| Literature DB >> 30777849 |
Insook Cho1, Eun-Hee Boo2, Eunja Chung3, David W Bates4, Patricia Dykes4.
Abstract
BACKGROUND: Electronic medical records (EMRs) contain a considerable amount of information about patients. The rapid adoption of EMRs and the integration of nursing data into clinical repositories have made large quantities of clinical data available for both clinical practice and research.Entities:
Keywords: across sites validation; electronic medical records; inpatient falls; nursing dataset; predictive model
Mesh:
Year: 2019 PMID: 30777849 PMCID: PMC6399571 DOI: 10.2196/11505
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Concepts derived from the literature review and local data elements mapped to concept variables in the prediction model.
| Category and care component | Model concept | EMRa data element in development site | EMR data element in validation site | |
| Demographics | Age | Age | Age | |
| Diagnosis or procedure | Primary and secondary dxb, surgical operation | Medical dx. (ICDc code), dates of surgical operation | Medical dx. (ICD code), dates of surgical operation | |
| Administrative | Discharge unit, medical department, hospital days | Discharge unit, medical department, length of stay | Discharge unit, medical department, length of stay | |
| Physiological or disease-related factors | Visual and hearing impairment, elimination impairment, gait, mobility impairment, use of walking aids or devices, presence of dizziness, general weakness, orthostatic hypertension, and pain | Nursing assessment and dx.; physiologic evaluation and problem (eg, impaired mobility, incontinence, etc), KPCSd | Nursing assessment and dx.; physiologic evaluation and problem (eg, impaired mobility, incontinence, etc), KPCS | |
| Cognitive factors | Dementia, delirium, disorientation, level of consciousness, fear, irritability, noncompliance | Nursing assessment or dx.; cognitive function (eg, acute confusion, disorientation, noncompliance, etc) | Nursing assessment or dx.; cognitive function (eg, acute confusion, disorientation, noncompliance, etc) | |
| Behavioral factors | Fall history, sleep impairment | Presence of past falls, nursing dx. related to sleep | Presence of past falls, nursing dx. related to sleep | |
| Therapeutics | Medications, adverse reaction to medications, catheter (IVe-line, tube, Foley), use of restraints | Medication list by class (sedatives, antidepressant, antiemetics, antipsychotics, antianxiety drugs, diuretics, antiepileptics, antihypertensives, analgesics, antiarrhythmics and NSAIDsf), Physician order of fluid injection, tube, Foley and restraints. | Medication list by class (sedatives, antidepressant, antiemetics, antipsychotics, antianxiety drugs, diuretics, antiepileptics, antihypertensives, analgesics, antiarrhythmics and NSAIDs), Physician order of fluid injection, tube, Foley and restraints. | |
| Universal fall precautions | Fall precautions on admission, regular rounds | Nursing interventions; safety education on admission, rounds per 2 hours | Nursing interventions; safety education on admission, rounds per 2 hours | |
| Education and communication | Patient and caregiver education, presence of bedsitter, use of visual indicators, communicating fall risk status to care team | Nursing interventions; fall prevention education, presence of bedsitter, use of visual indicators, and activities communicating fall risk status to care team | Nursing interventions; fall prevention education, presence of bedsitter, use of visual indicators, and activities communicating fall risk status to care team | |
| Observation and surveillance | Fall risk assessment tool | Hendrich II score and subscores [ | STRATIFYg score and subscores [ | |
| Risk-target intervention | Cognitive and mental function | Nursing interventions: repeatedly provision of orientation, hourly rounding, assigning room close to nursing station, keep caregivers or family members on bed-side, etc. | Nursing interventions: repeatedly provision of orientation, hourly rounding, assigning room close to nursing station, keep caregivers or family members on bed-side, etc. | |
| Toileting problem | Nursing interventions: provision toilet scheduling, assist toileting, provision comodo or bed-pan, etc. | Nursing interventions: provision toilet scheduling, assist toileting, provision comodo or bed-pan, etc. | ||
| Impaired mobility | Nursing interventions: provision of mobility devices, walking aids, and assistance, etc. | Nursing interventions: provision of mobility devices, walking aids, and assistance, etc. | ||
| Medication review | Nursing interventions: rearranging medication time, provision side-effect precaution, etc. | Nursing interventions: rearranging medication time, provision side-effect precaution, etc. | ||
| Sleep disturbance | Nursing interventions: attention to night movement and noise, inducing sleep pattern changes, etc. | Nursing interventions: attention to night movement and noise, inducing sleep pattern changes, etc. | ||
| Environmental intervention | Keeping paths clear, inspect furniture, equipment, lighting, floor, room arrangement | Nursing interventions; environmental targeted | Nursing interventions; environmental targeted | |
aEMR: electronic medical record.
bdx: diagnoses.
cICD: International Classification of Diseases.
dKPCS: Korean Patient Classification System.
eIV: intravenous.
fNSAIDs: nonsteroidal anti-inflammatory agents.
gSTRATIFY: St. Thomas’ Risk Assessment Tool in Falling Elderly Inpatients.
Figure 1The 4 steps of building a predictive Bayesian network model. LONC: Logical Observation Identifiers Names and Codes; ICNP: International Classification for Nursing Practice; EMR: electronic medical record.
Characteristics of the two cohorts.
| Characteristic | Development site (n=14,307) | Validation site (n=21,172) | |||||
| Females, n (%) | 6157 (43.03) | 11,199 (52.90) | 332.20a | <.001 | |||
| 629.0 ( | <.001 | ||||||
| <50 | 3165 (22.12) | 5593 (26.42) | N/Ac | N/A | |||
| 50-60 | 3251 (22.72) | 3844 (18.16) | N/A | N/A | |||
| 60-70 | 3356 (23.46) | 3517 (16.61) | N/A | N/A | |||
| 70-80 | 3281 (22.93) | 5039 (23.80) | N/A | N/A | |||
| >80 | 1254 (8.76) | 3179 (15.02) | N/A | N/A | |||
| Length of stay in days, mean (SD) | 8.54 (11.52) | 8.15 (11.28) | 3.14a | .002 | |||
| 11,701.0 ( | <.001 | ||||||
| Neoplasm | 4639 (32.4) | 4869 (23.00) | N/A | N/A | |||
| Benign | 385 (2.7) | 1066 (5.03) | N/A | N/A | |||
| Circulatory disorder | 5670 (39.6) | 769 (3.63) | N/A | N/A | |||
| Respiratory and gastrointestinal disorders | 655 (4.6) | 5630 (26.60) | N/A | N/A | |||
| Surgical procedure | 517 (3.6) | 2163 (10.22) | N/A | N/A | |||
| Neurological disorder | 998 (7.0) | 263 (1.24) | N/A | N/A | |||
| Infectious disorder | 115 (0.8) | 813 (3.84) | N/A | N/A | |||
| Other | 1328 (9.3) | 5599 (26.45) | N/A | N/A | |||
| Presence of secondary diagnosis, n (%) | 14,242 (99.6) | 13,421 (63.40) | 6497.45a | <.001 | |||
| 52.8 ( | <.001 | ||||||
| Group 1 | 227 (1.59) | 377 (1.78) | N/A | N/A | |||
| Group 2 | 8197 (57.29) | 11,349 (53.60) | N/A | N/A | |||
| Group 3 | 3898 (27.25) | 5630 (26.59) | N/A | N/A | |||
| Group 4 | 1627 (11.37) | 1332 (6.29) | N/A | N/A | |||
| Groups 5 and 6 | 262 (1.83) | 0 (0) | N/A | N/A | |||
| Number of medications daily, mean (SD) | 2.5 (6.8) | 18.6 (9.9) | −1835.04a | <.001 | |||
| Total number of medications, mean (SD) | 24.4 (75.7) | 172.3 (317.7) | −63.07a | <.001 | |||
| 4.7 ( | .09 | ||||||
| One | 231 (1.61) | 284 (1.34) | N/A | N/A | |||
| Multiple | 7 (0.05) | 8 (0.04) | N/A | N/A | |||
aχ2.
bt (df).
cN/A: not applicable.
dGroup 1 has the lowest nursing needs, while group 6 has the highest nursing needs.
Figure 2Calibration curves for the prediction and Hendrich II models at the development site. The data are mean and 95% CIs.
Figure 3The receiver operating characteristics curves showing the discrimination ability in the fall prediction. AUC: area under the curve. STRATIFY: St. Thomas’ Risk Assessment Tool in Falling Elderly Inpatients.
Figure 4Results of the sensitivity analysis for subgroup summations of the prediction models. Dark-gray and light-gray bars correspond to the development and validation sites, respectively.
Figure 5Calibration curves for the prediction model and St. Thomas’ Risk Assessment Tool in Falling Elderly Inpatients (STRATIFY) tool at the validation site. The data are mean and 95% CIs.