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Table 4 Accuracy of ovarian cancer according to different machine learning algorithms

From: Machine learning to reveal an astute risk predictive framework for Gynecologic Cancer and its impact on women psychology: Bangladeshi perspective

Model

Tool

AUC

CA

F1

Precision

Recall

Specificity

SVM

Orange

0.883

0.742

0.704

0.741

0.742

0.8

Sklearn

0.861

0.85

0.87

0.85

Random

Orange

0.868

0.755

0.745

0.744

0.755

0.841

Forest

Sklearn

0.972

0.97

0.97

0.98

Logistic

Orange

0.863

0.735

0.721

0.72

0.735

0.828

Regression

Sklearn

1

1

1

1

AdaBoost

Orange

0.86

0.742

0.737

0.737

0.742

0.828

Sklearn

1

1

1

1

Naïve

Orange

0.851

0.621

0.627

0.642

0.621

0.836

Bayes

Sklearn

0.958

0.96

0.96

0.96

Neural

Orange

0.847

0.718

0.719

0.721

0.718

0.838

Network

Sklearn

0.986

0.99

0.99

0.98

kNN

Orange

0.845

0.735

0.725

0.723

0.735

0.833

Sklearn

0.861

0.85

0.87

0.85

CN2 rule

Orange

0.821

0.674

0.675

0.676

0.674

0.815

Inducer

Sklearn

Decision

Orange

Tree

Sklearn

0.986

0.99

0.98

0.99

Quadratic

Orange

Classifier

Sklearn

0.431

0.3

0.22

0.5