| Literature DB >> 35761274 |
Jong Wook Jung1, Sunghyun Hwang2, Sunho Ko1, Changwung Jo1, Hye Youn Park3, Hyuk-Soo Han1,2, Myung Chul Lee1,2, Jee Eun Park4, Du Hyun Ro5,6,7.
Abstract
BACKGROUND: Postoperative delirium is a challenging complication due to its adverse outcome such as long hospital stay. The aims of this study were: 1) to identify preoperative risk factors of postoperative delirium following knee arthroplasty, and 2) to develop a machine-learning prediction model.Entities:
Keywords: Delirium; Machine learning; Neurologic disorder; Prediction; Preoperative model; Total knee arthroplasty
Mesh:
Year: 2022 PMID: 35761274 PMCID: PMC9235137 DOI: 10.1186/s12888-022-04067-y
Source DB: PubMed Journal: BMC Psychiatry ISSN: 1471-244X Impact factor: 4.144
Fig. 1The study population. A total of 1,931 and 2,049 patients from two tertiary teaching hospitals were included in the analysis
Baseline characteristics of the developmental and validation cohorts
| Characteristics |
|
|
| ||
|---|---|---|---|---|---|
| Value | Missing | Value | Missing | ||
| Age (SD) | 71.0 (6.9) | - | 71.3 (6.7) | - | 0.26 |
| Sex | |||||
| M | 269 (14%) | - | 241 (12%) | - | 0.041 |
| F | 1,662 (86%) | 1808 (88.0%) | |||
| BMI (SD) | 26.8 (3.7) | 46 | 27.1 (3.6) | - | 0.025 |
| Type of surgery | |||||
| UKA | 90 (4.7%) | - | 12 (0.6%) | - | < 0.001 |
| TKA | 1,663 (86.1%) | 1,907 (93.1%) | |||
| Revision knee arthroplasty | 178 (9.2%) | 130 (6.3%) | |||
| Operation numbers | |||||
| 1 | 1,261 (65.3%) | - | 1,404 (68.5%) | - | 0.03 |
| 2 | 670 (34.7%) | 645 (31.5%) | |||
| Type of anesthesia | |||||
| General | 149 (7.7%) | 47 (2.4%) | 18 (0.9%) | 10 (0.5%) | < 0.001 |
| Spinal or Epidural | 1,735 (89.8%) | 2021 (98.6%) | |||
| Fall-down risk | |||||
| High | 262 (13.6%) | 433 (22.4%) | 197 (9.6%) | - | < 0.001 |
| Low | 1236 (64.0%) | 1,852 (90.4%) | |||
| Number of anticholinergic cognitive drugs (SD) | 0.11 (0.37) | - | 0.09 (0.34) | - | 0.15 |
| Number of hypnotics and sedatives drugs (SD) | 0.16 (0.46) | - | 0.18 (0.51) | - | 0.16 |
| Total number of drugs (SD) | 5.7 (4.2) | - | 5.2 (4.3) | - | 0.001 |
| Visual impairment | |||||
| Y | 34 (1.8%) | 16 (0.8%) | 150 (7.3%) | 9 (0.4%) | < 0.001 |
| N | 1,881 (97.4%) | 1,890 (92.2%) | |||
| Hearing impairment | |||||
| Y | 88 (4.6%) | 16 (0.8%) | 160 (7.8%) | - | < 0.001 |
| N | 1,827 (94.6%) | 1,889 (92.2%) | |||
| Neurologic disorders (dementia, Parkinson’s disease, epilepsy, headache disorder) | |||||
| Y | 526 (27.2%) | - | 432 (21.1%) | - | < 0.001 |
| N | 1,405 (72.8%) | 1,617 (78.9%) | |||
| Depression | |||||
| Y | 120 (6.2%) | - | 104 (5.1%) | - | 0.12 |
| N | 1,811 (93.8%) | 1,945 (94.9%) | |||
UKA Unicompartment knee arthroplasty, TKA Total knee replacement arthroplasty, SD Standard deviation, BMI Body mass index
Comparison of the delirium and non-delirium groups of the developmental cohort
| Characteristics |
| ||||
|---|---|---|---|---|---|
| Delirium ( | Non-delirium ( | Total |
| Odds ratio (95% CI) | |
| Selected key variables | |||||
| Age (SD) | 76.4 (6.2) | 70.7 (6.8) | 71.0 (6.9) | < 0.001 | 1.15 (1.11–1.19) |
| Albumin (SD) | 4.0 (0.3) | 4.1 (0.3) | 4.1 (0.3) | 0.035 | 0.55 (0.31–0.96) |
| Number of hypnotics and sedatives drugs (SD) | 0.29 (0.62) | 0.15 (0.45) | 0.16 (0.46) | 0.024 | 1.58 (1.17–2.15) |
| Fall-down risk | |||||
| High | 26 (29.9%) | 236 (16.7%) | 262 (17.5%) | 0.002 | 2.1 (1.3–3.4) |
| Low | 61 (70.1%) | 1,175 (83.3%) | 1,236 (82.5%) | ||
| Total number of drugs (SD) | 7.4 (5.1) | 5.6 (4.1) | 5.7 (4.2) | < 0.001 | 1.09 (1.05–1.13) |
| Neurologic disorders | |||||
| Y | 51 (45.9%) | 475 (26.1%) | 526 (27.2%) | < 0.001 | 2.4 (1.6–3.5) |
| N | 60 (54.1%) | 1,345 (73.9%) | 1,405 (72.8%) | ||
| Depression | |||||
| Y | 17 (15.3%) | 103 (5.7%) | 120 (6.2%) | < 0.001 | 3.0 (1.7–5.2) |
| N | 94 (84.7%) | 1,717 (94.3%) | 1,811 (93.8%) | ||
| Unselected variables | |||||
| Hearing impairment | |||||
| Y | 11 (10.1%) | 77(4.3%) | 88 (4.6%) | 0.005 | 2.5 (1.3–4.9) |
| N | 98 (89.9%) | 1,729 (95.7%) | 1,827 (95.4%) | ||
| The type of surgery | |||||
| UKA | 2 (1.8%) | 88 (4.8%) | 90 (4.7%) | 0.014 | n.s |
| TKRA | 91 (82.0%) | 1,572 (86.4%) | 1,663 (86.1%) | ||
| Revision- TKRA | 18 (16.2%) | 160 (8.8%) | 178 (9.2%) | ||
| eGFR (MDRD) (SD) | 73.7 (20.9) | 81.6 (21.4) | 81.2 (21.5) | < 0.001 | 0.98 (0.97–0.99) |
| Sodium (SD) | 140.5 (2.6) | 141.0 (2.3) | 141.0 (2.4) | 0.032 | 0.92 (0.86–0.99) |
| Anticholinergic cognitive drugs burden (SD) | 0.22 (0.49) | 0.10 (0.36) | 0.11 (0.37) | 0.018 | 2.28 (1.76–2.95) |
| Obstructive sleep apnea | |||||
| Y | 3 (2.7%) | 8 (0.4%) | 11 (0.6%) | 0.022 | n.s |
| N | 108 (97.3%) | 1,812 (99.6%) | 1,920 (99.4%) | ||
| Diabetic mellitus | |||||
| Y | 45 (40.5%) | 504 (27.7%) | 549 (28.4%) | 0.004 | 1.78 (1.20–2.64) |
| N | 66 (59.5%) | 1,316 (72.3%) | 1,382 (71.6%) | ||
| AKI | |||||
| Y | 4 (3.6%) | 15 (0.8%) | 19 (1.0%) | 0.020 | n.s |
| N | 107 (96.4%) | 1,805 (99.2%) | 1,912 (99.0%) | ||
| Atrial fibrillation | |||||
| Y | 13 (11.7%) | 96 (5.3%) | 109 (5.6%) | 0.004 | 2.38 (1.29–4.40) |
| N | 98 (88.3%) | 1,724 (94.7%) | 1,822 (94.4%) | ||
| Ischemic heart disease | |||||
| Y | 33 (29.7%) | 365 (20.1%) | 398 (20.6%) | 0.014 | 1.69 (1.10–2.57) |
| N | 78 (70.3%) | 1,455 (79.9%) | 1,533 (79.4%) | ||
| Cerebrovascular disease | |||||
| Y | 29 (26.1%) | 272 (14.9%) | 301 (15.6%) | 0.002 | 2.01 (1.29–3.13) |
| N | 82 (73.9%) | 1,548 (85.1%) | 1,630 (84.4%) | ||
| Peripheral arterial disease | |||||
| Y | 24 (21.6%) | 134 (7.4%) | 158 (8.2%) | < 0.001 | 3.47 (2.14–5.64) |
| N | 87 (78.4%) | 1,686 (92.6%) | 1,773 (91.8%) | ||
| Septic arthritis | |||||
| Y | 12 (10.8%) | 107 (5.9%) | 119 (6.1%) | 0.036 | 1.94 (1.03–3.64) |
| N | 99 (89.2%) | 1,713 (94.1%) | 1,812 (93.8%) | ||
UKA Unicompartment knee arthroplasty, TKRA Total knee replacement arthroplasty, Revision-TKRA Revision total knee replacement arthroplasty, AKI Acute kidney injury, SD Standard deviation, BMI Body mass index, eGFR Estimated glomerular filtration rate
Morse fall risk assessment
| Risk Factor | Scale | Score |
|---|---|---|
| History of Falls | Yes | 25 |
| No | 0 | |
| Secondary Diagnosis | Yes | 15 |
| No | 0 | |
| Ambulatory Aid | Furniture | 30 |
| Crutches/ Cane/ Walker | 15 | |
| None / Bed Rest / Wheel Chair / Nurse | 0 | |
| IV / Heparin Lock | Yes | 20 |
| No | 0 | |
| Gait / Transferring | Impaired | 20 |
| Weak | 10 | |
| Normal / Bed Rest / Immobile | 0 | |
| Mental status | Forgets Limitations | 15 |
| Oriented to Own Ability | 0 |
Morse Fall Score
High Risk: 45 and higher
Low Risk: 0–44
IV Intra Venous
Fig. 2Visualization of one of gradient boosting trees [13]
Fig. 3The importance factor of the complete model. The feature importance plot was shown from the highest F score. The feature’s higher F score have a greater impact on the prediction of postoperative delirium
Fig. 4The AUROC and confusion table of the model. The pictures on the left from the top to the bottom are the AUROC curve of the internal and external validation, respectively. The pictures on the right from the top to the bottom are the confusion table after internal and external validation, respectively
Fig. 5Distribution of total number of drugs at admission. A total of 1,931 patients took average 5.67 pills (SD: 4.19)