Research Article

Symptom-Based COVID-19 Prognosis through AI-Based IoT: A Bioinformatics Approach

Table 7

Performance comparison of proposed work with other reported works.

Model for predictionAccuracySpecificitySensitivityAUC

Brinati et al. [30]Random forest8284
Tschoellitsch et al. [31]Random forest8174
Tordjman et al. [32]Logistics regression80.388.9
Soltan et al. [33]Extreme gradient boosting tree94.877.499
Alakus and Turkoglu [34]LSTM86.6699.4262.50
Proposed workk-NN97.970.980.9898
Random forest90.660.940.9398
Logistics regression96.500.970.9893
SVM97.420.980.9889
Decision tree97.790.990.9795
Gradient boosting classifier87.770.900.9397