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. 2021 Aug 14;9(1):34. doi: 10.1007/s13755-021-00164-6

Table 1.

Review of machine learning for disease prediction

References Algorithm Key results
[4] Logistic Regression, Random Forests 0.72 AUC
[11] Model Ensembles 0.80 AUC
[51] Random Forests 0.92 AUC
[3] Random Forests 0.82 AUC
[1] Several 0.69–0.97 AUC
[19] Random Forests 59–80% Precision
[32] Several 99.3% specificity
[8] Random Forests, SVM and others 92–95% sensitivity
[12] LSTM 62–87% accuracy
[13] DNNs 96–98% accuracy
[27] Naïve Bayes 96.20% accuracy
[25] Several
[29] Several
[15] Several
This article xgBoost + Bayesian Optimization 0.94 AUC