| Literature DB >> 32128723 |
Wolfgang F Puchner1, Martin W Dünser2, Patrick Paulus2, Markus P Neuner2, Charlotte L Mayer2, Irmgard M Pomberger2, Ruth Hackl2, Jens M Meier2.
Abstract
PURPOSE: To compare the clinical judgement of electroencephalogram (EEG)-naïve anesthesiologists with an EEG-based measurement of anesthetic depth (AD) using the Narcotrend® monitor.Entities:
Year: 2020 PMID: 32128723 PMCID: PMC7214482 DOI: 10.1007/s12630-020-01602-x
Source DB: PubMed Journal: Can J Anaesth ISSN: 0832-610X Impact factor: 5.063
Levels of anesthetic depth assessed by clinical judgement and Narcotrend® monitor measurement
Anesthesiologists blinded to the raw electroencephalogram (EEG) and the Narcotrend index (NI) judged anesthetic depth using clinical skills and standard monitoring as either mid-adequate, adequate but fairly light or fairly deep. Simultaneously, the NI was measured. The NI is processed from the raw EEG and is updated every second. It is a dimensionless number ranging from 100 (awake) to 0 (zero-line EEG) and has been categorized into six stages (A–F). According to the recent manufacturer`s recommendations, stage A (awake), stage B (sedated), substage E2 (anesthesia with incipient appearance of burst suppression patterns), and stage F (anesthesia with burst suppression) are considered indicators of inadequate anesthetic depth during conventional surgical procedures. White area represents levels of adequate AD (i.e., stages C [light anesthesia], D [anesthesia middle], E0,1 [anesthesia with deep hypnosis]). On this basis, levels of anesthetic depth were compared with dis-/agreement between clinical judgement and the depth of anesthesia monitor Narcotrend in 600 patients
Characteristics of all study patients as well as subjects with concordant and discordant judgement of the anesthetic depth
| All patients | Concordance | Discordance Judged deeper than measured | Discordance Judged lighter than measured | |
|---|---|---|---|---|
| ( | ( | ( | ( | |
| Age, yr | 50 [24–67] | 38 [22–60] | 42 [17–62] | 62 [46–74] |
| 1–18 | 107 (18) | 51 (20) | 46 (29) | 10 (5) |
| 19–70 | 375 (63) | 171 (68) | 88 (56) | 116 (60) |
| 71–92 | 118 (20) | 28 (11) | 23 (15) | 67 (35) |
| ASA physical status | ||||
| I | 244 (41) | 120 (48) | 75 (48) | 49 (25) |
| II | 240 (40) | 103 (41) | 58 (37) | 79 (41) |
| III | 110 (18) | 26 (10) | 24 (15) | 60 (31) |
| IV | 6 (1) | 1 (0.4) | 0 | 5 (3) |
| Sex | ||||
| Male | 365 (61) | 155 (62) | 95 (61) | 115 (60) |
| Female | 235 (39) | 95 (38) | 62 (39) | 78 (40) |
| Body mass index, kg·m−2 | 25 [21–29] | 25 [21–29] | 24 [20–27] | 26 [23–29] |
| Frailty | 3 (0.5) | 0 (0) | 0 | 3 (2) |
| Redhead status | 9 (2) | 7 (3) | 2 (1) | 0 |
| History of awareness | 4 (0.7) | 2 (0.8) | 2 (1) | 0 |
| History of PONV | 44 (7) | 19 (8) | 9 (6) | 16 (8) |
| Induction to measurement, min | 38 [26–60] | 35 [25–57] | 39 [25–60] | 43 [28–66] |
| Urgency of surgery | ||||
| Elective | 581 (97) | 246 (98) | 150 (96) | 185 (96) |
| Urgent (< 6 hr) | 19 (3) | 4 (2) | 7 (4) | 8 (4) |
| Pre-medication received | 561 (94) | 236 (94) | 143 (91) | 182 (94) |
| Anesthesiologist`s experience, yr | 3 [1–12] | 4 [1–12] | 2 [1–12] | 4 [1–12] |
| Anesthesia regimen | ||||
| Balanced anesthesia | 333 (56) | 147 (59) | 97 (62) | 89 (46) |
| Total intravenous anesthesia | 267 (45) | 103 (41) | 60 (38) | 104 (54) |
| Neuromuscular blockade | 437 (73) | 182 (73) | 96 (61) | 139 (72) |
| Narcotrend index | 45 [35–59] | 48 [40–56] | 65 [47–73] | 33 [26–37] |
| AD as per clinical judgement | ||||
| Fairly deep | 122 (20) | 23 (9) | 91 (58) | 8 (4) |
| Mid-adequate | 387 (65) | 220 (88) | 65 (41) | 102 (53) |
| Fairly light | 91 (15) | 7 (3) | 1 (0.6) | 83 (43) |
| MAP, mmHg | 71 [65–81] | 72 [65–80] | 68 [61–75] | 74 [66–87] |
| Heart rate, beats·min−1 | 59 [52–68] | 60 [52–68] | 59 [52–71] | 57 [51–66] |
| Propofol (TCI) concentration, µg·mL−1 | 1.8 [1.5–2.0] | 1.8 [1.6–2.2] | 1.6 [1.5–1.9] | 1.8 [1.4–2] |
| Sevoflurane (endtidal), MAC | 0.8 [0.7–0.9] | 0.8 [0.7–0.9] | 0.8 [0.7–0.9] | 0.8 [0.7–0.9] |
| Intraoperative movements | 8 (2) | 0 (0) | 2 (2) | 6 (3) |
| Intraoperative use of catecholamines | 39 (7) | 12 (5) | 11 (7) | 16 (8) |
| D-score | ||||
| 0 | 250 (42) | 250 (100) | 0 | 0 |
| 1 | 274 (46) | 0 | 128 (82) | 146 (76) |
| 2 | 71 (12) | 0 | 28 (18) | 43 (22) |
| 3 | 5 (0.8) | 0 | 1 (0.6) | 4 (2) |
AD = anesthetic depth; ASA = American Society of Anesthesiologists; D-score = discordance by counting the number of AD levels the anesthesiologists’ judgement was discordant from the measurements of the Narcotrend monitor; MAC = minimum alveolar concentration; MAP = mean arterial blood pressure measured invasively or non-invasively; PONV = postoperative nausea and vomiting; TCI = target controlled infusion
Variables are given as median values [interquartile range] or absolute numbers (%)
Fig. 1Histogram of measured anesthetic depths (AD). Distribution of AD of all 600 patients during stable conditions of adequate anesthesia from the attending anesthesiologist`s perspective as measured by Narcotrend index (NI) values. Dark-shaded bars represent measurements of inadequate AD with an NI beyond the range of 20–79, as recommended by the manufacturer of Narcotrend to be considered an either too deep or too light anesthesia level
Fig. 2Cross-reference of judged and measured anesthetic depths (AD). Depiction of all 600 jugdements of AD (left: categories of fairly deep and fairly light anesthesia, right: category of mid-adequate level of anesthesia) compared with the measurements by the Narcotrend index (middle: table of index values in steps of 5). The strength of the line corresponds to the number of patients. Horizontal line means conformity between assessed and measured anesthetic levels, falling or ascending lines indicate discordance. Dark-shaded areas show the range of inadequate anesthesia levels according to the recommendations of the manufacturer of Narcotrend
Fig. 3Relative feature importances of study variables as determined in Boruta algorithm output. Based on the inferences of a Random Forest model, features are removed from the training set, and model training is performed anew. Boruta infers the relative importance of each independent variable (feature) in the obtained predictive outcomes by creating shadow features. All features that gain a higher relative feature importance than the shadow feature with the highest relative feature importance are defined as relevant for the prediction. For our data set, the relevant features (marked in green) are age, mean arterial blood pressure, pediatric surgery, American Society of Anesthesiologists classification, body mass index, and frailty