of the Hendrich II Fall Risk Model (HIIFRM) in predicting falls. Sensitivity, specificity, accuracy, and optimal cutoff points were analyzed using receiver operating characteristic (ROC) curves. Data analysis was conducted using information from the electronic medical record and patient safety reporting systems, capturing 303 fall events and 47,146 non‐fall events. Results revealed that at the standard threshold of HIIFRM score ≥5, the median score in the fall group was significantly higher than in the non‐fall group. The top three units with HIIFRM scores exceeding 5 were the internal medicine (50.6%), surgical (26.5%), and oncology wards (14.1%), indicating a higher risk of falls in these areas. ROC analysis showed an HIIFRM sensitivity of 29.5% and specificity of 86.3%. The area under the curve (AUC) was 0.57, indicating limited discriminative ability in predicting falls. At a lower cutoff score (≥2), the AUC was 0.75 (95% confidence interval: 0.666–0.706; p < 0.0001), suggesting acceptable discriminative ability in predicting falls, with an additional identification of 101 fall events. This study emphasizes the importance of selecting an appropriate cutoff score when using the HIIFRM as a fall risk assessment tool. The findings have implications for fall prevention strategies and patient care in clinical settings, potentially leading to improved outcomes and patient safety.

Publisher

Wiley

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