Model 1, cut off >9.7 |
|
|
Training dataset (n = 517) |
98.7% |
10.1% |
Model 1, cut off >9.7 |
|
|
Testing dataset (n = 351) |
96.4% |
11.5% |
Model 1, cut off >12 |
|
|
Training dataset (n = 517) |
93.3% |
18.1% |
Model 1, cut off >12 |
|
|
Testing dataset (n = 351) |
89.9% |
17.0% |
Model 1, cut off >14.6 |
|
|
Training dataset (n = 517) |
90.7% |
46.4% |
Model 1, cut off >14.6 |
|
|
Testing dataset (n = 351) |
80.5% |
31.9% |
Model 2, cut off >2 |
|
|
Training dataset (n = 511) |
97.4% |
9.0% |
Model 2, cut off >2 |
|
|
Testing dataset (n = 353) |
95.9% |
8.7% |
Model 2, cut off >2.8 |
|
|
Training dataset (n = 511) |
97.4% |
20.5% |
Model 2, cut off >2.8 |
|
|
Testing dataset (n = 353) |
94.7% |
15.8% |
Model 2, cut off >5.4 |
|
|
Training dataset (n = 511) |
85.5% |
43.0% |
Model 2, cut off >5.4 |
|
|
Testing dataset (n = 353) |
84.7% |
24.6% |
Model 3, cut off > = 1 |
|
|
Training dataset (n = 541) |
98.8% |
16.6% |
Model 3, cut off > = 1 |
|
|
Testing dataset (n = 383) |
95.7% |
12.2% |
Model 3, cut off >2.3 |
|
|
Training dataset (n = 541) |
94.0% |
27.3% |
Model 3, cut off >2.3 |
|
|
Testing dataset (n = 383) |
89.8% |
20.9% |
Model 3, cut off >3.9 |
|
|
Training dataset (n = 541) |
67.5% |
60.5% |
Model 3, cut off >3.9 |
|
|
Testing dataset (n = 383) |
62.6% |
54.1% |
Model 4, cut off > = 1 |
|
|
Training dataset (n = 544) |
94.0% |
27.3% |
Model 4, cut off > = 1 |
|
|
Testing dataset (n = 385) |
89.9% |
21.3% |
Model 4, cut off >2.4 |
|
|
Training dataset (n = 544) |
85.5% |
40.6% |
Model 4, cut off >2.4 |
|
|
Testing dataset (n = 385) |
79.8% |
35.0% |
Model 4, cut off >3.6 |
|
|
Training dataset (n = 544) |
39.8% |
84.4% |
Model 4, cut off >3.6 |
|
|
Testing dataset (n = 385) |
34.6% |
72.1% |