Skip to main content

Table 2 Predictive performance of several deep learning models in the test set

From: Transfer learning–based PET/CT three-dimensional convolutional neural network fusion of image and clinical information for prediction of EGFR mutation in lung adenocarcinoma

Model

AUC (95%CI)

Accuracy

Sensitivity

Specificity

PPV

NPV

CT_origin

0.544 (0.435–0.653)

0.536

0.507

0.585

0.679

0.407

CT_TL

0.701 (0.595–0.808)

0.688

0.746

0.585

0.757

0.571

PET_origin

0.573 (0.461–0.684)

0.536

0.521

0.561

0.673

0.404

PET_TL

0.645 (0.534–0.756)

0.589

0.549

0.659

0.736

0.458

DS_TL

0.722 (0.622–0.822)

0.661

0.676

0.634

0.762

0.531

TS_TL

0.730 (0.629–0.830)

0.670

0.676

0.659

0.774

0.540

  1. Bold numbers indicate the best results for each evaluation metric
  2. AUC Area under the receiver operating characteristic curve, PPV positive predictive value, NPV Negative predictive value, CT_origin CT model from scratch, CT_TL CT transfer learning, PET_origin PET model from scratch, PET_TL PET transfer learning, DS_TL dual-stream transfer learning, TS_TL three-stream transfer learning