| Literature DB >> 35045397 |
Junwei Kang1, Lianghua Huang1, Yunliang Tang1, Gengfa Chen1, Wen Ye1, Jun Wang1, Zhen Feng1.
Abstract
PURPOSE: It is important to predict the prognosis of patients with prolonged disorders of consciousness (DOC). This study established and validated a nomogram and corresponding web-based calculator to predict outcomes for patients with prolonged DOC.Entities:
Keywords: clinical prediction; disorders of consciousness; nomogram; prognosis
Mesh:
Year: 2022 PMID: 35045397 PMCID: PMC8833128 DOI: 10.18632/aging.203840
Source DB: PubMed Journal: Aging (Albany NY) ISSN: 1945-4589 Impact factor: 5.682
Baseline characteristics of the training set and validation set.
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| Age(years) | 48.88±14.46 | 53.22±14.52 | 0.012 |
| Sex | 0.104 | ||
| Male | 103(68.2%) | 78(58.2%) | |
| Female | 48(31.8%) | 56(41.8%) | |
| Etiology | 0.192 | ||
| Trauma | 74(49.0%) | 75(56.0%) | |
| Stroke | 67(44.4%) | 46(34.3%) | |
| Anoxia | 10(6.6%) | 13(9.7%) | |
| CRS-R total score | 5.00(3.00, 8.00) | 5.00(2.00, 8.00) | 0.771 |
| GCS total score | 9.00(7.00, 9.00) | 8.00(6.00, 9.00) | 0.208 |
| Serum albumin(g/L) | 37.48±4.14 | 36.67±4.45 | 0.111 |
| Hemoglobin(g/L) | 113.11±15.83 | 107.69±15.42 | 0.004 |
| Basic cardiopulmonary diseases | 0.521 | ||
| Presence | 18(11.9%) | 12(9.0%) | |
| Absence | 133(88.1%) | 122(91.0%) | |
| Level of consciousness | 0.604 | ||
| VS | 97(64.2%) | 90(67.2%) | |
| MCS | 54(35.8%) | 44(32.8%) | |
| Multiple injuries | 0.854 | ||
| Presence | 38(25.2%) | 35(26.1%) | |
| Absence | 113(74.8%) | 99(73.9%) | |
| EEG background activity | 0.288 | ||
| Lack of alpha rhythms | 75(49.7%) | 75(56%) | |
| Alpha rhythms exists | 76(50.3%) | 59(44%) | |
| N20 on SEP | 0.841 | ||
| Presence | 122(80.8%) | 107(79.9%) | |
| One or both absent | 29(19.2%) | 27(20.1%) | |
| BAEP grade | 0.006 | ||
| GradeI-II | 82(54.3%) | 51(38.1%) | |
| GradeIII-IV | 69(45.7%) | 83(61.9%) | |
| Midline shift | 0.848 | ||
| Presence | 18(11.9%) | 15(11.2%) | |
| Absence | 133(88.1%) | 119(88.8%) | |
| Hypertension | 0.724 | ||
| Presence | 48(31.8%) | 40(29.9%) | |
| Absence | 103(68.2%) | 94(70.1%) | |
| Smoking history | 0.718 | ||
| Presence | 19(12.6%) | 15(11.2%) | |
| Absence | 132(87.4%) | 119(88.8%) | |
| Cholesterol | 0.203 | ||
| >5.17mmol/L | 16(10.6%) | 21(15.7%) | |
| ≤5.17mmol/L | 135(89.4%) | 113(84.3%) | |
| Triglyceride | 0.747 | ||
| >1.70mmol/L | 48(31.8%) | 45(33.6%) | |
| ≤1.70mmol/L | 103(68.2%) | 89(66.4%) | |
| Outcome | 0.242 | ||
| Good outcomes | 54(35.8%) | 57(42.5%) | |
| Adverse outcomes | 97(64.2%) | 77(57.5%) |
Univariate and multivariate logistic regression analyses of prognostic factors in patients with prolonged DOC in training set.
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| Age(years) | 1.041(1.016-1.069) | 0.002 | 1.037(1.006-1.071) | 0.022 |
| Sex | ||||
| Female | Ref | |||
| Male | 0.978(0.478-2.001) | 0.952 | ||
| Etiology | ||||
| Trauma | 1.099(0.552-2.186) | 0.788 | ||
| Stroke | Ref | |||
| Anoxia | 1.389(0.329-5.864) | 0.654 | ||
| CRS-R total score | 0.834(0.748-0.923) | 0.006 | 1.073(0.895-1.294) | 0.399 |
| GCS total score | 0.612(0.473-0.768) | 0.005 | 0.699(0.499-0.947) | 0.027 |
| Serum albumin(g/L) | 0.921(0.844-1.001) | 0.560 | ||
| Hemoglobin(g/L) | 0.990(0.969-1.011) | 0.356 | ||
| Basic cardiopulmonary diseases | ||||
| Presence | Ref | |||
| Absence | 0.517(0.160-1.672) | 0.264 | ||
| Level of consciousness | ||||
| VS | Ref | Ref | ||
| MCS | 0.202(0.096-0.410) | 0.000 | 0.309(0.087-1.039) | 0.043 |
| Multiple injuries | ||||
| Presence | Ref | |||
| Absence | 1.237(0.580-2.639) | 0.581 | ||
| EEG background activity | ||||
| Alpha rhythms exists | Ref | Ref | ||
| Lack of alpha rhythms | 4.216(2.047-8.686) | 0.000 | 2.252(0.958-5.428) | 0.065 |
| N20 on SEP | ||||
| Presence | Ref | Ref | ||
| One or both absent | 10.02(2.282-44.075) | 0.000 | 3.24(0.712-23.580) | 0.168 |
| BAEP grade | ||||
| GradeI-II | Ref | Ref | ||
| GradeIII-IV | 4.987(2.395-11.010) | 0.000 | 2.779(1.150-7.024) | 0.026 |
| Midline shift | ||||
| Presence | Ref | |||
| Absence | 0.474(0.148-1.521) | 0.202 | ||
| Hypertension | ||||
| Presence | Ref | |||
| Absence | 0.978(0.478-2.001) | 0.952 | ||
| Smoking history | ||||
| Presence | Ref | |||
| Absence | 0.605(0.205-1.782) | 0.358 | ||
| Cholesterol | ||||
| >5.17mmol/L | Ref | |||
| ≤5.17mmol/L | 0.798(0.262-2.430) | 0.690 | ||
| Triglyceride | ||||
| >1.70mmol/L | Ref | |||
| ≤1.70mmol/L | 1.650(0.816-3.338) | 0.162 | ||
Figure 1A clinical feature model was used to develop a nomogram.
Figure 2Construction of a web-based calculator for predicting outcomes of prolonged disorders of consciousness based on the model (https://kangjw.shinyapps.io/dynnomapp).
Figure 3Model discrimination and performance in the training set. (A) Receiver operating characteristic curves for nomogram-based prognostic prediction. (B) Calibration plot examining estimation accuracy. (C) Decision curve analyses assessing clinical utility.
Figure 4Model discrimination and performance in the validation set. (A) Receiver operating characteristic curves for nomogram-based prognostic prediction. (B) Calibration plot examining the estimation accuracy. (C) Decision curve analyses assessing clinical utility.