| Literature DB >> 31636879 |
Han Shih1, Suchithra Rajendran1,2.
Abstract
Purpose: The uncertainty in supply and the short shelf life of blood products have led to a substantial outdating of the collected donor blood. On the other hand, hospitals and blood centers experience severe blood shortage due to the very limited donor population. Therefore, the necessity to forecast the blood supply to minimize outdating as well as shortage is obvious. This study aims to efficiently forecast the supply of blood components at blood centers.Entities:
Year: 2019 PMID: 31636879 PMCID: PMC6766103 DOI: 10.1155/2019/6123745
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
2013–2017 TBSF weekly supply summary statistics.
| Year | Day | Average | Min. | Max. | Standard deviation | Coefficient of supply variation (%) |
|---|---|---|---|---|---|---|
| 2013 | Sunday | 188 | 32 | 461 | 84 | 44.68 |
| Monday | 1,523 | 173 | 1,928 | 287 | 18.84 | |
| Tuesday | 820 | 154 | 1,558 | 200 | 24.39 | |
| Wednesday | 961 | 327 | 1,606 | 254 | 26.43 | |
| Thursday | 1,127 | 299 | 1,596 | 282 | 25.02 | |
| Friday | 1,039 | 458 | 1,956 | 263 | 25.31 | |
| Saturday | 135 | 43 | 462 | 68 | 50.37 | |
|
| ||||||
| 2014 | Sunday | 174 | 31 | 456 | 82 | 47.13 |
| Monday | 1,525 | 688 | 2,324 | 351 | 23.02 | |
| Tuesday | 858 | 327 | 1,935 | 253 | 29.49 | |
| Wednesday | 857 | 168 | 1,474 | 210 | 24.50 | |
| Thursday | 1,238 | 80 | 2,048 | 304 | 24.56 | |
| Friday | 1,013 | 84 | 2,027 | 314 | 31.00 | |
| Saturday | 138 | 31 | 587 | 103 | 74.64 | |
|
| ||||||
| 2015 | Sunday | 200 | 39 | 531 | 126 | 63.00 |
| Monday | 1,504 | 850 | 2,636 | 303 | 20.15 | |
| Tuesday | 850 | 495 | 1,421 | 200 | 23.53 | |
| Wednesday | 855 | 1 | 1,461 | 252 | 29.47 | |
| Thursday | 1,381 | 139 | 1,923 | 309 | 22.38 | |
| Friday | 1,025 | 197 | 1,450 | 253 | 24.68 | |
| Saturday | 164 | 31 | 660 | 122 | 74.39 | |
|
| ||||||
| 2016 | Sunday | 204 | 31 | 542 | 99 | 48.53 |
| Monday | 1,497 | 162 | 2,073 | 331 | 22.11 | |
| Tuesday | 855 | 372 | 1,572 | 239 | 27.95 | |
| Wednesday | 862 | 146 | 1,264 | 199 | 23.09 | |
| Thursday | 1,439 | 547 | 2,643 | 319 | 22.17 | |
| Friday | 1,060 | 81 | 2,058 | 301 | 28.40 | |
| Saturday | 146 | 55 | 490 | 69 | 47.26 | |
|
| ||||||
| 2017 | Sunday | 201 | 50 | 522 | 116 | 57.71 |
| Monday | 1,445 | 212 | 1,964 | 324 | 22.42 | |
| Tuesday | 888 | 355 | 1,508 | 238 | 26.80 | |
| Wednesday | 888 | 272 | 1,656 | 224 | 25.23 | |
| Thursday | 1,383 | 502 | 1,846 | 273 | 19.74 | |
| Friday | 1,159 | 57 | 2,061 | 312 | 26.92 | |
| Saturday | 192 | 41 | 679 | 100 | 52.08 | |
Error measures obtained under the seven time series models.
| Error | Method | ||||||
|---|---|---|---|---|---|---|---|
| AUTOREG | ARMA | Basic ARIMA | Seasonalized ARIMA | Seasonalized ESM | Multiplicative Holt-Winters | Additive Holt-Winters | |
| MAE | 215 | 449 | 600 | 160 | 158 | 159 | 159 |
| MSE | 88,031 | 288,002 | 577,197 | 57,235 | 57,111 | 57,111 | 57,189 |
| BIAS | −383 | −20,578 | 754 | −5,575 | −7,338 | −8,507 | −15,056 |
| MAPE | 94.50 | 227 | 224 | 80 | 81 | 81 | 80 |
Performance of machine learning algorithms.
| Statistics of fit | Artificial neural network | Regression |
|---|---|---|
| R-square | 58.59% | 63.71% |
Blood supply predictions using the best performing time series and machine learning methods.
| Methods | Prediction | ||||||
|---|---|---|---|---|---|---|---|
| 1/1/2018 | 1/2/2018 | 1/3/2018 | 1/4/2018 | 1/5/2018 | 1/6/2018 | 1/7/2018 | |
| Seasonalized ARIMA | 1491 | 899 | 882 | 1301 | 1242 | 200 | 208 |
| Seasonalized ESM | 1480 | 901 | 883 | 1314 | 1232 | 200 | 210 |
| Multiplicative Holt-Winters | 1490 | 906 | 887 | 1308 | 1251 | 202 | 210 |
| Regression | 1458 | 1269 | 1088 | 951 | 779 | 589 | 410 |
| Actual supply | 979 | 1223 | 972 | 1354 | 721 | 263 | 203 |