| Literature DB >> 35987636 |
Susanne Suessner1, Norbert Niklas1, Ulrich Bodenhofer2, Jens Meier3,4.
Abstract
BACKGROUND AND OBJECTIVES: Fainting is a well-known side effect of blood donation. Such adverse experiences can diminish the return rate for further blood donations. Identifying factors associated with fainting could help prevent adverse incidents during blood donation.Entities:
Keywords: Blood donation; Donor safety; Fainting
Mesh:
Year: 2022 PMID: 35987636 PMCID: PMC9392313 DOI: 10.1186/s12911-022-01971-x
Source DB: PubMed Journal: BMC Med Inform Decis Mak ISSN: 1472-6947 Impact factor: 3.298
Acceptance criteria for blood donation at Red Cross Transfusion Service of Upper Austria
| Criterion | |
|---|---|
| Age | ≥ 18 years |
| Weight | ≥ 50 kg |
| Pulse | 50 ≥ pulse ≤ 100 bpm |
| Blood pressure (BP) | |
| Systolic | 100 ≥ BP ≤ 180 mmHg |
| Diastolic | 50 ≥ BP ≤ 100 mmHg |
| Temperature | |
| Male | ≤ 37.5 °C |
| Female | ≤ 38.0 °C |
| Haemoglobin | |
| Male | ≥ 13.5 g/dL |
| Female | ≥ 12.5 g/dL |
| Questionnaire medical history | No exclusion criterion according Austrian blood donor guidelines |
Donor and donation characteristics concerning fainting reactions
| All donations 228 846 (100%) | Donations without fainting 227,131 (99.25%) | Donations with fainting 1715 (0.75%) | |
|---|---|---|---|
| Female | 89,783 (39.2%) | 88 876 (39.1%) | 907 (52.9%) |
| Age (years) | 40 ± 13 | 40 ± 13 | 26 ± 8 |
| Height (cm) | 174 ± 9 | 174 ± 9 | 172 ± 11 |
| Weight (kg) | 79 ± 16 | 79 ± 16 | 69 ± 16 |
| BMI (kg/m2) | 26 ± 4 | 26 ± 4 | 23 ± 3 |
| Blood pressure (mmHg) | 140/85 | 140/85 | 135/82 |
| Body temperature (°C) | 36.6 ± 0.4 | 36.6 ± 0.4 | 36.8 ± 0.4 |
| Ambient temperature (°C) | 12.6 ± 8.9 | 12.6 ± 8.9 | 12.4 ± 9.0 |
| Dew point (°C) | 6.4 ± 6.8 | 6.4 ± 6.8 | 6.4 ± 7.0 |
| Humidity (%) | 69 ± 17 | 69 ± 17 | 70 ± 17 |
| Wind speed (km/h) | 14 ± 9 | 14 ± 9 | 14 ± 9 |
| Atmospheric pressure data (hPa) | 1018 ± 8 | 1018 ± 8 | 1018 ± 9 |
| Sunshine data (%) | 48 ± 45 | 48 ± 45 | 48 ± 45 |
| Blood group | |||
| 0 | 97 095 (42.4%) | 96 368 (42.4%) | 727 (42.5%) |
| A | 93 878 (41.0%) | 93 211 (41.0%) | 667 (38.9%) |
| B | 26 761 (11.7%) | 26 540 (11.7%) | 221 (12.9%) |
| AB | 10 803 (4.7%) | 10 710 (4.7%) | 93 (5.4%) |
| No (valid) data | 309 (0.1%) | 302 (0.1%) | 7 (0.4%) |
| Donation history | |||
| First time | 27 208 (11.9%) | 26 129 (11.5%) | 636 (37.1%) |
| Repeat | 201 592 (88.1%) | 200 956 (88.5%) | 1079 (62.9) |
| No (valid) data donation | 46 (0.0%) | 46 (0.0%) | 0 (0%) |
Fig. 1ROC curves of the seven machine learning models used. In the figure legend, the AUC of the ROC analysis is given for each of the models
Model selection results for the seven machine learning methods
| PPV | NPV | AUC | F1-score | |
|---|---|---|---|---|
| RF | 0.998 | 0.88 | ||
| ANN | 0.028 | 0.998 | 0.86 | 0.86 |
| XGB | 0.026 | 0.998 | 0.88 | 0.87 |
| ADA | 0.028 | 0.998 | 0.87 | |
| LR | 0.026 | 0.88 | 0.87 | |
| kNN | 0.025 | 0.998 | 0.86 | 0.83 |
| SVM | 0.024 | 0.86 | ||
Bold italics indicate the best model for a given parameter
PPV positive predictive value, NPV negative predictive value, AUC area under the curve of the ROC analysis, ACC accuracy
Feature importances obtained by the Boruta algorithm in arbitrary units
| Relative feature importance | |
|---|---|
| Systolic blood pressure | 41 (38–44) |
| Diastolic blood pressure | 38 (30–45) |
| Ambient temperature | 36 (34–39) |
| Relative humidity | 33 (31–36) |
| Dew point | 33 (30–35) |
| Atmospheric pressure | 33 (31–35) |
| Percentage sunshine | 28 (25–30) |
| Peek wind speed data | 27 (25–30) |
| Peek wind direction data | 25 (25–29) |
| Gender | 23 (20–25) |
| Weight | 23 (20–25) |
| BMI | 23 (19–26) |
| Height | 21 (20–22) |
| Wind direction data | 12 (10–15) |
| Body temperature | 10 (10–11) |
Mean and 95% interval are given