| Literature DB >> 34676117 |
Didi Han1,2, Fengshuo Xu1,2, Chengzhuo Li1,2, Luming Zhang3, Rui Yang1,2, Shuai Zheng1,4, Zichen Wang5, Jun Lyu1,2.
Abstract
BACKGROUND: Severe acute pancreatitis (SAP) can cause various complications. Septic shock is a relatively common and serious complication that causes uncontrolled systemic inflammatory response syndrome, which is one of the main causes of death. This study aimed to develop a nomogram for predicting the overall survival of SAP patients during the initial 24 hours following admission.Entities:
Year: 2021 PMID: 34676117 PMCID: PMC8526213 DOI: 10.1155/2021/9190908
Source DB: PubMed Journal: Emerg Med Int ISSN: 2090-2840 Impact factor: 1.112
Figure 1Study cohort. Illustration of selection criteria as utilized to select the final cohort of 850 patients.
Baseline characteristics, vital signs, laboratory parameters, and outcomes of patients with acute pancreatitis.
| Variables | Classification | Patients |
| |
|---|---|---|---|---|
| Training set (%) | Validation set (%) | |||
| Total | — | 595 | 255 | — |
| Age | — | 60 (48–71) | 59 (45–71) | 0.450 |
| LOS | — | 4 (2–12) | 3 (2–10) | 0.128 |
| Weight | — | 81 (68–97) | 79 (68–91) | 0.145 |
|
| ||||
| Gender | Male | 353 (59.3) | 130 (51.0) | 0.024 |
| Female | 242 (40.7) | 125 (49.0) | ||
|
| ||||
| Ethnicity | White | 400 (67.2) | 168 (65.9) | 0.790 |
| Black | 58 (9.7) | 23 (9.0) | ||
| Other | 137 (23.0) | 64 (25.1) | ||
|
| ||||
| Admission type | Elective | 15 (2.5) | 11 (4.3) | 0.204 |
| Emergence | 557 (93.6) | 230 (90.2) | ||
| Urgent | 23 (3.9) | 14 (5.5) | ||
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| ||||
| Insurance | Medicare | 274 (46.1) | 116 (45.5) | 0.908 |
| Private | 214 (36.0) | 95 (37.3) | ||
| Medicaid | 73 (12.3) | 33 (12.9) | ||
| Government | 27 (4.5) | 8 (3.1) | ||
| Self-pay | 7 (1.2) | 3 (1.2) | ||
|
| ||||
| Marital status | Married | 366 (61.5) | 166 (65.1) | 0.580 |
| Unmarried | 184 (30.9) | 73 (28.6) | ||
| Other | 45 (7.6) | 16 (6.3) | ||
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| ||||
| Explicit sepsis | Yes | 470 (79.0) | 198 (77.6) | 0.661 |
| No | 125 (21.0) | 57 (22.4) | ||
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| ||||
| Infection | Yes | 217 (36.5) | 96 (37.6) | 0.745 |
| No | 378 (63.5) | 159 (62.4) | ||
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| Organ dysfunction | Yes | 248 (41.7) | 101 (39.6) | 0.573 |
| No | 347 (58.3) | 154 (60.4) | ||
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| ||||
| Vent | Yes | 307 (51.6) | 133 (52.2) | 0.881 |
| No | 288 (48.4) | 122 (47.8) | ||
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| Comorbidities | Diabetes | 133 (22.4) | 57 (22.4) | 0.195 |
| Hypertension | 311 (52.3) | 142 (55.7) | 0.244 | |
| Liver disease | 140 (23.5) | 58 (22.7) | 0.255 | |
| Neurological | 81 (13.6) | 28 (11.0) | 0.279 | |
| Renal failure | 87 (14.6) | 33 (12.9) | 0.233 | |
| Coagulopathy | 120 (20.2) | 62 (24.3) | 0.252 | |
| Alcohol abuse | 140 (23.5) | 65 (25.5) | 0.240 | |
| Fluid electrolyte | 282 (47.4) | 135 (52.9) | 0.253 | |
| Chronic pulmonary | 102 (17.1) | 35 (13.7) | 0.267 | |
| Cardiac arrhythmias | 179 (30.1) | 85 (33.3) | 0.318 | |
| CHF | 145 (24.4) | 61 (23.9) | 0.220 | |
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| Scoring systems | SAPSII | 37 (27–47) | 35 (26–44) | 0.208 |
| Elixhauser score | 8 (4–15) | 9 (2–15) | 0.636 | |
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| Laboratory events | PT | 14.1 (12.9–16.0) | 14.1 (13.0–16.1) | 0.970 |
| PTT | 29.5 (25.7–34.1) | 28.9 (25.8–34.5) | 0.930 | |
| Bilirubin | 0.9 (0.5–2.2) | 0.8 (0.4–1.9) | 0.174 | |
| Chloride | 103.0 (99.0–108.0) | 103.0 (98.0–108.0) | 0.368 | |
| ALT | 42.0 (23.0–138.0) | 41.0 (19.0–104.0) | 0.242 | |
| AST | 59 (28.0–146.0) | 54.0 (27.0–129.0) | 0.414 | |
| Calcium | 8.3 (7.6–8.9) | 8.3 (7.7–9.0) | 0.529 | |
| Anion gap | 16.0 (13.0–19.0) | 16.0 (14.0–19.0) | 0.419 | |
| Bicarbonate | 23.0 (19.0–26.0) | 23.0 (20.0–26.0) | 0.548 | |
| Creatinine | 1.1 (0.8–1.9) | 1.1 (0.7–2.0) | 0.745 | |
| Glucose | 135.0 (105.0–180.0) | 125.0 (98.0–163.0) | 0.012 | |
| Potassium | 4.1 (3.7–4.6) | 4.1 (3.7–4.6) | 0.777 | |
| Sodium | 138.0 (135.0–141.0) | 138.0 (135.0–141.0) | 0.990 | |
| Hematocrit | 35.2 (30.3–40.7) | 35.1 (31.3–40.3) | 0.819 | |
| Hemoglobin | 11.8 (10.1–13.7) | 11.9 (10.3–13.7) | 0.602 | |
| Platelet | 226.0 (158.0–320.0) | 220.0 (156.0–292.0) | 0.668 | |
| RDW | 14.5 (13.6–15.7) | 14.5 (13.5–15.9) | 0.428 | |
| WBC | 12.6 (8.5–17.6) | 12.6 (8.8–17.4) | 0.794 | |
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| ||||
| Vital signs | MBP | 80 (73–90) | 78 (71–89) | 0.147 |
| SPO2 | 97 (95–98) | 97 (95–99) | 0.664 | |
| Temperature | 37.0 (36.6–37.6) | 37.0 (36.6–37.6) | 0.909 | |
| Heart rate | 96 (83–109) | 94 (82–109) | 0.050 | |
| Respiratory rate | 21 (17–24) | 20 (18–24) | 0.403 | |
LOS: length of stay; Vent: mechanical ventilation; CHF: chronic heart failure; SAPSII: Simplified Acute Physiology Score II; RDW: red blood cell distribution width; WBC: white blood cell; MBP: mean blood pressure.
Multivariate Cox regression analysis of AP based on first 24 h data in the training set.
| Variables | Multivariate analysis | ||
|---|---|---|---|
| HR | 95% CI |
| |
| Weight | 0.987 | 0.979–0.995 | <0.001 |
| Gender | |||
| Male | Reference | — | — |
| Female | 0.745 | 0.553–1.003 | 0.052 |
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| |||
| Insurance | |||
| Medicare | Reference | — | — |
| Private | 0.451 | 0.324–0.629 | <0.001 |
| Medicaid | 0.615 | 0.387–0.978 | 0.040 |
| Government | 0.194 | 0.061–0.616 | 0.005 |
| Self-pay | 1.841 | 0.564–6.011 | 0.312 |
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| |||
| Explicit sepsis | |||
| No | Reference | — | — |
| Yes | 2.060 | 1.470–2.886 | <0.001 |
| SAPSII | 1.035 | 1.025–1.046 | <0.001 |
| Elixhauser score | 1.022 | 1.007–1.038 | 0.004 |
| Bilirubin | 1.048 | 1.015–1.082 | 0.005 |
| Anion gap | 1.033 | 1.012–1.055 | 0.002 |
| Creatinine | 0.856 | 0.788–0.930 | <0.001 |
| Hematocrit | 1.122 | 1.049–1.201 | <0.001 |
| Hemoglobin | 0.660 | 0.539–0.808 | <0.001 |
| RDW | 1.138 | 1.069–1.211 | <0.001 |
| SPO2 | 0.939 | 0.902–0.978 | 0.002 |
| Respiratory rate | 1.023 | 0.992–1.054 | 0.147 |
SAPSII: Simplified Acute Physiology Score II; RDW: red blood cell distribution width.
Figure 2Nomogram predicting 28-, 60-, and 90-day mortality. The point of each variable was then summed up to obtain a total score that corresponds to a predicted probability of 28-, 60-, and 90-day death at the bottom of the nomogram.
Figure 3ROC curves. The ability of the model to be measured by the C-index. (a) Training cohort; (b) validation cohort. ROC: receiver operating characteristic.
Figure 4Calibration plots showing the relationship between the predicted probabilities based on the nomogram and actual values of the training cohort (a, b, c) and validation cohort (d, e, f).
Figure 5Decision-curve analysis. The abscissa is the threshold probability, and the ordinate is the net benefit rate. The horizontal one indicates that all samples are negative and all are not treated, with a net benefit of 0. The oblique one indicates that all samples are positive. The net benefit is a backslash with a negative slope. (a, b, c) Training cohort and (d, e, f) validation cohort.