1. Background
2. Objectives
3. Materials and Methods
3.1. Patients and Study Design
3.2. Statistical Analysis
3.3. ANNs Modeling
3.4. LR Modeling
4. Results
| Architecture (Input/Middle/ Output) | RMS | Area Under ROC Curve | Percent of Inaccurate Prediction |
|---|---|---|---|
| (14/7/2) | 0.1151 | 0.802 | 11.16 |
| (14/8/2) | 0.1072 | 0.831 | 10.10 |
| (14/9/2)a | 0.1029 | 0.869 | 9.35 |
| (14/10/2) | 0.1054 | 0.853 | 9.78 |
| (14/11/2) | 0.1293 | 0.801 | 11.84 |
| (14/12/2) | 0.1312 | 0.795 | 11.97 |
aThe most suitable architecture after network training, on the basis of RMS error and area under the ROC curve.
| Level of Significance of Variables in Logistic Regression Model in Descending Order | Level of Significance of Variables in Neural Network Model in Descending Order |
|---|---|
| Level of educationa | History of traumab |
| Financial statusa | History of using substanceb |
| Agea | Level of educationb |
| History of being hospitalized in neurosurgery unit | History of mental illness in the immediate familyb |
| Sex | History of using alcohol |
| Job | History of using psychological drug |
| Marital status | Marital status |
| History of mental illness in the immediate family | Sex |
| History of trauma | Age |
| History of underlying disease | Job |
| History of using psychological drug | History of anesthesia |
| History of anesthesia | Financial status |
| History of using alcohol | History of underlying disease |
| History of using drug substance | History of being hospitalized in neurosurgery unit |
aSignificant variables in the LR model.
bSignificant variables in the artificial neural network model.
| Index | LR | ANN | P Value |
|---|---|---|---|
| Area under the ROC curve | 0.695 (0.571 - 0.820)a | 0.869 (0.785 - 0.952) | 0 |
| Accuracy rate | 75.96 (75.23 - 76.35) | 90.65 (90.31 - 91.01) | 0 |
a(95% confidence interval).
