In this study, patients with ischemic (37%) and non-ischemic cardiomyopathy were also examined within the scope of correlation analysis. Since both MELD score and RAP are continuous variables, the direction and degree of the relationship between these two variables are given with the Pearson correlation coefficient. The Pearson correlation coefficient requires both variables to be continuous and to fit a normal distribution. If the variables do not show a normal distribution, the correlation between the variables is expressed with the Spearman's rank correlation coefficient. In this study, both the RAP and MELD score variables fit the normal distribution, and both were continuous variables. The Pearson correlation coefficient of MELD score with patients with ischemic cardiomyopathy was obtained as r=0.569 and this coefficient was found to be statistically significant (p=0.001<0.05). The Pearson correlation coefficient of the MELD score with patients with non-ischemic cardiomyopathy was lower than those with ischemic disease (r=0.443). This coefficient was also statistically significant (p=0.001<0.05). In addition, the correlation coefficient between the RAP and the other variables used in the calculation of the MELD score was also examined in this study. Pearson correlation coefficients of the RAP variable with total bilirubin, international normalized ratio (INR) and creatinine and the significance of these coefficients were obtained as (r=0.521, p<0.001; r=0.358, p<0.001 and r=0.251, p<0.003), respectively.
In clinical studies, it is aimed to distinguish between patients with the disease and no disease by using various diagnostic methods. It is of utmost importance to identify how accurately a test can distinguish sick individuals from healthy patients. One of the methods used to determine the distinctiveness of the test in the medical decision-making process is the receiver operating characteristic (ROC) curve method. It is one of the most important evaluation metrics for checking any classification model"s performance. The ROC curves are used when the dependent variable is dichotomous, whereas the independent variable to be used in decision making is continuous. The ROC curves show all possible cut-off points for this continuous variable and allow estimates to be made about the frequency of different outcomes -true positive (TP), true negative (TN), false positive (FP), and false negative (FN) at each cut-off point. In ROC curves, the x-axis has FPR (false positive ratio), while the y-axis has TPR (true positive proportion). The FPR and TPR values, that is, sensitivity and 1-selectivity values, are calculated for different threshold values. Both pairs form the ROC curve. The ROC curve is an increasing function between (0,0) and (1,1). The point nearest to the top-left on the ROC curve is the optimal cut-off to differentiate patient with disease from those without disease. This point, compared to other possible cut-offs, has the minimum value for (1-sensitivity)2+ (1-specificity)2. A simpler and more commonly used alternative is the use of cut-off with the maximum sum of sensitivity and specificity. It is calculated as the cutoff with maximum value of Youden's index, which is defined as (sensitivity + specificity - 1). Its values can vary between -1.0 and 1.0, and higher values indicate a test cut-off with higher discriminative ability. Desired result TPR is high while FPR is low that is. The point (0.1) as a coordinate indicates the best classification. It tells how much the model is capable of distinguishing between classes. The higher the area under the ROC curve (AUC), the better the model is at predicting 0 classes as 0 and 1 classes as 1. By analogy, the higher the AUC, the better the model is at distinguishing between patients with the disease and no disease. If the diagnostic test cannot distinguish between patients with the disease and no disease, it would be a useless test and the AUC is 0.5. In this study, ROC curve analysis was performed using the dichotomous dependent variable RAP (?12 mmHg, >12 mmHg) and continuous dependent variable MELD score. The calculated AUC was 0.789 (95% confidence interval [CI]: 0.710-0.867, p<0.001). It indicates that there is a 78.9% chance that the model would be able to distinguish between positive class and negative class. The diagnostic power of the MELD score, in other words, the power to distinguish between patients with disease and no disease, is expressed by the AUC. As the AUC approaches 1, the diagnostic power increases. In this study, it is possible to mention that the diagnostic power of the MELD score is quite good. A statistically significant diagnostic test can be mentioned with the help of the confidence interval obtained for the AUC. If the "0.50 (no diagnostic ability)" value is outside the confidence interval, a statistically significant diagnostic value is mentioned. In this study, a 95% CI (0.710-0.867) was obtained for the AUC, and since the interval does not contain "0.50", the diagnostic value of the MELD score is stated to be statistically significant. The fact that the p value is less than 0.001 also supports this result. With the help of ROC analysis, it is possible to identify the optimal cut-off point value for the test as well as the diagnostic accuracy of the test. In this study, the cut-off value for the MELD score in the prediction of high RAP was 10.5 with 75% sensitivity and 73% specificity. On the other hand, the AUC values and its confidence intervals for total bilirubin, INR, and creatinine used in the MELD score were 0.765 (CI: 0.681-0.849), 0.696 (CI: 0.608-0.784) and 0.621 (CI: 0.524-0.717), respectively. It can be stated that the confidence intervals for the AUC do not contain the value of "0.5" and that the diagnostic values of the mentioned variables are statistically significant.