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Table 3 The performance of different models using T1 and SWI sequence in binary classification tasks (PD vs MSA)

From: Multi-parametric radiomics of conventional T1 weighted and susceptibility-weighted imaging for differential diagnosis of idiopathic Parkinson’s disease and multiple system atrophy

Sequence

Models

Average

Sen

Spec

ACC

AUC

SWI

LR

0.750

0.811

0.785

0.864

SVM

0.714

0.797

0.769

0.837

LGBM

0.768

0.851

0.815

0.883

T1

LR

0.732

0.743

0.738

0.827

SVM

0.696

0.824

0.769

0.853

LGBM

0.714

0.811

0.769

0.844

SWI + T1

LR

0.821

0.757

0.785

0.848

SVM

0.768

0.824

0.800

0.876

LGBM

0.857

0.851

0.854

0.881

  1. Sen sensitive, Spec specificity, ACC accuracy, AUC area under the curve, SWI susceptibility weighted imaging, T1 T1 weighted imaging, LR logistic regression, SVM support vector machine, LGBM light gradient boosting machine