Table II.
(n1, n2, n3) | SSD1 | SSD2 | PSD1 | PSD2 | Cum-logistic | SW1 | SW2 | Min–max |
---|---|---|---|---|---|---|---|---|
(20, 20, 20) | 0.8951 (0.332) |
— — |
0.8441 (0.000) |
— — |
0.8944 (0.289) |
0.8977 (0.348) |
0.8759 (0.021) |
0.8239 (0.009) |
(20, 30, 50) | 0.8905 (0.156) |
0.8905 (0.154) |
0.8383 (0.000) |
0.8412 (0.000) |
0.8896 (0.290) |
0.8913 (0.386) |
0.8702 (0.008) |
0.8188 (0.007) |
(30, 40, 50) | 0.8879 (0.163) |
0.8879 (0.162) |
0.8396 (0.000) |
0.8406 (0.000) |
0.8896 (0.356) |
0.8879 (0.313) |
0.8677 (0.003) |
0.8168 (0.002) |
(50, 50, 50) | 0.8860 (0.342) |
— — |
0.8395 (0.000) |
— — |
0.8875 (0.411) |
0.8849 (0.245) |
0.8655 (0.001) |
0.8147 (0.000) |
Simulation setting: normal data with equal variance Σ1 =Σ2 = Σ3 = 0.5 × I5×5 + 0.5 × J 5×5.
SSD1, scaled stochastic distance method with accounting for unbalanced sample size; SSD2, scaled stochastic distance method with accounting no unbalanced information; PSD1, penalized stochastic distance method with accounting for unbalanced sample size; PSD2, penalized stochastic distance method with accounting no unbalanced information; SW1, step-down procedure (stepwise method proceeding from marker with largest VUS to smallest VUS); SW2, step-up procedure (stepwise method proceeding from marker with smallest VUS to largest VUS); Min–max, min–max approach implemented for three diagnostic categories; Cum-logistic, linear combination coefficients from cumulative logistic regression.