| Literature DB >> 19751514 |
Jing Wang1, Man Li, Yun-tao Hu, Yu Zhu.
Abstract
BACKGROUND: In recent years, artificial neural network is advocated in modeling complex multivariable relationships due to its ability of fault tolerance; while decision tree of data mining technique was recommended because of its richness of classification arithmetic rules and appeal of visibility. The aim of our research was to compare the performance of ANN and decision tree models in predicting hospital charges on gastric cancer patients.Entities:
Mesh:
Year: 2009 PMID: 19751514 PMCID: PMC2749050 DOI: 10.1186/1472-6963-9-161
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Results of univariate analyses on the total charge
| variables | t/F | variables | t/F | ||
|---|---|---|---|---|---|
| Sex: | Insurance: | ||||
| men | 11957.63 ± 8733.77 | 1.839 | private | 13696.08 ± 10388.73 | 1.606 |
| women | 13066.63 ± 10277.53 | public | 12372.86 ± 9520.96 | ||
| Marriage: | Dwelling: | ||||
| no | 12473.81 ± 9708.01 | 6.164* | county | 13361.71 ± 10629.09 | |
| yes | 19806.29 ± 5137.35 | Suburban | 11384.77 ± 9114.22 | 7.778* | |
| Operation: | urban | 14022.70 ± 9665.03 | |||
| Without | 3292.30 ± 2137.66 | 54.460* | |||
| With | 19666.21 ± 6765.87 | Operation type: | |||
| Non-chemotherapy | 14268.60 ± 10227.06 | 7.798* | SG | 19526.35 ± 6246.40 | |
| Chemotherapy | 9759.44 ± 7930.49 | TG | 19954.17 ± 5404.27 | ||
| Non-radiotherapy | 12693.31 ± 9688.01 | 32.181* | GEL | 22856.43 ± 2105.23 | 237.529* |
| Radiotherapy | 2833.26 ± 11.823 | PO | 13302.72 ± 2483.79 | ||
| others | 20703.42 ± 12433.20 |
Abbr: SG: subtotal gastrectomy; TG: total gastrectomy; GEL: gastrectomy with extended lymphadenectomy; PO: palliviate operation.
*: P < 0.05
Classification rules of decision tree of the hospital charge on gastric cancer patients
| category | rules | Predictive value(RMB) |
|---|---|---|
| A | with operation | 19392.655 |
| B | without operation and chemotherapy, LOS< = 3.5 days | 1182.421 |
| C | without operation and chemotherapy, 3.5<LOS< = 5.5 days, age< = 42.5 years | 1241.267 |
| D | without operation and chemotherapy, LOS>5.5 days, age< = 42.5 years | 2081.700 |
| E | without operation and chemotherapy, age>42.5 years, without radiotherapy | 2052.962 |
| F | without operation and chemotherapy, age>42.5 years, with radiotherapy | 2833.263 |
| G | without operation, with chemotherapy, LOS< = 8.5 days, age< = 59.5 years | 4249.538 |
| H | without operation, with chemotherapy, LOS< = 8.5 days, 59.5 year<age< = 70.5 years | 3578.098 |
| I | without operation, with chemotherapy, LOS< = 8.5 days, age>70.5 year | 5968.295 |
| J | without operation, with chemotherapy, LOS>8.5 days | 8175.892 |
Comparison of ANN model with decision tree model of the hospital charge on gastric cancer patients
| Indexes | ANN | Decision tree | ||
|---|---|---|---|---|
| Training dataset | test dataset | Training dataset | test dataset | |
| Minimum error | -10878.152 | -6048.823 | -12680.355 | -11754.598 |
| Maximum error | 15072.62 | 5971.064 | 36086.455 | 50410.532 |
| Mean error | 81.358 | -2.027 | 0.0 | 0.0 |
| Mean absolute error | 1819.197 | 1162.279 | 2782.423 | 3424.608 |
| Standard deviation | 2765.489 | 1646.117 | 4689.292 | 6102.192 |
| Linear correlation coefficient | 0.955 | 0.987 | 0.866 | 0.806 |
| Accuracy | 97.418% | 98.35% | ---- | ---- |