<p>A) the distribution of predicted outcomes of the positive and negative datasets. Each bar corresponds to a given range of predicted likelihood of affecting transcription by ERVs, and the height of the bar represents the percentage of ERV insertions with a predicted value within that range. Green and blue bars represent positive and negative data, respectively. Panel B shows the performance of the trained MLP model using ROC curve analysis based on the positive and negative datasets. AUC stands for ‘the area under the curve’. As shown by the two arrows in the figure, when the cutoff threshold is set at 0.4, the model's true positive rate reaches 1; when the cutoff threshold is set at 0.8, the model's false positive rate is 0.</p
<p> <b>The AUC (ROC score) is the area under the ROC curve, normalized to 100 for a ...
<p>FPR represents the false positive rate, and TPR is the true positive rate. The ROC curve is close...
<p>The ROC curve showing the tradeoff between the True Positive Rate (sensitivity) and the False Pos...
<p>The most discriminative cut-off value of MLR was 0.262 with an AUC value of 0.667 (p = 0.028). Th...
<p>The blue line indicates the prediction scenario using only clinical variables (hippocampal sclero...
We compute the area under the curve (AUC) for each model and each cohort, where a perfect classifier...
<p>Shown here are the ROC curve Area-Under-Curve (AUC) scores, sensitivities and specificities for t...
: Optimal performance is desired for decision-making in any field with binary classifiers and diagno...
(A) Performance of the model in the training set, which showed an AUC value of 0.768, an optimal cut...
In this paper we investigate the use of the area under the receiver operating characteristic (ROC) c...
The curves represent the average curves for the 20 ANN and 20 logistic models. The area under the RO...
(A) shows the AUC (95% confidence interval) of the p50 model tested on the same subset from which it...
<p>MLP’s and sdAE’s ROC curve AUC with 95% confidence intervals evaluated on subsets of SNVs from th...
OBJECTIVES: Receiver operating characteristic (ROC) curves show how well a risk prediction model dis...
<p>a. AUC = Area under the curve from Receiver Operator Curve (ROC); FP = False positive rate; PPV =...
<p> <b>The AUC (ROC score) is the area under the ROC curve, normalized to 100 for a ...
<p>FPR represents the false positive rate, and TPR is the true positive rate. The ROC curve is close...
<p>The ROC curve showing the tradeoff between the True Positive Rate (sensitivity) and the False Pos...
<p>The most discriminative cut-off value of MLR was 0.262 with an AUC value of 0.667 (p = 0.028). Th...
<p>The blue line indicates the prediction scenario using only clinical variables (hippocampal sclero...
We compute the area under the curve (AUC) for each model and each cohort, where a perfect classifier...
<p>Shown here are the ROC curve Area-Under-Curve (AUC) scores, sensitivities and specificities for t...
: Optimal performance is desired for decision-making in any field with binary classifiers and diagno...
(A) Performance of the model in the training set, which showed an AUC value of 0.768, an optimal cut...
In this paper we investigate the use of the area under the receiver operating characteristic (ROC) c...
The curves represent the average curves for the 20 ANN and 20 logistic models. The area under the RO...
(A) shows the AUC (95% confidence interval) of the p50 model tested on the same subset from which it...
<p>MLP’s and sdAE’s ROC curve AUC with 95% confidence intervals evaluated on subsets of SNVs from th...
OBJECTIVES: Receiver operating characteristic (ROC) curves show how well a risk prediction model dis...
<p>a. AUC = Area under the curve from Receiver Operator Curve (ROC); FP = False positive rate; PPV =...
<p> <b>The AUC (ROC score) is the area under the ROC curve, normalized to 100 for a ...
<p>FPR represents the false positive rate, and TPR is the true positive rate. The ROC curve is close...
<p>The ROC curve showing the tradeoff between the True Positive Rate (sensitivity) and the False Pos...